Access the full text.
Sign up today, get DeepDyve free for 14 days.
Javier Cassou, Marta Ruiz-Arranz (2018)
Reformas y desarrollo en el Ecuador contemporáneo
H. Görg, D. Greenaway (2003)
Much Ado About Nothing? Do Domestic Firms Really Benefit from Foreign Direct Investment?International Finance
G. Iyer (2009)
Foreign Firms and Inter-industry Spillovers in Indian ManufacturingMargin: The Journal of Applied Economic Research, 3
(2004)
FDI and economic growth: The role of local financial markets
F. García, Byungchae Jin, R. Salomon (2013)
Does inward foreign direct investment improve the innovative performance of local firmsResearch Policy, 42
S. Girma, H. Görg, M. Pisu (2007)
Exporting, Linkages and Productivity Spillovers from Foreign Direct InvestmentIO: Productivity
Tain-Jy Chen, Ying-Hua Ku (2000)
The effect of foreign direct investment on firm growth: the case of Taiwan's manufacturersJapan and the World Economy, 12
M Guadalupe (2012)
10.1257/aer.102.7.3594Am Econ Rev, 102
F Windmeijer (2005)
10.1016/j.jeconom.2004.02.005J Econ, 126
M. Apostolov (2017)
The impact of FDI on the performance and entrepreneurship of domestic firmsJournal of International Entrepreneurship, 15
L. Du, A. Harrison, G. Jefferson (2012)
Testing for horizontal and vertical foreign investment spillovers in China, 1998–2007Journal of Asian Economics, 23
Paúl Vera-Gilces, Xavier Ordeñana, Alfredo Jiménez (2019)
El efecto de la inversión extranjera directa en el desempeño de empresas locales latinoamericanas: el caso de las manufacturas en EcuadorICE, Revista de Economía
Palitha Konara, Y. Tan, J. Johnes (2017)
FDI and Heterogeneity in Bank Efficiency: Evidence from Emerging MarketsERN: Other Emerging Markets Economics: Firm Behavior & Microeconomic Issues (Topic)
Magnus Blomstrom, A. Kokko (1998)
Multinational Corporations and SpilloversJournal of Economic Surveys, 12
P. Lin, Zhuomin Liu, Yifan Zhang (2009)
Do Chinese Domestic Firms Benefit from FDI Inflow? Evidence of Horizontal and Vertical SpilloversEmerging Markets: Economics
R Blundell (1998)
10.1016/S0304-4076(98)00009-8J Econ, 87
J. Levinsohn, Amil Petrin (2003)
Estimating Production Functions Using Inputs to Control for UnobservablesThe Review of Economic Studies, 70
R. Pittiglio, F. Reganati, E. Sica (2016)
Vertical Spillovers from Multinational Enterprises: Does Technological Gap Matter?Panoeconomicus, 63
C. Turnbull, Sizhong Sun, S. Anwar (2016)
Trade liberalisation, inward FDI and productivity within Australia’s manufacturing sectorEconomic Analysis and Policy, 50
J. Markusen, A. Venables (1997)
Foreign Direct Investment as a Catalyst for Industrial DevelopmentNBER Working Paper Series
B. Javorcik (2002)
Does Foreign Direct Investment Increase the Productivity of Domestic Firms? In Search of Spillovers Through Backward LinkagesInstitutional & Transition Economics eJournal
Brian Aitken, A. Harrison (1999)
Do Domestic Firms Benefit from Direct Foreign Investment? Evidence from VenezuelaThe American Economic Review, 89
Stephan Gerschewski (2013)
Do Local Firms Benefit from Foreign Direct Investment? An Analysis of Spillover Effects in Developing CountriesAsian Social Science, 9
A. Barge-Gil, Alberto López, R. Núñez‐Sánchez (2018)
Estimation of foreign MNEs spillovers in SpainApplied Economics Letters, 26
R. Blundell, Stephen Bond (1998)
Initial Conditions and Moment Restrictions in Dynamic Panel Data Models
Karolien Lenaerts, Bruno Merlevede (2015)
Firm size and spillover effects from foreign direct investment: the case of RomaniaSmall Business Economics, 45
(2005)
A finite sample correction for the variance of linear efficient two-step GMM estimators
M Rojec, M Knell (2018)
Why is there a lack of evidence on knowledge spillovers from foreign direct investment?J Econ Surv, 32
A. Waldkirch, Peter Nunnenkamp, Jose Bremont (2009)
Employment Effects of FDI in Mexico's Non-Maquiladora ManufacturingThe Journal of Development Studies, 45
Albert Hu, G. Jefferson (2002)
FDI Impact and Spillover: Evidence from China's Electronic and Textile Industries
S. Girma, Yundan Gong, H. Görg, Sandra Lancheros (2014)
Estimating Direct and Indirect Effects of Foreign Direct Investment on Firm Productivity in the Presence of Interactions between FirmsIO: Firm Structure
D. Herzer, S. Klasen, F. Nowak-Lehmann (2008)
In search of FDI-led growth in developing countries
Gladys Olives (2021)
Apertura comercial, inversión doméstica y crecimiento económico en Ecuador. Investigación empírica 1950-2019Julio-Diciembre 2021
L Alfaro (2004)
10.1016/S0022-1996(03)00081-3J Int Econ, 64
D. Holtz-eakin, Whitney Newey, H. Rosen (1988)
Estimating vector autoregressions with panel dataEconometrica, 56
Crystal Jiang, Qin Yang, Sali Li, Yong Wang (2011)
The moderating effect of foreign direct investment intensity on local firms' intangible resources investment and performance implications: A case from ChinaJournal of International Management, 17
Y Gorodnichenko (2014)
10.1016/j.jce.2014.08.003J Comp Econ, 42
JP Damijan (2013)
10.1016/j.jce.2012.12.001J Comp Econ, 41
P Lin (2009)
10.1016/j.chieco.2009.05.010China Econ Rev, 20
Freddy Camacho, Yanina Bajaña (2020)
IMPACT OF FOREIGN DIRECT INVESTMENT ON ECONOMIC GROWTH: COMPARATIVE ANALYSIS IN ECUADOR, PERU AND COLOMBIA 1996-2016International Journal of Economics and Financial Issues, 10
(2004)
Is FDI a potential tool for boosting firm’s performance
Dominique Gross, Michael Ryan (2008)
FDI location and size: Does employment protection legislation matter?Regional Science and Urban Economics, 38
P. Buckley, J. Clegg, Chengqi Wang (2002)
The Impact of Inward FDI on the Performance of Chinese Manufacturing FirmsJournal of International Business Studies, 33
K. Meyer (2004)
Perspectives on multinational enterprises in emerging economiesJournal of International Business Studies, 35
R Griffith (2004)
10.1093/oxrep/grh026Oxf Rev Econ Policy, 20
B. Javorcik, Kamal Saggi, Mariana Spatareanu (2004)
Does it Matter Where You Come from? Vertical Spillovers from Foreign Direct Investment and the Nationality of InvestorsInstitutional & Transition Economics eJournal
P Lin, Z Liu, Y Zhang (2009)
Do Chinese domestic firms benefit from FDI inflow?. Evidence of horizontal and vertical spilloversChina Econ Rev, 20
Evis Sinani, K. Meyer (2004)
Spillovers of technology transfer from FDI: the case of EstoniaJournal of Comparative Economics, 32
R. Griffith, S. Redding, H. Simpson (2004)
Foreign Ownership and Productivity: New Evidence from the Service Sector and the R&D LabCEPR Discussion Paper Series
R Lensink, O Morrissey (2006)
Foreign direct investment: Flows, volatility, and the impact on growthRev Int Econ, 14
Özlem Onaran, Engelbert Stockhammer (2006)
The effect of FDI and foreign trade on wages in the Central and Eastern European Countries in the post-transition era: A sectoral analysis for the manufacturing industryStructural Change and Economic Dynamics, 19
JR Markusen, AJ Venables (1999)
Foreign direct investment as a catalyst for industrial developmentEur Econ Rev, 43
J. Reyes (2017)
FDI Spillovers and High-Growth Firms in Developing CountriesPolitical Economy - Development: International Development Efforts & Strategies eJournal
M. Kugler (2006)
Spillovers from Foreign Direct Investment: Within or between Industries?Journal of Development Economics, 80
L. Mello (1997)
Foreign direct investment in developing countries and growth: A selective surveyJournal of Development Studies, 34
S. Beer, R. Mooij, L. Liu (2018)
International Corporate Tax Avoidance: A Review of the Channels, Magnitudes, and Blind SpotsInternational Corporate Finance eJournal
R. Lensink, O. Morrissey (2006)
Foreign Direct Investment: Flows, Volatility, and the Impact on GrowthEconomic Growth
JP Damijan, M Rojec, B Majcen, M Knell (2013)
Impact of firm heterogeneity on direct and spillover effects of fdi: Micro-evidence from ten transition countriesJ Comp Econ, 41
H Görg, D Greenaway (2004)
Much ado about nothing? do domestic firms really benefit from foreign direct investment?World Bank Res Obs, 19
E. Olaya, J. Armijos (2017)
Efecto de la inversión extranjera directa en el crecimiento económico en Ecuador durante 1980-2015: un análisis de cointegración, 2
Rossitza Wooster, David Diebel (2006)
Productivity Spillovers from Foreign Direct Investment in Developing Countries: A Meta-Regression AnalysisIO: Productivity
M. Conyon, S. Girma, S. Thompson, P. Wright (2002)
The Productivity and Wage Effects of Foreign Acquisition in the United KingdomIO: Firm Structure
Laura Alfaro (2017)
Multinational Activity in Emerging Markets: How and When Does Foreign Direct Investment Promote Growth?, 36
Matija Rojec, M. Knell (2018)
Why is There a Lack of Evidence on Knowledge Spillovers from Foreign Direct Investment?International Trade eJournal
(2000)
inversión empresarial en el ecuador 2013-2017. X-pedientes Económicos
B Smarzynska Javorcik (2004)
10.1257/0002828041464605Am Econ Rev, 94
S Beer, R De Mooij, L Liu (2020)
International corporate tax avoidance: a review of the channels, magnitudes, and blind spotsJ Econ Surv, 34
Cassandra Wang, Aiqi Wu (2016)
Geographical FDI knowledge spillover and innovation of indigenous firms in ChinaInternational Business Review, 25
Sasi Iamsiraroj, M. Ulubaşoğlu (2015)
Foreign Direct Investment and Economic Growth: a Real Relationship or Wishful Thinking?Economics Series
T. Havránek, Zuzana Irsova (2011)
Estimating vertical spillovers from FDI: Why results vary and what the true effect isJournal of International Economics, 85
M. Arellano, O. Bover (1995)
Another look at the instrumental variable estimation of error-components modelsJournal of Econometrics, 68
Edvard Orlić, Iraj Hashi, Mehtap Hisarciklilar (2018)
Cross sectoral FDI spillovers and their impact on manufacturing productivityInternational Business Review
GC Iyer (2009)
Foreign firms and inter-industry spillovers in indian manufacturing: Evidence from 1989 to 2004Margin: J Appl Econ Res, 3
A. Tomohara, S. Takii (2011)
Does globalization benefit developing countries? Effects of FDI on local wagesJournal of Policy Modeling, 33
R. Kneller, M. Pisu (2004)
Export-oriented FDI in the UKOxford Review of Economic Policy, 20
(2004)
Econ/Revue canadienne d’économique
R Griffith, S Redding, H Simpson (2004)
Foreign ownership and productivity: new evidence from the service sector and the r&d labOxf Rev Econ Policy, 20
G. Fotopoulos, H. Louri (2004)
Firm Growth and FDI: Are Multinationals Stimulating Local Industrial Development?Journal of Industry, Competition and Trade, 4
B. Demena, Peter Bergeijk (2017)
A Meta‐Analysis of FDI and Productivity Spillovers in Developing CountriesEconometrics: Multiple Equation Models eJournal
P Konara (2019)
10.1016/j.ribaf.2019.02.008Res Int Bus Finance, 49
Laura Alfaro, A. Rodrı́guez-Clare (2004)
Multinationals and Linkages: An Empirical InvestigationEconomía, 4
Sizhong Sun, S. Anwar (2019)
R&D Activities and FDI in China’s Iron Ore Mining IndustryPSN: Foreign Direct Investment (Development) (Topic)
Gilbert Becker (2015)
Horizontal Merger Guidelines
Segundo Camino‐Mogro (2021)
TFP determinants in the manufacturing sector: the case of Ecuadorian firmsApplied Economic Analysis
Qichun He, Meng Sun (2009)
FDI and Economic Growth: the Role of Gradual Financial Deregulation a
S Sun (2019)
10.1016/j.eap.2019.01.003Econ Anal Policy, 62
G. Roodman, M. Arellano, Christopher Baum, Michael Clemens, Francisco Ciocchini, Decio Coviello (2006)
How to do Xtabond2: An Introduction to Difference and System GMM in StataThe Stata Journal, 9
S. Camino, V. Diaz, D. Villacís (2016)
Posicionamiento y eficiencia del banano, cacao y flores del Ecuador en el mercado mundial / Positioning and efficiency of bananas, cocoa and flowers in the global market, 9
M Guadalupe, O Kuzmina, C Thomas (2012)
Innovation and foreign ownershipAm Econ Rev, 102
B Javorcik (2014)
Does fdi bring good jobs to host countries?World Bank Res Obs, 30
Yih-Chyi *, P. Hsu (2004)
FDI, trade, and spillover efficiency: evidence from China's manufacturing sectorApplied Economics, 36
Y. Gorodnichenko, Jan Svejnar, Katherine Terrell (2013)
When Does FDI Have Positive Spillovers? Evidence from 17 Transition Market EconomiesMicroeconomics: Input-Output Tables & Analysis eJournal
Jan Loecker, P. Goldberg (2013)
Firm Performance in a Global MarketKauffman: Large Research Projects (Topic)
Byungchae Jin, F. García, R. Salomon (2018)
Inward foreign direct investment and local firm innovation: The moderating role of technological capabilitiesJournal of International Business Studies, 50
L. Mello (1996)
Foreign Direct Investment-Led Growth: Evidence from Time Series and Panel DataStudies in Economics
F. Kimura, Kozo Kiyota (2007)
Foreign-Owned versus Domestically-Owned Firms: Economic Performance in JapanERN: Governance & Ownership (Topic)
Eduardo Borensztein, A. Berg (2000)
The Pros and Cons of Full DollarizationInternational Monetary Fund (IMF) Research Paper Series
Pooja Thakur, L. Burange (2015)
Productivity Spillovers from foreign Direct Investment in the Manufacturing Sector of IndiaArtha Vijnana: Journal of The Gokhale Institute of Politics and Economics, 57
BS Javorcik, M Spatareanu (2011)
Does it matter where you come from? Vertical spillovers from foreign direct investment and the origin of investorsJ Dev Econ, 96
S. Girma (2005)
Absorptive Capacity and Productivity Spillovers from FDI: A Threshold Regression AnalysisWiley-Blackwell: Oxford Bulletin of Economics & Statistics
LR De Mello (1999)
Foreign direct investment-led growth: evidence from time series and panel dataOxf Econ Pap, 51
M. Alguacil, A. Cuadros, V. Orts (2011)
Inward FDI and growth: The role of macroeconomic and institutional environmentJournal of Policy Modeling, 33
Laura Alfaro, A. Chanda, S. Kalemli‐Ozcan, S. Sayek (2010)
Does foreign direct investment promote growth? Exploring the role of financial markets on linkagesJournal of Development Economics, 91
B. Javorcik (2012)
Does FDI Bring Good Jobs to Host Countries?Economic Growth eJournal
B Smarzynska Javorcik (2004)
Does foreign direct investment increase the productivity of domestic firms? in search of spillovers through backward linkagesAm Econ Rev, 94
J. Damijan, M. Knell, Boris Majcen, Matija Rojec (2003)
The role of FDI, R&D accumulation and trade in transferring technology to transition countries: evidence from firm panel data for eight transition countriesEconomic Systems, 27
J. Damijan, Matija Rojec, Boris Majcen, M. Knell (2013)
Impact of Firm Heterogeneity on Direct and Spillover Effects of FDI: Micro Evidence from Ten Transition CountriesInternational Trade eJournal
Segundo Camino-Mogro, Grace Armijos-Bravo, Gino Marcos (2018)
Productividad Total de los Factores en el sector manufacturero ecuatoriano: evidencia a nivel de empresasCuadernos de Economía
J. Bullard, John Keating (1995)
The long-run relationship between inflation and output in postwar economies☆Journal of Monetary Economics, 36
Yi Lu, Z. Tao, Lianming Zhu (2017)
Identifying FDI spilloversJournal of International Economics, 107
E Borensztein (1998)
10.1016/S0022-1996(97)00033-0J Int Econ, 45
Henry Aray, Janeth Pacheco-Delgado (2020)
Public investment allocation across Ecuadorian ProvincesSocio-economic Planning Sciences, 71
Segundo Camino-Mogro, Natalia Bermúdez-Barrezueta, P. Avilés (2018)
Análisis Sectorial: Panorama de la Inversión Empresarial en el Ecuador 2013-2017, 2
E Borensztein, J De Gregorio, J-W Lee (1998)
How does foreign direct investment affect economic growth?J Int Econ, 45
J. Yang, J. Lu, R. Jiang (2017)
Too Slow or Too Fast? Speed of FDI Expansions, Industry Globalization, and Firm PerformanceLong Range Planning, 50
Maria Guadalupe, O. Kuzmina, Catherine Thomas (2010)
Innovation and Foreign OwnershipNBER Working Paper Series
RB Wooster (2010)
10.1111/j.1467-9361.2010.00579.xRev Dev Econ, 14
Pradeep Chhibber, S. Majumdar (1999)
Foreign Ownership and Profitability: Property Rights, Control, and the Performance of Firms in Indian Industry*The Journal of Law and Economics, 42
M. Arellano, Stephen Bond (1991)
Some Tests of Specification for Panel Data: Monte Carlo Evidence and an Application to Employment EquationsThe Review of Economic Studies, 58
P Vera-Gilces, X Ordeñana, A Jiménez (2019)
El efecto de la inversión extranjera directa en el desempeño de empresas locales latinoamericanas: el caso de las manufacturas en ecuadorRevista de economía ICE Multinacionales en un cambiante contexto internacional, 909
D Herzer, S Klasen, DF Nowak-Lehmann (2008)
In search of FDI-led growth in developing countries: The way forwardEcon Model, 25
Y. Ha, A. Giroud (2015)
Competence-creating subsidiaries and FDI technology spilloversInternational Business Review, 24
In developing countries, the evidence regarding the direct and indirect effects of FDI on economic and financial performance at the firm level is mixed. To contribute to this literature, we provide empirical evidence of direct and indirect effects of FDI on firm’s performance, using return on assets (ROA), gross revenues and gross revenues growth rate as performance measures. We examine the private formal enter- prise sector in Ecuador from 2007 to 2018. Our identification strategy relies on the use of the Generalized Method of Moments (GMM) methodology for dynamic panel data which allows us to control for potential endogeneity, autocorrelation and het- eroskedasticity issues. The results suggest that firms with inward FDI grow faster than their counterparts, and firms with higher amounts of FDI as a share of total rev- enues have on average higher levels of gross revenues. Moreover, we find negative horizontal wages and gross revenues spillover effects on gross revenues growth rates, but positive horizontal gross revenues spillover effects on ROA. There is also signifi- cant evidence of negative horizontal spillover effects in all economic sectors, whereas evidence for forward and backward spillovers is heterogeneous across them. Keywords Foreign Direct Investment · Spillovers · Firm Performance · Ecuador JEL Classification C23; D22; L11; F21; O12 The corresponding disclaimer applies. All errors are our own. We thank Bart Verspagen, the Editor in Chief, Roberto Fontana, the Editor, and two anonymous reviewers for useful comments. S. Camino-Mogro acknowledges funding from the Spanish Ministry of Economy and Competitiveness (project ECO2017-82445-R and PID2020-112984GB-C21). Segundo Camino-Mogro segundoc@ucm.es; scaminom@uees.edu.ec Extended author information available on the last page of the article. S. Camino-Mogro et al. 1 Introduction The inflow of international capital as FDI can have direct and indirect effects on firms of the host country (Girma et al. 2015). In the case of the former effect, Apostolov (2017) mentions that the firms that receive FDI experience changes on their pro- ductivity, profitability, innovation strategies, among others. Alternatively, the foreign inflows could cause spillovers (indirect effects on firms), such as, capital accumula- tion, knowledge transfers, and technology diffusion. Through capital accumulation, FDI encourages the adoption of new inputs and technologies in the production func- tion of the recipient economy. Moreover, FDI can improve the existing stock of knowledge via labor training and skill acquisition (Chuang and Hsu 2004), and through the introduction of organizational arrangements (Blomstrom ¨ and Kokko 1998; De Mello 1997). Finally, FDI contributes to enhance technology diffusion in terms of physical capital and intangible assets (marketing, licensing agreements) (Borensztein et al. 1998; De Mello 1999). It is relevant to mention that the volume and type of FDI depends on the absorptive capacity of the host country (Borensztein et al. 1998; Alfaro et al. 2010; Damijan et al. 2013). For instance, countries that do not have enough stock of human capital to manage the technology transfers, do not obtain the highest returns of FDI, hence, cannot necessarily achieve higher growth rates. There is not a consensus of whether FDI has positive, negative or null effects (direct and/or indirect) on firms’ outcomes and performance. In general, most studies focus on the macroeconomic effect of FDI or, in the case of microeconomic anal- ysis, the approach is more oriented towards productivity and technology diffusion. Hence, we cover this gap and contribute to the existing empirical literature in four ways. First, we estimate the direct effect of FDI on performance, not using the com- mon measure, which is the analysis of the Total Factor Productivity (TFP). Instead, we use Return on Assets (ROA) and gross revenues growth rate as measures for the performance and development of Ecuadorian firms. We analyze different measures of performance to get a robust and holistic evidence of the effect of FDI on profitabil- ity and economic development. By obtaining this evidence, we generate a relevant contribution on the focus FDI research should have, by determining whether the FDI should be studied on different performance measures. This study belongs to the group of studies that examines the impact of FDI on firm outcomes other than productivity. For example, Yang et al. (2017) analyze how firms’ FDI growth affect their ROA, and Reyes (2017) looks at the effect of FDI on the level of gross revenues. They find a positive effect of capital coming from abroad on firms’ performance. Second, we analyze the horizontal, backward and forward spillovers. These FDI channels of spillovers have been scarcely addressed in the literature of international business, investments and firm performance, even though it is relevant, specially in developing countries where governments tend to promote FDI because of the benefits they could have on domestic firms (Gerschewski 2013). However, there are incon- clusive findings of this effect (Gor ¨ g and Greenaway 2004); hence, it is necessary to deepen the analysis. Third, we include two different measures of FDI to analyze not only the effect of the presence of FDI at the extensive margin (i.e. with a treatment indicator) but also at the intensive margin (i.e. level of FDI). Is FDI a potential tool for boosting firm’s performance? firm level... Finally, we study Ecuador, a small open and dollarized economy, contributing to the inconclusive evidence of cross country studies. It is relevant to develop sin- gle country studies, because studies by groups of countries tend to be biased and the results are not conclusive (Wooster and Diebel 2010; Demena and van Bergeijk 2017). Ecuador is an interesting case of study for several reasons. First, the country underwent several structural institutional changes during 2007-2018 (new consti- tution, state reform, development plans, tax reform, decentralization, etc.), higher oil and other commodities prices (commodities boom) (Aray and Pacheco-Delgado 2020; Armijos et al. 2018) and these changes might drive the attention of interna- tional investors to this country. Second, even though, Ecuador’s FDI inflows as a share of GDP are approximately 2.2 percentage points (p.p), which is below the aver- age for Latin America (3.1%) , the country has experienced some periods of growth in capital inflows as a share of GDP (2008: +3.5%, 2011: +2.41% and 2018: +1.14 %) during the period 2007-2018. However, compared to neighboring countries, such as Colombia (on average 4.0%) and Peru ´ (on average 4.5%), Ecuador’s FDI inflows as a percentage of GDP are lower. In order to draw policy-relevant conclusions, it is necessary to determine whether FDI in this context had an effect on firm perfor- mance, even if it was not as large as in previous periods. Furthermore, authors such as Camacho and Bajana ˜ (2020) found different results of the effect of FDI on economic growth when comparing those neighboring countries, which supports the importance of doing a single country analysis. Additionally, those authors and Salazar (2021) demonstrate that FDI has a positive effect on economic growth of Ecuador; hence, it would be relevant to analyze if a similar positive result is obtained when analyzing firms’ performance measured as return on assets (ROA) and gross revenues growth rate, which has not being studied before in Ecuador, for the knowledge of the authors. Third, there was a shift in the actors injecting capital into the country; for instance, prior 2007 the United States and Brazil were the primary sources of FDI inflows, whereas after 2007, Europe, China and Venezuela became important sources. These particularities make it interesting to understand whether inflows of FDI during this period had any impact on firm economic performance. We use a panel dataset from the Superintendencia de Compan ˜´ ıas, Valores y Seguros (SCVS) which contains information related to amounts of investments in the creation of enterprises and capital increases, as well as financial information from firms in the formal economy. We use information from the period 2007–2018 in order to calculate the direct and indirect effect of inward FDI. Moreover, we measure FDI in two ways: a dummy variable of FDI and the total FDI net inflows divided by production (measured by sales) (Alguacil et al. 2011; Herzer et al. 2008), and their lags. Our identification strategy lies in the use of the Generalized Method of Moments (GMM) methodology for dynamic panel data that allows us to control for potential endogeneity (reverse causality issues) not only of FDI, but also of all other explanatory variables (Alguacil et al. 2011). Additionally, we include many indus- try related covariates and some macroeconomic-institutional variables to control for firms’ characteristics and the economic context. This average is obtained excluding high income countries (World Bank 2022). S. Camino-Mogro et al. Our findings indicate low and mixed direct effects of inward FDI on firm per- formance, which may be explained by profit shifting behavior among multinationals and the presence of low FDI incentives in Ecuador during the period of analysis. In addition, we find evidence suggesting the presence of 1) negative horizontal wages and gross revenues spillovers effects on gross revenues growth but positive horizon- tal gross revenues spillover effects on ROA, 2) positive backward wages spillovers effects on gross revenues when the inward FDI occurs one period before the period of analysis, and 3) negative forward wages spillover effects on gross revenues in one period after the inward FDI was received. These findings suggest that inward FDI firms’ inputs are either more expensive or more advanced than those offered by domestic firms, resulting in negative forward spillovers since domestic businesses may not have enough absorptive capacity. In other words, as Lenaerts and Merlevede (2015) points out, large foreign investors “bring their own supply chain” and so do not generate spillovers along the supply chain. Furthermore, our findings imply that foreign enterprises acquire inputs from local enterprises, allowing them to increase sales in the next period. Given the high concentration of micro and small businesses, Ecuadorian enterprises appear to be less able to deal with MNEs’ “market steal- ing” effect, which is consistent with evidence of negative forward and horizontal spillovers. The structure of this paper is as follows. Section 2 provides a brief literature review of the direct and indirect effects of the FDI inflows. Section 3 describes the overview of inward FDI in the Ecuadorian context. In Section 4, we explain the empirical strategy used to obtain the results that are exposed in Section 5. Finally, Section 6 describes the main conclusions and policy implications of the results. 2 The effects of foreign direct investment One of the main controversies on international trade literature is whether FDI enhances economic growth or not. In the case of developing countries, Camacho and Bajana ˜ (2020) find that FDI has a Granger causality effect on GDP for Ecuador and Peru, but not for Colombia. Hence, evidencing that for countries like Ecuador, the FDI has an influence on economic growth. A similar result is found by Olaya and Armijos (2017), who show that FDI has a short and long term relationship with the economic growth of the country. The overall picture of the empirical evidence on the FDI-growth relationship is offered by (Iamsiraroj and Ulubaso ˙ glu ˙ 2015)who report that, of the 108 empirical studies surveyed, 43% show a positive and signifi- cant effect, 17% a negative and significant effect and 40% a statistically insignificant effect. Besides the debate over the relationship between FDI and economic growth, it is also unclear how FDI affects local firm innovation (Jin et al. 2019), productiv- ity spillovers (Rojec and Knell 2018), efficiency of domestic firms (Gorodnichenko et al. 2014), jobs creation (Javorcik 2014), wages (Gor ¨ g and Greenaway 2004)and economic performance of firms in general (Garc´ ıa et al. 2013). According to Alfaro et al. (2004a), the positive or negative effects of inward FDI depend on the characteristics of the host country; the absorptive capacity of the host Is FDI a potential tool for boosting firm’s performance? firm level... economy plays an important role (Damijan et al. 2013). For instance, the greater the technological gap between multinational affiliates and domestic firms, the less ben- eficial FDI is for the host country (Meyer 2004). It is also important to consider the market structure or competition within different industries (Hu and Jefferson 2002), the country’s cost of production, such as, wages and transportation (Chen and Ku 2000), cultural diversity barriers (Yang et al. 2017), local financial markets status, general infrastructure, political stability and institutional quality. In the case of developing countries, the studies about the effect of FDI inflows, show mixed results. Some authors find that there is a positive effect of FDI inflows on output (see, for example, Damijan et al. 2003), while others show that FDI impact negatively to the output generation (see, for example, Sinani and Meyer 2004). 2.1 FDI and firm’s performance Many studies have found strong correlations between FDI and firm profitability. For example, (Chhibber and Majumdar 1999) suggest that this relationship has posi- tive effects. This positive effect of FDI is typically carried out by foreign firms that outperform domestic firms. In this regard, (Kneller and Pisu 2004) argue that the performance of foreign firms in terms of employment, wages, and productivity is superior to that of domestic firms. The authors also mention that foreign firms are more likely to export than other businesses, and they sell a larger share of total output abroad on average. As a result, they can transfer this knowledge to the companies in which they invest, which benefits them. However, in some circumstances the effect of FDI on firms’ outcomes tends to be negative (Garcıa et al. 2013). According to authors such as (Fotopoulos and Louri 2004), foreign presence may have a negative impact on domestically owned firms in the short run if foreign firms with lower marginal costs than domestic competi- tors can divert demand away from them. Furthermore, (Aitken and Harrison 1999) contend that, in this competitive framework, domestic firms cut production and pro- ductivity falls in the short run because their fixed costs are spread over a smaller market. Additionally, some authors such as (Turnbull et al. 2016) find no effect at all. In Table 8 we show a non-exhaustive review of the literature on the effects of FDI on firms performance variables, such as gross revenues, wages, ROA, ROE, employ- ment and productivity. Regardless of the region studied or the methodology used, the overall effect is positive in the short and long run. In Ecuador, the evidence of the effect of FDI and firm economic performance is scarce. (Vera-Gilces et al. 2019) examines this relationship in Ecuadorian firms, particularly in the manufacturing sec- tor, and find that firms that receive FDI outperform firms that do not receive FDI in terms of economic performance (TFP and size). For more information, refer to Table 1 of (Wooster and Diebel 2010). (Griffith et al. 2004) argue that multinational firms are known to be more productive than domestic firms. S. Camino-Mogro et al. 2.2 FDI spillovers Positive spillovers are associated with FDI contributions to economic development, such as knowledge transfers to local firms within and across industries, technology diffusion, demonstration effects, and labor training, all of which are important fac- tors in increasing productivity and competitiveness across firms (Demena and van Bergeijk 2017; Rojec and Knell 2018). According to (Chuang and Hsu 2004), the presence of foreign ownership has a positive and significant effect on the productivity of domestic firms. Furthermore, trade with more advanced countries allows them to gain access to new technology and information, increasing productivity and allowing them to compete in international markets. In a similar vein, (Barge-Gil et al. 2019) find evidence of a positive productivity effect from multinationals on domestic firms operating in the same industry, and when the authors examine inter-industry link- ages, they find evidence consistent with positive productivity spillovers from forward linkages (i.e. from multinational suppliers to local buyers) but negative productivity spillovers from backward linkages (i.e. from multinational buyers to local suppliers). Negative (aggregated) outcomes, on the other hand, are related to the agglomera- tion versus competition effect. This is due to the fact that domestic firms can benefit from the positive agglomeration effect of foreign multinationals via channels such as knowledge spillovers, input sharing, and labor pooling. Nevertheless, they can also suffer from the negative competition effect, losing market share that goes towards more productive multinationals (Lu et al. 2017; Demena and van Bergeijk 2017). In a short run imperfectly competitive market structure, domestic firm productivity may be reduced when gross revenues fall, causing fixed costs to be spread over fewer units; in the long run, increased competition induced by increased FDI in domestic industries may force inefficient domestic firms to exit and surviving firms to improve their performance (Hu and Jefferson 2002). In this study, we look at both horizontal and vertical spillovers (divided in back- ward and forward). Horizontal spillovers happen between FDI recipients and other local firms in the same industry sector. In general, most of the studies identify four distinct channels through which these spillovers can occur: demonstration effects, labor turnover, competition effects, and export externalities (Meyer 2004; Buckley et al. 2002). We examine horizontal spillovers in particular, taking into account the demonstration effect (learning due to proximity) and competition effects, where local firms must become more efficient to remain competitive. In the case of horizontal spillovers in developing countries, the results are mixed. There is no strong evidence of positive externalities from firms receiving FDI to other firms in the same sector (Alfaro et al. 2004b). Vertical spillovers, which can be classified as backward or for- ward, occur between firms that receive FDI and their local suppliers and customers. Findings of positive spillover effects are more likely to appear in studies with more recent data or analyses with higher degrees of freedom (Wooster and Diebel 2010). Negative spillover effects are more commonly documented in estimations that use output share as a measure of foreign presence or use firm-level data rather than industry-level data (Wooster and Diebel 2010). Is FDI a potential tool for boosting firm’s performance? firm level... Backward spillovers are caused by interactions between foreign affiliates and sup- pliers, whereas forward linkages are caused by contacts with local customers. The literature on vertical spillovers in developing countries is limited, although it is more conclusive than studies on horizontal spillovers. For instance, Kugler (2006) finds positive vertical spillovers, however they find less stronger evidence regarding hori- zontal spillovers. Furthermore, Iyer (2009) finds positive vertical spillovers, but also horizontal spillovers for the Indian case. These results are mixed in terms of the direction of the effects (negative or positive). In Table 9 we show a non-exhaustive literature review of empirical research that analyzes FDI spillover effects on different countries. Overall, the multiple results of FDI spillovers effects have been inconclusive, because of: (1) different ways of measurement used, (2) empirical methodologies employed, (3) heterogene- ity of domestic and foreign firms (particularly related to the absorptive capacity and potential for spillovers), (3) difficulties distinguishing between unintentional and intentional knowledge diffusion, and (4) competition effects (Orlic et al. 2018). Also, the lack of evidence on FDI spillovers are both substantive and methodological. Sub- stantive reasons suggest that there are no (or even negative) spillovers, and that the necessary preconditions for spillovers are often missing in host countries. Method- ological reasons are related to databases being of insufficient quality or not detailed enough, and to inadequate econometric methods used (Rojec and Knell 2018). 3 Overview of FDI in Ecuador during 2007–2018 The FDI comes from non-Ecuadorian companies or individuals who invest in the formation of new businesses or the expansion of existing ones. According to Camino- Mogro et al. (2018b), the FDI that comes from the creation of companies is only 4.57% of the total FDI, whereas FDI that comes from capital increases of pre-existing firms is much larger (95.4% of the FDI). This means that almost all the FDI comes from capital increase of pre-existing firms, which is consistent with the businesses’ investment common strategy. During the government of the period between 2007 and 2017 some Incentive Laws were established to attract FDI to preserve the dollar in the economy to main- tain domestic liquidity and avoid problems of payment balance. Additionally, during the the first year of the government of the period 2017–2021, the Organic Law for Productive Promotion, Investment Attraction, Job Creation and Stability and Fiscal Equilibrium was established to boost the economy, promote investment and employment, as well as achieve a long-term fiscal sustainability. However, in both cases, the results of these laws were not as expected since their positive effect occurred only in the same year of implementation and after that the FDI decreased. According to the SCVS, the average of inward FDI of the last 12 years of all sectors in the country is only 614 million USD. In addition, Fig. 1 in Appendix For a more detailed literature review see: (Demena and van Bergeijk 2017; Rojec and Knell 2018). For more information on these laws see Table 10 in Appendix. S. Camino-Mogro et al. shows that during 2007-2018, the FDI has three large falls on its growth; one in 2009, which could have happened because of the global financial crisis. Another decrease is between 2011 and 2012, which could be explained by the referendum of the year 2011 where there was established a new way of criminalization, which is defined as the non-affiliation of workers in relation to dependency to the Ecuadorian Social Security Institute. This is consistent with what Gross and Ryan (2008) explained about the effect of employment protection laws for regular and temporary employ- ment in Japanese FDI to Europe in the late 1980s and 1990s, where they found that job protection does matter in the election of location of Japanese investors and has an adverse effect on the size of employment related to FDI. The other great decrease was in 2016, which could be explained because of the decrease of the price of oil and the earthquake on April of 2016. After these three decreases there are also three consid- erably large peaks, which show a relevant increase of FDI growth after a pronounced decrease. Moreover, Fig. 1 in Appendix analyzes the variation of FDI, ROA, gross revenues and wages growth compared to each other and we evidence that there is a positive relationship between ROA and FDI growth, this is that FDI fluctuates similarly to the firms profitability, except in the first 4 years. Something remarkable in the Ecuado- rian context is that this country is mainly engaged in mining and quarrying sector, which is constituted within the branch of natural resources. This branch includes the activities of agriculture, livestock, forestry and fishing, exploitation of mines and quarries, and electricity supply and water supply. As it is shown in Fig. 2 in Appendix, the natural resources sector and manufacturing sector are the ones that receive more FDI during all the period of analysis. In 2016, the mining and oil exploitation sector received more than 50% of the country’s FDI. Camino-Mogro et al. (2018b) found that after 2016, the participation of natural resources in FDI diminished with the fall of the price of oil, which positions the manufacturing sector as the one with more participation of FDI in 2017. Furthermore, in the Ecuadorian economy, the group of large firms is composed for those who capture the largest amount of FDI (see Fig. 3 in Appendix), this is consis- tent with (Camino-Mogro et al. 2018b) and Vera-Gilces et al. (2019) that found that large size of the company allows the use of production scales, recruitment of qual- ified staff and continuous improvements in their processes, so that these companies become attractive to investors. Finally, Fig. 4 in Appendix shows the participation of FDI by country of origin; in particular, in the three years showed in the figure, United Additionally, in Fig. 2, one of the sectors with greatest weight is services but this is because it includes approximately 14 sectors. The group services includes activities such as wholesale and retail trade (one of the biggest ones), transport and storage, financial and insurance activities, administration and defense, among others. Each of the sectors separately represent much less than the manufacturing, natural resources and construction sector. It is important to mention that the construction sector also includes the real state services. Firm size is defined in the Organic Code of Production, Trade and Investment of Ecuador: Microenter- prises: Between 1 to 9 workers or gross revenue less than $100,000.0. Small firms: Between 10 to 49 workers or gross revenue between $100,001.0 and $1,000,000.0. Medium firms: Between 50 to 199 work- ers or gross revenue between $1,000,001.0 and $5,000.000.0. Large firms: More than 200 workers or revenue above $5,000,001.0. Always prevailing gross revenue over the number of workers. Is FDI a potential tool for boosting firm’s performance? firm level... States (U.S) is always on the top five countries that invest in Ecuador, but also we show that Panama and England are countries with important FDI participation. Berg (2000) argues that one of the advantages of dollarization, is that it lowers transaction costs with countries that have the same currency and assures stability, which might improve the levels of investment. However, we also show in each year of analysis a large participation of tax heavens such as: Panama, Bahamas, British Virgin Islands and Uruguay. 4 Design and empirical strategy Our empirical strategy is justified by the existing theory on the effects of foreign ownership on productivity-enhancing investment in a firm. The theoretical rationale that motivates our empirical analysis is based on (Guadalupe et al. 2012)and (Girma et al. 2015). In this vein, foreign firms perform FDIs if the gains from doing so are larger than zero: ∗ ∗F ∗D FDI = α(V − V ) − K ≥0(1) it i i ∗F ∗D where (V − V ) is the value created by the FDI, α are the bargaining weights of i i the foreign and domestic partners in the transaction and K is the fixed search cost of acquiring the domestic firm. In this model, the latent variable FDI determines the it treatment that consists on receiving FDI inflows; it is equal to 1 if FDI ≥ 0and it it equal to 0 otherwise. We can express FDI as a function of the initial productivity it level of the company (ω ), year fixed effects (λ ) and other firm time-varying controls i t (X ) : it FDI = f(ω ,λ ,X ) (2) it i t it The performance outcome of the domestic firm that receives foreign capitals is determined by the following empirical model: Perf ormance = α FDI + X + λ + γ + μ (3) it 1 it it t i it In this model the productivity-enhancing performance is a function of FDI ,firm it time varying control variables, year fixed effects as well as firm fixed effects. The initial level of productivity that affects performance directly (not necessarily through the FDI treatment) is captured by the firm fixed effect (γ ). By including firm it i fixed effects, we control for time-invariant firm characteristics. Since firms evolve constantly, it is important to account for lagged firm characteristics which could drive selection into treatment and that can affect future performance related decisions. The extended model with lagged values of performance and FDI is described in Section 4.2.1. The effect described above is the direct effect of FDI. However, the productivity- enhancing performance can be also affected by both the absorptive capacity to absorb spillovers from foreign firms and the number of foreign-owned firms in a given sec- tor; the interaction of these two components captures the indirect or spillover effects For instance, X includes the following variables: micro , HHI , the lagged performance and lagged it it it FDI decisions. it S. Camino-Mogro et al. (Girma 2005). On one side, there can be positive learning effects that are increas- ing on the number of foreign owned firms within a particular cluster. For instance, if we consider the process of workers reallocation from foreign owned firms to domes- tic ones, the greater the number of foreign-owned firms, the greater the likelihood of hiring a more highly trained worker, which will result in lower costs associated with implementing a new technology that affects performance. On the other side, there may be negative spillovers because of competition effects. For example, foreign firms may have lower marginal costs to produce due to a firm-specific advantage, allowing them to steal market share from domestic firms; this may force domes- tic firms to increase average production costs in response to a decline in demand, resulting in lower profitability. Furthermore, spillovers can occur within the same industry (horizontal spillovers) but they might also occur in a different industry (ver- tical spillovers); this depends on the level of backward and forward linkages that the firm may have with other firms in other industries. 4.1 Data This study uses official administrative information provided by the Superintendencia de Compan ˜´ ıas, Valores y Seguros (SCVS) and the Central Bank of Ecuador (BCE). We use an unbalanced panel data set at the firm level containing annual information from 2007 to 2018. There are 153,062 observations and 27,793 firms in the sample. The number of firms differs from the total population of firms because we debug the database. First, we eliminate firms that report values of zero on sales, assets, employees and wages, because this information is not consistent with the normal operation of the enterprises. Second, we do not consider those firms that have a liquidity ratio lower than zero and/or have a value of investment lower than zero. Third, we keep firms that have at least three years of reported information on balance sheets. Fourth, we eliminate extreme values of ROA and equity. We use three different sources to construct the database for this study: two from the SCVS and one from the BCE. The micro-level information was obtained from two data sets provided by the SCVS: 1) the financial statements, and 2) the invest- ment data sheets. We also use 3) the database from the Central Bank of Ecuador (BCE) for our macro-level data. The databases from the SCVS have complete infor- mation of the firms’ characteristics, performance, and investment behaviour. The financial statements are composed by variables such as total assets, total equity, gross revenues, total income, exports, net profits, wages, among others. It also has some qualitative variables such as name and type of the firm, country, city, and name of the economic sector each firm belongs to (according to the classification of the Inter- national Standard Industrial Classification (ISIC) revision 4). The investment data sheets have information regarding the name of the shareholders, the country of ori- gin of the investment, the type of investment (if it is foreign or domestic), the amount of capital allocation, and other characteristics of the investment. Finally, the BCE (Camino-Mogro 2021; Camino-Mogro et al. 2018a) use a similar criteria to debug the SCVS data to estimate a production function. Is FDI a potential tool for boosting firm’s performance? firm level... database has information about the macroeconomic context of the country. It includes variables such as inflation, GDP growth, among others. Table 1 shows descriptive statistics of our sample by sector during the period 2007 – 2018. The services sector includes approximately seven service-related categories, with wholesale and retail trade being the largest. The service sector is composed by 18,607 firms, from which only 1.48 % receive FDI and 37.90 % of the total amount of investment of this sector corresponds to FDI during 2007-2018. Moreover, the manufacturing sector with 3,252 firms represents 13.38% of the observations in the sample. The 3.35% of these firms receive FDI during the period of analysis, whereas 48.61% of this sector’s total amount of investment corresponds to FDI. The natural resources sector is the third sector in order of participation of firms in the total sample (10.89%). Only 1.89% of the firms of this sector receive FDI and 45.82% of the investment comes from FDI during the period 2007-2018 . Finally, the construction sector represents 9.53% of the sample (3,151 firms), and has the lowest amount of FDI during the period 2007-2018. Approximately, 0.73% of the firms in the sample receive FDI, and the foreign investment represents 17.47% of the total investment made by this sector. This fact is related with the contraction of the sector since 2014, possibly because of different regulations imposed such as the so-called “Real State Capital Gains Law” and “Inheritance Law”. 4.1.1 Variables description The variables that we use for the analysis are described in detail in Appendix A.The dependent variables are firm performance measures: ROA to analyze the profitability of the firm and the gross revenue growth to examine if the FDI has an effect on firms’ output. Given that the purpose of this study is to determine whether FDI is a potential tool for enhancing firm performance, the main variables of interest are FDI measured as an indicator variable equal to one if a firm i at time t receives FDI, and zero otherwise (extensive margin measure) and the amount of FDI as a share of total gross revenues (intensive margin measure). Furthermore, we use three FDI spillover measures as variables of interest that we explain in detail in Section 4.2.2. The control variables that we add are the following: Micro-level variables. We include firms’ size because this variable is likely related with the performance of the firm. Moreover, we use the liquidity ratio as a control because it measures the company’s ability to convert assets into cash in the short-run and to pay debt obligations. A greater liquidity ratio could pos- itively affect the performance of the firm. Additionally, we add the debt ratio, which measures the leverage of the firm. We include exports, as an indicator vari- able that captures whether the firm exports at time t or not, and is related with the evolution of international gross revenues and exposure of local firms. More- over, we include the absorptive capacity (ABS) of the firm which is calculated Ecuador is known as an oil producer country. Also, it is specialized in production of primary commodi- ties, such as, bananas, flowers, shrimp, among others (Camino-Mogro et al. 2016). The TFP estimation was made following the (Levinsohn and Petrin 2003) methodology. See Appendix A for further details. S. Camino-Mogro et al. Table 1 Descriptive Statistics by Sector Sector Observations Number of firms FDI Frequency Percentage Frequency Percentage Frequency Investment (%) Share Natural Resources 16,674 10.89 % 2,913 10.43 % 1.89 % 45.82 % Manufacturing 20,479 13.38 % 3,252 11.65 % 3.35 % 48.61 % Construction 14,585 9.53 % 3,151 11.28 % 0.73 % 17.47 % Services 101,324 66.20 % 18,607 66.64 % 1.48 % 37.90 % All sectors 153,062 100.00 % 27,923 100.00 % 1.70 % 40.43 % Note: Natural Resources ( A. Agriculture, forestry and fishing; B. Mining and quarrying; D. Electricity, gas, steam and air conditioning supply E. water supply and waste management); Construction (F. Con- struction; L.real state services); Services ( Includes all the other services like the wholesale and retail trade which is the sector G ; H.transport and storage; among others in the CIIU Rev 4.0) The number of firms in all sectors is not equal to the total number of firms in the sample, because some firms change from sector during the period 2007 - 2018. Source: Authors’ elaboration. following (Girma 2005) and (Lenaerts and Merlevede 2015), after the estimation of each firm Total Factor Productivity (TFP). Ln(T F P ) i,t −1 ABS = (4) it Ln(T F P ) j,t −1 The absorptive capacity is the ratio between the TFP (in logs) of the firm i during the previous period t −1 and the maximum TFP value in sector j in period t − 1. Macro-level variables. For the estimation of spillovers by economic sector, we use some macroeconomic variables that might affect directly the firm’s perfor- mance: GDP growth rate and inflation. These macroeconomic characteristics are representative indicators of the economic activity in the country. It is important to include these variables to analyze the FDI spillover effect. The macroeconomic conditions play an important role on firms’ performance and FDI attraction (Herzer et al. 2008; Alguacil et al. 2011). For instance, a country with high infla- tion might increase its uncertainty level, hence lead to an unfavourable climate for firms. The maximum level of TFP for each sector was obtained considering the average between the 75th and 99th percentile of the TFP distribution for each year. This strategy is adopted to avoid the presence of outliers in the denominator. Macroeconomic variables are needed when we run a regression for each economic sector because we cannot introduce time indicators since the horizontal spillovers vary only across time within each economic sector. Is FDI a potential tool for boosting firm’s performance? firm level... Concentration: We include the Herfindahl-Hirschman Index (HHI) to control for the degree of concentration in an economic sector. We build this index con- sidering 2 digits sectors from the ISIC Rev 4.0 categories. According to the U.S Department of Justice and the Federal Trade Commission 1997 the market con- centration is a function of the number of firms and their market share within a sector. This indicator is computed by summing up the squared market shares by sector (in our case 2-digits sector code). The market concentration is divided by the Agency in three regions of analysis: unconcentrated when the HHI is below 1000, moderately concentrated when the HHI is between 1000 and 1800 and highly concentrated when the HHI is above 1800. Table 2 shows some descriptive statistics of the micro-economic variables we use in our analysis. We calculate mean differences between the sub sample of firms that receive FDI and firms that do not, and test for its significance using a T-test. The results show that firms that do not receive FDI have on average a significant higher performance in terms of ROA than the ones that receive FDI. In contrast, firms with FDI have significantly higher gross revenues than the other firms. However, it is important to point out that this test does not consider the dynamics of this variable over time. Furthermore, we find that firms that receive FDI have on average higher total wages from 2007 to 2018 than firms that do not. These results are consistent with the findings of (Conyon et al. 2003), who study the effect of foreign investment on the productivity and salaries in UK companies. They show that FDI firms pay employees 3.4% more than domestic firms. This difference is attributed to technology transfers and a good labor environment, which improves company’s performance and productivity levels. Moreover, we find that firms with FDI show a significantly lower debt ratio than firms without FDI. This preliminary result gives some intuition about how firms with FDI prefer to finance a higher share of their assets via equity. In terms of participation in international markets, we find that firms that receive FDI have more participation: 35% of the enterprises with FDI export compared to 9% of the firms without FDI. Finally, the absorptive capacity (ABS) is higher for firms with inwards FDI compared to the firms that do not receive FDI. 4.2 Identification and Methodology Before describing the econometric approach that we use, we evaluate the correlation among the variables that we include later in our model. Table 12 in Appendix, shows the correlation matrix between the variables included for the analysis of FDI and performances as well as for the analysis of horizontal and vertical spillovers. Overall, the correlation between the independent variables is low. The highest cor- relation coefficient that we find occurs between inflation and GDP growth (0.48). This preliminary relationship found is consistent with the idea that countries with low initial levels of inflation (such as the Ecuadorian economy for being a dollarized S. Camino-Mogro et al. Table 2 Mean differences between firms with FDI and without FDI Variables All firms With FDI Without FDI Difference P-value ∗∗∗ ROA 0.10 0.09 0.10 -0.01 0.00 (0.00) (0.00) (0.00) ∗∗∗ Gross Revenues (Thousands 4,875.67 35,637.68 4,343.48 31,294.21 0.00 of USD) (78.35) (2,283.28) (68.43) Gross Revenues Growth Rate 42.89 45.68 42.85 2.83 0.58 (In percentage % ) (0.62) (5.26) (0.62) ∗∗∗ Wages (Thousands of USD) 454.62 2,827.92 413.57 2,414.36 0.00 (5.44) (170.06) (4.62) ∗∗∗ TFP 1.94 2.03 1.94 0.09 0.00 (0.00) (0.00) (0.00) Liquidity ratio 3.25 3.51 3.25 0.27 0.81 (0.1456) ( 1.15) ( 0.15) ∗∗∗ Debt ratio 0.64 0.62 0.64 -0.02 0.00 (0.00) (0.00) (0.00) ∗∗∗ Exporting firms 0.09 0.35 0.09 0.27 0.00 (0.00) (0.01) (0.00) ∗∗∗ ABS -0.04 0.04 -0.04 0.08 0.00 (0.00) (0.00) (0.00) ∗∗∗ HHI 5.67 5.89 5.67 0.22 0.00 (0.00) (0.01) (0.00) FDI (Thousands of USD) 1,473.18 (8,442.11) FDI Share 0.58 (0.31) ∗ ∗∗ ∗∗∗ Notes: p< 0.1, p< 0.05, p< 0.01. All variables are in logs, except for Gross Revenues, Gross Revenues Growth Rate, Wages, FDI and FDI share. Source: Authors’ elaboration. economy) relate positively with growth rates. (Bullard and Keating 1995)findthat increases in long run inflation have positive effect on growth when countries have sufficiently low inflation rates. In summary, the correlation between micro and macro economic variables is weak. This analysis is relevant to show that the variables we use in our empirical model, a priori, do not suffer from multicollinearity issues. In the next subsection we detail the procedures used in the estimation of our main findings, which is divided into two parts: first, we study the relationship between FDI and firms’ performance (direct effects), having three different measures of per- formance (ROA, gross revenues and gross revenues growth rate) but also studying Is FDI a potential tool for boosting firm’s performance? firm level... two different measures of FDI (and indicator of FDI treatment and FDI as a share of sales); second, we analyze whether there are FDI spillovers (indirect effects) in the whole economy and, in particular, within different economic sectors, during the period 2007-2018. For this, we analyze horizontal spillovers and two types of vertical spillovers: backwards and forwards spillovers. 4.2.1 FDI and firms’ performance In order to evaluate if there is a direct FDI effect on firms’ performance, first, we conduct an empirical analysis regressing the FDI as an indicator variable (exten- sive margin) on three different measures of performance (ROA, gross revenues and gross revenues growth rate) controlling for firms’ characteristics such as: absorptive capacity (ABS), liquidity ratio, debt ratio and an indicator for exporting firms. We also control for market competition by introducing the Herfindahl-Hirschman Index (HHI). We include year fixed effects to control for possible macroeconomics effects, and economic sector and firm size indicator variables to control for possible microe- conomic effects. The same regression is also estimated using the share of inward FDI from total sales (intensive margin)offirm i in year t and maintaining the same con- trols mentioned above. To carry out this analysis, we estimate the following general specification: Perf ormance = η Perf ormance + α FDI + α FDI it l i,t −l 1 it 2 i,t −1 l=1 + β micro + τ HHI + λ + γ + μ (5) k kit it t i it where Perf ormance of firm i at time t is our dependant variable. FDI is our vari- able of interest. FDI as a treatment indicator takes the value of 1 if a firm i receive foreign direct investment in year t , and 0 otherwise. FDI at the intensive margin corresponds to net FDI inflows divided by gross revenues (Y)offirm i at year t . Likewise, we include their lagged values in order to capture the dynamics of FDI over time. Micro is a set of covariates that accounts for financial and operational specific characteristics of firm i reportedbyyear t : we include liquidity ratio, debt ratio, exports, firm size, and absorptive capacity (ABS). We also include year dum- mies, λ , in order to control for the unobserved heterogeneity over time (i.e: related to macroeconomic conditions), and the individual firm fixed effect, γ , which accounts for the unobserved heterogeneity among firms that is constant across the period of analysis, treating in some degree, possible endogeneity issues. With the aim of estimating the effect of FDI on different performance measures, coping with some identification issues, such as, endogeneity, autocorrelation and heteroskedasticity, and also considering that our panel has relatively small “T” and large “N”, we employ the Difference and System Generalized Method of Moments (GMM) for dynamic panel data. This method was developed by (Holtz-Eakin et al. S. Camino-Mogro et al. 1988), (Arellano and Bond 1991), (Arellano and Bover 1995), and (Blundell and Bond 1998). We estimate Eq. 5, using the econometric procedure mentioned above, considering the past behavior of firms’ performance. In this sense, we include the first and second lags (in the case of gross revenues and gross revenues growth rate) of performance indicators in the set of independent variables. This methodology allows us to control for potential endogeneity issues not only related to the FDI variables, but also from other explanatory endogenous variables such as the dummy of exports and ABS of the firm. The endogeneity related to the FDI variable may arise in two cases. First, FDI allocation might occur, specially in firms with higher profitability levels, resulting in reverse causality; and second, local firms investment decisions in new assets are related to the firms’ output and profit levels, which subsequently might be affected by investment rates (Sinani and Meyer 2004). In order to mitigate this issue to some extent, we employ lagged values of the two FDI variables of interest as instruments and also incorporate them into our identification equation. Furthermore, we overcome the autocorrelation issues present in the idiosyncratic error by using a dynamic panel data estimator and including time dummies, thereby ensuring autocorrelation within firms, but not between them. In our results, we apply the Arellano-Bond test for autocorrelation in order to test the validity of the moment conditions used in the system GMM; we also present the Hansen test for joint validity of the full instrument set. It is important to point out, as (Roodman 2009) mentions, that one of the draw- backs of this type of econometric approaches is that they can become complicated to compute and can easily generate invalid estimates. However, we obtain robust esti- mators controlling for the number of instruments and taking into account the design and limitations of our identification. From Eq. 5, α and α constitute our main coefficients of interest. They capture 1 2 how the firms performance varies with inward FDI. Some evidence from develop- ing countries suggest that these coefficients should be positive and significant in our case, given that Ecuador is a developing economy that lacks sufficient technology and innovative production methods. The FDI could help to solve this problem as it contributes with new technology, know-how and also helps to finance resources that improve the efficiency and production of domestic firms. In addition, foreign par- ticipation reduces the financial dependence of the local firms with the government. However, according to what we described in section 2, results are mixed, and we could find no significant effects or even negative coefficients. Positive coefficients would indicate that the inward FDI is beneficial for local firms; nevertheless, no sig- nificant coefficients would suggest that the FDI has no effect, and moreover, negative coefficients would imply that FDI is in fact harming on average firms’ performance. This method is programmed in a written STATA command (xtabond 2) introduced by (Roodman 2009). Only for the ROA indicator, the FDI share from sales is not treated as endogenous in the model. Is FDI a potential tool for boosting firm’s performance? firm level... 4.2.2 FDI spillovers In this subsection, we evaluate the indirect effect of FDI on performance, better known as spillover effects that inward FDI may cause on domestic firms. The objec- tive of this variable is to capture the relevance that the firms that receive FDI have in a given sector in terms of boosting performance indicators of other firms. In this sense, we analyze two alternatives of spillovers: wages spillovers and gross revenues spillovers. Moreover, we evaluate different types of spillovers, which correspond to horizontal spillovers, backward spillovers and forward spillovers. In this line, hori- zontal spillovers are evaluated following (Sinani and Meyer 2004) and (Damijan et al. 2013): P P f,t f,t j j Horizontal = = (6) jt P + P P f,t d,t t j j j where Horizontal in sector j at time t , is the ratio between: the sum of P ,which can be either gross revenues or wages, for the firms that receive FDI, in sector j at each period t . Moreover, the denominator P is the sum of all the firm’s gross revenues or wages by sector j at each year t ; hence, this sum is composed of gross revenues or wages from domestic and foreign firms. With the horizontal spillovers we capture the effect of inward FDI on the firms’ performance within the same industry. However, horizontal spillovers are not the only ones that inward FDI can generate. Also, there are vertical spillovers that occur given the backward and forward link- ages between firms of different industries. The linkages between domestic firms and foreign ownership enterprises that can act as buyers or suppliers may have a distinct effect on the average indicators of performance. The linkages between industries are approximated using the national components from the “Input-Output Supply and Use Tables” that the Central Bank of Ecuador offers annually. We calculate the tech- nical coefficients without considering the share of imports, that is, using only the national component of the matrix, which provides the national share of output that each industry supplies as input to another industry. Following the existing literature (see, for example: Girma et al. 2008; Lenaerts and Merlevede 2015) we construct the backward and forward spillovers as follows: Backward = δ Horizontal for h = j (7) jt hj t ht Forward = π Horizontal for k = j (8) jt kj t kt where in Eq. 7, δ represents the proportion of sector h output that is provided as hj t an input for sector j . Whereas in Eq. 8, π is the share of outcome of sector j that kj t is supplied as an input for sector k. π captures the downstream linkages across kj t See: https://contenido.bce.fin.ec/documentos/PublicacionesNotas/Catalogo/CuentasNacionales/Anuales/ Dolares/MenuMatrizInsumoProducto.htm S. Camino-Mogro et al. firms that have inward FDI in a certain economic sector, whereas δ captures the hj t upstream linkages across firms. In addition, we analyze the inward FDI spillover contribution on each firm’s performance indicator using the following baseline equation, estimated through the difference and system GMM method developed by (Blundell and Bond 1998): Perf ormance = η Perf ormance + λ Spillover it l i,t −l h j,t l h + θ Spillover + β micro k j,t −1 k kit k k +τ HHI + ν + ζ + it t i it (9) Moreover, we include the variable Spillover , which is of three types (Horizontal, Backward and Forward), at period t and its lag at period t − 1, similarly to (Sinani and Meyer 2004). In this sense, we capture the lagged effect of FDI inflows on per- formance, and understand the differences in the timing of FDI inflows, accounting for possible autocorrelation issues. We run a different regression for each Perf ormance indicator and each alterna- tive of spillovers: wage spillovers and gross revenues spillovers. We estimate Eq. 9 for all the sample of firms, including time fixed effects ν and microeconomic con- trols that include firm size and economic sector dummies, to evaluate if there exists on average a spillover effect in the whole economy. Likewise, we estimate Eq. 9 for each economic sector j separately, in order to analyze the FDI spillover effect on performance within each economic activity. In this part, we did not include time fixed effects ν , so we could test the effect of FDI spillovers on performance by sector given that the Horizontal spillovers are generated by economic sector and vary only across time. However, instead of ν and in order to capture the effect of some macroeconomic conditions, we include GDP growth rate and inflation as controls. From Eq. 9, λ and θ constitute our main coefficients of interest. They mea- h k sure how a firm’s performance may vary when there is a spillover effect. We expect these coefficients to be positive and significant, in particular the lag of the spillover (θ ), given that when foreign firms bring knowledge and technology to the coun- try, there is an effect of competition with domestic firms, forcing them to modernize their production processes and try to adopt new technologies and even improve them. A non-significant coefficient would indicate that the presence of FDI in an specific sector j does not have a strong positive or negative effects on domestic firm’s per- formance belonging to this sector. A negative coefficient, on the other hand, would show a harmful effect from the sector FDI spillover to the firms’ performance within the sector. This can happen when firms that receive FDI compete aggressively with firms that do not receive FDI which usually take longer to catch up in terms of market share, given that are, on average, unable to adopt foreign technology immediately. Is FDI a potential tool for boosting firm’s performance? firm level... 5Mainfindings 5.1 Direct effects of FDI on firms’ performance In this section, we present the results regarding the direct effect of FDI on firm’s performance in Ecuador, using three different measures of performance: ROA, gross revenues and gross revenues growth rate. Table 3 summarizes the results for the total sample using Difference and System GMM two-step estimators with robust standard Table 3 Difference and System GMM estimations: FDI effect on performance ROA Gross Revenues Gross Revenues Growth (1) (2) (3) (4) (5) (6) ∗∗∗ ∗∗∗ L.ROA 0.119 0.108 (0.017) (0.019) ∗∗∗ ∗∗∗ L.Gross revenues 0.386 0.389 (0.075) (0.074) ∗ ∗ L2.Gross revenues 0.024 0.024 (0.014) (0.014) ∗∗∗ ∗∗∗ L. Gross Revenues GR -0.085 -0.082 (0.019) (0.019) ∗∗∗ ∗∗ L2. Gross Revenues GR 0.008 0.008 (0.003) (0.003) ∗∗ ∗ Liquidity 0.654 −0.169 −0.139 -0.135 −0.457 −0.404 (0.687) (0.888) (0.118) (0.117) (0.189) (0.227) ∗ ∗ Debt Ratio 1.365 −0.854 0.418 0.431 0.203 0.283 (1.138) (1.728) (0.231) (0.230) (0.317) (0.356) ∗ ∗∗ D Export 0.331 −0.346 0.010 0.010 0.092 0.093 (0.494) (0.764) (0.028) (0.027) (0.047) (0.047) ∗∗ ∗ D FDI −3.601 −0.109 0.018 (1.596) (0.059) (0.373) L.D FDI 0.039 −0.041 0.097 (0.130) (0.034) (0.052) FDI Share 0.577 0.020 -0.030 (0.662) (0.010) (0.087) L.FDI Share −0.459 0.0073 −0.023 (0.569) (0.006) (0.015) ∗ ∗∗ ∗∗ HHI 0.267 −0.110 −0.045 −0.043 0.063 0.068 (0.149) (0.207) (0.043) (0.043) (0.031) (0.033) ABS 2.406 6.513 0.495 0.515 0.129 -0.041 (1.829) (5.989) (0.441) (0.438) (0.751) (1.527) S. Camino-Mogro et al. Table 3 (continued) ROA Gross Revenues Gross Revenues Growth (1) (2) (3) (4) (5) (6) Hansen Test[P-Value] 0.242 0.155 0.381 0.373 0.424 0.336 AR(1)[P-value] 0.000 0.000 0.000 0.000 0.000 0.000 AR(2)[P-value] 0.963 0.729 0.421 0.463 0.042 0.040 AR(3)[P-value] 0.956 0.652 0.418 0.404 0.971 0.982 Instruments 53536161 6565 Observations 86,119 86,119 52,087 52,087 35,970 35,970 ∗ ∗∗ ∗∗∗ Notes: Robust standard errors in parentheses, clustered by firm. p< 0.1, p< 0.05, p< 0.01. Controls such as year, sector and size dummy variables are included. The Constant is included in all the specifications. All the continuous variables are in logs. First, second and third order Autocorrelation Test and Hansen Test P-values are reported to test the robustness of the DIFF-SYS GMM model. The following variables are treated as endogenous: first (and second) lags of the performance variables, ABS, D FDI, FDI Share (except for ROA) and exports dummy. We use the “collapse” option in order to limit instruments proliferation. Moreover we use the two-step procedure with the Windmeijer correction introducing the option robust. errors, by applying (Windmeijer 2005) correction. We also include time, size and sector dummies in order to control for intrinsic characteristics of the firm. Columns (1), (3) and (5) show the direct effect of FDI as an indicator variable on firms’ performance. The Hansen test of validity of instruments and the auto correla- tion test are also reported in Table 3. We treat the first (and second lag in the case of gross revenues and gross revenues growth rate) lag of the performance variables and FDI as endogenous and use their lags as instruments. Moreover, we also treat ABS and exports status as endogenous. The inclusion of the performance variables lags in the identification aim to control for the dynamic component of the relation tested, given the short run persistence nature of this variable. A priori by looking at the descriptive statistics of Table Eq. 2, we can observe that firms with FDI seem on average to have less ROA levels than firms that do not have FDI inflows in the same year. This idea is confirmed by the empirical results obtained in our estimations. When controlling for the dynamics of the performance variables and some endogeneity issues, we find that there is a statistical significant (at 5% level of significance) effect of FDI inflows when accounting for FDI in period t but not in period t − 1 in terms of ROA and gross revenues. On average, a firm that has inward FDI in period t has a ROA 3.6% lower than the ROA in the case of domestic firms in the same period of analysis. However, the effect on gross revenues is less stronger and more mixed given that we find a significant effect but only at 10% level of confidence. On average firms with inward FDI have 0.11% lower gross revenues in the same period of the investment, but have 0.10% higher gross revenues growth rate in the period after receiving the investment. This last result, suggests that firms that receive FDI do not necessarily show grater levels of sales in the short run but on Is FDI a potential tool for boosting firm’s performance? firm level... average their growth rate is higher compared to domestic firms (at least at 10% level of confidence). In Columns (2), (4) and (6) we examine whether the amount of inward FDI as a share of total income obtained in a given year (an intensive margin measure of FDI) has an effect on performance. In this sense, we find that in terms of ROA and gross revenues growth rate, there is no significant effect founded; nevertheless, when we observe Column (4) there is a slightly significant effect (at 10% level of confidence) in the generations of sales. In other words, an increase of 10% in the amount of FDI received by the firm as a share of total income, relates on average to an increase of 0.2% on its gross revenues in the same period of the investment. Based on this evidence, we can deduce that there are mixed indications of a direct effect of FDI measure as discrete and continuous variable. On the one hand, we find a negative effect of inward FDI on ROA and gross revenues, but not significant effect on gross revenues growth at time t . However, there is significant positive effect on gross revenues growth (at 10% level of confidence) of inward FDI made at time t − 1. On the other hand, the FDI share variable is only statistically significant and positive on the effect of gross revenues. This could happen because firms that receive FDI do not have the sufficient absorptive capacity (ABS) to transform immediately the investments in better performance indicators; as we show in Table 3, ABS in firms with FDI is positive but not statistically significant when compared to firms without FDI. 5.2 FDI Spillover effect on performance This subsection shows the results of the existence of spillover effects related to FDI inflows on average and by economic sectors. We focus our analysis on three types of spillovers: horizontal, forward and backward spillovers. Furthermore, we look at two alternatives of spillovers: wages spillovers and gross revenues spillovers. Table 4 shows the average effect of FDI Spillovers on ROA, gross revenues and gross revenues growth rates controlling for economic sectors, time and firms’ size. In Columns (1) and (2) we analyze ROA as a performance measure and find no evidence of wages spillover effect but significant positive evidence (at 10% level of confidence) of horizontal gross revenues spillovers when we analyze the whole economy. In Columns (3) and (4) of Table 4 we also analyze Gross Revenues as a perfor- mance measure and find evidence of wage positive forward spillovers in the economy as a whole, when studying the performance measure at the same period that the FDI was received. However, there are negative forward spillovers from inward FDI firms at the period t − 1, which suggest that on average the inputs offered by firms with inward FDI are either more expensive or too technological advanced for local firms (Smarzynska Javorcik 2004); this result is somehow mixed given that is significant at a 10% level of confidence and is in line with a not significant coefficient of the absorptive capacity in Column (3). Moreover, we find positive backwards spillovers when the inward FDI was obtained a period before the one of analysis. This suggests that foreign firms that have higher wages buy inputs to local firms, that on average S. Camino-Mogro et al. Table 4 Difference and System GMM estimations: FDI spillover effect on performance indicators ROA Gross Revenues Gross Revenues Growth (1) (2) (3) (4) (5) (6) ∗∗∗ ∗∗∗ L.ROA 0.144 0.135 (0.014) (0.011) ∗∗∗ ∗∗∗ L.Gross Revenues 0.326 0.424 (0.101) (0.095) ∗∗∗ ∗∗∗ L. Gross Revenues GR 0.021 0.020 (0.003) (0.003) ∗∗∗ ∗∗ ∗ ∗∗∗ ∗∗ Liquidity 2.331 1.567 −0.279 −0.103 −0.638 −0.551 (0.875) (0.712) (0.155) (0.159) (0.240) (0.231) ∗∗ ∗∗ ∗∗∗ ∗∗ ∗∗ Debt Ratio 2.413 0.933 0.445 0.545 0.638 0.719 (1.222) (0.935) (0.221) (0.208) (0.309) (0.299) ∗∗ ∗ ∗ D Export 0.269 0.164 0.008 0.044 0.048 0.0530 (0.112) (0.090) (0.027) (0.026) (0.044) (0.043) ∗∗ Horizontal (Wage) 0.006 0.002 −0.125 (0.134) (0.022) (0.058) ∗∗ L.Horizontal (Wage) 0.156 −0.024 −0.090 (0.110) (0.015) (0.040) ∗∗ Forward (Wage) −0.083 0.030 0.006 (0.072) (0.013) (0.031) L.Forward (Wage) −0.111 −0.028 −0.037 (0.084) (0.015) (0.035) Is FDI a potential tool for boosting firm’s performance? firm level... Table 4 (continued) ROA Gross Revenues Gross Revenues Growth (1) (2) (3) (4) (5) (6) Backward (Wage) 0.028 −0.016 0.042 (0.131) (0.022) (0.052) ∗∗∗ L.Backward (Wage) −0.032 0.041 0.030 (0.077) (0.013) (0.032) ∗ ∗∗∗ Horizontal (Gross revenues) 0.155 −0.021 −0.126 (0.081) (0.016) (0.043) L.Horizontal (Gross revenues) 0.012 −0.013 −0.042 (0.071) (0.014) (0.027) Forward (Gross revenues) −0.009 0.002 0.003 (0.081) (0.018) (0.032) ∗∗ L.Forward (Gross revenues) −0.136 −0.056 −0.026 (0.100) (0.024) (0.048) Backward (Gross revenues) −0.090 0.017 0.029 (0.136) (0.029) (0.059) L.Backward (Gross revenues) 0.079 0.031 0.032 (0.116) (0.024) (0.044) ∗ ∗∗ HHI 0.252 0.042 −0.015 0.023 0.052 0.054 (0.191) (0.047) (0.035) (0.014) (0.029) (0.023) ∗∗∗ ∗∗∗ ∗ ∗∗∗ ∗∗ ABS 5.412 4.651 0.482 0.593 −1.819 −1.703 (1.954) (1.572) (0.336) (0.332) (0.705) (0.668) S. Camino-Mogro et al. Table 4 (continued) ROA Gross Revenues Gross Revenues Growth (1) (2) (3) (4) (5) (6) Hansen Test[P-Value] 0.478 0.249 0.126 0.190 0.579 0.592 AR(1)[P-value] 0.000 0.000 0.000 0.000 0.000 0.000 AR(2)[P-value] 0.167 0.428 0.283 0.782 0.759 0.978 AR(3)[P-value] 0.978 0.487 0.165 0.255 0.745 0.6460 Instruments 57677172 6364 Observations 86,119 86,119 52,087 52,087 60,158 60,158 ∗ ∗∗ ∗∗∗ Notes: Robust standard errors in parentheses, clustered by firm. p< 0.1, p< 0.05, p< 0.01. Controls such as year, sector and size dummy variables are included. (3) and (4) include the second lag of Gross Revenues in the identification. The Constant is included in all the specifications. All the continuous variables are in logs. First, second and third order Autocorrelation Test and Hansen Test P-values are reported to test the robustness of the DIFF-SYS GMM model. The following variables were treated as endogenous: lag of the respective performance variable (ROA, Gross revenues and Gross revenues growth rate),the absorptive capacity, horizontal spillover and D exports. We use the “collapse” option in order to limit instruments proliferation. The IV instruments are year dummies and HHI. Is FDI a potential tool for boosting firm’s performance? firm level... can generate greater sales in the period after. The increase in demand of inputs by for- eign owned firms, pushes local firms to improve their product quality, productivity and product diversity. On the other side, when analyzing gross revenues spillovers, we only find evi- dence in the case of forward spillovers effects in one period after the inward FDI was received, suggesting that there is a negative forward spillover effect. In other words, inputs supply by firms with inward FDI a period before of the one analyzed might provide inputs that are too technological advance or more expensive to be consumed by local firms. Additionally, we estimate the same regression dividing the sample by different economic sectors, controlling by sub sectors and firm size. We find that there are wages spillover effects in the construction sector (see Table 5). In particular, within the construction sector there is evidence (at 10% level of confidence) of a nega- tive horizontal wage spillover effect on average ROA and a positive wage forward spillover effect related to vertical linkages of the industry. In other words, on aver- age, the ROA from construction firms is affected negatively by the increase of wages from firms with inward FDI in the same sector. However, increases on wages from FDI firms in other economic activities that supply inputs to the construction sector, disentangle a positive effect on local firms from the construction sector that buy those inputs; for instance, the forward spillovers are positive either because foreign suppli- ers (from different industries) provide cheaper inputs, or because the inputs provided by foreign suppliers to firms in the construction are of higher quality (Markusen and Venables 1999). This theory is relevant in our findings given that it suggests that for domestic firms in the construction sector it can be more attractive to buy inputs from firms in other industries that have received FDI in the same period, than from domestic companies. Moreover, there is evidence of negative gross revenues horizontal spillovers in the construction sector, as well as positive gross revenues forward spillovers, which are slightly smaller in magnitude than in the case of wages spillovers. Likewise, in the service sector, there is a small but positive gross revenues forward spillover both, from spillovers that derived from investment in the same period of analysis, as well as, from the investment related period t − 1. In Table 6, we analyze spillovers effects on gross revenues dividing the sample by economic activity. In this sense, we find significant evidence of negative effects on gross revenues generation from horizontal spillovers in the service sectors, both in terms of wages and gross revenues. This result implies that firms in the service sector are worst off when there are higher shares of sales (or wages) generated by firms with inward FDI at the sector level, which is related to the presence of a competition effect. There exists a further argument about the presence of negative spillover effects suggested by (Girma et al. 2008), attributed to asymmetries in bargaining power . In Tables 5, 6 and 7, in Columns (3) to (10), we exclude time controls in order to capture the effect of spillovers, which is approximately invariant across years. In order to control for macroeconomic conditions we included GDP growth and inflation. Bargaining power is related to differences in size and international operations that firms with FDI inflows have, compared to domestic firms. S. Camino-Mogro et al. Table 5 Difference and System GMM estimations: FDI spillover effect on ROA by industry All Sectors Services Construction Natural Resources Manufacturing (1) (2) (3) (4) (5) (6) (7) (8) (9) (10) ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ L.ROA 0.144 0.135 0.123 0.106 0.119 0.126 0.146 0.159 0.178 0.141 (0.014) (0.011) (0.017) (0.014) (0.036) (0.034) (0.025) (0.023) (0.053) (0.042) ∗∗∗ ∗∗ ∗∗ ∗ ∗∗ Liquidity 2.331 1.568 1.450 0.056 −1.163 −1.012 0.044 0.088 1.334 1.287 (0.875) (0.712) (1.072) (0.695) (0.584) (0.540) (0.751) (0.620) (1.452) (0.574) ∗∗ ∗ Debt Ratio 2.4130 0.933 1.659 −0.179 −1.583 −1.250 −0.747 −0.206 0.964 0.968 (1.222) (0.935) (1.408) (0.904) (0.966) (0.689) (0.923) (0.671) (2.607) (1.650) ∗∗ ∗ D Export 0.269 0.164 0.107 0.048 −0.341 −0.461 0.270 0.267 0.252 0.437 (0.112) (0.090) (0.119) (0.092) (0.373) (0.357) (0.303) (0.277) (0.526) (0.295) Horizontal (Wage) 0.006 0.658 −0.703 0.373 12.966 (0.134) (0.601) (0.366) (0.447) (11.317) L.Horizontal (Wage) 0.156 0.221 −0.116 −0.555 7.141 (0.110) (0.641) (0.139) (0.630) (11.465) ∗∗ Forward (Wage) −0.083 0.061 9.466 −0.046 −0.561 (0.072) (0.081) (4.236) (0.068) (1.155) L.Forward (Wage) −0.111 0.118 0.227 −0.056 0.850 (0.084) (0.081) (0.628) (0.063) (2.350) Backward (Wage) 0.028 −0.132 −0.293 −0.034 2.026 (0.131) (0.075) (0.236) (0.164) (1.964) L.Backward (Wage) −0.032 −0.078 −0.078 0.094 0.574 (0.077) (0.097) (0.140) (0.159) (1.906) Is FDI a potential tool for boosting firm’s performance? firm level... Table 5 (continued) All Sectors Services Construction Natural Resources Manufacturing (1) (2) (3) (4) (5) (6) (7) (8) (9) (10) ∗ ∗∗∗ Horizontal (Gross revenues) 0.155 −0.114 −0.631 −0.205 −1.657 (0.081) (0.247) (0.234) (0.446) (5.748) L.Horizontal (Gross revenues) 0.012 −0.034 −0.063 −1.107 2.808 (0.071) (0.191) (0.072) (0.800) (2.262) ∗ ∗∗∗ Forward (Gross revenues) −0.009 0.110 7.977 −0.093 −0.261 (0.081) (0.057) (2.811) (0.063) (0.562) ∗∗ ∗ L.Forward (Gross revenues) −0.136 0.188 0.121 −0.163 0.840 (0.100) (0.077) (0.367) (0.099) (1.246) Backward (Gross revenues) −0.090 −0.055 −0.306 0.034 0.020 (0.136) (0.047) (0.216) (0.082) (0.304) L.Backward (Gross revenues) 0.079 −0.075 0.065 0.232 −0.675 (0.116) (0.054) (0.092) (0.196) (1.754) ∗∗∗ ∗∗∗ ∗∗ ∗∗ ∗∗ HHI 0.252 0.042 1.077 1.374 1.975 2.252 −1.485 −1.199 −1.735 −0.064 (0.191) (0.047) (0.381) (0.325) (1.470) (1.039) (0.671) (0.566) (1.169) (0.076) ∗∗∗ ∗∗∗ ABS 5.412 4.651 −0.499 −1.708 2.454 2.343 −4.779 −4.254 1.982 8.186 (1.954) (1.572) (1.467) (1.144) (2.474) (1.967) (4.427) (3.411) (14.207) (9.037) GDP Growth 0.028 0.030 −0.008 −0.023 −0.040 −0.106 −0.988 0.441 (0.025) (0.016) (0.028) (0.017) (0.054) (0.065) (1.046) (0.507) ∗∗∗ ∗∗ Inflation −0.092 −0.075 0.006 −0.034 0.119 0.234 −3.959 −0.525 (0.059) (0.029) (0.111) (0.084) (0.083) (0.109) (3.485) (1.559) S. Camino-Mogro et al. Table 5 (continued) All Sectors Services Construction Natural Resources Manufacturing (1) (2) (3) (4) (5) (6) (7) (8) (9) (10) TimeControl Yes Yes NoNoNo No NoNo No No Hansen Test[P-Value] 0.478 0.249 0.410 0.132 0.906 0.907 0.165 0.219 0.838 0.523 AR(1)[P-value] 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.583 0.559 AR(2)[P-value] 0.167 0.428 0.118 0.610 0.640 0.814 0.144 0.057 0.375 0.650 AR(3)[P-value] 0.978 0.487 0.445 0.327 0.147 0.033 0.282 0.229 0.652 0.583 Instruments 5767495949 59 4959 36 44 Observations 86,119 86,119 62,491 62,491 8,296 8,296 10,502 10,502 4,830 4,830 ∗ ∗∗ ∗∗∗ Notes: Robust standard errors in parentheses, clustered by individual. p< 0.1, p< 0.05, p< 0.01. Controls such as year, sector and size dummy variables are included. The Constant is included in all the specifications. First, second and third order Autocorrelation Test and Hansen Test P-values are reported to test the robustness of the DIFF-SYS GMM model. The following variables were treated as endogenous: lag of ROA, the absorptive capacity, horizontal spillover and D exports. We use the “collapse” option in order to limit instruments proliferation. The IV instruments are year dummies and HHI for specifications (1) and (2); GDP growth rate, inflation and HHI for specifications (3)–(10). Is FDI a potential tool for boosting firm’s performance? firm level... Table 6 Difference and System GMM estimations: FDI spillover effect on Gross Revenues by economic sector All Sectors Services Construction Natural Resources Manufacturing (1) (2) (3) (4) (5) (6) (7) (8) (9) (10) ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗ ∗∗∗ ∗∗∗ L.Gross Revenues 0.326 0.424 0.438 0.486 0.190 0.209 0.462 0.393 0.425 0.569 (0.101) (0.095) (0.090) (0.101) (0.053) (0.055) (0.114) (0.176) (0.113) (0.109) ∗ ∗∗ ∗∗ Liquidity −0.279 −0.103 −0.322 −0.333 0.028 0.033 0.027 0.036 −0.411 −0.028 (0.155) (0.159) (0.145) (0.148) (0.128) (0.131) (0.097) (0.107) (0.267) (0.105) ∗∗ ∗∗∗ ∗∗ ∗∗ ∗∗ ∗∗ ∗∗ ∗ Debt Ratio 0.445 0.545 0.414 0.421 0.392 0.388 0.385 0.416 −0.161 −0.061 (0.221) (0.208) (0.190) (0.194) (0.172) (0.184) (0.159) (0.223) (0.457) (0.292) ∗ ∗∗∗ D Exports 0.008 0.044 −0.020 −0.005 −0.152 −0.188 0.031 0.034 −0.009 0.196 (0.027) (0.026) (0.028) (0.026) (0.115) (0.117) (0.072) (0.085) (0.082) (0.059) ∗∗∗ Horizontal (Wage) 0.002 −0.324 −0.011 −0.013 −2.016 (0.022) (0.110) (0.090) (0.068) (1.511) ∗∗∗ L.Horizontal (Wage) −0.024 −0.029 −0.038 −0.326 −0.958 (0.015) (0.063) (0.025) (0.066) (0.699) ∗∗ ∗∗∗ Forward (Wage) 0.030 0.074 0.300 0.005 −0.031 (0.013) (0.016) (1.048) (0.009) (0.046) ∗ ∗∗ ∗∗∗ L.Forward (Wage) −0.028 0.020 −0.009 −0.033 0.137 (0.015) (0.010) (0.088) (0.010) (0.142) Backward (Wage) −0.016 0.001 −0.066 −0.006 −0.254 (0.022) (0.012) (0.045) (0.025) (0.162) ∗∗∗ ∗∗∗ L.Backward (Wage) 0.041 −0.017 −0.025 0.088 −0.335 (0.013) (0.014) (0.030) (0.020) (0.229) S. Camino-Mogro et al. Table 6 (continued) All Sectors Services Construction Natural Resources Manufacturing (1) (2) (3) (4) (5) (6) (7) (8) (9) (10) ∗∗∗ ∗∗∗ ∗∗ Horizontal (Gross revenues) −0.021 −0.280 −0.043 −0.277 −0.556 (0.016) (0.064) (0.057) (0.097) (0.238) ∗∗ ∗∗∗ L.Horizontal (Gross revenues) −0.013 0.102 −0.005 −0.547 −0.332 (0.014) (0.052) (0.021) (0.198) (0.228) ∗∗∗ ∗∗∗ Forward (Gross revenues) 0.002 0.070 0.550 −0.039 0.011 (0.018) (0.016) (0.759) (0.015) (0.009) ∗∗ ∗∗ L.Forward (Gross revenues) −0.056 0.029 −0.217 −0.086 0.015 (0.024) (0.020) (0.171) (0.035) (0.029) ∗∗∗ Backward (Gross revenues) 0.017 0.006 −0.059 0.025 −0.116 (0.029) (0.011) (0.054) (0.020) (0.037) ∗∗∗ ∗∗∗ ∗∗ L.Backward (Gross revenues) 0.031 −0.037 0.022 0.124 −0.096 (0.024) (0.012) (0.029) (0.046) (0.048) ∗∗∗ ∗∗ ∗ HHI −0.015 0.023 −0.316 −0.147 0.264 0.144 −0.068 0.003 0.001 −0.036 (0.035) (0.014) (0.071) (0.064) (0.236) (0.228) (0.113) (0.137) (0.027) (0.020) ABS 0.482 0.593 0.413 0.148 0.605 0.747 0.451 −0.068 −1.338 −0.263 (0.336) (0.332) (0.374) (0.363) (0.625) (0.689) (0.591) (1.022) (1.678) (1.205) ∗ ∗∗∗ ∗ ∗∗∗ GDP Growth 0.007 −0.003 −0.009 −0.015 −0.038 0.073 0.045 (0.004) (0.006) (0.007) (0.006) (0.021) (0.097) (0.010) ∗∗ ∗ ∗∗ Inflation −0.023 0.056 0.024 0.007 0.096 0.849 0.265 (0.011) (0.042) (0.025) (0.014) (0.050) (0.525) (0.135) Is FDI a potential tool for boosting firm’s performance? firm level... Table 6 (continued) All Sectors Services Construction Natural Resources Manufacturing (1) (2) (3) (4) (5) (6) (7) (8) (9) (10) TimeControl Yes Yes NoNoNo No No No No No Hansen Test[P-Value] 0.126 0.190 0.845 0.868 0.493 0.439 0.483 0.395 0.463 0.535 AR(1)[P-value] 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.002 0.723 0.465 AR(2)[P-value] 0.283 0.782 0.687 0.607 0.960 0.952 0.211 0.896 0.311 0.384 AR(3)[P-value] 0.165 0.255 0.405 0.251 0.924 0.903 0.879 0.830 0.501 0.4153 Instruments 7172736572 64 73 65 44 47 Observations 52,087 52,087 38,225 38,225 4,690 4,690 6,570 6,570 4,830 4,830 ∗ ∗∗ ∗∗∗ Notes: Robust standard errors in parentheses, clustered by individual. p< 0.1, p< 0.05, p< 0.01. Controls such as year, sector and size dummy variables are included in (1) and (2). However, in specifications (3)–(10) year dummies are not included since the horizontal spillovers only vary across years but do not vary within each sector. The second lag of the Gross Revenues and the Constant are included in all the specifications. First, second and third order Autocorrelation Test and Hansen Test P-values are reported to test the robustness of the DIFF-SYS GMM model. The following variables were treated as endogenous: lag of ROA, the absorptive capacity, horizontal spillover and D exports. We use the “collapse” option in order to limit instruments proliferation. The IV instruments are year dummies and HHI for specifications (1) and (2); GDP growth rate, Inflation and HHI for specifications (3)–(10). S. Camino-Mogro et al. Moreover, we find that the service sector has positive forward spillovers both in terms of wages and gross revenues; nevertheless, this effect is only significant for gross revenues. In other words, the more inputs the local service sector acquire from inward FDI firms in other sectors, the greatest advantage they can get in the sales generation process. This effect might be related to the fact that inward FDI firms can provide more efficient technologies to local firms helping them to develop their production processes. Likewise, we find a negative backward gross revenues spillover effect (related to inward FDI in the period t − 1) in the service sector which suggests that even though the linkage of the service sector with other industries is high, firms with inward FDI in other industries might prefer to get inputs from abroad than from local firms in the service sector; this can occur given the higher cost of local inputs relative to inputs in neighbour countries or given the shortage of technology that local firms have in order to produce some inputs that inward FDI firms demand. In the natural resources economic sector, we find spillovers (horizontal, forward and backward) effects specially related to inward FDI in period t − 1. In this sense, we find negative horizontal spillover effects, both from wages and gross revenues when the inward FDI was obtained in period t . However, we find positive gross revenues horizontal spillovers effects within the industry when analyzing the lag of the spillover, which is consistent with the idea that inward FDI in this sector might cause local firms from the same sector to adopt same technologies as firms with FDI, becoming more efficient in the sales generation process a period after the inward FDI was materialized. There is also significant evidence about negative forward spillovers in the natural resources economic sector when analyzing gross revenues as a performance measure. In other words, on average, local firms do not benefit from acquiring inputs from firms with FDI capitals in other sectors. Indeed, they might be harmed given that foreign owned enterprises have greater bargaining power. It is worth noticing that even though local firms that belong to the natural resources sector seem to be harmed in the sales generation by buying to foreign suppliers (negative backward spillovers), this effect is smaller compared to the gains from supplying to foreign companies (positive backward spillovers effects). This last result refers to the idea that local firms in the natural resources sector might benefit from supplying inputs to foreign owned enterprises in the country, creating a greater potential for knowledge transfers (Havranek and Irsova 2011). Foreign owned enterprises in different sectors might prefer to acquire inputs from local firms in the natural resources sector, considering long distances between the foreign affiliates and its headquarters and considering that a country such as Ecuador has variety of products, for example in the agricultural sector (which is part of the natural resources sector) given its strategic location on the globe. Finally, there is not enough accurate evidence to conclude about the existence of spillovers effects in the manufacturing sector, given that the dynamic specifications in columns (9) and (10) does not satisfy the auto correlation tests. In Table 7, we study the effect of spillovers on gross revenues growth rate as a measure of performance for the whole sample and within each economic sectors. We find that overall, the results for the whole sample show a negative horizontal spillover Is FDI a potential tool for boosting firm’s performance? firm level... Table 7 Difference and System GMM estimations: FDI spillover effect on Gross Revenues growth rate by economic sector All Sectors Services Construction Natural Resources Manufacturing (1) (2) (3) (4) (5) (6) (7) (8) (9) (10) ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗ ∗∗∗ ∗∗∗ L.Gross Revenues GR 0.021 0.020 0.018 0.018 0.026 0.021 0.022 0.022 0.027 0.015 (0.003) (0.003) (0.004) (0.004) (0.009) (0.009) (0.005) (0.005) (0.017) (0.013) ∗∗∗ ∗∗ ∗ Liquidity −0.638 −0.551 −0.527 −0.374 −0.226 −0.086 −0.077 0.045 −0.460 −0.169 (0.240) (0.231) (0.274) (0.238) (0.210) (0.192) (0.154) (0.139) (0.298) (0.461) ∗∗ ∗∗ ∗ ∗∗ ∗ Debt Ratio 0.638 0.719 0.556 0.697 0.319 0.345 0.255 0.525 −0.255 0.211 (0.309) (0.299) (0.333) (0.319) (0.277) (0.258) (0.230) (0.274) (0.476) (0.608) D.Exports 0.048 0.053 0.039 0.018 −0.070 −0.116 0.092 0.133 0.080 0.077 (0.044) (0.043) (0.048) (0.045) (0.195) (0.177) (0.107) (0.107) (0.114) (0.124) ∗∗ ∗∗∗ Horizontal (Wage) −0.125 −0.222 0.119 −0.332 1.344 (0.058) (0.333) (0.158) (0.113) (2.281) ∗∗ ∗∗ L.Horizontal (Wage) −0.090 −0.552 −0.094 −0.446 −0.134 (0.040) (0.616) (0.058) (0.221) (0.908) Forward (Wage) 0.006 0.003 −1.523 −0.011 0.064 (0.031) (0.085) (1.837) (0.020) (0.183) L.Forward (Wage) −0.037 −0.118 0.032 −0.034 −0.064 (0.035) (0.120) (0.170) (0.019) (0.325) ∗∗∗ Backward (Wage) 0.042 0.030 0.079 0.120 0.016 (0.053) (0.023) (0.082) (0.047) (0.220) ∗∗∗ L.Backward (Wage) 0.030 0.107 0.024 0.157 0.058 (0.032) (0.107) (0.055) (0.053) (0.425) S. Camino-Mogro et al. Table 7 (continued) All Sectors Services Construction Natural Resources Manufacturing (1) (2) (3) (4) (5) (6) (7) (8) (9) (10) ∗∗∗ ∗∗∗ Horizontal (Gross revenues) −0.126 −0.566 −0.052 −0.145 3.347 (0.043) (0.166) (0.085) (0.140) (3.976) L.Horizontal (Gross revenues) −0.042 0.164 0.035 −0.358 0.258 (0.027) (0.119) (0.035) (0.228) (1.031) ∗∗∗ Forward (Gross revenues) 0.003 0.095 0.057 −0.017 0.176 (0.032) (0.036) (1.126) (0.018) (0.350) L.Forward (Gross revenues) −0.026 0.018 −0.127 −0.023 −0.204 (0.048) (0.076) (0.179) (0.035) (0.608) ∗∗ ∗∗∗ Backward (Gross revenues) 0.029 0.057 0.101 0.070 0.179 (0.059) (0.025) (0.084) (0.023) (0.343) ∗∗ ∗ L.Backward (Gross revenues) 0.032 −0.032 0.098 0.097 0.452 (0.044) (0.037) (0.049) (0.055) (0.927) ∗ ∗∗ HHI 0.052 0.054 −0.114 −0.185 0.040 −0.099 −0.152 −0.153 0.007 0.008 (0.029) (0.023) (0.190) (0.167) (0.458) (0.373) (0.163) (0.175) (0.031) (0.038) ∗∗∗ ∗∗ ∗ ∗∗∗ ∗∗∗ ∗∗ ∗ ABS −1.820 −1.703 −0.693 −0.967 −3.871 −4.151 −1.353 −1.449 −6.150 −5.366 (0.705) (0.668) (0.625) (0.556) (1.332) (1.231) (1.221) (1.069) (2.703) (2.747) GDP Growth 0.001 0.010 0.004 0.016 −0.002 0.002 −0.292 −0.443 (0.011) (0.009) (0.011) (0.012) (0.016) (0.021) (0.267) (0.590) Inflation 0.077 −0.049 0.067 −0.075 −0.036 −0.015 0.429 −0.144 (0.095) (0.038) (0.084) (0.050) (0.033) (0.048) (0.438) (0.695) Is FDI a potential tool for boosting firm’s performance? firm level... Table 7 (continued) All Sectors Services Construction Natural Resources Manufacturing (1) (2) (3) (4) (5) (6) (7) (8) (9) (10) TimeControl Yes Yes NoNoNo No No No No No Hansen Test[P-Value] 0.579 0.592 0.541 0.593 0.459 0.540 0.967 0.750 0.345 0.239 AR(1)[P-value] 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.735 0.531 AR(2)[P-value] 0.759 0.979 0.425 0.136 0.085 0.125 0.784 0.348 0.636 0.531 AR(3)[P-value] 0.745 0.646 0.747 0.437 0.239 0.103 0.520 0.253 0.459 0.573 Instruments 6364565756 57 56 57 43 36 Observations 60,158 60,158 43,891 43,891 5,919 5,919 7,473 7,473 2,875 2,875 ∗ ∗∗ ∗∗∗ Notes: Robust standard errors in parentheses, clustered by individual. p< 0.1, p< 0.05, p< 0.01. Controls such as year, sector and size dummy variables are included in (1) and (2). However, in specifications (3)–(10) year dummies are not included since the horizontal spillovers only vary across years but do not vary within each sector. The Constant is included in all the specifications. Complete results Tables are provided under a request to the authors. First, second and third order Auto correlation Test and Hansen Test P-values are reported to test the robustness of the DIFF-SYS GMM model. The following variables were treated as endogenous: lag of ROA, the absorptive capacity, horizontal spillover and D exports. We use the “collapse” option in order to limit instruments proliferation. The IV instruments are year dummies and HHI for specifications (1) and (2); GDP growth rate, Inflation and HHI for specifications (3)–(10). S. Camino-Mogro et al. on the average gross revenues growth rates of local firms, with similar coefficients for both alternatives of spillovers: 1) wages and 2) gross revenues of foreign owned firms. Moreover, this result is consistent with the negative horizontal spillover effect in the sector of natural resources, which suggests that local firms are worst off (in terms of growth rate) from the increase of wages by foreign owned firms within the same sector. This idea suggests that local firms are constrained in terms of growth when foreign owned firms pay higher salaries. Also, there is evidence of positive backward spillovers both in terms of wages and gross revenues for local firms in the sector of natural resources. This result implies that local firms are better off from providing inputs to foreign owned enterprises, so they show higher growth rates if the supply of inputs to foreign firms increases, which might be due to the fact of adopting new technologies to satisfy the demand and requirements of these foreign buyers. This can be better appreciated in the agri- cultural sector, where a lot of foreign owned firms buy intermediate inputs from local producers in order to export final or intermediate products; for instance, quality stan- dard requirements from foreign owned firms to local produces plays an important role for firms that export and pushes local firms to adopt better production practises. Finally, the service sector does not show wages spillovers but it does show gross revenues spillovers. In particular, there are negative horizontal spillovers within the economic sector. Likewise, there are positive forward spillovers (from higher gross revenues of foreign owned firms) on local firms growth rates, suggesting that either local firms benefit from the higher quality of inputs provided by foreign firms in other sectors or this inputs are cheaper which allow them to allocate resources in other operative areas such as marketing strategies that can trigger growth. Overall, we find heterogeneous indirect effects of inward FDI on firm perfor- mance. In terms of ROA, our results suggest that there is significant evidence of negative FDI horizontal wages spillovers and gross revenues spillovers in the con- struction sector; nevertheless, in this sector there are significantly positive forward wages and gross revenues spillovers effects. Moreover, there is also evidence of positive forward gross revenues spillovers in the service sector. Furthermore, FDI backward wages spillover effect is only significantly negative in the service sector. When analyzing gross revenues as a performance measure, our evidence suggest a negative horizontal wages and gross revenues spillover effect in the service and natural resources economic sector. Also, in the manufacturing sec- tor we find a negative horizontal gross revenues spillover effect. Likewise, forward wages and gross revenues spillover effect are found in the service sector, but a neg- ative effect is found in the economic sector of natural resources. Backward spillover effects are found to be negative in the service and manufacturing sectors, but positive in the natural resources sector. Finally, when we analyze the FDI spillover effects on gross revenues growth, we find negative horizontal wages spillovers and gross revenues spillovers on growth in the services and natural resources sectors. While positive backward spillover effects are found in all sectors except for the manufactur- ing sector, the results for forward spillover effects are more diverse across different economic sectors. Is FDI a potential tool for boosting firm’s performance? firm level... 6 Conclusions We examine the direct and indirect effects of FDI on firm performance as measured by ROA, gross revenues, and gross revenue growth in Ecuadorian firms in the formal economy from 2007 to 2018. To begin, we estimate a dynamic panel data model to control for potential endogeneity issues in order to study the direct effects of FDI on firm performance. Our primary variable of interest is FDI, both at the intensive and extensive margins. In addition, to examine the FDI spillover effects (indirect effects), we estimate a dynamic panel data model. The variables of interest in this case are horizontal, backward, and forward spillovers generated by wages and gross revenues. We also study the FDI spillover effects within each economic sector in order to study heterogeneous effects across different economic activities. We first show that in our sample, only 1.70 % of firms in the formal enterprise sector receive some FDI, and FDI accounts for 40.43 % of total investment registered. Our main findings from the analysis of the direct effects of FDI on firm’s perfor- mance reveal that: 1) firms that have inward FDI in period t,haveonaverage aROA 3.6% lower than the ROA of domestic firms at the same period, 0.10% less gross revenues in the same period of the investment, but have 0.10% higher gross revenues growth rate than their counterparts, and, 2) an increase of 10% in the amount of FDI received by the firm as a share of total income, relates on average to an increase of 0.2% on its gross revenues in the same period of the investment. This may be an indication that firms that receive FDI lack the sufficient absorptive capacity to imme- diately transform the investments into better performance indicators. Furthermore, given that the majority of incoming capital inflows in Ecuador are from lower-tax countries such as Venezuela, Uruguay, the British Virgin Islands, and Panama, one possible explanation for the mixed relationship between FDI and firm performance could be profit shifting behavior. In fact, firms with inward FDI have higher gross revenue levels; however, the magnitude of this effect is small, suggesting a possi- ble profit shifting behavior from MNCs. The more connections local businesses have with countries that have lower corporate tax rates, the more likely it is that they will use tax arbitrage mechanisms such as profit shifting (Beer et al. 2020). In the case of the spillover analysis, our main conclusions are as follows: 1) there are negative horizontal wages and gross revenues spillovers effects on gross revenues growth but positive horizontal gross revenues spillovers effects on ROA, 2) there are positive backwards wages spillovers effects on gross revenues when inward FDI was obtained a period before the period of analysis, and 3) there is a negative forward wage spillover effect on gross revenues in one period after the period of analysis. These results suggest that the inputs offered by firms with inward FDI are either more expensive or too technologically advanced for local firms, which triggers neg- ative forward spillovers because domestic firms could not have enough absorptive capacity. In other words, as Lenaerts and Merlevede (2015) mentions, large foreign investors “bring their own supply chain” and thus do not generate spillovers along the supply chain. Furthermore, our findings suggest that foreign firms purchase inputs from domestic firms, allowing them to increase their sales in the following period. Ecuadorian firms, on the other hand, appear to be less able to deal with the “market S. Camino-Mogro et al. stealing” effect of MNEs, which is consistent with evidence of negative forward and horizontal spillovers, given the country’s high proportion of micro and small firms. Our findings from spillover effects on various economic sectors are diverse. Negative horizontal spillover effects are found in all sectors, but the magnitude varies depending on the performance measure. According to our findings, backward spillovers have mostly a negative effect on the performance indicators of firms in various economic sectors. On each sector and firm performance measure, the results for forward spillover effects are more diverse. These heterogeneous FDI spillovers effects on economic activities imply various challenges in terms of public policy. Consequently, several policy implications can be derived from these results. First, the government should provide support to domestic firms by a policy of tax incen- tives for small firms conditional on receiving FDI via capital increase, or via creation of new firms with a minimum amount of foreign capitals. Second, the government should focus incentives on FDI heterogeneously, distinguishing whether incentives are made for investments by reinvestment of foreign profits or if it is carried out mainly by new incoming FDI. Third, improving the investment framework through better macroeconomic and institutional conditions should be a prime guideline for policy (Alguacil et al. 2011). Fourth, policies aimed at increasing local learning capabilities and labor skills may be essential to increase the absorptive capacity of domestic firms (Sinani and Meyer 2004), which could reduce the technological trans- fer gaps between foreign and domestic firms but more importantly, firms could better absorb technology and increase the quality of their products and increase competi- tion. Finally, the government should focus on specific industries where there are no spillover effects on ROA and gross revenues in order to spread the positive outcomes of some firms in the sector, but also on industries where there are backward spillovers because they can stimulate foreign firms to buy goods for domestic firms in order to promote competition, product quality, and increase local firm production. Appendix Summary tables of literature review of FDI effects and spillovers Table 8 Foreign Direct Investment (FDI) and firms performance Authors Country/ Method Variable Effect Term Region Affected (Conyon et al. 2003) United Kingdom MNL Wages + SR (Lensink and Morrissey 2006) World Wide IV-2SLS ROA + LR (Kimura and Kiyota 2007) Japan Probit model with RE ROA, ROE + SR (Onaran and Stockhammer 2008) Czech Republic, Non linear Wages + SR (Tomohara and Takii 2011) China GMM Wages + SR Is FDI a potential tool for boosting firm’s performance? firm level... Table 8 (continued) Authors Country/ Method Variable Effect Term Region Affected (Garc´ ıa et al. 2013) Spain GMM Innovative - LR performance Productivity + LR (Konara et al. 2019) World Wide 3SLS Risk + LR (Sun and Anwar 2019) China Non linear Sales + SR Regression Hungary, Poland, Regression Slovakia and Slovenia (Waldkirch et al. 2009) Mexico GMM Employment + SR (Jiang et al. 2011) China FE ROA + SR Note: Short-run(SR), Long-run(LR), Generalized method of moments (GMM), Instrumental Variable (IV), Multinomial Logit (MNL), Two Stage Least Squares (2SLS), Random Effects (RE), Fixed Effects (FE), Difference in differences (DID) and Three Stage Least Squares (3SLS). Source: Authors’ elaboration. Table 9 Foreign Direct Investment (FDI) spillovers effects Authors Country Region Method Type Effect Term (Lin et al. 2009) China Non linear reg. FE/RE Horizontal - HMT SR +Others Havranek and Irsova (2011) World Pooled OLS, GMM, Vertical + SR FE multilevel model Horizontal No effect (Javorcik and Spatareanu 2011) Rumania Non linear reg. FE Vertical + SR (Du et al. 2012) China Non linear reg. FE Vertical + SR (Ha and Giroud 2015) Korea RE Multilevel Model Horizontal + SR Vertical + BW (CC) +FW(CE) - FW (CC) -BW(CE) (Girma et al. 2015) China Potential Outcomes Horizontal - SR (Pittiglio et al. 2016) Italy Multiple Regression Horizontal + SR Vertical + FW (PD) -BW(PD) (Wang and Wu 2016) China Multiple Regression Horizontal + SR Vertical + S. Camino-Mogro et al. Table 9 (continued) Authors Country Region Method Type Effect Term (Lu et al. 2017) China DID, IV Horizontal - SR Vertical + (Orlic et al. 2018) European GMM Vertical + BC (MF) SR Transition +FW(SV) - FW (MF) Note: Ordinary Least Squares (OLS), Fixed Effects (FE), Random Effects (RE), Generalized method of moments (GMM), Difference in differences (DID) and Instrumental Variable (IV). Hong Kong, Macao & Taiwan (HMT), Competence-Creating firms (CC), Competence-Exploiting firms (CE), Forward spillover (FW), Productivity (PD), Backward spillover (BW), Manufacturing (MF) Services (SV) and Short Run (SR). Source: Authors’ elaboration. Law context Table 10 Laws for incentives and regulation Law Date Description Government Type Tax Credit Law June 14, Delivery of tax credit certifi- Rafael Correa Incentive 2011 cates to exporters affected by the export fees they had to pay. The Organic Law on December Basic industries do not have Rafael Correa Incentive production incentives 29, 2014 to pay taxes for 10 years if and tax fraud preven- the investments are of more tion than USD 100 million, and have double deduction for asset depreciation. The Organic Law of March 6, Establish tax incentives for the Rafael Correa Incentive Incentives for Public- 2015 realization of projects under Private Partnerships the modality of public-private (APP) partnership. Organic for Productive August 21, Adjustment in the legal frame- Lenin Moreno Incentive Promotion, Investment 2018 work that governs the eco- Attraction, Job Cre- nomic, financial and produc- ation and Stability and tive activities in the country, in Fiscal Equilibrium order to guarantee legal secu- rity as a mechanism to promote the generation of investments, employment and increase of the competitiveness of the pro- ductive sector of the country. Is FDI a potential tool for boosting firm’s performance? firm level... Table 10 (continued) Law Date Description Government Type Organic Act for the October 13, Prevent, correct, eliminate and Rafael Correa Regulation Regulation and Con- 2011 penalize the abuse of economic trol of Market Power operators with market power that use collusive agreements and other restrictive practices. The Reformatory Law December Creation of the currency exit. Rafael Correa Regulation for Tax Equity 29, 2007 tax (ISD in spanish) Source: Authors’ elaboration. Descriptive statistics of FDI in Ecuador Fig. 1 FDI and Firms Performance S. Camino-Mogro et al. Fig. 2 Participation of FDI by Sector Fig. 3 Participation of FDI by Firm Size Is FDI a potential tool for boosting firm’s performance? firm level... Fig. 4 Participation of FDI by Countries Description of variables and correlation matrix Table 11 Variables description Variables Description Measurement Sign Dependant Variables Net P rof it it ROA The return on assets is measured T otal Assets it by dividing the net profit over total assets. Gross Revenues (GR) Amount of sales of firm i at time t in USD without considering operat- ing and production costs. Annual growth rate at which sales Log(GR) − Log(GR) it it −1 Gross Revenues grow of firm i at time t . Growth Rate (G.GR) Independent variables D.FDI Dummy variable equal to one if + afirm i at time t receive some amount of FDI, zero otherwise. FDI it FDI Share Ratio between the amount of FDI of + GrossRevenues it each firm i at time t and its gross revenues at time t . . S. Camino-Mogro et al. Table 11 (continued) Variables Description Measurement Sign current s asset s it Liquidity ratio It measures the firm’s i ability to + current liabilit ies it pay its current liabilities with its current assets at time t . Total Debt it Debt ratio It measures the firm leverage level at time t . + T otal Assets it D.Export Dummy variable equal to one if a + firm i at time t export, zero other- wise. Ln(T F P ) it −1 ABS It captures the absorptive capacity + Ln(T F P ) t −1 of the firm i at time t derived from the productivity levels CP It −CP I t −1 Inflation It measures the average price level increase. - CP I t −1 GDP growth Annual growth rate at which GDP grows. Log(GDP ) − Log(GDP ) + t t −1 Source: Authors’ elaboration. Is FDI a potential tool for boosting firm’s performance? firm level... Table 12 Correlations Matrix Ln(ROA) Ln(Wage) Ln(TFP) Ln(Gross Gross Ln(Liquidity) Ln(Debt D Export D.FDI Ln(FDI GDP Inflation ABS Ln(HHI) Revenues) Revenues Ratio) Share) growth GR Ln(ROA) 1.000 ∗∗∗ Ln(Wages) 0.016 1.000 ∗∗∗ ∗∗∗ Ln(TFP) -0.019 0.313 1.000 ∗∗∗ ∗∗∗ ∗∗∗ Ln(Gross -0.018 0.748 0.348 1.000 Revenues) ∗∗∗ ∗∗∗ ∗∗∗ Gross 0.004 -0.111 -0.021 -0.034 1.000 Revenues GR ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ Ln(Liquidity) 0.021 -0.066 -0.027 -0.043 -0.035 1.000 ∗∗∗ ∗∗∗ ∗∗ ∗∗∗ ∗∗∗ ∗∗∗ Ln(Debt Ratio) -0.103 0.052 0.007 0.107 0.045 -0.467 1.000 ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ D Export -0.000 0.286 0.225 0.317 -0.014 -0.022 0.025 1.000 ∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ D.FDI 0.005 0.137 0.089 0.155 0.002 0.002 -0.003 0.120 1.000 ∗∗∗ ∗∗∗ ∗∗∗ ∗∗ ∗∗∗ ∗∗∗ Ln(FDI Share) 0.000 -0.123 -0.083 -0.150 0.003 0.001 -0.007 -0.103 -0.835 1.000 ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗ ∗∗∗ GDP growth -0.002 -0.099 0.024 -0.011 0.079 -0.035 0.055 0.031 0.008 -0.013 1.000 ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ Inflation 0.029 -0.145 0.032 -0.030 0.081 -0.053 0.077 0.035 0.030 -0.030 0.482 1.000 ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ABS -0.017 0.333 0.953 0.372 -0.020 -0.055 0.008 0.214 0.094 -0.087 0.102 0.206 1.000 ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ ∗∗∗ Ln(HHI) 0.038 0.083 0.347 -0.017 -0.003 0.002 -0.049 -0.007 0.025 -0.018 -0.016 0.010 0.219 1.000 ∗ ∗∗ ∗∗∗ Standard errors in parentheses. Table of Pearson Correlation Coefficients. p< 0.05, p< 0.01, p< 0.001 Source: Authors’ elaboration. S. Camino-Mogro et al. Total Factor Productivity Estimate To estimate the total factor productivity of firms we assume a Cobb-Douglas pro- duction function where firm i in period t has an output Y that represents the gross it revenue and is a function of capital K , labor force L and total intermediates M . it it it Because some changes in productivity could be caused by shocks that may be unob- servable we consider them in the residual ω e.g. (De Loecker and Goldberg 2014). it The production function can be written as: β γ (ω + ) α it it Y = e K L M (10) it it it it We transform Eq. 10 into logarithms to introduce a linear estimation of the production function: y = ω + + βk + αl + γm (11) it it it it it it Where ω captures a productivity shock and absorbs the constant term, also it is it known by the firm manager at the beginning of period t but unknown by the econo- metrician. is a standard i.i.d. error term that is neither observable nor predictable it by the firm. The β, α,and γ are elasticities of output respect to each input. Our specification for production technology follows the work done by (Levinsohn and Petrin 2003). On this regard, the material’s demand function is given as m = it ∗ ∗ m (ω ,k ) and assuming that m (·) is strictly increasing in ω , the unobserved it it it t t productivity can be expressed in terms of observable capital and intermediate inputs as ω = ω (m ,k ). The estimating equation is the following: it it it y = αl + φ (m ,k ) + , (12) it it t it it it where φ (m ,k ) = βk + γm + ω (m ,k ). In the first stage, the estimation t it it it it it it of α from Eq. 12 is consistent and similar to (Levinsohn and Petrin 2003)using a third-order polynomial approximation. In the second stage, we estimate β, γ once we define the innovations in productivity conditional on ω : it −1 ξ = ω − E[ω |ω ] (13) it it it it −1 This new Eq. 13 allows the productivity innovations ξ to be orthogonal to all it information at time t − 1and in Eq. 12. We can construct the orthogonality condi- it ∗ ∗ ∗ tions, and for each candidate parameter vector = (β ,γ ) we may construct and estimate the residual as: ∗ ∗ ∗ ˆ ˆ (ξ +ˆ )( ) = y −ˆ αl − β k − γ m − E[ω |ω ] (14) it it it it it it it it −1 We estimate TFP separately for each industry, identified by its 2-digit ISIC code. Funding Open Access funding provided thanks to the CRUE-CSIC agreement with Springer Nature. This research was funding from the Spanish Ministry of Economy and Competitiveness (project ECO2017- 82445-R and PID2020-112984GB-C21). We do not control for selection bias by considering the expectation conditional on the survival probabil- ity, because we use an unbalanced panel data set and following (Levinsohn and Petrin 2003) we argue that this issue is not important in this kind of data. Is FDI a potential tool for boosting firm’s performance? firm level... Data Availability The datasets generated during and/or analysed during the current study are available from the corresponding author on reasonable request. Declarations Ethics approval and consent to participate This article does not contain any studies with human participants or animals performed by any of the authors. ConflictofInterests The authors declare that they have no conflict of interests. Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4. 0/. References Aitken B. J., Harrison A. E. (1999) Do domestic firms benefit from direct foreign investment? evidence from venezuela. Am Econ Rev 89(3):605–618 Alfaro L., Chanda A., Kalemli-Ozcan S., Sayek S. (2004a) FDI and economic growth: The role of local financial markets. J Int Econ 64(1):89–112 Alfaro L., Chanda A., Kalemli-Ozcan S., Sayek S. (2010) Does foreign direct investment promote growth? exploring the role of financial markets on linkages. J Dev Econ 91(2):242–256 Alfaro L., Rodr´ ıguez-Clare A., Hanson G. H., Bravo-Ortega C. (2004b) Multinationals and linkages: an empirical investigation. Economia 4(2):113–169 Alguacil M., Cuadros A., Orts V. (2011) Inward fdi and growth: The role of macroeconomic and institutional environment. J Policy Model 33(3):481–496 Apostolov M. (2017) The impact of FDI on the performance and entrepreneurship of domestic firms. J Int Entrepreneurship 15(4):390–415 Aray H., Pacheco-Delgado J. (2020) Public investment allocation across ecuadorian provinces. Socio Econ Plan Sci 100830:71 Arellano M., Bond S. (1991) Some tests of specification for panel data: Monte carlo evidence and an application to employment equations. Rev Econ Stud 58(2):277–297 Arellano M., Bover O. (1995) Another look at the instrumental variable estimation of error-components models. J Econ 68(1):29–51 Armijos J.-P., Basani M., Bonifaz J.-L., Borensztein E., Maldonado P. C., Castellani F., Aguayo Y. C., Cueva S., Deza M. C., D´ ıaz J. P. et al (2018) Reformas y desarrollo en el Ecuador contemporaneo ´ . Inter-American Development Ban Barge-Gil A., Lopez ´ A., Nu ´ nez-S ˜ anchez ´ R. (2019) Estimation of foreign mnes spillovers in spain. Appl Econ Lett 26(5):418–423 Beer S., De Mooij R., Liu L. (2020) International corporate tax avoidance: a review of the channels, magnitudes, and blind spots. J Econ Surv 34(3):660–688 Berg A. (2000) The pros and cons of full dollarization. International Monetary Fund Blomstrom ¨ M., Kokko A. (1998) Multinational corporations and spillovers. J Econ Surv 12(3):247–277 Blundell R., Bond S. (1998) Initial conditions and moment restrictions in dynamic panel data models. J Econ 87(1):115–143 Borensztein E., De Gregorio J., Lee J.-W. (1998) How does foreign direct investment affect economic growth? J Int Econ 45(1):115–135 Buckley P. J., Clegg J., Wang C. (2002) The impact of inward fdi on the performance of chinese manufacturing firms. J Int Bus Stud 33(4):637–655 S. Camino-Mogro et al. Bullard J., Keating J. W. (1995) The long-run relationship between inflation and output in postwar economies. J Monet Econ 36(3):477–496 Camacho F. R., Bajana Y. S. (2020) Impact of foreign direct investment on economic growth: Comparative analysis in ecuador, Peru and Colombia 1996-2016. Int J Econ Financial Issues 10(4):247 Camino-Mogro S. (2021) Tfp determinants in the manufacturing sector: the case of ecuadorian firms. Appl Econ 30(89):92–113 Camino-Mogro S., Andrade-Diaz V., Pesantez-Villacis D. (2016) Posicionamiento y eficiencia del banano, cacao y flores del Ecuador en el mercado mundial/positioning and efficiency of bananas, cocoa and flowers in the global market. Ciencia Unemi 9(19):48–53 Camino-Mogro S., Armijos-Bravo G., Cornejo-Marcos G. (2018a) Productividad total de los factores en el sector manufacturero ecuatoriano: evidencia a nivel de empresas. Cuadernos de Econoıa 41(117):241– ´ ´ Camino-Mogro S., Bermudez-Barrezueta N., Aviles P. (2018b) Analisis sectorial: Panorama de la inversion ´ empresarial en el ecuador 2013-2017. X-pedientes Economicos ´ 2(2):79–102 Chen T. J., Ku Y. H. (2000) The effect of foreign direct investment on firm growth: The case of Taiwan’s manufacturers. Jpn World Econ 12(2):153–172 Chhibber P. K., Majumdar S. K. (1999) Foreign ownership and profitability: Property rights, control, and the performance of firms in indian industry. J Law Econ 42(1):209–238 Chuang Y.-C., Hsu P.-F. (2004) Fdi, trade, and spillover efficiency: evidence from china’s manufacturing sector. Appl Econ 36(10):1103–1115 Conyon M. J., Girma S., Thompson S., Wright P. W. (2003) The productivity and wage effects of foreign acquisition in the United Kingdom. J Ind Econ 50(1):85–102 Damijan J. P., Knell M., Majcen B., Rojec M. (2003) The role of fdi, r&d accumulation and trade in trans- ferring technology to transition countries: evidence from firm panel data for eight transition countries. Econ Syst 27(2):189–204 Damijan J. P., Rojec M., Majcen B., Knell M. (2013) Impact of firm heterogeneity on direct and spillover effects of fdi: Micro-evidence from ten transition countries. J Comp Econ 41(3):895–922 De Loecker J., Goldberg P. K. (2014) Firm performance in a global market. Annual Review of Economics 6(1):201–227 De Mello L. R. (1999) Foreign direct investment-led growth: evidence from time series and panel data. Oxf Econ Pap 51(1):133–151 De Mello, Jr L. R. (1997) Foreign direct investment in developing countries and growth: a selective survey. J Dev Stud 34(1):1–34 Demena B. A., van Bergeijk P. A. (2017) A meta-analysis of fdi and productivity spillovers in developing countries. J Econ Surv 31(2):546–571 Department of Justice, U.S And Federal Trade Commission, U.S (1997) Horizontal Merger Guidelines. US Department of Justice Du L., Harrison A., Jefferson G. H. (2012) Testing for horizontal and vertical foreign investment spillovers in China, 1998–2007. J Asian Econ 23(3):234–243 Fotopoulos G., Louri H. (2004) Firm growth and fdi: are multinationals stimulating local industrial development? J Ind Compet Trade 4(3):163–189 Garc´ ıa F., Jin B., Salomon R. (2013) Does inward foreign direct investment improve the innovative performance of local firms? Res Policy 42(1):231–244 Gerschewski S. (2013) Do local firms benefit from foreign direct investment? an analysis of spillover effects in developing countries. Asian Soc Sci 9(4):67–76 Girma S. (2005) Absorptive capacity and productivity spillovers from fdi: a threshold regression analysis. Oxf Bull Econ Stat 67(3):281–306 Girma S., Gong Y., Gor ¨ g H., Lancheros S. (2015) Estimating direct and indirect effects of foreign direct investment on firm productivity in the presence of interactions between firms. J Int Econ 95(1):157– Girma S., Gorg H., Pisu M. (2008) Exporting, linkages and productivity spillovers from foreign direct investment. Can J Econ/Revue canadienne d’economique ´ 41(1):320–340 Gorg H., Greenaway D. (2004) Much ado about nothing? do domestic firms really benefit from foreign direct investment? World Bank Res Obs 19(2):171–197 Gorodnichenko Y., Svejnar J., Terrell K. (2014) When does FDI have positive spillovers? Evidence from 17 transition market economies. J Comp Econ 42(4):954–969 Is FDI a potential tool for boosting firm’s performance? firm level... Griffith R., Redding S., Simpson H. (2004) Foreign ownership and productivity: new evidence from the service sector and the r&d lab. Oxf Rev Econ Policy 20(3):440–456 Gross D. M., Ryan M. (2008) Fdi location and size: Does employment protection legislation matter? Reg Sci Urban Econ 38(6):590–605 Guadalupe M., Kuzmina O., Thomas C. (2012) Innovation and foreign ownership. Am Econ Rev 102(7):3594–3627 Ha Y. J., Giroud A. (2015) Competence-creating subsidiaries and FDI technology spillovers. Int Bus Rev 24(4):605–614 Havranek T., Irsova Z. (2011) Estimating vertical spillovers from FDI: Why results vary and what the true effect is. J Int Econ 85(2):234–244 Herzer D., Klasen S., Nowak-Lehmann D. F. (2008) In search of FDI-led growth in developing countries: The way forward. Econ Model 25(5):793–810 Holtz-Eakin D., Newey W., Rosen H. S. (1988) Estimating vector autoregressions with panel data. Econometrica: J Econom Soc 56(6):1371–1395 Hu A. G., Jefferson G. H. (2002) FDI impact and spillover: evidence from China’s electronic and textile industries. World Econ 25(8):1063–1076 ˙ ˙ Iamsiraroj S., Ulubasoglu M. A. (2015) Foreign direct investment and economic growth: a real relationship or wishful thinking? Econ Model 51:200–213 Iyer G. C. (2009) Foreign firms and inter-industry spillovers in indian manufacturing: Evidence from 1989 to 2004. Margin: J Appl Econ Res 3(3):297–317 Javorcik B. (2014) Does fdi bring good jobs to host countries? World Bank Res Obs 30(1):74–94 Javorcik B. S., Spatareanu M. (2011) Does it matter where you come from? Vertical spillovers from foreign direct investment and the origin of investors. J Dev Econ 96(1):126–138 Jiang C. X., Yang Q., Li S., Wang Y. (2011) The moderating effect of foreign direct investment intensity on local firms’ intangible resources investment and performance implications: A case from China. J Int Manag 17(4):291–302 Jin B., Garcıa F., Salomon R. (2019) Inward foreign direct investment and local firm innovation: The moderating role of technological capabilities. J Int Bus Stud 50(5):847–855 Kimura F, Kiyota K. (2007) Foreign-owned versus domestically-owned firms: Economic performance in Japan. Rev Dev Econ 11(1):31–48 Kneller R., Pisu M. (2004) Export-oriented fdi in the uk. Oxf Rev Econ Policy 20(3):424–439 Konara P., Tan Y., Johnes J. (2019) FDI and heterogeneity in bank efficiency: Evidence from emerging markets. Res Int Bus Finance 49:100–113 Kugler M. (2006) Spillovers from foreign direct investment: within or between industries? J Dev Econ 80(2):444–477 Lenaerts K., Merlevede B. (2015) Firm size and spillover effects from foreign direct investment: the case of romania. Small Bus Econ 45(3):595–611 Lensink R., Morrissey O. (2006) Foreign direct investment: Flows, volatility, and the impact on growth. Rev Int Econ 14(3):478–493 Levinsohn J., Petrin A. (2003) Estimating production functions using inputs to control for unobservables. Rev Econ Stud 70(2):317–341 Lin P., Liu Z., Zhang Y. (2009) Do Chinese domestic firms benefit from FDI inflow?. Evidence of horizontal and vertical spillovers. China Econ Rev 20(4):677–691 Lu Y., Tao Z., Zhu L. (2017) Identifying FDI spillovers. J Int Econ 107:75–90 Markusen J. R., Venables A. J. (1999) Foreign direct investment as a catalyst for industrial development. Eur Econ Rev 43(2):335–356 Meyer K. E. (2004) Perspectives on multinational enterprises in emerging economies. J Int Bus Stud 35(4):259–276 ´ ´ Olaya E., Armijos J. (2017) Efecto de la inversio,n extranjera directa en el crecimiento economico en ecuador durante 1980-2015: un analisis ´ de cointegracion. ´ Revista economica ´ 2(1):31–38 Onaran O., Stockhammer E. (2008) The effect of FDI and foreign trade on wages in the Central and Eastern European Countries in the post-transition era: A sectoral analysis for the manufacturing industry. Struct Chang Econ 19(1):66–80 Orlic E., Hashi I., Hisarciklilar M. (2018) Cross sectoral fdi spillovers and their impact on manufacturing productivity. Int Bus Rev 27(4):777–796 Pittiglio R., Reganati F., Sica E. (2016) Vertical spillovers from multinational enterprises: Does techno- logical gap matter? Panoeconomicus 63(3):313–323 S. Camino-Mogro et al. Reyes J. D. (2017) FDI Spillovers and High-Growth Firms in Developing Countries. World Bank Policy Research Working Paper No. 8243 Rojec M., Knell M. (2018) Why is there a lack of evidence on knowledge spillovers from foreign direct investment? J Econ Surv 32(3):579–612 Roodman D. (2009) How to do xtabond2: an introduction to difference and system gmm in stata. Stata J 9(1):86–136 ´ ´ ´ Salazar G. (2021) Apertura comercial, inversion domestica y crecimiento economico en ecuador. inves- tigacion ´ emp´ ırica 1950–2019. SUMMA Revista disciplinaria en ciencias economicas ´ y sociales 3(2):1–29 Sinani E., Meyer K. E. (2004) Spillovers of technology transfer from fdi: the case of estonia. J Comp Econ 32(3):445–466 Smarzynska Javorcik B. (2004) Does foreign direct investment increase the productivity of domestic firms? in search of spillovers through backward linkages. Am Econ Rev 94(3):605–627 Sun S, Anwar S. (2019) R&D activities and FDI in China’s iron ore mining industry. Econ Anal Policy 62:47–56 Tomohara A., Takii S. (2011) Does globalization benefit developing countries? Effects of FDI on local wages. J Policy Model 33(3):511–521 Turnbull C., Sun S., Anwar S. (2016) Trade liberalisation, inward fdi and productivity within australia’s manufacturing sector. Econ Anal Policy 50:41–51 Vera-Gilces P., Ordenana ˜ X., Jimenez ´ A. (2019) El efecto de la inversion ´ extranjera directa en el desempeno de empresas locales latinoamericanas: el caso de las manufacturas en ecuador. Revista de econom´ ıa ICE Multinacionales en un cambiante contexto internacional 909:93–107 Waldkirch A., Nunnenkamp P., Bremont J. E. A. (2009) Employment effects of FDI in Mexico’s non- maquiladora manufacturing. J Dev Stud 45(7):1165–1183 Wang C. C., Wu A. (2016) Geographical FDI knowledge spillover and innovation of indigenous firms in China. Int Bus Rev 25(4):895–906 Windmeijer F. (2005) A finite sample correction for the variance of linear efficient two-step gmm estimators. J Econ 126(1):25–51 Wooster R. B., Diebel D. S. (2010) Productivity spillovers from foreign direct investment in developing countries: a meta-regression analysis. Rev Dev Econ 14(3):640–655 World Bank (2022) W. D. I, Inversion extranjera directa, entrada neta de capital (% del PIB)-Ecuador Yang J. Y., Lu J., Jiang R. (2017) Too Slow or Too Fast? Speed of FDI Expansions, Industry Globalization, and Firm Performance. Long Range Plan 50(1):74–92 Publisher’s note Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations. Is FDI a potential tool for boosting firm’s performance? firm level... Affiliations 1,2,3 4 Segundo Camino-Mogro · Natalia Bermudez-Barrezueta ´ · Mary Armijos Natalia Bermudez-Barrezueta ´ natalia.bermudez@student.uclouvain.be Mary Armijos maarmijos@ecotec.edu.ec Universidad Complutense de Madrid, Av. Seneca, ´ 2, 28040 Madrid, Spain Universidad Esp´ ıritu Santo, ESAI Business School, Av. Samborondon ´ 5, Samborondon ´ 092301, Ecuador Universidad Metropolitana del Ecuador, Sede Machala, Ecuador Economics School of Louvain (ESL), Universite ´ Catolique de Louvain (UCL), Louvain-La-Neuve, Belgium Universidad ECOTEC, Km. 13.5 Samborondon, ´ Samborondon, ´ 092302, Ecuador
Journal of Evolutionary Economics – Springer Journals
Published: Apr 1, 2023
Keywords: Foreign Direct Investment; Spillovers; Firm Performance; Ecuador; C23; D22; L11; F21; O12
You can share this free article with as many people as you like with the url below! We hope you enjoy this feature!
Read and print from thousands of top scholarly journals.
Already have an account? Log in
Bookmark this article. You can see your Bookmarks on your DeepDyve Library.
To save an article, log in first, or sign up for a DeepDyve account if you don’t already have one.
Copy and paste the desired citation format or use the link below to download a file formatted for EndNote
Access the full text.
Sign up today, get DeepDyve free for 14 days.
All DeepDyve websites use cookies to improve your online experience. They were placed on your computer when you launched this website. You can change your cookie settings through your browser.