Access the full text.
Sign up today, get DeepDyve free for 14 days.
W. Baah-Boateng (2012)
Labour Market Discrimination in Ghana: A Gender Dimension
Todd Elder, J. Goddeeris, Steven Haider (2009)
Unexplained Gaps and Oaxaca-Blinder DecompositionsLabor: Human Capital
J. Heckman (1979)
Sample selection bias as a specification errorApplied Econometrics, 31
F Bourguignon, M Fournier, M Gurgand (2007)
Selection bias corrections based on the multinomial logit model: Monte Carlo comparisonsJ Econ Surv, 21
C. Broyden (1965)
A Class of Methods for Solving Nonlinear Simultaneous EquationsMathematics of Computation, 19
D. Mortensen, C. Pissarides (1993)
Job Creation and Job Destruction in the Theory of UnemploymentEconomic Policy, 1
S. Kavuma, O. Morrissey, R. Upward (2015)
Worker Flows and the Impact of Labour Transitions on Earnings in Uganda
Masaru Sasaki (1999)
An Equilibrium Search Model with Coworker DiscriminationJournal of Labor Economics, 17
R. Oaxaca (1973)
Male-Female Wage Differentials in Urban Labor MarketsInternational Economic Review, 14
C. Ackah (2013)
Nonfarm Employment And Incomes In Rural GhanaJournal of International Development, 25
Javier Cano‐Urbina (2015)
The role of the informal sector in the early careers of less-educated workersJournal of Development Economics, 112
Audra Bowlus (1997)
A Search Interpretation of Male‐Female Wage DifferentialsJournal of Labor Economics, 15
(2006)
Self-employment: Engine of growth or self-help safety net
Paolo Falco, Andrew Kerr, Neil Rankin, J. Sandefur, F. Teal (2011)
The returns to formality and informality in urban AfricaLabour Economics, 18
J Sandefur, P Serneels, F Teal (2006)
Employment and Shared Growth: Rethinking the Role of Labor Mobility for Development
Jeffrey Dubin, D. McFadden (1984)
An Econometric Analysis of Residential Electric Appliance Holdings and ConsumptionEconometrica, 52
(2011)
Age‐Dependent Employment Protection
D. Black (1995)
Discrimination in an Equilibrium Search ModelJournal of Labor Economics, 13
J. Lanning (2014)
A search model with endogenous job destruction and discrimination: Why equal wage policies may not eliminate wage disparityLabour Economics, 26
W. Vijverberg (1992)
Measuring income from family enterprises with household surveysSmall Business Economics, 4
(1989)
Consumer Discrimination and Self-employment
K. Burdett, D. Mortensen (1998)
Wage Differentials, Employer Size, and UnemploymentInternational Economic Review, 39
F. Teal (2011)
The price of labour and understanding the causes of povertyLabour Economics, 18
Luca Flabbi (2005)
Gender Discrimination Estimation in a Search Model with Matching and BargainingCSR & Management Practice eJournal
Mathan Satchi, J. Temple (2008)
Labor markets and productivity in developing countriesReview of Economic Dynamics, 12
A Moro, P Norman (2004)
A general equilibrium model of statistical discriminationJ Econ Theory, 114
Keith Hart (1973)
Informal Income Opportunities and Urban Employment in GhanaThe Journal of Modern African Studies, 11
Mariano Bosch, W. Maloney (2007)
Comparative Analysis of Labor Market Dynamics Using Markov Processes: An Application to InformalityLabor: Personnel Economics
Paolo Falco (2014)
Does risk matter for occupational choices? Experimental evidence from an African labour market☆Labour Economics, 28
A. Roy (1951)
Some thoughts on the distribution of earnings, 3
Rachel Heath (2017)
Fertility at work: Children and women's labor market outcomes in urban GhanaJournal of Development Economics, 126
Andrea Moro, P. Norman (2001)
A General Equilibrium Model of Statistical DiscriminationMicroeconomic Theory eJournal
F. Bourguignon, M. Fournier, M. Gurgand (2007)
Selection Bias Corrections Based on the Multinomial Logit Model: Monte Carlo ComparisonsEconometrics eJournal
L Flabbi (2010)
Gender discrimination estimation in a search model with matching and bargainingInt Econ Rev, 51
R. Narita (2013)
Self-employment in developing countries: A search-equilibrium approachReview of Economic Dynamics
Audra Bowlus, Z. Eckstein (2002)
Discrimination and Skill Differences in an Equilibrium Search ModelLabor: Human Capital
D. Aigner, G. Cain (1977)
Statistical Theories of Discrimination in Labor MarketsIndustrial & Labor Relations Review, 30
M. Miranda, P. Fackler (2002)
Applied Computational Economics and Finance
(2005)
Search-Theoretic Models of the Labor Market: A Survey
J. Albrecht, Lucas Navarro, Susan Vroman (2006)
The Effects of Labour Market Policies in an Economy with an Informal SectorLabor: Public Policy & Regulation
J Cano-Urbina (2015)
An equilibrium search model with coworker discriminationJ Dev Econ, 112
Shaimaa Yassin, F. Langot (2017)
Informality, Public Employment and Employment Protection in Developing CountriesLabor: Public Policy & Regulation eJournal
Harry Sackey (2005)
Female labour force participation in Ghana: the effects of education
W. Vijverberg (1991)
Profits from self-employment: The case of Côte d'IvoireWorld Development, 19
J. Heintz, Lynda Pickbourn (2012)
The Determinants of Selection into Non-agricultural Self-employment in GhanaMargin: The Journal of Applied Economic Research, 6
C Meghir, R Narita, J-M Robin (2015)
Wages and informality in developing countriesAm Econ Rev, 105
Stephen Coate, G. Loury (1993)
Will Affirmative-Action Policies Eliminate Negative Stereotypes?The American Economic Review, 83
DT Mortensen, CA Pissarides (1994)
Job creation and job destruction in the theory of unemploymentRev Econ Stud, 61
Lung-fei Lee (1983)
Generalized Econometric Models with SelectivityEconometrica, 51
GS Becker (1957)
Econ Discrimination
William Baah-Boatenga, E. Nketiah-Amponsah, R. Frempong (2013)
The effect of fertility and education on female labour force participation in Ghana, 1
A. Blinder (1973)
Wage Discrimination: Reduced Form and Structural EstimatesJournal of Human Resources, 8
G. Fields (2011)
Labor market analysis for developing countriesLabour Economics, 18
G. Kingdon, J. Sandefur, F. Teal (2006)
Labour Market Flexibility, Wages and Incomes in Sub‐Saharan Africa in the 1990sAfrican Development Review, 18
Z. Eckstein, K. Wolpin (1999)
Estimating the Effect of Racial Discrimination on First Job Wage OffersReview of Economics and Statistics, 81
(1994)
* Centre for the Study of African Economies
J. Albrecht, Monica Robayo-Abril, Susan Vroman (2017)
Public-Sector Employment in an Equilibrium Search and Matching ModelMacroeconomics: Employment
Jonathan Lain (2016)
Job Flexibility and Occupational Selection: An Application of Maximum Simulated Likelihood Using Data from Ghana
Neil Rankin, J. Sandefur, F. Teal (2010)
Learning & Earning in Africa: Where are the Returns to Education High?
jonathan.LAIN@oecd.org This paper was written prior to my In many urban African labour markets, women outnumber men in self-employment, joining the OECD and the views even though gender earnings gaps are larger for the self-employed than the expressed should not be taken as wage-employed. In this paper, we suggest an explanation for this pattern using a representing the views of the OECD or its member countries. I am also search and matching model that allows for individual heterogeneity and participation responsible for any errors. in both self- and wage-employment as well as discrimination against women in the Organisation for Economic wage sector. We show that discrimination in wage-employment can generate gender Co-operation and Development, 2 Rue André Pascal, 75775 Paris earnings gaps across all sectors of the economy, even if the underlying ability CEDEX 16, France distributions for women and men are identical. This result arises because discrimination creates extra frictions for women, making it harder for them to select occupations according to their comparative advantage. Moreover, the earnings gaps that arise turn out to be larger for the self-employed, even though it is not the self-employment sector that is characterised by discrimination. Policy makers may therefore need to target the wage sector in order to address gender inequality for the self-employed. JEL classifications: J46, J60, J71 Keywords: Search models, Discrimination, Comparative advantage, Self-employment, Informality, Urban Africa 1 Introduction Female participation in self-employment is prevalent in urban Africa. In urban Ghana, self-employed women outnumber self-employed men by a ratio of nearly 3:1. However, gender earning gaps are far larger in self-employment than in the wage sector. For the self-employed, men’s earnings are approximately double those of women at the median, and observable worker characteristics do little to explain this gap. For the wage-employed, however, the earnings differential at the median is around 25%. There are several potential reasons why these patterns might arise. Self-employment may be characterised by more gender-based discrimination than the wage sector, driv- ing a larger wedge between the earnings of women and men. For example, women may face additional credit constraints when trying to start or expand their businesses or they may struggle to sell their goods to prejudiced consumers. At the same time, there may be non-pecuniary benefits—such as flexible working hours or independence—which attract women to self-employment in spite of these drawbacks. Additionally, there may be pro- ductivity differences between women and men that generate gender earnings gaps across all sectors of the economy, but which cannot be easily observed, especially for the self- employed. The variables typically included in Mincer regressions are likely to carry less © The Author(s). 2019 Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. (2019) 9:6 Lain IZA Journal of Development and Migration Page 2 of 35 explanatory power in self-employment, where entrepreneurial talent, motivation, and other characteristics that are difficult to measure may matter more. In this paper, we offer an alternative explanation, which assumes no discrimination in the self-employment sector and no productivity differences between women and men. Instead, gender earnings gaps in all sectors of the economy are driven solely by discrimination in the wage sector. Our model adopts a search and matching frame- work in the spirit of Mortensen and Pissarides (1994)—also known as random matching and bargaining—where unemployed individuals can choose to search for jobs in wage- employment, self-employment, or both, depending on their returns in each sector. Work- ers are heterogeneous along two dimensions. Firstly, their gender determines whether they will face discrimination in trying to obtain wage sector jobs. However, workers also differ in terms of their self -employment productivity. By allowing for search frictions as well as individual heterogeneity, our model captures both segmentation and sorting in the labour market. The search and matching framework provides an apt arena within which to examine discrimination. Firstly, matching frictions afford firms monopsony power, which they may exploit to satisfy any preferences they have for discrimination. In competitive labour mar- ket models, discriminatory outcomes—such as gender earnings gaps—typically cannot persist, because prejudiced firms will be disadvantaged compared to unprejudiced firms when trying to recruit workers (Becker 1957). Secondly, matching models allow us to consider the outcomes of the unemployed, which would not be possible if workers could move freely between wage- and self-employment. Finally, we are able to couch discrimi- nation in terms of the matching function itself, by adding extra friction into the process through which women obtain wage sector jobs compared to men. In order to guide our modelling approach and verify our simulation results, we present evidence from a panel dataset collected in urban Ghana between 2004 and 2013. This builds on a large empirical literature on informality in urban Africa (Hart 1973; Kingdon et al. 2006; Falco et al. 2011;Fields 2011). Ghana provides a useful context within which to investigate gender differences in occupational selection since the labour force participation of women is relatively high. Our model is able to explain differences in average earnings between men and women in both wage- and self-employment—in line with the Ghanaian data—without assuming any differences between the innate ability distributions of each gender. The frictions inherent in the job matching process prevent workers from selecting occupations entirely on the basis of comparative advantage, which reduces average productivity in all sectors. With discrimination, these frictions are more severe for women than for men, pushing women even further away from the jobs in which they have comparative advantage. The results therefore echo Roy’s (1951) classic model of occupational selection. Additionally, our model mirrors the observation that gender earnings gaps are larger for the self-employed than the wage-employed. This is, in part, because the earnings of the self-employed are determined directly by their productivity, whereas wage sector earnings are governed by bargaining between workers and firms. Our model’s predictions about the sectoral composition of the economy also match what is observed in the Ghanaian data. As anticipated, wage sector discrimination drives women away from wage-employment, which in turn increases the number of unem- ployed and self-employed women. However, it also emerges that there are spillover effects (2019) 9:6 Lain IZA Journal of Development and Migration Page 3 of 35 on men, with their participation in wage-employment rising at the expense of self- employment when discrimination is introduced into the model. Discrimination increases men’s chances of successfully matching with a firm, because they are insulated from com- petition for jobs from women, and because firms create more vacancies to ensure they can still operate. To our knowledge, this is the first attempt to analyse discrimination in a search and matching model that allows for both wage- and self-employment. We build on two key strands of the theoretical literature. Firstly, we complement a growing body of work, which uses search models to assess the impacts that informal sectors or self-employment sectors have on labour market outcomes in developing countries. Our approach draws most directly on the model of Albrecht et al. (2009) and later adapted by Kerr (2012), to allow for self-employment as well as wage-employment in a random matching and bargaining model. Secondly, the paper also draws upon a wide range of existing studies, which use search models to analyse the effects of discrimination on those participating in the labour market. However, unlike previous models, we do not make any additional assumptions about employers’, employees’, or consumers’ preferences, nor do we explic- itly examine the conditions under which firms with a ‘taste for discrimination’ survive. Instead, we treat discrimination as an economy-wide stochastic process that affects the matching function. This is sufficient for testing the effects of wage-sector discrimination across different employment sectors and may be a tenable approach if—as appears to be the case in Ghana—discrimination is prevalent across many firms operating in many industries. This paper proceeds as follows. In Section 2, we orientate this paper within the related literature. In Section 3, we describe the key properties of the urban Ghanaian labour mar- ket. We outline our model and then explain how we solve for the equilibrium in Sections 4 and 5 respectively. In Section 6, we present our main simulation results. In Section 7,we consider the comparative statics, linking the model to policy. In Section 8, we conclude. 2 Related literature and contribution Search models have become a key tool in the analysis of labour markets. Build- ing the notion that it takes time and potentially other resources for workers to find jobs and for employers to fill vacancies into a coherent framework has enabled economists to address many important research questions, providing key insights into what causes certain individuals to choose to remain unemployed, how unemploy- ment and unfilled vacancies can coexist, and why wages may vary among homoge- neous workers (Rogerson et al. 2005). This paper sits within two specific strands of the search literature: (1) the use of search models to better understand informal- ity and self-employment and (2) the use of search models to examine labour market discrimination. 2.1 Search models, informality, and self-employment Typically, search models focus on workers finding formal wage-employment jobs, either from unemployment or from an existing wage job through on-the-job search. However, only allowing for formal wage-employment is insufficient for modelling labour markets in developing countries, where informality and self-employment are prevalent. A number of recent papers have attempted to address this shortcoming. (2019) 9:6 Lain IZA Journal of Development and Migration Page 4 of 35 Some economists have used wage-posting models in the spirit of Burdett and Mortensen (1998)—where employers post the wages associated with particular vacancies—to model informality. Narita (2012), for example, constructs a model in which workers can match with either formal- or informal-sector firms, as well as working in self-employment (or remaining unemployed). Atthesametime, firmsare able to choose between the obligation to pay taxes in the formal sector and the risk of being fined in the informal sector. Narita’s model is also dynamic, in the sense that workers have the potential to learn about good business opportunities throughout their life cycle. When estimated using Brazilian data, the model not only successfully reproduces the composi- tion of the Brazilian labour force, but also demonstrates that the chances of transitioning into self-employment are significantly higher for more experienced workers. While work experience is not an aspect of heterogeneity considered in this paper and we do not use the wage-posting framework, Narita’s model is a helpful counterpoint to the class of models on which we primarily draw. More commonly, Mortensen and Pissarides’ (1994) random matching and bargaining framework has been used as the basis for search models that allow for self-employment or an informal sector. In one example, Saatchi and Temple (2009) build a model with an urban formal sector—in which firms and workers randomly match and then bargain over wages—that coexists with an urban informal sector—in which workers are self-employed and earn some fixed level of output. They also allow for an agricultural sector, from which potential workers can migrate. When calibrated to Mexican data, Saatchi and Temple’s model produces a reasonably sized informal sector in the presence of formal sector fric- tions. Given its relative simplicity, the model can also be used to examine analytically the effects of shocks to sector-specific productivity, worker bargaining power, and tax poli- cies, without requiring numerical methods. However, Saatchi and Temple’s model does not allow for worker heterogeneity: this is a vital element of our modelling approach, since (1) we want to allow for the possibility that only some workers face discrimination and (2) we are interested in the resulting distribution of worker productivity and earnings in different sectors of the economy. Our paper therefore draws most directly on the model by Albrecht et al. (2009)and its adaptation by Kerr (2012), which allows for both informality and worker hetero- geneity within a random matching and bargaining framework. In Albrecht et al.’s (2009) paper, unemployed individuals may transition into the formal sector—where produc- tivity is heterogeneous and subject to shocks that lead matches to end or wages to be renegotiated—or the informal sector—where productivity and earnings are homo- geneous. Noting that earnings dispersion is higher in the informal sector in African labour markets, Kerr (2012) modifies Albrecht et al.’s (2009) model by assuming that workers are heterogeneous in their informal sector productivity instead, with earnings dispersion arising in both sectors because workers’ outside options (their informal sector welfare) during the formal sector wage bargain differ. This paper develops these mod- els further by incorporating a further element of worker heterogeneity: their exposure to discrimination. 2.2 Search models and discrimination Competitive labour market models, in which there are no frictions associated with the coming together of employers and employees, often predict that discriminatory outcomes (2019) 9:6 Lain IZA Journal of Development and Migration Page 5 of 35 cannot persist in equilibrium. As Becker (1957) describes, in a simple model in which there are two types of workers (‘Type-As’ and ‘Type-Bs’) and some subset of prejudiced firms that incur a utility cost from employing Type-Bs, there are two possibilities, neither of which lead to Type-Bs faring worse than Type-As. If the number of prejudiced firms is initially low, the market instantaneously and fully segregates, such that Type-Bsonlywork for unprejudiced firms. Even if the share of prejudiced firms is initially large, any Type-Bs working at prejudiced firms for lower wages can be attracted by expanding unprejudiced firms, who offer higher wages to exploit the arbitrage opportunity: prejudiced firms go out of business until these arbitrage opportunities no longer exist, and the market fully segregates. As such, to allow for the possibility that discriminatory outcomes persist in equilib- rium, one of the assumptions underpinning the competitive labour market model is typically dropped. For example, in models of ‘statistical discrimination’, the assumption that employers have perfect information about the true underlying ability of potential employees is relaxed. Employers instead base their hiring decisions on observable charac- teristics, which they believe proxy for ability, such as gender or race. Search and matching models, by contrast, depart from the competitive labour market model by adding frictions into the process through which employers and employees meet: this affords employers monopsony power and allows discriminatory outcomes to persist in equilibrium. A number of papers—typically using the wage-posting framework—explore the spe- cific conditions under which discriminatory outcomes can persist in search models in equilibrium. Black (1995), for example, constructs a model in which firms are heteroge- neous in terms of both their entrepreneurial ability and their ‘taste for discrimination’, where unprejudiced firms are willing to employ both Type-A and Type-B workers, but prejudiced firms will only employ Type-Bs. In Black’s model, it is only those prejudiced firms with higher entrepreneurial ability that are sufficiently competitive to survive while indulging their taste for discrimination. Interestingly, even though only unprejudiced firms will actually employ Type-Bs, such firms still exploit the fact that Type-B workers have worse outside options when posting wages, driving Type-dependent earnings gaps in the model. In a related model, Sasaki (1999) shows that prejudice among potential co- workers—meaning that Type-A workers prefer to work with other Type-As rather than Type-Bs—can also drive discriminatory outcomes in equilibrium, as firms have to com- pensate Type-As for working alongside Type-Bs. Sasaki also shows that an increased taste for discrimination among Type-As (the extent of their unwillingness to work with Type- Bs) increases their wages. As such, Type-As have an incentive to ensure discrimination persists. As in this paper, some economists have even tried to consider what discrim- ination might mean in search models that explicitly capture self-employment. Borjas and Bronars (1989), for example, build a model in which certain con- sumers derive dis-utility from buying goods from Type-B self-employed sellers (but not Type-As). However, since matches are random, consumers initially have imper- fect information about the Type and price ‘quoted’ by self-employed sellers, and contacting other sellers is costly. This not only drives down the average earnings of self-employed Type-Bs, but also lowers the incentives for high-ability Type-Bs to become self-employed in the first place. However, while Borjas and Bronars’ (1989) model is crucial for understanding discrimination within self-employment, (2019) 9:6 Lain IZA Journal of Development and Migration Page 6 of 35 the approach taken in this paper is different, insofar as we focus on the effects that wage-sector discrimination has the self-employed. This paper is closest to a series of studies that use a random matching and bargaining framework to try and empirically estimate the extent to which discrimination may drive race or gender earnings gaps observed in the labour market. In one example, Flabbi (2010) constructs a model in which certain firms incur some heterogeneous flow of dis-utility from hiring Type-Bs, while for workers, productivity, job arrival rates, and termination rates are all Type-specific. Estimating the model to understand gender labour market inequality in the USA, Flabbi shows that as many as half of firms may be prejudiced and that discrimination accounts for around two thirds of the gender earnings gap. To our knowledge, however, no existing search models that incorporate discrimination also allow for both self- and wage-employment. This constitutes one key contribution that this paper aims to make. Additionally, rather than assuming firms are heterogeneous like much of the existing literature, we characterise discrimination using a simple stochastic process that directly affects the matching function. This appears to be a sufficient and tenable approach for understanding how discrimination in the wage sector affects the self-employed. 3 Data: evidence from Ghana Between 2004 and 2013, the Centre for the Study of African Economies (CSAE) collected longitudinal data from a sample of approximately 3000 individuals in four of Ghana’s largest cities: Accra, Kumasi, Cape Coast, and Takoradi. This dataset—known as the Ghana Household Urban Panel Survey (GHUPS)—allows us to generate a set of stylised facts describing the labour market outcomes of women and men in urban Ghana. Firstly,asTable 1 shows, women substantially outnumber men in self-employment, while the converse is true in wage-employment. In the GHUPS, workers are classified as self-employed if (1) they have principal control over their income-generating activity and (2) they use their own tools or other physical capital, if any are used at all. There are approximately three times as many self-employed women as there are self-employed men, whereas in the wage sector there are nearly the double the number of men compared to women. Secondly, while gender earnings gaps persist in both self- and wage-employment, the differential is larger for the self-employed. The measurement of earnings in self- and Table 1 Occupational breakdown by gender Gender Occupation Female Male Total No. % No. % No. % Apprentice 315 2.34 305 2.26 620 4.60 Out of the labour force 2325 17.23 1543 11.44 3868 28.67 Private sector wage-employed (large firm) 313 2.32 734 5.44 1047 7.76 Private sector wage-employed (small firm) 835 6.19 1200 8.90 2035 15.09 Public sector wage-employed 217 1.61 241 1.79 458 3.40 Self-employed 2937 21.77 1132 8.39 4069 30.16 Unemployed 840 6.23 553 4.10 1393 10.33 Total 7782 57.69 5708 42.31 13490 100.00 Pooled Sample of working age individuals (15–65) for the years 2005–2013 Large firms have >20 employees (2019) 9:6 Lain IZA Journal of Development and Migration Page 7 of 35 Table 2 Median weekly earnings for the self- and wage-employed 2010–2013 (2010 Ghana Cedis) 2010 2012 2013 Women Men Women Men Women Men Private sector wage-employed (small firm) 15.44 25.73 20.51 38.73 31.06 49.90 (29.35) (73.28) (45.45) (108.63) (78.06) (112.52) Private sector wage-employed (large firm) 32.24 42.70 56.33 48.76 65.32 67.23 (81.10) (63.97) (101.50) (83.11) (86.75) (109.16) Public sector wage-employed 80.31 65.03 83.44 90.88 92.91 102.78 (94.51) (53.06) (131.34) (84.25) (130.77) (110.90) All wage-employed 23.16 36.14 35.66 46.99 43.48 56.62 (67.94) (69.05) (91.17) (99.34) (93.25) (111.99) Self-employed 23.95 54.43 31.20 76.46 49.40 92.98 (92.06) (159.56) (116.02) (140.14) (131.09) (168.64) Observations 687 463 896 710 852 696 Sample of individuals of working age (15–65) Standard deviations in parentheses Earnings deflated to 2010 Ghana Cedis and adjusted to a standard working week using data on hours worked Outliers trimmed at the 1st and 99th percentiles Large firms have >20 employees wage-employment in the GHUPS is discussed in Appendix 2.AsTable 2 shows, in 2013, men earned approximately 30% more than women at the median in the wage sec- tor. In contrast, the median earnings of self-employed men were nearly double those of self-employed women. Moreover, the gender earnings gap for the self-employed is less well explained by observable differences in human capital and individual characteristics than the gender earnings gap for the wage-employed. By regressing self- and wage-employment earnings on gender with and without a set of controls including education and age, we can decom- pose the raw gender earnings gap into ‘explained’ factors—that is, differences between women and men in terms of observable human capital—and ‘unexplained’ factors—or differences between the returns to a given level of human capital, in the spirit of Blinder and Oaxaca (Blinder 1973; Oaxaca 1973). The coefficient on gender in the regressions without controls can be interpreted directly as the raw gender earnings gap, the anal- ogous coefficient in the regressions with controls comprises the ‘unexplained’ portion, while the difference between the two is the ‘explained’ portion (Elder et al. 2010). The results, shown in Appendix 3, demonstrate that around 20% of the gender earnings gap in self-employment can be attributed to differences in observable human capital, compared with 27 percent for the wage-employed. It is also important to consider how the raw gender earnings gaps that arise in both self- and wage-employment may be influenced by unobservable drivers of occupational selection, alongside the observable measures of human capital that are included in the earnings equations in Appendix 3. This helps to characterise what the unexplained com- ponents of the gender earnings gap might be. To assess the impact of such unobservable selection on the results, we can estimate a multinomial logit model for individuals’ choice between the main five occupational statuses in the GHUPS—(1) self-employment, (2) wage-employment, (3) out of the labour force, (4) unemployment (not working but searching), and (5) being an apprentice—and then calculate selection correction terms based on the method described by Dubin and McFadden (1984). In effect, Dubin and McFadden’s approach applies the insights of the Heckman model for sample selection to (2019) 9:6 Lain IZA Journal of Development and Migration Page 8 of 35 a setting with multiple categories (Heckman 1979). As such, the model relies on finding ‘exclusion restrictions’ or variables that can be added to the multinomial logit but not the final earnings equation, which can plausibly influence occupational selection with- out directly influencing earnings. In this analysis, the exclusion restrictions comprise variables that capture sources of unearned income and parental characteristics. Using the Heckman-type correction methods described above suggests that both observed and unobserved occupational selection drive the gender earnings gaps seen in the data. In wage-employment, the point estimates for the raw, unexplained, and explained gender earnings gaps all drop to less than 5% when the Dubin and McFadden selection correction terms are included. We can also reject the null hypothesis that the coefficient on the gender dummy is equal in the models with and without the selec- tion correction terms. In self-employment, the picture is somewhat more complex. Even though the point estimates for the raw, unexplained, and explained gender earnings gaps fall substantially when correcting for unobservable selection, the standard errors for the selection-corrected model with controls in the earnings equation are relatively high. As such, we are unable to reject the null hypothesis that the unexplained gender earnings gap is equivalent in the model, which has controls, but which does not have the selection cor- rection terms, and the model which includes both controls and the selection correction terms. Since adjusting for unobservable selection appears to reduce the gender earnings gap in both self- and wage-employment, it may be that women are ‘negatively’ selecting into both of these sectors: this helps to characterise the unobservable drivers of selection. The data are consistent with a story where women, to a greater extent than men, are unable to select into the occupation in which they have comparative advantage and therefore in which their relative productivity and earnings would be highest. This paper suggests discrim- ination as a potential source of additional friction that prevents women from selecting Fig. 1 Earnings distributions by occupation and gender (2019) 9:6 Lain IZA Journal of Development and Migration Page 9 of 35 Table 3 Transition matrix for women (2012–2013) 2013 Occupation 2012 Occupation Out of the labour force Self-employed Unemployed Wage-employed Total %% % % % Out of the labour force 20.52 3.90 5.64 4.55 34.61 Self-employed 3.90 25.58 2.24 2.82 34.54 Unemployed 3.47 2.24 3.03 1.59 10.33 Wage-employed 3.25 2.89 2.24 12.14 20.52 Total 31.14 34.61 13.15 21.10 100.00 Sample of working age women (15–65) present in the 2012 and 2013 waves of the GHUPS occupations according to their comparative advantage. This is not to rule out other drivers of selection. For example, there exists a wide literature documenting the impact of fam- ily structure on women’s labour market engagement—including a paper by Heath (2017) that uses the same GHUPS data as this paper—which could explain why women select into occupations that do not necessarily maximise their earnings. The aim instead is to present wage-sector discrimination as a mechanism that appears plausible given how women and men are distributed across different occupations and given what they earn in those occupations. Thirdly, variation in earnings is greater for the self-employed than for the wage- employed. Much of this extra dispersion appears to be among relatively low-return activities, as shown by the long left tail on the self-employment earnings distribution in Fig. 1. However, there is substantial variation in the earnings of women and men in both occupations. Fourthly,asTables 3 and 4 show, transitions between self- and wage-employment occur for both women and men. Approximately 14% of women and 10% of men engaged in wage-employment in 2012 were engaged in self-employment by 2013. Conversely, around 8% of women and nearly a quarter of men engaged in self-employment in 2012 had wage jobs by 2013. As such, individuals do not specialise fully in either self- or wage-employment: some will end up working in both sectors during their life cycle. The model that follows aims to explain these disparities between the labour market outcomes of women and men, without assuming underlying gender differences in terms of productivity and without introducing additional constraints on women—such as lack of access to credit—directly into the self-employment sector. Table 4 Transition matrix for men (2012–2013) 2013 Occupation 2012 Occupation Out of the labour force Self-employed Unemployed Wage-employed Total %% % % % Out of the labour force 20.10 1.11 5.93 6.33 33.47 Self-employed 0.70 11.46 0.80 4.12 17.09 Unemployed 2.51 0.90 2.01 2.71 8.14 Wage-employed 4.12 4.32 3.32 29.55 41.31 Total 27.44 17.79 12.06 42.71 100.00 Sample of working age men (15–65) present in the 2012 and 2013 waves of the GHUPS (2019) 9:6 Lain IZA Journal of Development and Migration Page 10 of 35 4Model 4.1 Background The population of workers, of size N, is divided into two, such that some proportion π are Type-As (men) and some proportion π are Type-Bs (women). The latter are affected A B by discrimination. We assume that π = π and π = (1 − π). Individuals are also het- erogeneous in their self-employment ability, y ∼ Uniform(0, 1). This ability distribution is the same for Type-AsandType-Bs. To model discrimination, we assume that Type-Bs face the possibility of some extra shock that immediately destroys a match with a particular firm. This shock hits potential matches with probability λ. By modelling discrimination as an exogenous and stochastic feature of the matching process, we can maintain the assumption that firms are ex ante homogeneous, such that there is no inherent heterogeneity in firms’ preferences. Our approach is therefore a departure from the models of Borjas and Bronars (1989), Black (1995), Sasaki (1999), and other search and matching models that allow for discrim- ination, as we do not attempt to endogenise the process through which prejudiced firms survive. The plausibility of this setup hinges on discrimination being widespread and sim- ilar in intensity across employers. Intuitively, λ can be understood as the proportion of ‘interviewers’ at each firm that are prejudiced and therefore unwilling to employ Type-B individuals. Direct evidence on this issue is somewhat scarce. Bowlus and Eckstein (2002) show that more than half of firms (56 percent) in the USA have a ‘dis-utility factor’ asso- ciated with employing black workers, but it is not clear these findings translate to gender discrimination in urban Ghana. Nevertheless, descriptive evidence indicates that gender gaps in terms of access to formal jobs and earnings persist across almost all industries in the Ghanaian economy (Baah-Boateng 2012). This suggests that λ> 0 for at least some firms in each industry. Thus, although treating firms as homogenous is a strong assump- tion, modelling discrimination as an exogenous process in this way provides a tenable basis for our model. 4.2 Worker value functions Both types of individuals can work in either wage- or self-employment, queuing for jobs in each sector in unemployment. Following Mortensen and Pissarides (1994), workers are assumed to be risk neutral, have infinite lifespans, and discount the future at rate r. In self-employment, individuals earn their marginal product determined directly by their ability y. They also face some exogenous possibility that their self-employment activity will end, which occurs with probability q . The flow value of self-employment for workers of Type-k = A, B, denoted rV (y),can be written: k k k rV (y) = y + q V (y) − V (y) (1) s u s The asset equation for unemployment is determined by some flow of unearned income, b, as well as the options of entering self- and wage-employment. The probability of a self-employment opportunity arriving is exogenously determined by the parameter α. However, the probability of obtaining a wage-employment opportunity is derived endogenously from the matching function, m (.), which itself depends on labour market tightness, θ. We write the flow value of unemployment for each type, rV (y),as: k k k k k k rV (y) = b + α max V (y) − V (y) ,0 + m (θ ) max V (y) − V (y) ,0 (2) u s u e u (2019) 9:6 Lain IZA Journal of Development and Migration Page 11 of 35 Tightness in the labour market is dependent on the total number of unemployed Type-As A B and Type-Bs, labelled U and U respectively, as well as the number of vacancies, v. θ = (3) A B U + U Although the underlying matching function m(θ ) is the same for both types, the proba- bility that Type-Bs actually secure a wage job is adjusted for the fact that some matches are immediately destroyed due to discrimination by a factor of (1 − λ). m(θ ) if k = A m (θ ) = (4) m(θ )(1 − λ) if k = B Finally, the flow value of wage-employment for both types is determined by the bargained wage, w (y), as well as the possibility that a match ends. Separations are exogenous, occurring with some probability q each period. k k k k rV (y) = w (y) + q V (y) − V (y) (5) e u e Despite what the transition matrices for urban Ghana show, we do not allow for direct transitions between self- and wage-employment, as doing so adds substantial complica- tion to the model. Moreover such transitions are still captured by workers ability to move between self- and wage-employed jobs through unemployment. 4.3 Firm value functions Firms, assumed to be risk neutral, can employ either one or zero workers. The value of a filled job will differ, depending on whether firms successfully match with a Type-A or a Type-B worker. Productivity in a filled job, z , is assumed to be homogeneous. As such, the value of a match for Type-Asand Type-Bs only differs because the wage function is dependent on type. This arises because Type-Bs’ outside options are reduced by the extra possibility that matches simply terminate immediately after formation, weakening their wage bargaining position. The flow value of matching with a Type-k = A, B worker with ability y, which we label r (y), can therefore be written: k k k r (y) = z − w (y) + q − (y) (6) 0 e v e e The probability of matching with a Type-A or a Type-B worker is determined by the pro- portion of Type-Asand Type-Bs among the unemployed. This is captured by the A B U +U and terms below. Given the per period cost of advertising a job, c, the flow value A B U +U of posting a vacancy, r ,is: A A m (θ ) U r =− c + E max (y) − ,0 v v A B θ U + U (7) B B m (θ ) U + E max (y) − ,0 A B θ U + U 4.4 Wage determination Wages are determined through a Nash bargain, which divides up the surplus derived from a successful match. Bargaining power is parameterised by γ , such that wages are negotiated to solve: γ (1−γ) k k k max V (y) − V (y) (y) − ∀k = A, B (8) e u e w (y) (2019) 9:6 Lain IZA Journal of Development and Migration Page 12 of 35 Assuming that the equilibrium will be characterised by free-entry of firms, such that the value of posting a vacancy, , is driven to zero, Eq. (8)canbesolvedfor: k k w (y) = γ z + (1 − γ)rV (y)∀k = A, B (9) The differences in wages between Type-Asand Type-Bs enter through the unemployment term, V (y). Conditional on y, this is lower for Type-Bs because their probability of a successful match that takes them out of unemployment into wage-employment is reduced by discrimination. 5Solution The equilibrium can be characterised by reducing the many equations in terms of many endogenous variables specified above, into just one equation in terms of one endogenous variable, namely θ. Four conditions define the equilibrium: (1) firms enter freely, such that the value of maintaining a vacancy is zero, (2) matches in the wage sector are consum- mated if and only if it is in the interests of worker and firm to do so, (3) steady state flows into and out of unemployment, self-employment, and wage-employment are equal, for each type, and (4) individuals only take jobs—in either self- or wage-employment—that are worth their while, given their type and their ability y. To find the equilibrium, we first use Condition (4) to derive some cut-off levels of productivity y, above and below which workers will forego work in either wage- or self-employment. Secondly, we use Condition (3) to derive the steady-state level of unemployment in the model. Finally, we bring these components together by using Condition (1) and rewriting the asset equation for posting a vacancy. 5.1 Productivity cut-offs As in Roy’s (1951) classic model of occupational choice, the jobs that individuals are willing to take depend on their self-employment productivity, y,aswellastheirtype, k k k k = A, B. Defining X (y) ≡ V (y) − V (y), workers will take wage-employment only e e u if its flow value is greater than unemployment, such that X (y)> 0. Similarly, defining k k k k X (y) ≡ V (y) − V (y), workers will participate in self-employment only if X (y)> 0. s s u s This implies there may be some type-specific cut-off values of y,where X (y) = 0and X (y) = 0, above and below which certain jobs will not be taken. In order to interpret these cut-offs, we need to know how workers value wage- and self-employment differently—relative to unemployment—according to their productivity. k k That is, we need to understand how X (y) and X (y) change in y. Rearranging the worker e s ∂X (y) value functions along with the wage schedule and differentiating, we can express in ∂y ∂X (y) , showing that these two differentials have (weakly) opposite signs. terms of ∂y k k ∂X (y) ∂X (y) k e s r + q + γ1 k m (θ ) =−1 k αγ (10) [X (y)>0] [X (y)>0] e s ∂y ∂y k k ∂X (y) ∂X (y) s e It can further be shown that is always positive, while the sign of depends on ∂y ∂y k k whether X (y)> 0or X (y) ≤ 0. s s ∂X (y) < 0if X (y)> 0 e s (11) ∂y = 0if X (y) ≤ 0 s (2019) 9:6 Lain IZA Journal of Development and Migration Page 13 of 35 At the first potential cut-off where X (y) = 0, unemployed individuals are just indifferent between accepting and rejecting a self-employment job: we label the level of productivity ∗k k at which this occurs y .Since X (y) slopes upwards, unemployment is more valuable ∗k ∗k than self-employment when productivity is below y . This means workers with y < y would never accept self-employment opportunities. Intuitively, if y is low, the returns to self-employment are insufficient to tempt workers away from queueing for wage jobs, where they could achieve higher earnings in the future. ∗∗k k Thereisalsoapotentialcut-off—whichwelabel y —where X (y) = 0and unem- ployed workers are just indifferent between accepting and rejecting wage job offers. Since X (y) is weakly downward sloping, unemployment is more valuable than wage- ∗∗k ∗∗k employment when productivity is above y .Workerswith y > y will never accept wage-employment offers, as they are better off biding their time in unemployment and waiting for a self-employment job, in which they have high productivity and therefore greater earnings. ∗k Providing the lower productivity cut-off y exists, which is guaranteed under relatively mild assumptions about b, three types of equilibria may prevail (see Fig. 2). This depends Fig. 2 Possible equilibria and productivity cut-offs. Functions shown are stylised, and not to scale. The k k upward and downward sloping sections of X (y) and X (y) are represented as linear for simplicity. ‘SE’ refers s e to self-employment. ‘WE’ refers to wage-employment. Panel a: all individuals are willing to take wage job offers. Panel b: no individuals are willing to take wage job offers. Panel c: only low-productivity individuals are willing to take wage job offers (2019) 9:6 Lain IZA Journal of Development and Migration Page 14 of 35 ∗∗k on the upper productivity cut-off y . The existence of both productivity cut-offs is discussed in Appendix 4. When z is large relative to b, all individuals are willing to take wage job offers, so the ∗∗k ∗k upper cut-off at y does not exist (Panel A). In this case, the lower cut-off at y simply divides individuals into those that would also be willing to work in self-employment ∗k ∗k y ≥ y and those that would not y < y . If, however, b is large relative to z , the flow value of unemployment is so high that no ∗∗k individuals are willing to take wage job offers, again meaning the upper cut-off at y does not exist (Panel B). In this type of equilibrium, individuals with low productivity levels ∗k y < y never exit unemployment, because the returns to self-employment are insuffi- cient to tempt them away from simply receiving b each period. However, individuals with ∗k higher productivity y ≥ y enter self-employment if such jobs arrive. ∗k ∗∗k In the final case, where both cut-offs y and y exist, individuals can be divided into three groups (Panel C). Individuals with very low productivity only ever accept oppor- tunities in wage-employment, while individuals with very high productivity accept only ∗k ∗∗k self-employment opportunities. However, individuals with y ≤ y < y , accept both self- and wage-employment jobs. These individuals do not fully specialise in either wage- or self-employment and may transition (via unemployment) between different sectors throughout their lifetime. In the analysis that follows in Section 6, we restrict the values of z and b to ensure the existence of both productivity cut-offs, such that an equilibrium of this type prevails. ∗k k ∗k Using the worker value functions and the wage schedule to solve for y in X y = 0, the lower cut-off can be expressed in terms of the model’s exogenous parameters and the matching function: b(r + q ) + γ m (θ )z e 0 ∗k y = (12) r + q + γ m (θ ) ∗∗k The worker value functions and the wage schedule can also be used to solve for y in k ∗∗k k k ∗∗k X y = 0. Since the m (θ ) and w (y) terms are eliminated, y can be expressed as ∗∗A ∗∗B a function of the exogenous parameters of the model, meaning that y = y ,and the upper cut-off is unaffected by type. This is because workers with high self-employment productivity are not affected by discrimination in the wage sector, even if they are Type- Bs, as they forego wage-employment opportunities anyway. z (α + q + r) − b (r + q ) 0 s s ∗∗k y = (13) 5.2 Steady-state employment flows The flows between unemployment, self-employment, and wage-employment, for Type- ∗k ∗∗k k = A, B workers depend on their productivity relative to the cut-offs, y and y . ∗k Individuals with low productivity y < y will never take self-employment jobs, so the only relevant flow for them is between wage-employment and unemployment. By con- ∗∗k trast, individuals with high productivity y > y will never take wage-employment, so they only move between self-employment and unemployment. It is only individuals ∗k ∗∗k with middling ability y ≤ y < y that are willing to become both wage- and self- employed, and therefore flow from unemployment to self- and wage-employment (and back). In a steady state, these employment flows must balance so that the proportion (2019) 9:6 Lain IZA Journal of Development and Migration Page 15 of 35 k k of time that a Type-k,ability y individual is unemployed u (y) , self-employed n (y) , or wage-employed n (y) remains unchanged and adds up to 1. The proportion of time spent by Type-k individuals with ability y in unemployment, self-employment, and wage-employment can be written: e ∗k ⎪ if y < y m (θ )+q e ∗k ∗∗k if y ≤ y < y u (y) = q (14) k e m (θ )+q +α ⎪ q ⎩ q s ∗∗k if y ≥ y α+q ∗k 0if y < y ⎨ q k s ∗k ∗∗k n (y) = q if y ≤ y < y (15) m (θ )+q +α α ∗∗k if y ≥ y α+q m (θ ) ∗k ⎪ if y < y ⎪ k m (θ )+q ⎨ e k m (θ ) ∗k ∗∗k n (y) = (16) if y ≤ y < y e k e m (θ )+q +α ⎪ e ⎪ s ∗∗k 0if y ≥ y The total number of unemployed Type-ks, which is needed to pin down θ,can be writ- ten as the product of the average proportion of time that a Type-k individual spends k 15 in unemployment E u (y) and the total number of Tyke-ksinthe population .The A B total number of unemployed individuals (U) is then simply the sum of U and U .The k k Type-specific numbers of wage-employed and self-employed people N and N and e s the total numbers of wage-employed and self-employed people (N ) and (N ) can be e s calculated in the same way. ∗k ∗∗k y y 1 k k k k k k k U = N π E u (y) = N π u (y)f (y)dy + u (y)f (y)dy + u (y)f (y)dy ∗k ∗∗k 0 y y (17) 5.3 The free-entry condition To find the model’s equilibrium, we write a single equation in which the only unknown is labour market tightness, θ. We do this by rewriting the asset equation for posting a vacancy in Eq. (7), assuming that the free-entry of firms drives down to 0, and incor- porating all the information on occupational choice and steady-state employment flows from Sections 5.1 and 5.2. Setting = 0 and noting that the max operators are redun- dant because firms will not accept matches that do not provide them with a positive profit, we can write: A A B B m (θ ) U m (θ ) U A B c = E (y) + E (y) (18) e e A B A B θ U + U θ U + U The expectations operators in Eq. (18) are taken over all the possible values of y,separat- ing out Type-Asand Type-Bs, with which a firm could match. Since firms can only match with unemployed workers, we apply Bayes’ Law to adjust the productivity distribution for the entire population . The underlying productivity distribution for the full popu- lation, f (y),isthesameforType-Asand Type-Bs, but the productivity distribution for (2019) 9:6 Lain IZA Journal of Development and Migration Page 16 of 35 unemployed individuals, h (y), differs according to type, because Type-Asand Type-Bs do not have equal chances of being in unemployment. u (y)f (y) h (y) = (19) k k U /N π Using the asset equations for filled jobs and the relevant wage schedules, we can therefore write the free-entry condition without the expectations operators as: ∗A A A m(θ ) (1 − γ) U u (y)f (y) c = z − rV (y) dy A B θ (r + q ) U + U U /N π ∗∗A y A u (y)f (y) + z − rV (y) dy ∗A U /N π (20) ∗B B y B U u (y)f (y) + (1 − λ) z − rV (y) dy A B B U + U U /N (1 − π) ∗∗B y B u (y)f (y) + z − rV (y) dy ∗B U /N (1 − π) The only unknowns besides θ in Eq. (20)—aside from the unemployment rates and levels and the productivity cut-offs covered in the previous sections—are the unemployment A B ∗k flow value terms, rV (y) and rV (y). These will differ for individuals either side of y . u u ∗k ∗∗k For workers with y ≤ y < y , for whom both self- and wage-employment are an option, the worker value functions can be rearranged for: b(r + q )(r + q ) + αy(r + q ) + γ m (θ )z (r + q ) s e e 0 s rV (y) = (21) (r + q )(r + q ) + α(r + q ) + γ m (θ )(r + q ) s e e s ∗k Similarly, for workers with y < y , who take only wage-employment opportunities, we can write: b(r + q ) + γ m (θ )z e 0 rV (y) = (22) (r + q ) + γ m (θ ) As such, Eq. (20) is an expression with only one unknown: θ. By imposing a functional form on the matching function and finding values for the exogenous parameters, we can solve this equation using numerical methods. As shown in Appendix 5, the following standard conditions for the matching function (m(θ )) guarantee the existence of the equilibrium: 1. m(θ ) is increasing in θ. m(θ ) 2. is decreasing in θ. 3. lim m(θ ) = 0 and lim m(θ ) =∞. θ →0 θ →∞ m(θ ) m(θ ) 4. lim =∞ and lim = 0. θ →0 θ →∞ θ θ As in other models that incorporate worker heterogeneity into the Mortensen and Pissarides (1994) framework, the uniqueness of the equilibrium cannot be guaranteed analytically (Chéron et al. 2011; Albrecht et al. 2017). We therefore follow Albrecht et al. (2009) and numerically verify that the right-hand-side of the free-entry condition in Eq. (20) is monotonically decreasing for all values of θ in the simulations that follow. (2019) 9:6 Lain IZA Journal of Development and Migration Page 17 of 35 6 Simulation results To examine the effects of discrimination, we simulate the model for different values of λ, using the parameter values shown in Table 5. Taking 1 year to be the implicit unit of time, the chances of exiting self- and wage-employment—q and q —can be calculated s e directly from the transition matrices in Tables 3 and 4 above. The precise functional form for m(θ ) and the value of α cannot be directly estimated from the GHUPS data, not only because we lack information on vacancies in the wage sector, but also because ∗k ∗∗k certain workers y < y will never take self-employment jobs and others y ≥ y will never take wage-employment jobs. We therefore adopt the same Cobb-Douglas matching function used by Albrecht et al. (2009) for Latin America. We set α to 1 to ensure ∗∗k that the higher productivity cut-off, y , exists (see Appendix 4). Moreover, assuming that individuals have at least one opportunity to enter self-employment each year seems reasonable, as the barriers to entry to many entrepreneurial activities in urban Ghana appear to be low. Returns in each occupation are also, where possible, guided by the data. Given the sub- stantial overlap in the distributions of earnings in self- and wage-employment, we set z to 0.5, so the homogeneous productivity parameter in wage-employment is the mean and median of the distribution of self-employment productivity, y.Weset b to 0 because no unemployed individuals received periodic social security unemployment benefits in Ghana in 2013 (International Labour Organization 2018). This also ensures that both pro- ductivity cut-offs exist. The real interest rate and the cost of creating vacancies are set at 0.09 and 0.3 following similar work by Yassin and Langot (2018) on informality in Egypt. The bargaining parameter γ is set at 0.5: given that this equals the matching elasticity, the Hosios condition is satisfied. Solving for the equilibrium level of θ can be recast as a root finding problem, by sub- tracting the right-hand-side of the free-entry condition in Eq. (20)from c.Wesolve for the equilibrium level of θ with Quasi-Newton methods, in particular using Broyden’s approach (Broyden 1965; Miranda and Fackler 2002). Turning to the equilibrium ability and earnings distributions, we define h (y) as the density of ability in sector j = u, e, s, for a Type-k individual, and demonstrate how to cal- culate the ability distribution for the unemployed as an example. As shown in Eq. (19), Table 5 Exogenous parameters and functional forms in the baseline model Parameter Calibration value Without discrimination With discrimination r 0.09 0.09 b 00 0.5 0.5 m(θ ) 4θ 4θ α 11 q 0.29 0.29 q 0.35 0.35 c 0.3 0.3 γ 0.5 0.5 N 11 π 0.5 0.5 λ 00.5 (2019) 9:6 Lain IZA Journal of Development and Migration Page 18 of 35 Bayes’ Law allows us to write h (y) in terms of the proportion of time that Type-k,abil- ity y individuals spend in unemployment, u (y), as well as the underlying distribution of productivity in the population, f (y), and the average unemployment rate for Type-ks k k k ∗k ∗∗k U /N π .Since u (y) takes different values either side of the cut-offs y and y ,the probability density function (PDF) for h (y) has three discontinuous portions as shown in k k Eq. (23). The PDFs of ability for the self-employed, h (y), and the wage-employed, h (y), s e can be recovered in exactly the same way. q N π e ∗k if y < y k k m (θ )+q U ⎪ e k e N π ∗k ∗∗k h (y) = q if y ≤ y < y (23) k k m (θ )+q +α U ⎪ q s N π ∗∗k if y ≥ y α+q s U In self-employment, the PDF for ability can equally be interpreted in terms of earn- ings, but this is not the case for the wage-employed. The wage distribution, which we k k ∗k k ∗∗k ∗k label g (w), only varies between w y and w y . All individuals with y < y k k ∗k simply receive w (0) = w y . This is because wage-employment productivity, z ,is homogenous and the outside option of unemployment—which determines workers’ bar- gaining position—is constant in y for these individuals, since they will never become self-employed. This reduces dispersion in earnings for the wage-employed. However, ∗k ∗∗k there is variation in wages for individuals with y ≤ y < y since, they are willing to take self-employment jobs, so the outside option of unemployment varies in y (see k ∗∗k ∗∗k Eq. (21)). The highest wage paid is w y because, any individuals with y > y can- not be incentivised by firms to take wage jobs given their productivity and hence their earnings in self-employment. Across unemployment, self-employment, and wage-employment, the ability and earn- ings distributions for Type-As First-Order Stochastically Dominate the distributions for Type-Bs in the baseline model with discrimination, as shown in Fig. 3. The implication, however, that mean ability is lower for Type-BsthanType-Asin all three sectors is prima facie somewhat puzzling since both Types have the same underlying ability distribution. This begs the question of where the ‘missing’ ability for Type-Bs actually goes. To reconcile this puzzle, we need to consider how discrimination affects the labour mar- ket sorting of Type-Asand Type-Bs differently. Firstly, as shown in Table 6,when λ> 0 there are more unemployed Type-BsthanType-As in the equilibrium of the baseline model with discrimination, resulting directly from the extra frictions that Type-Bsface in obtaining wage jobs. This drives down average ability among the unemployed Type-Bs because it is lower productivity individuals that struggle to exit unemployment more with wage sector discrimination. The outcomes of the higher productivity unemployed Type- Bs, however, are unchanged, because their opportunities to work in self-employment remain. This emphasises the fact that the effects of discrimination are not equal across the whole distribution of Type-Bs. There are also more self-employed Type-BsthanType-As, becausethe extrawagesec- tor frictions associated with discrimination result in less productive Type-Bs accepting ∗B both wage- and self-employment. This is reflected in the fact that y is lower when (2019) 9:6 Lain IZA Journal of Development and Migration Page 19 of 35 Fig. 3 Ability and earnings in the baseline model with discrimination Table 6 Outcomes in the baseline model equilibrium λ = 0 λ = 0.5 Type-As Type-Bs Type-As Type-Bs U 0.0681 0.0681 0.0629 0.0812 N 0.1608 0.1608 0.1529 0.1830 N 0.2711 0.2711 0.2842 0.2358 E h (y) 0.5901 0.5901 0.6147 0.5398 Var h (y) 0.0920 0.0920 0.0887 0.0964 E h (y) 0.7657 0.7657 0.7796 0.7297 Var h (y) 0.0263 0.0263 0.0232 0.0340 E h (y) 0.3197 0.3197 0.3242 0.3080 Var h (y) 0.0386 0.0386 0.0386 0.0388 E g (w) 0.4521 0.4521 0.4593 0.4342 Var g (w) 0.0003 0.0003 0.0002 0.0006 ∗k y 0.3824 0.3824 0.4010 0.3347 ∗∗k y 0.5770 0.5770 0.6920 0.6920 v 0.0687 0.0687 0.1128 0.1128 θ 0.5046 0.5046 0.7827 0.7827 (2019) 9:6 Lain IZA Journal of Development and Migration Page 20 of 35 discrimination is introduced into the model. Thus, the extra Type-B workers in self- employment are of lower ability, on average, than those who would be self-employed were there no discrimination. Finally, Type-Bs’ average ability in wage-employment is lower than Type-As’ because it is the higher ability wage-employed Type-Bs who are induced to accept both self- and wage-employment by discrimination. Thus, even though there are fewer wage-employed Type-Bs, these workers have lower productivity, on average. This intuition is reflected in Fig. 4, which shows the PDF of ability for Type-Bs in the wage sector both with and with- out discrimination. Vitally, setting λ> 0 reduces the lower cut-off, as shown by the shift ∗B ∗B ∗B from y to y . As such, it is individuals with productivity just below y that suddenly become less likely to enter the wage sector when λ> 0: it is the most able wage-employed workers that are pushed out of the wage jobs first by discrimination. Decomposing Type-Bs’ average ability, E [ y], we can see how these three effects com- bine to create ability and earnings gaps in all three sectors, despite the distribution of ability being identical for Type-Asand Type-Bs. This is shown in Eq. (24) by writing E [ y] in terms of average ability in each sector, E h (y) ∀ j = u, s, e,andtheproportionof Type-B individuals that are unemployed, self-employed, and wage-employed. The under- braces show the impact of adding discrimination into the model. The negative effect that introducing discrimination has on the first and second terms on the right-hand side is entirely offset by the positive effect on the third term. B B B U N N B B B s B e E [y] = E h (y) +E h (y) +E h (y) u s e N (1 − π) N (1 − π) N (1 − π) (24) − − − + + − The intuition behind this puzzling result can also be couched in terms of the Roy (1951) model of occupational choice. Labour market frictions prevent individuals from select- ing jobs on the basis of comparative advantage alone. These imperfections in the sorting Fig. 4 Wage sector ability PDF with and without discrimination (2019) 9:6 Lain IZA Journal of Development and Migration Page 21 of 35 process lower the average ability for both types in each sector. However, since Type-Bs face extra frictions due to discrimination, their occupational selection departs even fur- ther from their comparative advantage. This drives a wedge between the values of the lower cut-off for Type-AsandType-Bs and explains why ability and earnings differentials can persist across all three sectors. The model also suggests that discrimination may exert spillover effects on Type-As. In particular, discrimination increases Type-As’ chances of gaining wage jobs, reducing the number who are unemployed. This is because they face a slacker labour market. Firstly, they are better insulated against competition from the Type-Bs, which increases their chances of successfully matching with a firm. At the same time, firms actually create more vacancies as they need to compensate for the fact the discrimination instantly destroys some proportion of potential matches. Interpreting Type-As as men and Type-Bs as women, the baseline model with dis- crimination matches the stylised facts emanating from the GHUPS in Section 3.Men dominate wage-employment, while women are over-represented in self-employment. Average gender earnings gaps persist in both sectors, but are larger for the self-employed than the wage-employed. Also, earnings are more dispersed for the self-employed than the wage-employed, as bargaining between worker and firm makes the link between ∗∗k ∗k ability and earnings less direct in the wage sector. Finally, since y exceeds y for both types, there are some individuals who do not fully specialise in either wage- or self-employment. 7 Comparative statics This section considers the comparative statics for three key parameters to demon- strate the links between wage sector discrimination and policy. Productivity in wage- employment, z , serves as a proxy for growth. The flow of unearned income in unemployment, b, captures government-provided unemployment benefit. The rate at which unemployed individuals receive opportunities to become self-employed, α, illus- trates the role the government may play in alleviating barriers to entry into self- employment, for example, by providing better access to inputs or credit. As in previous models incorporating worker heterogeneity and self-employment or informality into Mortensen and Pissarides’ (1994) random matching and bargaining model, it is not possible to review the comparative statics purely analytically. As such, we take the simulations from Section 6, in the case with discrimination with λ = 0.5, and inves- tigate the comparative statics numerically. Nevertheless, it is possible to differentiate some of the key components of the equilibrium—such as the productivity cut-offs, the size of each sector, and the ability distributions—while holding θ constant.This turns out to be a useful approximation for the overall effects and illustrates some of the main mechanisms that cause sectors to expand and contract and average earn- ings to rise and fall differently for Type-AsandType-Bs as the key parameters are altered. 7.1 Varying z Higher levels of productivity in wage-employment—which can be seen as a proxy for economic growth—draw both Type-AsandType-Bs into wage-employment and out of self-employment. This is clear in the numerical simulations shown in Figure 5 in (2019) 9:6 Lain IZA Journal of Development and Migration Page 22 of 35 k k ∂N ∂N e s Appendix 6, yet it also emerges that < 0and > 0. This results from ∂z ∂z 0 ∗ 0 ∗ θ =θ θ =θ the fact that both of the productivity cut-offs are increasing in z . While the numerical simulations calibrated using the GHUPS data show that increas- ing z decreases unemployment for both types, we can see analytically that the effects on unemployment are ambiguous and dependent on the other parameters in the model. Differentiating U with respect to z , while holding θ constant, we can write: k k ∗k k ∗∗k ∂U N π ∂y q m (θ ) ∂y = − (25) k k ∂z m (θ ) + q + α m (θ ) + q ∂z α + q ∂z 0 e e 0 s 0 ∗ q ∗ ∗ θ =θ θ =θ θ =θ Increasing z thus produces two countervailing effects. On the one hand, the result- ∗k ing rise in y reduces the proportion of individuals who are willing to work in both self- and wage-employment: this places upward pressure on unemployment because more low-productivity individuals rule out becoming self-employed. On the ∗∗k other hand, the resulting rise in y increases the proportion of people who are willing to work in both self- and wage-employment: this suppresses unemployment because more high-productivity individuals consider becoming wage-employed as well as self-employed. The balance of these two countervailing effects depends on m (θ ) and α,suchthat discrimination makes it more likely that a rise in z will increase unemployment for ∗k Type-Bs. A higher level of α boosts the upward pressure that the resulting rise in y has on unemployment while also reducing the downward pressure from the result- ∗∗k ing rise in y . Intuitively, if self-employment jobs are easier to find, the increase in z will induce fewer high-productivity to consider wage-employment as well as self- employment. The converse is true for m (θ ). In particular, if it is easier to match with a wage job, high-productivity workers are more likely to consider wage-employment along- side self-employment and some relatively high-productivity workers start excluding the option of self-employment altogether. This is, however, less likely for Type-Bs if discrimi- nation is more widespread as, with a higher λ, m (θ ) will be lower. Thus, discrimination increases the likelihood that unemployment among Type-Bs will rise when the economy grows. Average ability and earnings in both wage- and self-employment also rise if z is increased, but discrimination slows this process for Type-Bs. Again, these effects emerge because both of the productivity cut-offs are increasing in z . Higher-productivity workers are less inclined to exclude the possibility of wage work and some relatively high-productivity individuals begin to exclude self-employment, so average ability and earnings rise among the wage-employed. At the same time, this leaves a smaller pool of individuals with an even higher level of of y in self-employment. However, the effects of the shifting cut-offs are suppressed when m (θ ) is lowered by discrimination. To illus- trate this, we can use the properties of the uniform distribution to write expressions for average ability and earnings in each sector and then differentiate with respect to z while holding θ constant. For example, for average ability in wage-employment, we can write: (2019) 9:6 Lain IZA Journal of Development and Migration Page 23 of 35 k e k ∗k k ∗k 2m (θ )α N y ∂E h (y) N π e ∂y e ⎢ s 2 q ∂z k k e m (θ ) + q ∂z 0 0 ∗ 2N m (θ ) + q + α ∗ θ =θ e θ =θ k e m (θ )α 2 2 ∂N ∗k k ∗∗k e − y + m (θ )y (26) m (θ ) + q ∂z θ =θ ∗∗k ∂y k k ∗∗k +2m (θ )N y ∂z θ =θ ∗k ∗∗k ∂y ∂y Since m (θ ) enters the terms before and positively, the extent of ∂z ∂z 0 ∗ 0 ∗ θ =θ θ =θ discrimination, λ enters negatively. As such, discrimination may potentially slow the distribution of the proceeds of growth. 7.2 Varying b While raising unemployment benefit, b, increases unemployment and self-employment at the expense of wage-employment in the numerical simulations shown in Figure 6 in Appendix 6, looking analytically at the effects of raising b once again reveals that these results are sensitive to the other parameters in the model. This arises ∗k ∂y because b moves the productivity cut-offs in different directions: > 0 ∂b θ =θ ∗∗k ∂y while < 0. Intuitively, higher unemployment benefits afford workers ∂b θ =θ the opportunity to wait for longer before accepting a job, reducing the need to take any job that comes along. In turn, workers can specialise more in either wage- or self-employment in accordance with their productivity. In the numer- ∗∗k ∗k ical simulations, increasing b causes y to fall faster than y rises for both types. As such, the increase in the proportion of high-productivity workers who are only willing to do self-employment rises faster than the fall in the proportion of low-productivity workers who are willing to do wage-employment only. How- k k ever, this need not be the case, as differentiating N and N with respect to b e s demonstrates. k k ∗k ∗∗k ∂N N π ∂y ∂y e k = + m (θ ) k e k ∂b m (θ ) + q + α m (θ ) + q ∂b ∂b e e ∗ ∗ ∗ θ =θ θ =θ θ =θ (27) k k ∗k k ∗∗k ∂N N π q ∂y αm (θ ) ∂y = −α − (28) ∂b m (θ ) + q + α q ∂b α + q ∂b e s s ∗ q ∗ ∗ θ =θ θ =θ θ =θ The likelihood that increasing b leads to a rise in wage-employment (and a decline in self-employment) is therefore higher when m (θ ) is lower. For Type-Bs, this happens when discrimination is more widespread (λ is higher). As such, unemployment benefits (2019) 9:6 Lain IZA Journal of Development and Migration Page 24 of 35 may offer a way of shifting employment from self-employment to the wage sector, especially for Type-Bs. The effects of changing b on average ability and earnings in each sector are sim- ilarly ambiguous, although—as the simulations show—an interesting wedge emerges between earnings and ability in wage-employment. This arises because unemploy- ment becomes a more tenable outside option, affording wage workers more bargaining power. 7.3 Varying α While Section 6 considers how altering the matching function for wage-employment— by introducing discrimination—alters Type-As’ and Type-Bs’ labour market outcomes, there is a supplementary question over the impact of changing the arrival rate for oppor- tunities in self-employment. As the simulations in Figure 7 in Appendix 6 show, the number of individuals in self-employment rises at the expense of wage-employment if α is increased. These changes are almost entirely driven by the top of the productiv- ∗k ∂y ∗k ity distribution. Since = 0, there are only very small changes in y ,brought ∂α θ =θ about by the adjustment in labour market tightness θ. The upper cut-off, by contrast, declines relatively sharply with higher levels of α. When self-employment opportuni- ties come along more frequently, higher-productivity workers of both types are more willing to forego wage-employment and pursue a job in which they have comparative advantage. Correspondingly, there are moderate declines in average ability and earnings in all sectors of the economy, as α is increased. As the the upper cut-off falls, more individuals with lower productivity are drawn into self-employment. At the same time, it is those individuals with the highest ability among those who were pre- viously willing to take both self- and wage-employment, that start to ignore the option of becoming wage-employed, with higher levels of α. Indeed, the effects of changing α are analogous to the effects of changing λ (as in Section 6), but the mechanism operates around the higher productivity cut-off, rather than the lower one. 8Conclusion In this paper, we develop a search and matching model of the labour market, which gives workers the option of self-employment and allows for gender-based discrimination in the wage sector. Discrimination is modelled without assuming firms are heteroge- neous: instead we assume that there is some stochastic shock to the matching function for all female job seekers, which affects all firms in the economy. This can be thought of as each firm containing some proportion of prejudiced interviewers, whom job seekers may encounter. This approach may be tenable in countries like Ghana, where work- ers’ outcomes depend on their gender across many industries and many sectors. The model also includes individual heterogeneity in terms of self-employment productivity: this affects wage workers’ outside options generating earnings dispersion in the wage sector too. We show that earnings and ability gaps can persist in all sectors of the econ- omy, even if the underlying ability distributions for women and men are identical. Drawing on the logic of the Roy (1951) model, this result arises because labour (2019) 9:6 Lain IZA Journal of Development and Migration Page 25 of 35 market frictions push individuals away from the jobs that best match their com- parative advantage. In the presence of discrimination, women’s occupational choices are even more distorted than those of men, driving down their average ability in each sector. Our model therefore suggests an alternative explanation for why earnings gaps are so large for the self-employed, without assuming that there are underly- ing differences between the productivity distributions of women and men and without building discrimination into the self-employment sector itself. This has crucial policy implications for countries like Ghana, where self-employment is prevalent among women. Previous programmes have solely targeted self-employed women, either by trying to build their entrepreneurial ability through train- ing and mentoring or by attempting to relax constraints to business growth by improving access to credit and other inputs. However, this paper suggests that improving the outcomes of women in self-employment requires a more holistic approach, including policies that target discrimination or other frictions in wage- employment. Gender inequality in the labour market cannot be eliminated one sector at a time. Endnotes The female and male labour force participation rates in 2013 were 74 and 79 percent respectively (International Labour Organization 2018). A later version of this model, which does not allow for self-employment but which focusses more directly on firm heterogeneity, is discussed in Meghir et al. (2015). For examples see, Aigner and Cain (1977), Coate and Loury (1993), and Moro and Norman (2004). For an extension with a third type of firm that employs both Type-AsandType-Bsand pays them equal wages, see Lanning (2014). Flabbi’s (2010)buildsdirectlyonworkbyBowlus(1997), Eckstein and Wolpin (1999), and Bowlus and Eckstein (2002). Detailsofthesample areprovidedinAppendix 1. The relative merits of different approaches for correcting for selection using the multi- nomial logit in different settings are discussed at length by Bourguignon et al. (2007). The method due to Lee (1983) offers a potential alternative to the Dubin and McFadden approach. Unlike Dubin and McFadden’s approach, Lee’s method makes the restrictive assumption that the covariance between the earnings equation error terms and the selec- tion equation error terms is the same for all occupations, so it is not preferred for the analysis in the paper. However, in certain circumstances — especially where the sample size is small relative to the number of categories — Lee’s approach may be more appropri- ate, since the multiple correction terms generated by the Dubin and McFadden approach may be collinear, reducing the efficiency with which the earnings equation parameters can be estimated. As such, we focus on the results from Dubin and McFadden approach, but check the results are robust to using the Lee method and highlight any differences that arise. Specifically, the exclusion restrictions for unearned income comprise two dummy variables for whether the individual lived in a household with agricultural land or non-agricultural land and a dummy variable for whether the individual received any (2019) 9:6 Lain IZA Journal of Development and Migration Page 26 of 35 sources of income unrelated to their present job (such as remittances, gifts, or pay- ments from a non-governmental organisation). The exclusion restrictions for parental characteristics comprise a set of dummy variables for whether the mother and father had attained primary, lower secondary, upper secondary, or higher education and whether the mother/father had spent most of their life working in self- or wage-employment. If the Lee method is used, correcting for unobservable selection appears to have even less effect on the point estimates for the raw, unexplained, and explained gender earnings gaps in self-employment. For a range of other studies looking at drivers of occupational selection in Ghana, see Sackey (2005), Ackah et al. (2009), Heintz and Pickbourn (2012), Ackah (2013), Baah-Boateng et al. (2013), and Lain (2016). It is often observed that the earnings of self-employed or informal sector workers vary over time (as Falco (2014) shows, also using the GHUPS data). In previous iterations of the model, we allowed for stochastic shocks to self-employment earnings, but since this had no effect on the model’s main predictions, we maintain the assumption that self-employment earnings are time-invariant for parsimony’s sake. Cano-Urbina (2015) constructs a model for the Mexican labour market that allows for transitions from the informal to the formal sector but not from the formal to the informal sector. While treating wage-employment productivity as constant (at z ) is a strong assump- tion, the data indicate that earnings dispersion for the self-employed is generally higher than for the wage-employed. Moreover, previous iterations of the model allowed for heterogeneous productivity in both self- and wage-employment, but this only served to increase computational complexity, without substantively changing the results. As such, the simpler approach taken here is preferred. 14 ∗k k We also note that the cut-off y determines the shape of the X (y) schedule, since ∂X (y) = 0 when X (y) ≤ 0. If productivity is so low that workers would never choose ∂y self-employment, the difference between the welfare of a wage-employed worker and an unemployed worker is invariant to y. 15 k E u (y) can also be thought of as the unemployment rate. 16 ∗∗k In fact, firms can only match with a subset of unemployed workers with y < y . However, this restriction to the sample is captured later, by bounding the integrals in Eq. (20). We assume these transitions follow a simple Markov chain process (Bosch and Mal- oney 2007). Kavuma et al. (2015) find similar results using a comparable dataset from Uganda, although job-to-job transitions are somewhat less frequent in Kerr’s (2012)anal- ysis of Tanzania. We classify any direct switches between self- and wage-employment, and vice-versa, as job exits, since individuals can only reach a new job via a spell in unemployment in our model. In the GHUPS data, 60% of self-employed workers are in retail or trade, typ- ically requiring no factors of production other than time and a stock of goods to sell. Setting higher values for α does not substantially affect the main findings of the model. 19 ∂U It emerges that > 0 unambiguously. ∂b θ =θ Unemployment can approach, but never reach 0, because each period some wage- and self-employment workers will lose their jobs providing q > 0and q > 0. e s (2019) 9:6 Lain IZA Journal of Development and Migration Page 27 of 35 Appendix Appendix 1: Sample characteristics Table 7 Number of observations over time and space City Wave Accra CC/Takoradi Kumasi Total No. % No. % No. % No. % 2005 566 4.27 213 1.61 456 3.44 1235 9.32 2006 699 5.28 257 1.94 562 4.24 1518 11.46 2008 573 4.32 221 1.67 400 3.02 1194 9.01 2009 641 4.84 223 1.68 418 3.15 1282 9.68 2010 910 6.87 412 3.11 748 5.65 2070 15.62 2012 1297 9.79 616 4.65 1110 8.38 3023 22.82 2013 1295 9.77 606 4.57 1026 7.74 2927 22.09 Total 5981 45.14 2548 19.23 4720 35.63 13249 100.00 Sample of working age Individuals (15–65) for the years 2005–2013 ‘CC’ refers to Cape Coast Table 8 Summary statistics N Mean S.Dev. Min. 25th P.tile Median 75th P.tile Max. Full sample Sex (0 = Female, 1 = Male) 13490 0.42 0.49 0.00 0.00 0.00 1.00 1.00 Education (years) 13487 9.26 3.59 0.00 9.00 9.00 12.00 20.00 Age (years) 13491 31.82 12.30 15.00 22.00 29.00 40.00 65.00 Hours worked per week 7028 47.46 21.48 0.00 38.00 48.00 60.00 120.00 Tenure (months) 7009 90.17 100.58 0.00 17.00 52.00 129.00 608.00 Female Education (years) 7780 8.71 3.80 0.00 8.00 9.00 11.00 20.00 Age (years) 7782 32.24 12.33 15.00 22.00 30.00 40.00 65.00 Hours worked per week 3937 46.85 21.79 0.00 35.00 48.00 60.00 120.00 Tenure (months) 3919 86.19 100.41 0.00 16.00 48.00 122.00 608.00 Male Education (years) 5706 10.00 3.12 0.00 9.00 9.00 12.00 18.00 Age (years) 5708 31.24 12.24 15.00 21.00 28.00 39.00 65.00 Hours worked per week 3090 48.24 21.05 0.00 40.00 48.00 60.00 120.00 Tenure (months) 3089 95.23 100.60 0.00 19.00 57.00 141.00 598.00 Observations 13,491 Pooled sample of individuals of working age (15–65) for the years 2005–2013 (2019) 9:6 Lain IZA Journal of Development and Migration Page 28 of 35 Appendix 2: Measurement of earnings Despite its importance for determining consumption and poverty, measuring earnings is no easy task (Teal 2011). There are two particular challenges associated with measuring earnings using the GHUPS, to which this paper must respond. Firstly, while the GHUPS adopted a different strategy for measuring earnings in wage- and self-employment, this should not drastically affect the analysis undertaken in this paper because the key earnings comparisons are between women and men, rather than between the wage- and self-employed. Earnings in wage-employment were measured by asking workers to report all pre-tax monetary payments from employers to employees, excluding bonuses or allowances. Earnings in self-employment were measured by asking self-employed individuals to report their profits, calculated as revenues minus all costs (including the costs of hired labour). Unfortunately, there is no general question that asks about take-home earnings in the same way for both wage- and self-employed individuals as there has been in other surveys conducted in Ghana (see for, example, the Ghana Living Standards Survey). That said, even in surveys conducted in similar contexts where the self-employed have been asked a general take-home earnings question alongside questions about revenues, costs, and profits, the correlation between the responses to the two types of questions has ten- ded to be quite low (Vijverberg 1991; 1992). Nevertheless, there is a sizeable over- lap between the earnings distributions for the self- and the wage-employed, especially for those wage-employed individuals working in small firms (Sandefur et al. 2006). This suggests that the figures obtained from the separate self- and wage-employment sections of the GHUPS could be plausible, even if there were no inter-occupation frictions. Thus, for this paper—in which the analysis does not depend directly on compar- isons between earnings in wage- and self-employment—having two different approaches for measuring earnings in the two occupations should not have a large effect on the results. Secondly, focussing just on the self-employed, several steps were taken to measure self- employment earnings (through profits) as accurately as possible. Since self-employed individuals in developing countries rarely keep formal accounts of their revenues and costs, and differentiating between business and personal expenditures may be difficult, it is sometimes suggested that any estimates of profits will provide inaccurate signals of earnings (Rankin et al. 2010). When the GHUPS data were collected, however, the enumerators carefully explained the concepts of ‘revenues’, ‘business costs’, and ‘profits’ to the respondents to ensure they were understood. The surveys also included a long list of questions about costs—including on raw materials, others’ labour, rental of buildings and vehicles, and utilities—to ensure all aspects of self-employed individuals’ businesses were covered. At the same time, the surveys were conducted with hand- held computers, which flagged any potential inconsistencies in the reported answers (such as costs exceeding revenues) to the enumerators in real time, so they could ver- ify with respondents. Responses from each day of the survey were also reviewed by field supervisors and the survey team. Thus, even before analysis began, many measures had been undertaken to ensure the earnings data for the self-employed were of high quality. We also ensure that the analysis—in particular for the gender earnings gaps—is robust to the inclusion/exclusion of outliers. In the main results, outliers are dropped at the 5th and 95th percentiles, but varying these percentiles and even leaving all outliers in does not qualitatively affect the main results. (2019) 9:6 Lain IZA Journal of Development and Migration Page 29 of 35 Appendix 3: Decomposition of gender earnings gap for self- and wage-employment Table 9 Earnings equations for self- and wage-employment Self-employed: OLS Self-employed: DMF Wage-employed (All): OLS Wage-employed (All): DMF No controls With controls No controls With controls No controls With controls No controls With controls Male? (1 = Y, 0 = N) 0.6363*** 0.5341*** 0.3344** 0.4435 0.3748*** 0.2823*** −0.0192 0.0308 (0.0593) (0.0713) (0.1324) (0.2830) (0.0467) (0.0427) (0.0795) (0.1545) Education (years) 0.0436*** 0.0449* 0.0742*** 0.0560*** (0.0100) (0.0242) (0.0074) (0.0147) Age (years) 0.0277 −0.0292 0.0653*** 0.0289 (0.0192) (0.0883) (0.0133) (0.0593) Age (years) squared −0.0003 0.0004 −0.0007*** −0.0002 (0.0002) (0.0011) (0.0002) (0.0007) Married? (1 = Y, 0 = N) 0.1525* 0.1589 0.1396** 0.2768*** (0.0784) (0.1287) (0.0601) (0.0699) Household size −0.0054 −0.0056 −0.0058 −0.0072* (0.0107) (0.0098) (0.0040) (0.0039) Constant 3.5053*** 2.2458*** 3.1174*** 3.3382* 3.4766*** 1.1850*** 4.8154*** 2.8219* (0.0454) (0.3431) (0.2098) (1.9232) (0.0305) (0.2472) (0.2178) (1.4996) City dummies × × × × Wave dummies × × × × DMF correction ×× ×× Explained gender earnings 0.1023 -0.1091 0.0925 -0.0500 gap p-value on explained gap 0.0001 0.6953 0.0000 0.7204 p-value on male coeffi- 0.0243 0.7716 0.0000 0.0872 cient versus uncorrected model N 1761 1760 1760 1760 1717 1717 1717 1717 R 0.0614 0.1128 0.0777 0.1146 0.0539 0.2339 0.1632 0.2377 Standard errors in parentheses Dependent variable: Log of Weekly Earnings ‘DMF’ refers to Dubin and McFadden model Sample of individuals of working age (15–65) from the 2010, 2012, and 2013 waves of the GHUPS Outliers trimmed at the 5th and 95th percentiles for each sector Standard errors cluster bootstrapped by enumeration area * p < 0.10, ** p < 0.05, *** p < 0.01 (2019) 9:6 Lain IZA Journal of Development and Migration Page 30 of 35 Appendix 4: Existence of the productivity cut-offs ∗k ∗∗k The productivity cut-offs y and y will only exist if they lie between 0 and 1, given our assumption for both Type-AsandType-Bs that productivity y ∼ Uniform(0, 1).Inthis appendix, we consider the conditions that will guarantee the existence of both cut-offs. ∗k Existence of y ∗k We begin by recalling that the lower cut-off for each Type, y ,maybe written: b(r + q ) + γ m (θ )z e 0 ∗k y = (29) r + q + γ m (θ ) Since all the terms on the right-hand side of Eq. (29) are non-negative by construction, it ∗k is clear that the condition that y ≥ 0 is met trivially. ∗k We can also see that y ≤ 1 providing b does not become too large. In particular, we require: r + q + γ m (θ )(1 − z ) e 0 b ≤ (30) r + q ∗k By comparing the numerator and the denominator in Eq. (29), we can see y ≤ 1 is guaranteed by simply imposing that b ≤1. Moreover, since 0 ≤ z ≤ 1, this will hold if b ≤ z . 0 0 ∗∗k Existence of y To guarantee the existence of the upper cut-off, we derive two conditions which rule out the equilibria shown in panels A and B of Fig. 2 (see Section 5.1). To ensure that X (y) is not too high, ruling out the situation in panel A of Fig. 2,we ∗∗k require that y ≤ 1. In particular, this requires: α + b(r + q ) (z − b)(q + r) s 0 s z ≤ ⇔ α ≥ (31) α + q + r 1 − z s 0 This condition restricts the values of z (relative to b), since otherwise the surplus and hence earnings from matches in wage-employment are too large for any individuals to forego wage-employed jobs. The condition also places a lower bound on α. k ∗k To exclude the possibility that panel B prevails, we require that X y > 0. Since k ∗k X y = 0 by definition, we can write: γ(z − b) k ∗k X y = (32) r + q + γ1 k m (θ ) [X (y)>0] k ∗k Thus, X y > 0if z > b. Simulation conditions Summarising the lessons from Appendix 4, we impose two restrictions: 1. z > b α+b(r+q ) (z −b)(q +r) s 0 s 2. z < ⇔ α ≥ α+q +r 1−z s 0 ∗k ∗∗k These are sufficient to guarantee the existence of both cut-offs, y and y . Appendix 5: Existence of the equilibrium To demonstrate that an equilibrium exists, we must show that the right-hand side of the free- entry condition in Eq. (20)tends to ∞ as θ → 0andthatittendsto0as θ →∞.Given the assumptions made about the matching function, this is guaranteed providing the term in the large square brackets does not tend to ∞ as θ →∞ and does not tend 0 as θ → 0. (2019) 9:6 Lain IZA Journal of Development and Migration Page 31 of 35 k 20 Firstly, we note that the unemployment terms are all bounded at 0 and π N ∀ k = A, B. The ability distribution, f (y) is independent of θ,asare z , r,and λ. The only remaining terms to consider are the flow values of unemployment for each A B k type, rV (y) and rV (y).Firstly, rV (y) will not explode as θ →∞. With a very high u u u level of θ, jobs immediately become available to those who want them. Wages, however, will still be restricted by the output that matches provide to firms, z .Thisplacesan upper bound on the value of transitioning from unemployment to wage-employment and k k therefore limits rV (y).Secondly, as θ → 0, rV (y) should not to tend to 0. Even as the u u labour market becomes very tight and individuals cannot find wage jobs, they still receive unemployment flow income b, the value of which is independent of θ.Theyalsoretain the option value of transitioning into self-employment. The probability of doing this is determined entirely by α, and the flow value of self-employment is governed by y and q . Since the terms in the square brackets neither explode as θ →∞ nor tend to 0 as θ → 0, the right-hand-side of the free-entry condition in Eq. (20)tends to ∞ as θ → 0 and tends to 0 as θ →∞. This guarantees the existence of at least one equilibrium. Appendix 6: Comparative statics: numerical simulations Fig. 5 Varying z 0 (2019) 9:6 Lain IZA Journal of Development and Migration Page 32 of 35 Fig. 6 Varying b (2019) 9:6 Lain IZA Journal of Development and Migration Page 33 of 35 Fig. 7 Varying α (2019) 9:6 Lain IZA Journal of Development and Migration Page 34 of 35 Acknowledgements I would like to thank my supervisor, Margaret Stevens, for her generous support and guidance on this paper. I am also grateful to Ian Crawford, Mohit Dalwadi, Andrew Kerr, Simon Quinn, Neil Rankin, and the members of the Firms and Development Research Group at the University of Oxford for their important inputs. Additionally, I would like to thank the anonymous referee and the responsible editor for their vital feedback and advice. This research was funded by the Economic and Social Research Council, and the data were collected by the Centre for the Study of African Economies. This paper was written prior to my joining the OECD and the views expressed should not be taken as representing the views of the OECD or its member countries. I am also responsible for any errors. Responsible editor: Hartmut F. Lehmann Funding This research was funded by the Economic and Social Research Council, through a doctoral studentship. Availability of data and materials The data used for this paper were collected by the Centre for the Study of African Economies and may be requested from them: http://www.csae.ox.ac.uk/data. Authors’ contributions JL is the sole author of this paper. JL developed the theoretical model, analysed the data, and wrote the manuscript. The author read and approved the final manuscript. Competing interests The author declares no competing interests. Publisher’s Note Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations. Received: 19 June 2018 Accepted: 1 January 2019 References Ackah C (2013) Non-farm employment and incomes in rural Ghana. J Int Dev 25(3):325–339 Ackah C, Ahiadeke C, Fenny AP (2009) Determinants of female labour force participation in Ghana. Working Paper 14, Global Development Network Aigner DJ, Cain GG (1977) Statistical theories of discrimination in labor markets. Ind Labor Relat Rev 30(2):175–187 Albrecht J, Navarro L, Vroman S (2009) The effects of labour market policies in an economy with an informal sector. Econ J 119:1105–1129 Albrecht J, Robayo-Abril M, Vroman S (2017) Public-sector employment in an equilibrium search and matching model. Discussion Paper 10467, IZA Institue of Labor Economics Baah-Boateng W (2012) Labour Market Discrimination in Ghana: A Gender Dimension. LAP LAMBERT Academic Publishing, Saarbrücken Baah-Boateng W, Nketiah-Amponsah E, Frempong R (2013) The effect of fertility and education on female labour force participation in Ghana. Ghanaian J Econ 1(1):119–137 Becker GS (1957) Econ Discrimination. University of Chicago Press, Chicago Black DA (1995) Discrimination in an equilibrium search model. J Labor Econ 13(2):309–334 Blinder AS (1973) Wage discrimination: Reduced form and structural estimates. J Hum Resour 8(4):436–455 Borjas GJ, Bronars SG (1989) Consumer discrimination and self-employment. J Polit Econ 97(3):581–605 Bosch M, Maloney W (2007) Comparative analysis of labor market dynamics using Markov processes: An application to informality. In: Policy Research Working Paper 4429, World Bank Bourguignon F, Fournier M, Gurgand M (2007) Selection bias corrections based on the multinomial logit model: Monte Carlo comparisons. J Econ Surv 21(1):174–205 Bowlus AJ (1997) A search interpretation of male-female wage differentials. J Labor Econ 15(4):625–657 Bowlus AJ, Eckstein Z (2002) Discrimination and search differences in an equilibrium search model. Int Econ Rev 43(4):1309–1345 Broyden CG (1965) A class of methods for solving nonlinear simultaneous equations. Math Comput 19(92):577–593 Burdett K, Mortensen DT (1998) Wage differentials, employer size, and unemployment. Int Econ Rev 39(2):257–273 Cano-Urbina J (2015) An equilibrium search model with coworker discrimination. J Dev Econ 112:33–55 Chéron A, Hairault J-O, Langot F (2011) Age-dependent employment protection. Econ J 121:1477–1504 Coate S, Loury GC (1993) Will affirmative-action policies eliminate negative stereotypes? Am Econ Rev 83(5):1220–1240 Dubin JA, McFadden DL (1984) An econometric analysis of residential electric appliance holdings and consumption. Econometrica 52(2):345–362 Eckstein Z, Wolpin KI (1999) Estimating the effect of racial discrimination on first job wage offers. Rev Econ Stat 81(3):384–392 Elder TE, Goddeeris JH, Haider SJ (2010) Unexplained gaps and Oaxaca-Blinder decompositions. Labour Econ 17(1):284–290 Falco P (2014) Does risk matter for occupational choices? experimental evidence from an African labour market. Labour Econ 28(C):96–109 Falco P, Kerr A, Rankin N, Sandefur J, Teal F (2011) The returns to formality and informality in urban Africa. Labour Econ 18(S1):23–31 Fields GS (2011) Labor market analysis for developing countries. Labour Econ 18(S1):16–22 (2019) 9:6 Lain IZA Journal of Development and Migration Page 35 of 35 Flabbi L (2010) Gender discrimination estimation in a search model with matching and bargaining. Int Econ Rev 51(3):745–783 Hart K (1973) Informal income opportunities and urban employment in Ghana. J Mod Afr Stud 11(1):61–89 Heath R (2017) Fertility at work: Children and women’s labor market outcomes in urban Ghana. J Dev Econ 126(C):190–214 Heckman JJ (1979) Sample selection bias as a specification error. Econometrica 47(1):153–161 Heintz J, Pickbourn L (2012) The determinants of selection into non-agricultural self-employment in Ghana. Margin J Appl Econ Res 6(2):181–209 International Labour Organization (2018) ILOSTAT. Retrieved from: http://www.ilo.org/ilostat Kavuma S, Morrissey O, Upward R (2015) Worker flows and the impact of labour transitions on earnings in Uganda. In: Research Paper 15/01, CREDIT Kerr A (2012) A model of comparative advantage with matching in the urban Tanzanian labour market. In: Working Paper 2012–21, Centre for the Study of African Economies Kingdon G, Sandefur J, Teal F (2006) Labour market flexibility, wages and incomes in Sub-Saharan Africa in the 1990s. Afr Dev Rev 18(3):392–427 Lain J (2016) Job flexibility and occupational selection: An application of maximum simulated likelihood using data from Ghana Working Paper 2016–34, Centre for the Study of African Economies Lanning J (2014) A search model with endogenous job destruction and discrimination: Why equal wage policies may not eliminate wage disparity. Labour Econ 26(1):55–71 Lee L-F (1983) Generalized econometric models with selectivity. Econometrica 51(2):507–512 Meghir C, Narita R, Robin J-M (2015) Wages and informality in developing countries. Am Econ Rev 105(4):1509–1546 Miranda MJ, Fackler PL (2002) Applied Computational Economics and Finance. MIT Press, Cambridge Moro A, Norman P (2004) A general equilibrium model of statistical discrimination. J Econ Theory 114:1–30 Mortensen DT, Pissarides CA (1994) Job creation and job destruction in the theory of unemployment. Rev Econ Stud 61(3):397–415 Narita R (2012) Self-employment in developing countries: a search-equilibrium approach. Working paper, World Bank, Washington DC Oaxaca R (1973) Male-female wage differentials in urban labor markets. Int Econ Rev 14(3):693–709 Rankin N, Sandefur J, Teal F (2010) Learning and earning in Africa: Where are the returns to education high? Working Paper 2010–02, Centre for the Study of African Economies Rogerson R, Shimer R, Wright R (2005) Search-theoretic models of the labor market: A survey. J Econ Lit 43:959–988 Roy AD (1951) Some thoughts on the distribution of earnings. Oxf Econ Pap 3(2):135–146 Saatchi M, Temple J (2009) Labor markets and productivity in developing countries. Rev Econ Dyn 12(1):183–204 Sackey HA (2005) Female labour force participation in Ghana: The effects of education. Research Paper 150, African Economic Research Consortium Sandefur J, Serneels P, Teal F (2006) Self-employment: Engine of growth or self-help safety net? In: Paci P, Serneels P (eds). Employment and Shared Growth: Rethinking the Role of Labor Mobility for Development. World Bank, Washington DC Sasaki M (1999) An equilibrium search model with coworker discrimination. J Labor Econ 17(2):377–407 Teal F (2011) The price of labour and understanding the causes of poverty. Labour Econ 18(S1):7–15 Vijverberg WPM (1991) Profits from self-employment: The case of Côte d’ivoire. World Dev 19(6):683–696 Vijverberg WPM (1992) Measuring income from family enterprises with household surveys. Small Bus Econ 4(4):287–305 Yassin S, Langot F (2018) Informality, public employment and employment protection in developing countries. J Comp Econ 46(1):326–348
IZA Journal of Migration – Springer Journals
Published: Mar 13, 2019
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.