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Factors affecting “employees’ creativity”: the mediating role of intrinsic motivation

Factors affecting “employees’ creativity”: the mediating role of intrinsic motivation makyohannes1@gmail.com 1 This article examines a particular set of influences on the creativity of individual School of Management and Public Administration, researchers at an Ethiopian agricultural research institute. One set of influences is University of Gondar, Gondar, "work orientations," and the others are "domain-relevant skills" and "creativity-relevant Ethiopia processes." The study posits that another important influence, intrinsic motivation, is a mediating influence between these factors and creativity. The study moves beyond past research by examining the influences together in a structural equation model. The data were collected from 307 researchers working with an agricultural research institute in different centers in Ethiopia. Partial Least Squares (PLS) path modeling, SmartPLS3, was used to empirically test the proposed hypotheses. The findings sug- gested the significantly positive direct effects of creativity-relevant processes, career orientation, and calling orientation on employees’ creativity. Moreover, the results of mediating effects showed significant indirect effects of domain-relevant skills, creativ- ity-relevant processes, career orientation, and job orientation via intrinsic motivation on enhancing employees’ creativity. However, the results did not confirm the direct effects of domain-relevant skills and job orientation on employees’ creativity. In addition, the results did not confirm the hypothesis that the mediator, intrinsic motivation, had a statistically significant effect on the relationship between job orientation and employ- ees’ creativity. Finally, for managers and decision-makers who prioritize employees’ creativity, these findings will deepen their understanding of the holistic role of intrinsic motivation in nurturing employees’ creativity. Keywords: Creativity, Intrinsic motivation, Domain-relevant skills, Creativity-relevant process, Job orientation, Career orientation, Calling orientation Introduction Creativity is often regarded as a vital source of competitive strength for organizations (Ferreira et al., 2020), since it has become valued across diverse tasks, professions, and industries (Kršlak & Ljevo, 2021; Lee et  al., 2019; Shalley et  al., 2004). Within organi- zations that value diversity, change, and adaptation in particular, creative employees are regarded as a valuable resource (Liu et  al., 2017). In fact, many academics contend that organizations seeking to gain a competitive edge must prioritize boosting the crea- tive performance of their workforce. Employee creativity contributes significantly to organizational innovation, effectiveness, and survival (Ivcevic et  al., 2021). For organi - zations aiming to lay a strong foundation for creativity and innovation, having creative © The Author(s) 2023. Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line to the mate- rial. If material is not included in the article’s Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http:// creat iveco mmons. org/ licen ses/ by/4. 0/. Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 2 of 20 employees is a crucial requirement (Fuchs et  al., 2021). Among the major theories are the componential theory of creativity and innovation in the corporate setting (Amabile, 1988), the interactionist theory (Woodman, 1993), and the multiple social domains the- ory (Ford, 1996). In recent years, researchers have advanced the idea of work orientations from the per- spective of individual expectations for work and subjective evaluation, which highlights the person’s subjective perspective and work’s purpose (Fetzer & Pratt, 2020a, 2020b). It divides work orientation into three categories: job orientation, career orientation, and calling orientation (Bellah et al., 1996). Although scholars have made some progress on the concept of work orientation, there are still some limitations. Some scholars argue that many assumptions about work orientations lack empirical support (Cai et al., 2018) and claim that the field is largely theoretical (Pratt et al., 2013) and in need of insight into the mechanisms through which work orientations operate (Amabile & Pratt, 2016; Lee et al., 2019). Given the limitations of earlier research, one goal of this study is to examine the connection between work orientations and employees’ creativity. In the literature, the relationship between intrinsic motivation and creativity is com- monly stated (Auger & Woodman, 2016; Yuan et al., 2019). Intrinsic motivation is con- sidered essential for creativity, because without it, instead of knowledge or skills, one cannot engage in and persist in creative activities (Fischer et  al., 2019). Many studies have focused only on the direct relationship between motivation and employees’ creativ- ity, such as reward (e.g., Eisenberger & Rhoades, 2001; Eisenberger et al., 2020; Fischer et al., 2019; Yoon et al., 2015). Moreover, previous studies have examined the direct rela- tionship between many variables and employees’ creativity, with mixed results. There - fore, additional study is required to investigate potential mediators that may have an impact on the nature of the relationship (Su et al., 2020; Tan et al., 2019). The objectives of this study are manifold, and our research contributes to the literature on personal components of creativity, work orientations, and employees’ creativity by introducing a unique conceptual model that integrates emerging constructs to explain how personal factors and work orientations can potentially improve employees’ crea- tivity. This study also examines the mediating role of intrinsic motivation in increasing individual creativity when these employees acquire expertise, creative thinking skills, and career orientation. To the best of our knowledge, no empirical study in the manage- ment literature has examined the role of personal components of creativity and work orientations in improving employees’ creativity in the presence of mediation by intrinsic motivation. Literature review Research suggests that employees’ creativity is influenced by many determinants, includ - ing motivation (Liu et al., 2016), personality and thinking styles (Wu et al., 2014), as well as creative personal and role identities (Fischer et  al., 2019), and work orientation (Liv et  al., 2020). Though there has been considerable research on employees’ creativity via psychological, organizational, and work factors in isolation (Amabile & Pratt, 2016), the question remains: how do these determinants work collectively to contribute to employees’ creativity? Despite evidence that these characteristics can all contribute to the creative process, the literature that focuses on these elements often does not take Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 3 of 20 their overall influence into account. Indeed, in their review on creativity and innova - tion, Anderson et al. (2014) highlighted the need to further explore employees’ creativity and specifically how these determinants might work in combination to foster employees’ creativity. That must be done by testing multiple determinants simultaneously, as this study does. An employee’s level of creativity is influenced by the kind and quantity of their knowl - edge of their field (i.e., domain-relevant skills), as well as the creative process itself (cre - ativity-relevant processes) (Cai et al., 2019; Tanjung et al., 2022). Domain-relevant skills pertain to factual knowledge and expertise in a particular field that can be influenced by formal and informal education, as well as people’s perceptual, cognitive, and motor skills (Hennessey, 2019). According to Amabile (1983, 1988), the level of training in crea- tive skills and strategies for producing new ideas, experiences in creative activities, and possessing particular personality traits are likely to positively affect creativity-relevant processes, which have to do with the tacit knowledge to generate creative ideas as well as the cognitive styles and work styles for the production of creative ideas. The relationship between individual creativity components and employees’ creativity Based on the revised model of Amabile’s componential model, there are three key com- ponents of individual creativity: domain-relevant skills, creativity-relevant process, and intrinsic motivation. First, domain-relevant skills have been highlighted by creativity theorists as a crucial mechanism linking individual and environmental determinants to employee creativ- ity (Amabile, 1988). Particularly, the abilities that support employee creativity are fre- quently domain-specific (i.e., the factual knowledge and the technical skills required in a given domain; (Amabile et  al., 1996). Domain-relevant skills provide the cognitive pathways for problem resolution in addition to aiding in the identification of problems. The stronger the domain-relevant skills, the greater the number of options for creating something new or coming up with a novel mix of concepts (Amabile et al., 1996). It fol- lows that an employee’s abilities in the creative process depend on their domain-relevant skills (Amabile & Pillemer, 2012). An individual who possesses more domain-relevant skills is more likely to comprehend the underlying causes of issues and to combine and recombine various knowledge sets to come up with creative ideas (Liu et al., 2017). Second, at the individual level, creativity-relevant skills are important drivers of crea- tive performance (Amabile, 1983, 1997). The creativity-relevant process includes both divergent and convergent thinking skills that are necessary for coming up with unique and valuable ideas (Birdi et  al., 2016). Employees with divergent thinking abilities might come up with a variety of alternate answers or strategies that are different from those typically used (Scott et  al., 2004). Employees with convergent thinking skills can assess the merits of novel concepts or identify the source of a problem (Grohman et al., 2006). According to Fischer et al. (2019), creativity-relevant skills determine the variety and flexibility of cognitive approaches that employees use to pursue solutions or solve challenges. The third, intrinsic task motivation, is characterized by a high regard for individual investment and involvement (Ryan & Deci, 2017). Numerous meta-analyses have dem- onstrated a considerably positive relationship between intrinsic motivation and creative Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 4 of 20 performance (Cerasoli et  al., 2014; de Jesus et  al., 2013; Liu et  al., 2016). The dynamic componential model of creativity and innovation in organizations (Amabile & Pratt, 2016) also underlines this strong relationship theoretically. In addition, Grant and Berry (2011) discovered that the extent to which work includes helping others has a positive impact. Therefore, based on the explanation above, it is believed that there is a positive relationship between individual creative components and employees’ creativity. H : individual creativity components: (a) domain-relevant skills, (b) creativity-relevant processes, and (c) intrinsic task motivation are positively related to employees’ creativity. The relationship between work orientation and employees’ creativity Work orientations are “internalized evaluations about what makes work worth doing” (Pratt et al., 2013, p. 175). Work orientations are similar to our own personal "accounts" of how we view our work and, more precisely, what we value in it. These accounts develop as a result of people internalizing social norms that come from many social forces, such as family, religious institutions, the media, educational institutions, and other social influences like organizational leaders (Pratt et al., 2013). Consequently, it is easy to see how job orientation and creativity are related. The majority of experts acknowledge the three types of work orientation: job, career, and calling orientations (Willner et  al., 2020). Job orientation is a person’s perception that their relationship with work is one of material exchange, and their intrinsic motiva- tion is predicated on their capacity to base their effort on the corresponding material returns and financial gain (Liv et al., 2020). While the career orientation reflects the per - son’s perception that the goal of their work is to advance their careers, obtain status, etc., and pursue greater promotion opportunities (Kolodinsky et  al., 2018). Calling orienta- tion emphasizes that the connection between a person and their work is more based on their own personal success, fulfillment, and commitment (Liv et al., 2020). Amabile and Pratt (2016) argues the notion that progress in creative work will be more meaningful, and thus more motivating, to some workers than others. For this reason, it is important to understand employees’ work orientations. H : work orientation: (a) job, (b) career, (c) calling are positively related to employees’ creativity. The relationship between individual creativity components, creativity and intrinsic motivation According to studies, three things in particular foster creativity: motivation, skills, and creativity-relevant processes (Amabile & Pratt, 2016; Hirst et  al., 2009; Richter et  al., 2012). In general, motivation is understood as “the heart of organizational behavior” (Gagné, 2014, p. 414), the performance and productivity of employees are significantly impacted by their motivation (Cerasoli et  al., 2014; Yuan & Woodman, 2021). Intrin- sic motivation is affected by both individuals’ domain-relevant skills and creativity- relevant processes (Newman et al., 2018). Employees who believed that they possessed more skills in creativity, identifying problems, and introducing and assessing solutions reported higher levels of patent submissions, besides having a superior quantity and originality of ideas, as rated by experts (Birdi et  al., 2016). Amabile maintained that intrinsic motivation is the central tenet of creativity; when a task is exciting, engaging, Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 5 of 20 and demanding, employees are more creative (Amabile & Pillemer, 2012). It follows that intrinsic motivation may play a mediating role in the link between individual creativity components and employees’ creativity. H : Intrinsic motivation mediates the relationship between individual creativity com- ponents (a) domain-relevant skills and (b) creativity-relevant process. The relationship between work orientation, creativity and intrinsic motivation Amabile and Pratt (2016) argue that work orientations are likely to be associated with creativity in at least three ways. First, work orientation primarily affects motivation, which in turn drives the creative process. Second, leaders’ assertions about creativity will not inspire people unless they perceive their own inventive and creative work as worth- while (Zhang et al., 2020). This argument goes on to say that how an employee handles work will largely determine whether they find the organizational leaders’ claims about how important creativity is to be "meaningful" in the first place and, thus, inspiring (Fis - cher et al., 2019). Third, work orientations may affect persistence and, thus, the degree to which people persevere in the progress loop, but some orientations are likely to be more beneficial in that regard than others. This is similar to meaningful work more generally (Amabile & Pratt, 2016). One of our central research objectives was to more fully explore the intrinsic moti- vation principle, especially given the dearth of research and mixed results of the few existing studies. For example, Fetzer and Pratt (2020a, 2020b) found that intrinsic moti- vation did not mediate the effect of career orientation on creativity, but Scandura (2017) found that intrinsic motivation mediated the effect of career orientation on individual creativity. More recently, Duan et  al. (2020) found that intrinsic motivation only par- tially mediated the effect of calling orientation on individual creativity. Therefore, it is expected that intrinsic motivation influences the relationship between work orientation and employees’ creativity (Fig. 1). H : Intrinsic motivation mediates the relationship between work orientations (job, career, and calling) and employees’ creativity. Methodology Sample and data The sample for this study was calculated with a 95% confidence level using Taro Yamane (Yamane, 1973) formula (EIAR has a total of 1317 researchers, of whom 378 are BSc, MSc, 797 are DVM, and 136 are PhD). Substitute numbers in the formula; the number of samples is n = 306.814; however, the sample size formulas indicate the required num- ber of responses. To account for individuals who cannot be reached, many researchers commonly add 10% to their sample size. In addition, a 30% increase in the sample size is frequently used to account for nonresponse (Israel, 1992). Thus, to obtain reliable data, researchers increased the sample size to 400 respondents. 400 questionnaires were distributed to collect data for this study; 342 of them were returned, but 35 of them were incomplete. The majority of these respondents responded to only a few of the survey’s questions and missed the others. 19 cases with 20% or more missing data were excluded from the analysis. A further 16 cases demonstrated less than 20% missing data and a very low standard deviation. A closer Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 6 of 20 Individual Components • Domain-relevant skills • Creativity-relevant process Dependent Variable Employees’ Intrinsic Motivation Creativity Mediating Variable Work Orientation • Job • Career • Calling Independent Variables Fig. 1 Hypothesized interactions of personal components and work orientations on employees’ creativity look revealed that these respondents had given the identical answer to nearly every question on the survey and, therefore, were considered to be of low value and were also excluded from further analysis. In total, 307 questionnaires were properly filled out with no missing data. The study’s target population included all 17 of the EIAR centers. These centers were chosen for the study, because they reflect the Ethiopian economy’s diverse agri- cultural institutions. To identify the respective respondents for each of the EIARs a three multi-stage proportionate systematic random sampling method as proposed by (Ragab & Arisha, 2017) was used. Purposive sampling was used to choose the EIAR researchers in the first stage. In the second stage, stratified sampling was used to establish four strata: first, BSc; second, MSc; third, DVM; and fourth, PhD degree levels. The third stage entailed proportionate systematic random sampling depending on the year of experience of employees’. Full-time employees who work 8 h per day are the focus. Employees with varied job titles were included in the sam- ple to guarantee that a variety of jobs were available to cover various work-related activities. In the sample, the majority (63.8%) of the respondents were "men," while 36.2% were "female." In terms of age, the majority (67.8%) of the respondents were younger than 35 years. 15.0% were 36–40 years, 14.0% were 41–45 years, and the least, 3.3%, were above 45  years. About 59.0% of participants had a master’s degree, followed by 28.7% who hold a bachelor’s degree, 11.7% with a PhD, and 0.7% with a DVM. In terms of work experience, the majority of respondents (38.1%) were 7 to 9 years, fol- lowed by 30.3% who were 4 to 6 years, 21.2% who were over 10 years, and the least (10.4%) were less than 3 years. Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 7 of 20 Instruments and measures The survey strategy is popular in the social sciences and associated with a deductive research approach (Rahi, 2017). According to Jenny Rowley (2014), when a researcher wants to profile a sample in terms of statistics or determine the frequency of beliefs, atti - tudes, processes, behaviors, experience, or forecast, a questionnaire is utilized. A ques- tionnaire is the most appropriate method to collect data for this research, because it is easier to achieve responses from a huge number of employees in a short period (Rahi, 2017; Rowley, 2014). In addition, Sekaran and Bougie (2019) stated that it is easier to reach people in different geographical areas. As the research method is quantitative, it is perfect to use a survey questionnaire for inquiry mode (Khalid et al., 2012; Rahi, 2017; Rahi et al., 2019). The data collected might be observed to generate results that are more generalizable (Rowley, 2014). The questionnaire was divided into three main sections: 1) Demographic information: four items contain all the demographic details that distin- guish between the participants, including gender, age group, educational level, and years of experience in the functional area. 2) Individual creativity components: Amabile (1988) stated that all three elements of individual creativity (domain-relevant skills, creativity-relevant processes, and intrin- sic task motivation) are crucial. No one element is enough for creativity. Thus, all factors were assessed as follows: (a) domain-relevant skills: three items developed by Tierney (1997) were used to measure domain-relevant skills. Employees were asked about their confidence in their capability to be creative. An example item is “I feel that I am good at generating novel ideas.” (b) Creativity-relevant processes: five items developed by Sawyer (1992), four were used to measure creativity-relevant processes. Employees were asked about their certainty in terms of the procedures they must use at work. An example item is “I know how to divide my time among the tasks.” (c) Intrinsic task motivation: four items were developed by Eisenberger and Rhoades (2001) and adopted to assess the extent to which participants considered their work interesting, enjoyable, boring, and unpleasant. An example item is “My job is inter- esting.” 3) Willner et  al. (2020) developed work meaning, consisting of five orientations: job (financial compensation), career (advancement and influence), calling (prosocial duty), social embeddedness (belongingness), and busyness (filling idle time with activities). However, research in this field (e.g., Wrzesniewski et al., 1997) has focused on the tripartite concept (job, career, and calling orientations) developed by Bellah et al. (1996). (a) The job factor was assessed on a 5-item scale. An example item is “If I had enough money, I would not look for work.” (b) The career factor was assessed on a 5-item scale. An example item is “I would like to advance in the professional hierarchy of my field and receive additional duties and responsibilities.” (c) The call - ing factor was assessed on a 5-item scale. An example item is “I enjoy talking about my future work with others” all were adopted from Willner et al. (2020). 4) Six items were developed by Amabile et  al. (1996) and used to measure creativity. An example item is “My area of this organization is creative.” The instrument used a four-point scale to rate and assesses items based on different factors and creativity. Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 8 of 20 According to Holmes and Mergen (2014), in a four-point scale, the middle option does not exist. This type of scale is called a ‘forced choice’ method, because the neu - tral option is deleted (Allen & Seaman, 2007). The main reason for using a four-point scale is that the KEYS questionnaire uses the same ratings. The researchers were used: 1 = Never, 2 = Sometimes, 3 = Often, 4 = Always. Statistical procedure We employed partial least squares structural equation modeling (PLS–SEM), a vari- ance-based structural equation modeling technique. PLS–SEM is based on maximizing the explained variance of the endogenous latent variables. For exploratory and predic- tive studies, in particular, it is appropriate (Manley et al., 2021). This study followed the standard evaluation guidelines for reporting PLS–SEM results (e.g., Hair et  al., 2017, 2021; Henseler et al., 2016). PLS–SEM differs from covariance-based structural equation modeling (CB-SEM) in several important ways. For example, PLS–SEM differs from CB- SEM in that it does not impose minimal criteria or constrictive assumptions on meas- urement scales, sample sizes, or distributional assumptions (Hair et  al., 2017; Sarstedt et al., 2021). The following justifications support the use of PLS–SEM in this study: First, we used personal components and work orientation to predict employees’ crea- tivity, responding to the call to use PLS–SEM as a prediction-oriented approach (Manley et al., 2021). Second, the study model shows a relatively complex structure with a num- ber of manifest latent variables and the presence of multi-dimensionality (i.e., mediators) in the constructs included in the model (Hair et al., 2017; Sarstedt et al., 2021). Third, it is believed that the model’s structural relationships are still in the early stages of theory development or extension, enabling the exploration and development of new phenom- ena (Richter et al., 2015). Fourth, the latent variable scores were used in the subsequent analysis of predictive relevance, particularly in the two-stage technique for mediation analysis (Sarstedt et al., 2020; Wong, 2016). Finally, this study benefited from the advan - tages of PLS–SEM in terms of less rigorous requirements or restrictive assumptions, which enabled us to create and estimate our model without imposing additional con- straints (Hair et al., 2019). Analysis and results Under standard evaluation guidelines (Hair et  al., 2017), PLS–SEM analysis and inter- pretation have three stages: (1) assessing the reliability and validity of the measurement model; (2) assessing the structural model; and (3) assessing the structural equation mod- eling or global model fit. Measurement model A measurement model is a statistical model that links unobservable theoretical constructs, operationalized as latent variables, and observable properties, i.e., data about the world. By providing researchers and practitioners with a set of tools for making explicit and evaluating assumptions, measurement modeling fosters more transparency and accountability. Direct measurement constructs rely on samples of behavior, such as responses to test items or observations of behavior, while indirect Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 9 of 20 measurement constructs rely on samples of behavior, such as responses to test items or observations of behavior (Bandalos, 2018). The evaluation of the measurement model in PLS–SEM was based on the individual indicator reliability, composite reliability (CR), average variance extracted (AVE) and discriminant validity of the constructs. To measure the reliability, we have used Cronbach’s alpha (CA) and composite reliability (CR). The results for CA and CR are presented in Table  1 for calling fac- tor (0.825, 0.875), career factor (0.902, 0.928), creativity self-efficacy (0.743, 0.852), creativity (0.894, 0.919), intrinsic motivation (0.814, 0.879), job factor (0.917, 0.937), and creativity-relevant process (0.955, 0.965), respectively. CA and CR values higher than 0.70 are considered acceptable (Hair et al., 2011), and this study confirms that the values are within an acceptable range. We examined convergent validity to obtain AVE values. As suggested by Henseler et al. (2016), an AVE value ≥ 0.50, which means that ≥ 50% of the indicator variance should be accounted for. We looked at convergent validity to get AVE values, and all of them were greater than the 0.50 criterion (for the calling factor, career factor, cre- ativity self-efficacy, creativity, intrinsic motivation, job factor, and creativity-relevant process, respectively, the AVE values were 0.585, 0.720, 0.660, 0.656, 0.645, 0.748, and 0.671, respectively). Consistent with this recommendation, all constructs had AVE values that exceeded the 0.50 threshold (see Table 1). We also assessed the For- nell–Larcker and heterotrait–monotrait (HTMT) ratios to test discriminant valid- ity (Fornell & Larcker, 1981). Recently, the HTMT ratio has surpassed Fornell and Larcker (Henseler et al., 2016). Table 2 shows that the values of Fornell and Larcker’s tests are larger than the correlations among the variables. As per the Henseler et al. (2015) criterion, the HTMT values were below the threshold of 0.90 (see the values in Table 3). These results confirm the discriminant validity of this study. Assessment of structural model We assessed the issue of multicollinearity in the data using the variance inflation factor (VIF). Becker et  al. (2015) recommended that the values of VIF must be < 5, and this study found inner and outer model VIF values within the suggested range, depicting no issue of multicollinearity in the data (see Tables  4 and 5). Next, the structural model was evaluated using the standardized root mean square residual (SRMR) values should be lower than 0.08 for a sample size greater than 100 (Hense- ler et  al., 2016). As a result, we found a significant model fit for this study (0.076). Endogenous latent variables with coefficients of determination (R ) 0.75 or 0.5 can be described as substantial or moderate, respectively (Hair et  al., 2010, 2019). 2 2 Table 6 shows that R = 0.731 and R = 0.580, the structural (Creativity) (Intrinsic Motivation) model had satisfactory in-sample predictive power, consistent with prior research in this area (Ali et  al., 2019; Fischer et  al., 2019). Moreover, the value of Q should be higher than zero. Hence, this study’s results were both within the significance level, and the study model’s predictive relevance was achieved (Falk & Miller, 1992). Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 10 of 20 Table 1 Measurement model Construct Item code Loading Outer weights CA CR AVE Calling orientation 0.825 0.875 0.585 CallingF1 0.727 0.213 CallingF2 0.717 0.322 CallingF3 0.732 0.208 CallingF4 0.84 0.254 CallingF5 0.799 0.31 Career orientation 0.902 0.928 0.72 CareerF1 0.81 0.209 CareerF2 0.839 0.237 CareerF3 0.896 0.241 CareerF4 0.8 0.23 CareerF5 0.893 0.26 Domain-relevant skills 0.743 0.852 0.66 CreSeE2 0.886 0.425 CreSeE3 0.817 0.355 CreSeE1 0.726 0.269 Creativity 0.894 0.919 0.656 Creativity1 0.729 0.198 Creativity2 0.861 0.205 Creativity3 0.83 0.221 Creativity4 0.871 0.206 Creativity5 0.813 0.208 Creativity6 0.743 0.198 Intrinsic task motivation 0.814 0.879 0.645 IntTaM1 0.827 0.289 IntTaM2 0.774 0.311 IntTaM3 0.884 0.329 IntTaM4 0.719 0.319 Job orientation 0.917 0.937 0.748 JobF1 0.92 0.234 JobF2 0.848 0.247 JobF3 0.857 0.196 JobF4 0.894 0.308 JobF5 0.802 0.164 Creativity-relevant process 0.835 0.89 0.671 ProCla1 0.843 0.289 ProCla2 0.755 0.288 ProCla3 0.87 0.306 ProCla4 0.803 0.34 Average variance extracted (AVE); Cronbach’s alpha (CA); Composite reliability (CR); Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Structural equation modeling The modified model and the hypotheses only included the indirect relationships, because examining the mediating effects involves first testing the direct relationships. Thus, the following hypotheses were tested using PLS–SEM. Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 11 of 20 Table 2 Discriminant validity (Fornell–Larcker criterion) CallingF CareerF CreSeE Creativity IntTaM JobF ProCla CallingF 0.765 CareerF 0.753 0.849 CreSeE 0.717 0.554 0.812 Creativity 0.735 0.795 0.595 0.81 IntTaM 0.672 0.72 0.573 0.756 0.803 JobF − 0.072 − 0.052 − 0.114 − 0.014 − 0.088 0.865 ProCla 0.66 0.506 0.668 0.575 0.542 − 0.16 0.819 Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Table 3 HTMT (heterotrait–monotrait ratio) CallingF CareerF CreSeE Creativity IntTaM JobF ProCla CallingF CareerF 0.825 CreSeE 0.896 0.658 Creativity 0.830 0.883 0.712 IntTaM 0.787 0.837 0.722 0.886 JobF 0.104 0.073 0.129 0.073 0.104 ProCla 0.802 0.572 0.831 0.662 0.654 0.175 Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Table 4 Collinearity statistics (outer VIF values) VIF VIF VIF CallingF1 2.036 Creativity1 1.676 JobF1 4.941 CallingF2 1.475 Creativity2 4.006 JobF2 2.329 CallingF3 2.009 Creativity3 2.594 JobF3 5.001 CallingF4 3.082 Creativity4 4.148 JobF4 3.739 CallingF5 1.805 Creativity5 2.296 JobF5 4.151 CareerF1 2.127 Creativity6 1.877 ProCla1 2.709 CareerF2 2.238 IntTaM1 4.456 ProCla2 1.513 CareerF3 4.08 IntTaM2 1.603 ProCla3 2.936 CareerF4 1.943 IntTaM3 4.634 ProCla4 1.612 CareerF5 3.807 IntTaM4 1.42 CreSeE1 1.36 CreSeE2 1.711 CreSeE3 1.539 Variance inflation factor (VIF); Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) H1: Intrinsic motivation mediates the relationship between individual creativity com- ponents: (a) domain-relevant skills and (b) creativity-relevant processes, and employees’ creativity. H2: Intrinsic motivation mediates the relationship between work orientations (a) job, (b) career and (c) (calling and employees’ creativity. Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 12 of 20 Table 5 Collinearity statistics (inner VIF values) CallingF CareerF CreSeE Creativity IntTaM JobF ProCla CallingF 3.623 3.586 CareerF 2.889 2.318 CreSeE 2.431 2.396 Creativity IntTaM 2.382 JobF 1.031 1.023 ProCla 2.122 2.088 Variance inflation factor (VIF); Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Table 6 Saturated model results 2 2 2 Construct R R Adjusted Q SRMR predict Creativity 0.731 0.726 528 0.076 IntTaM 0.58 0.573 419 2 2 Standardized root mean square residual (SRMR); determination of coefficient (R ); cross-validiated redundancy (Q ); intrinsic motivation (IntTaM) Fig. 2 Structural model results. Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) The sizes and significances of the path coefficients that reflect the hypotheses were examined. The significance of the path coefficients was calculated using the bootstrap - ping procedure (with 5000 bootstrap samples). Figure  2 provides the structural model Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 13 of 20 results. Table  7 provides the path coefficients, standard deviation, t-statistics, and p values. According to the PLS–SEM findings, (H1 ) testing the direct effects of creative self- efficacy, which reflects domain-relevant skills, and employee creativity revealed a non- significant relationship (β = 0.041, t = 0.817, p = 0.414). While the indirect effects of intrinsic motivation on domain-relevant skills and employee creativity were significant (β = 0.047, t = 2.122, p = 0.034). It was concluded that intrinsic motivation fully mediated the relationships between creative self-efficacy, which refracted domain-relevant skills, and employees’ creativity. Thus, H1 was supported. (H1 ) found a significant relationship between process clarity, which reflects creativ - ity-relevant skills, and employee creativity (β = 0.099, t = 2.429, p = 0.015). In terms of mediating effects, there were positive indirect effects of process clarity on employee cre - ativity (β = 0.046, t = 2.082, p = 0.038) which reflects creativity-relevant skills via intrin - sic motivation. Therefore, it was concluded that intrinsic motivation partially mediated the relationships between process clarity, which reflected domain-relevant skills, and employees’ creativity. Thus, H1 was supported. The findings indicate that (H2 ) job orientation has no significant relationship with employee creativity (β = 0.061, t = 1.934, p = 0.054). In terms of the mediating effects, the result showed no indirect effects of job orientation, via intrinsic motivation on crea - tivity (β = − 0.006, t = 0.528, p = 0.598). Thus, H2 was not supported. (H2 ) career ori- a b entation has significant and positive effects on employees’ creativity (β = 0.406, t = 7.312, p = 0.000), and the indirect effects of intrinsic motivation between the career orientation and employees’ creativity were significant with (β = 0.145, t = 5.005, p = 0.000) which shows partial mediation in the model. Moreover, (H2 ) calling orientation has signifi - cant and positive effects on employees’ creativity (β = 0.138, t = 2.056, p = 0.041), and the indirect effects of intrinsic motivation between the career orientation and employ - ees’ creativity were significant with (β = 0.052, t = 2.001, p = 0.046), which shows partial mediation in the model. Thus, both H2 and H2 were supported. b c Conclusions and discussion The current study investigated the mediating effects of intrinsic motivation and on employee creativity triggered by employee creativity factors in the EIAR. A few pieces of literature support the findings of this study about the non-significant direct relation - ship between domain-relevant skills and their employees’ creativity, despite the claimed findings being inconsistent. Several empirical studies, for example, have investigated the Table 7 Hypothesis constructs Eec ff ts Indirect relationships Beta STDEV t-Vales P Values Decision H1 CreSeE—> IntTaM—> Creativity 0.037 0.018 2.122 0.034 H1 ; supported a a H1 ProCla—> IntTaM—> Creativity 0.046 0.019 2.082 0.038 H1 ; supported b b H2 JobF—> IntTaM—> Creativity -0.006 0.012 0.528 0.598 H2 ; not supported a a H2 CareerF—> IntTaM—> Creativity 0.145 0.029 5.005 0.000 H2 ; supported b b F2 CallingF—> IntTaM—> Creativity 0.052 0.023 2.001 0.046 H2 ; supported c c Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 14 of 20 relationship between domain-relevant skills and employee creativity, with some stud- ies revealing a positive relationship (e.g., Amabile, 1989; Cai et al., 2019; Da Costa et al., 2015; Tanjung et al., 2022), and others revealing a non-significant relationship (Muñoz- Doyague et  al., 2008; van Broekhoven et  al., 2020). The insignificance of the direct relationship’s result and the above-reported mixed findings could be attributed to the influence of other variables on the relationship between the two variables. Eder and Saw - yer (2008), describing the contradictory findings and the positive and negative effects, suggested that researchers should keep looking into the work environments that help or hinder these relationships. This further supported the need to look at the variables that mediate the connection between domain-relevant skills and employees’ creativity. The findings of this study revealed that intrinsic motivation fully mediated the rela - tionship between domain-relevant skills and employees’ creativity. Providing more evidence for the mediating impact discovered in this study, Dul et  al.’s (2011) finding suggested that although personal traits influence an employee’s creativity, it can also be strengthened at the workplace. Birdi et  al. (2016) further support the finding of full mediating effects, reporting that, if change is to occur in the workplace, no matter how smart or knowledgeable an individual is, he or she must be willing to participate in the creative process. The high motivation enhanced engagement in creativity-related activi - ties, which in turn improved self-rated creativity (Tan et al., 2019). The findings not only shed light on mechanisms that underlie the domain-relevant skills linkage, but they also highlight the importance of intrinsic motivation and employees’ creativity in the relationships. The statistical analysis revealed a significant direct relationship between creativity- relevant processes and employees’ creativity. Results for this hypothesis are in line with past studies, reporting a positive relationship between creativity-relevant processes and individuals’ creativity (Amabile & Pillemer, 2012; Chang et al., 2018; Emami et al., 2023;  Stojcic et  al., 2018). Moreover, the results indicate that intrinsic motivation has a significant mediating effect between the relationships of creativity-relevant skills and employees’ creativity. This finding confirms the previous research findings (Chen et al., 2015; Li et al., 2020; Paulus & Nijstad, 2019). u Th s, the findings revealed that the mediat - ing effects demonstrated a significant indirect influence of creativity-relevant processes on employee creativity via intrinsic motivation. The statistical analysis showed a non-significant direct relationship between job orien - tation and employees’ creativity. Furthermore, the results of mediating effects revealed no indirect effects of job orientation on employee creativity via intrinsic motivation. uThs, H2 hypothesis was not supported. Other factors could alter both the direct and indirect relationship between those variables, explaining the non-significant relation - ships discovered in this study. However, it is plausible that if job orientation does emerge in broader cultural narratives about work, the increased value placed on creativity may be the trigger for such an orientation. Furthermore, research by Amabile and others has demonstrated that extrinsic rewards can function in conjunction with intrinsic motiva- tion or not (Amabile, 1993; Amabile & Pratt, 2016) and that job orientation provides a lens for understanding the meanings people attach to extrinsic motivation. The results indicate a significant direct relationship between career orientation and employees’ creativity. Moreover, the result of mediating effects showed an indirect effect Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 15 of 20 of career orientation via intrinsic motivation on employees’ creativity. In the literature, there have been conflicting results, with some findings showing a positive relationship between career orientation and individuals’ creativity (e.g., Scandura, 2017; To et  al., 2015), while others are unable to establish a significant relationship ( e.g., Fetzer & Pratt, 2020a, 2020b; Wang et  al., 2022). The findings of the partial mediating effect, which demonstrated a positive indirect effect of career orientation via intrinsic motivation on employees’ creativity, support the argument of some researchers that career orienta- tion by itself is insufficient for an individual’s creativity. The literature provides strong support for the current study’s findings. For example, Matsuo (2022) stated that when employees’ feel in charge of their work, they are better able to see problems from many angles and come up with different ideas when searching for solutions. This is because developmental occupations and goals support their creative activities. Finally, the statistical analysis of this study showed a significant direct relationship between calling orientation and employees’ creativity. In addition, the results indicate that intrinsic motivation has a partial mediating effect between the relationships of call - ing orientation and employees’ creativity. A result of the present study regarding the significant relationship between calling orientation and employees’ creativity is partly supported in the literature. For instance, Grant and Berry (2011) noted that for those with kinship or service orientations, engagement with beneficiaries, both inside and out - side the organization, should be the most significant. The best incentive for people with passion orientations is the work itself, so reducing barriers that hinder creative employ- ees from deeply engaging themselves in their work is probably the key (Fetzer & Pratt, 2020a, 2020b). However, no empirical study on the direct relationship between calling and creativity has been reported in the literature (Amabile & Pratt, 2016; Duan et  al., 2020). u Th s, this is the first study to have examined these direct relationships based on the dynamic componential model. Recently, very few studies have examined the mediat- ing impact of intrinsic motivation on the relationships between calling orientation and employees’ creativity. Of these studies, some showed results that partly aligned with the present study. For example, Duan et al. (2020) study found that employees who exhibit purposeful work and prosocial behavior in the workplace are likely to be relatively driven to come up with original ideas. Conclusion, implication, and limitations Conclusion Studies are still in the early stages of understanding the importance of work orienta- tions, their relationship to motivation, and their impact on employee creativity. This survey aims to contribute to these areas of inquiry. Overall, the quantitative, cross-sec- tional research findings serve to clarify the impacts of personal components, work ori - entations, and intrinsic motivation on employees’ creative performance. Based on the findings and discussion of the same, it is evident that creativity-relevant processes posi - tively affect employees’ creativity. However, the direct effect of domain-relevant skills on employees’ creativity was non-significant. The result of this non-significant effect does not imply that domain-relevant skills are any less significant. Instead, it shows a less pronounced importance compared to other significant independent variables. We observed that intrinsic motivation fully and partially mediates the relationship between Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 16 of 20 domain-relevant skills and creativity-relevant skills with employees’ creativity, respec- tively. In addition, our results validate that dimensions of work orientations such as career and calling orientations have a significant impact on employees’ creativity; this study’s findings are the first to look at this relationship in the workplace. Implications The empirical results from the PLS–SEM analysis have significant managerial and prac - tical implications for organizations based on how personal factors and work orienta- tions affect the enhancement of employees’ creativity. First, the findings supported the positive impact of creativity-relevant skills, career orientation and calling orientation on employees’ creativity. However, because not every employee has intrinsic task motiva- tion, employers cannot rely only on an employee’s ability, knowledge, and work orienta- tion. To promote creativity in a directed manner and make use of these often available employees’ potential, intrinsic motivators should also be considered. In particular, lead- ers should understand that enhancing people’s creativity is difficult without motivation (Deci et  al., 2017; Ryan & Deci, 2017). Thus, leaders should pay attention to adopting organizational policies that foster creativity to achieve their maximum potential ben- efits. Second, decision-makers need to recognize that employing creative individuals and expecting creative performance are not adequate for organizations. One of a man- ager’s main tasks is to encourage the availability of various mechanisms that are related to employees’ motivation and creativity. Finally, these findings demonstrated the signifi - cance of intrinsic motivation in the relationships between different factors that foster employees’ creativity. Limitations This study, like any empirical study, contains limitations that provide opportunities for further research. First, while the majority of the hypothesized relationships are sup- ported by the empirical findings, the study is still in part exploratory. It should be noted that the research evidence pointing toward the effect of work orientations on creativ - ity is fairly new, and, like the research that preceded it, this research may not tell the whole story. Second, our study relied exclusively on the self-reporting method of data collection, which did not provide us with an “outside” or “independent” perspective on participants’ views. Participants may describe themselves differently for a variety of con - scious and unconscious reasons, making self-reported data susceptible to inaccuracies (Roth et al., 2022). Third, in the current study, the idea of creativity as a single construct relating to idea generation was covered (Amabile et  al., 1996, p. 1), while some studies have analyzed and compared various forms of creativity and their affecting elements, such as radical and incremental creativity (Madjar et al., 2011). u Th s, there is a need for future studies that examine such types of creativity and their influencing factors. Fourth, the current study focused only on the individual level. Amabile (1997) stated that the model can be applied to individuals and small teams. According to Nijstad and De Dreu (2002), understanding what impedes or encourages creativity and group innovation is crucial, since groups are important organizational building blocks in the workplace. It is, therefore, necessary to analyze the same model using a different unit of analysis, such as a team, to better understand the variables that affect group creativity. Finally, the role Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 17 of 20 of the extrinsic motivation factor could also be examined to explain individual creativity in future research. Some other mediating variables could be introduced to better explain this model. Abbreviations AVE Average variance extracted CA Cronbach alpha CaeerF Career orientation CallingF Calling orientation CB-SEM C ovariance based structural equation modeling CR Composite reliability CreSeE Domain-relevant skills EIAR Ethiopia institute of agricultural research IntTaM Intrinsic motivation JobF Job orientation PLS–SEM Partial list square–structural equation modeling ProCla Creativity-relevant process UoG Univ ersity of Gondar Acknowledgements We would like to show our gratitude to all participants in this survey. We are very grateful to Professor Susan Cozzen and Dr. Caleb Akinrinade for their feedback on an earlier version of the manuscript, which was handed in the form of a thesis. We are also grateful to Mulatu Tilahun for his wonderful support. Author contributions The theoretical foundation, research design, survey execution, data evaluation, and discussion were done by YMY. YMY wrote the first draft of the manuscript. The critical review and manuscript editing were provided by DAG and ATD. DAG and ATD have provided their written consent to the submission of the manuscript in this form. All authors read and approved the final manuscript. Funding This work was supported by UoG through the post graduate students research grant. Availability of data and materials Data sets for this study are available, and the same can be obtained from the corresponding author on reasonable request. Declarations Competing interests The authors declare that they have no competing interests. Received: 2 September 2022 Accepted: 4 May 2023 References Ali, I., Ali, M., Leal-Rodríguez, A. L., & Albort-Morant, G. (2019). 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Factors affecting “employees’ creativity”: the mediating role of intrinsic motivation

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Abstract

makyohannes1@gmail.com 1 This article examines a particular set of influences on the creativity of individual School of Management and Public Administration, researchers at an Ethiopian agricultural research institute. One set of influences is University of Gondar, Gondar, "work orientations," and the others are "domain-relevant skills" and "creativity-relevant Ethiopia processes." The study posits that another important influence, intrinsic motivation, is a mediating influence between these factors and creativity. The study moves beyond past research by examining the influences together in a structural equation model. The data were collected from 307 researchers working with an agricultural research institute in different centers in Ethiopia. Partial Least Squares (PLS) path modeling, SmartPLS3, was used to empirically test the proposed hypotheses. The findings sug- gested the significantly positive direct effects of creativity-relevant processes, career orientation, and calling orientation on employees’ creativity. Moreover, the results of mediating effects showed significant indirect effects of domain-relevant skills, creativ- ity-relevant processes, career orientation, and job orientation via intrinsic motivation on enhancing employees’ creativity. However, the results did not confirm the direct effects of domain-relevant skills and job orientation on employees’ creativity. In addition, the results did not confirm the hypothesis that the mediator, intrinsic motivation, had a statistically significant effect on the relationship between job orientation and employ- ees’ creativity. Finally, for managers and decision-makers who prioritize employees’ creativity, these findings will deepen their understanding of the holistic role of intrinsic motivation in nurturing employees’ creativity. Keywords: Creativity, Intrinsic motivation, Domain-relevant skills, Creativity-relevant process, Job orientation, Career orientation, Calling orientation Introduction Creativity is often regarded as a vital source of competitive strength for organizations (Ferreira et al., 2020), since it has become valued across diverse tasks, professions, and industries (Kršlak & Ljevo, 2021; Lee et  al., 2019; Shalley et  al., 2004). Within organi- zations that value diversity, change, and adaptation in particular, creative employees are regarded as a valuable resource (Liu et  al., 2017). In fact, many academics contend that organizations seeking to gain a competitive edge must prioritize boosting the crea- tive performance of their workforce. Employee creativity contributes significantly to organizational innovation, effectiveness, and survival (Ivcevic et  al., 2021). For organi - zations aiming to lay a strong foundation for creativity and innovation, having creative © The Author(s) 2023. Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line to the mate- rial. If material is not included in the article’s Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http:// creat iveco mmons. org/ licen ses/ by/4. 0/. Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 2 of 20 employees is a crucial requirement (Fuchs et  al., 2021). Among the major theories are the componential theory of creativity and innovation in the corporate setting (Amabile, 1988), the interactionist theory (Woodman, 1993), and the multiple social domains the- ory (Ford, 1996). In recent years, researchers have advanced the idea of work orientations from the per- spective of individual expectations for work and subjective evaluation, which highlights the person’s subjective perspective and work’s purpose (Fetzer & Pratt, 2020a, 2020b). It divides work orientation into three categories: job orientation, career orientation, and calling orientation (Bellah et al., 1996). Although scholars have made some progress on the concept of work orientation, there are still some limitations. Some scholars argue that many assumptions about work orientations lack empirical support (Cai et al., 2018) and claim that the field is largely theoretical (Pratt et al., 2013) and in need of insight into the mechanisms through which work orientations operate (Amabile & Pratt, 2016; Lee et al., 2019). Given the limitations of earlier research, one goal of this study is to examine the connection between work orientations and employees’ creativity. In the literature, the relationship between intrinsic motivation and creativity is com- monly stated (Auger & Woodman, 2016; Yuan et al., 2019). Intrinsic motivation is con- sidered essential for creativity, because without it, instead of knowledge or skills, one cannot engage in and persist in creative activities (Fischer et  al., 2019). Many studies have focused only on the direct relationship between motivation and employees’ creativ- ity, such as reward (e.g., Eisenberger & Rhoades, 2001; Eisenberger et al., 2020; Fischer et al., 2019; Yoon et al., 2015). Moreover, previous studies have examined the direct rela- tionship between many variables and employees’ creativity, with mixed results. There - fore, additional study is required to investigate potential mediators that may have an impact on the nature of the relationship (Su et al., 2020; Tan et al., 2019). The objectives of this study are manifold, and our research contributes to the literature on personal components of creativity, work orientations, and employees’ creativity by introducing a unique conceptual model that integrates emerging constructs to explain how personal factors and work orientations can potentially improve employees’ crea- tivity. This study also examines the mediating role of intrinsic motivation in increasing individual creativity when these employees acquire expertise, creative thinking skills, and career orientation. To the best of our knowledge, no empirical study in the manage- ment literature has examined the role of personal components of creativity and work orientations in improving employees’ creativity in the presence of mediation by intrinsic motivation. Literature review Research suggests that employees’ creativity is influenced by many determinants, includ - ing motivation (Liu et al., 2016), personality and thinking styles (Wu et al., 2014), as well as creative personal and role identities (Fischer et  al., 2019), and work orientation (Liv et  al., 2020). Though there has been considerable research on employees’ creativity via psychological, organizational, and work factors in isolation (Amabile & Pratt, 2016), the question remains: how do these determinants work collectively to contribute to employees’ creativity? Despite evidence that these characteristics can all contribute to the creative process, the literature that focuses on these elements often does not take Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 3 of 20 their overall influence into account. Indeed, in their review on creativity and innova - tion, Anderson et al. (2014) highlighted the need to further explore employees’ creativity and specifically how these determinants might work in combination to foster employees’ creativity. That must be done by testing multiple determinants simultaneously, as this study does. An employee’s level of creativity is influenced by the kind and quantity of their knowl - edge of their field (i.e., domain-relevant skills), as well as the creative process itself (cre - ativity-relevant processes) (Cai et al., 2019; Tanjung et al., 2022). Domain-relevant skills pertain to factual knowledge and expertise in a particular field that can be influenced by formal and informal education, as well as people’s perceptual, cognitive, and motor skills (Hennessey, 2019). According to Amabile (1983, 1988), the level of training in crea- tive skills and strategies for producing new ideas, experiences in creative activities, and possessing particular personality traits are likely to positively affect creativity-relevant processes, which have to do with the tacit knowledge to generate creative ideas as well as the cognitive styles and work styles for the production of creative ideas. The relationship between individual creativity components and employees’ creativity Based on the revised model of Amabile’s componential model, there are three key com- ponents of individual creativity: domain-relevant skills, creativity-relevant process, and intrinsic motivation. First, domain-relevant skills have been highlighted by creativity theorists as a crucial mechanism linking individual and environmental determinants to employee creativ- ity (Amabile, 1988). Particularly, the abilities that support employee creativity are fre- quently domain-specific (i.e., the factual knowledge and the technical skills required in a given domain; (Amabile et  al., 1996). Domain-relevant skills provide the cognitive pathways for problem resolution in addition to aiding in the identification of problems. The stronger the domain-relevant skills, the greater the number of options for creating something new or coming up with a novel mix of concepts (Amabile et al., 1996). It fol- lows that an employee’s abilities in the creative process depend on their domain-relevant skills (Amabile & Pillemer, 2012). An individual who possesses more domain-relevant skills is more likely to comprehend the underlying causes of issues and to combine and recombine various knowledge sets to come up with creative ideas (Liu et al., 2017). Second, at the individual level, creativity-relevant skills are important drivers of crea- tive performance (Amabile, 1983, 1997). The creativity-relevant process includes both divergent and convergent thinking skills that are necessary for coming up with unique and valuable ideas (Birdi et  al., 2016). Employees with divergent thinking abilities might come up with a variety of alternate answers or strategies that are different from those typically used (Scott et  al., 2004). Employees with convergent thinking skills can assess the merits of novel concepts or identify the source of a problem (Grohman et al., 2006). According to Fischer et al. (2019), creativity-relevant skills determine the variety and flexibility of cognitive approaches that employees use to pursue solutions or solve challenges. The third, intrinsic task motivation, is characterized by a high regard for individual investment and involvement (Ryan & Deci, 2017). Numerous meta-analyses have dem- onstrated a considerably positive relationship between intrinsic motivation and creative Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 4 of 20 performance (Cerasoli et  al., 2014; de Jesus et  al., 2013; Liu et  al., 2016). The dynamic componential model of creativity and innovation in organizations (Amabile & Pratt, 2016) also underlines this strong relationship theoretically. In addition, Grant and Berry (2011) discovered that the extent to which work includes helping others has a positive impact. Therefore, based on the explanation above, it is believed that there is a positive relationship between individual creative components and employees’ creativity. H : individual creativity components: (a) domain-relevant skills, (b) creativity-relevant processes, and (c) intrinsic task motivation are positively related to employees’ creativity. The relationship between work orientation and employees’ creativity Work orientations are “internalized evaluations about what makes work worth doing” (Pratt et al., 2013, p. 175). Work orientations are similar to our own personal "accounts" of how we view our work and, more precisely, what we value in it. These accounts develop as a result of people internalizing social norms that come from many social forces, such as family, religious institutions, the media, educational institutions, and other social influences like organizational leaders (Pratt et al., 2013). Consequently, it is easy to see how job orientation and creativity are related. The majority of experts acknowledge the three types of work orientation: job, career, and calling orientations (Willner et  al., 2020). Job orientation is a person’s perception that their relationship with work is one of material exchange, and their intrinsic motiva- tion is predicated on their capacity to base their effort on the corresponding material returns and financial gain (Liv et al., 2020). While the career orientation reflects the per - son’s perception that the goal of their work is to advance their careers, obtain status, etc., and pursue greater promotion opportunities (Kolodinsky et  al., 2018). Calling orienta- tion emphasizes that the connection between a person and their work is more based on their own personal success, fulfillment, and commitment (Liv et al., 2020). Amabile and Pratt (2016) argues the notion that progress in creative work will be more meaningful, and thus more motivating, to some workers than others. For this reason, it is important to understand employees’ work orientations. H : work orientation: (a) job, (b) career, (c) calling are positively related to employees’ creativity. The relationship between individual creativity components, creativity and intrinsic motivation According to studies, three things in particular foster creativity: motivation, skills, and creativity-relevant processes (Amabile & Pratt, 2016; Hirst et  al., 2009; Richter et  al., 2012). In general, motivation is understood as “the heart of organizational behavior” (Gagné, 2014, p. 414), the performance and productivity of employees are significantly impacted by their motivation (Cerasoli et  al., 2014; Yuan & Woodman, 2021). Intrin- sic motivation is affected by both individuals’ domain-relevant skills and creativity- relevant processes (Newman et al., 2018). Employees who believed that they possessed more skills in creativity, identifying problems, and introducing and assessing solutions reported higher levels of patent submissions, besides having a superior quantity and originality of ideas, as rated by experts (Birdi et  al., 2016). Amabile maintained that intrinsic motivation is the central tenet of creativity; when a task is exciting, engaging, Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 5 of 20 and demanding, employees are more creative (Amabile & Pillemer, 2012). It follows that intrinsic motivation may play a mediating role in the link between individual creativity components and employees’ creativity. H : Intrinsic motivation mediates the relationship between individual creativity com- ponents (a) domain-relevant skills and (b) creativity-relevant process. The relationship between work orientation, creativity and intrinsic motivation Amabile and Pratt (2016) argue that work orientations are likely to be associated with creativity in at least three ways. First, work orientation primarily affects motivation, which in turn drives the creative process. Second, leaders’ assertions about creativity will not inspire people unless they perceive their own inventive and creative work as worth- while (Zhang et al., 2020). This argument goes on to say that how an employee handles work will largely determine whether they find the organizational leaders’ claims about how important creativity is to be "meaningful" in the first place and, thus, inspiring (Fis - cher et al., 2019). Third, work orientations may affect persistence and, thus, the degree to which people persevere in the progress loop, but some orientations are likely to be more beneficial in that regard than others. This is similar to meaningful work more generally (Amabile & Pratt, 2016). One of our central research objectives was to more fully explore the intrinsic moti- vation principle, especially given the dearth of research and mixed results of the few existing studies. For example, Fetzer and Pratt (2020a, 2020b) found that intrinsic moti- vation did not mediate the effect of career orientation on creativity, but Scandura (2017) found that intrinsic motivation mediated the effect of career orientation on individual creativity. More recently, Duan et  al. (2020) found that intrinsic motivation only par- tially mediated the effect of calling orientation on individual creativity. Therefore, it is expected that intrinsic motivation influences the relationship between work orientation and employees’ creativity (Fig. 1). H : Intrinsic motivation mediates the relationship between work orientations (job, career, and calling) and employees’ creativity. Methodology Sample and data The sample for this study was calculated with a 95% confidence level using Taro Yamane (Yamane, 1973) formula (EIAR has a total of 1317 researchers, of whom 378 are BSc, MSc, 797 are DVM, and 136 are PhD). Substitute numbers in the formula; the number of samples is n = 306.814; however, the sample size formulas indicate the required num- ber of responses. To account for individuals who cannot be reached, many researchers commonly add 10% to their sample size. In addition, a 30% increase in the sample size is frequently used to account for nonresponse (Israel, 1992). Thus, to obtain reliable data, researchers increased the sample size to 400 respondents. 400 questionnaires were distributed to collect data for this study; 342 of them were returned, but 35 of them were incomplete. The majority of these respondents responded to only a few of the survey’s questions and missed the others. 19 cases with 20% or more missing data were excluded from the analysis. A further 16 cases demonstrated less than 20% missing data and a very low standard deviation. A closer Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 6 of 20 Individual Components • Domain-relevant skills • Creativity-relevant process Dependent Variable Employees’ Intrinsic Motivation Creativity Mediating Variable Work Orientation • Job • Career • Calling Independent Variables Fig. 1 Hypothesized interactions of personal components and work orientations on employees’ creativity look revealed that these respondents had given the identical answer to nearly every question on the survey and, therefore, were considered to be of low value and were also excluded from further analysis. In total, 307 questionnaires were properly filled out with no missing data. The study’s target population included all 17 of the EIAR centers. These centers were chosen for the study, because they reflect the Ethiopian economy’s diverse agri- cultural institutions. To identify the respective respondents for each of the EIARs a three multi-stage proportionate systematic random sampling method as proposed by (Ragab & Arisha, 2017) was used. Purposive sampling was used to choose the EIAR researchers in the first stage. In the second stage, stratified sampling was used to establish four strata: first, BSc; second, MSc; third, DVM; and fourth, PhD degree levels. The third stage entailed proportionate systematic random sampling depending on the year of experience of employees’. Full-time employees who work 8 h per day are the focus. Employees with varied job titles were included in the sam- ple to guarantee that a variety of jobs were available to cover various work-related activities. In the sample, the majority (63.8%) of the respondents were "men," while 36.2% were "female." In terms of age, the majority (67.8%) of the respondents were younger than 35 years. 15.0% were 36–40 years, 14.0% were 41–45 years, and the least, 3.3%, were above 45  years. About 59.0% of participants had a master’s degree, followed by 28.7% who hold a bachelor’s degree, 11.7% with a PhD, and 0.7% with a DVM. In terms of work experience, the majority of respondents (38.1%) were 7 to 9 years, fol- lowed by 30.3% who were 4 to 6 years, 21.2% who were over 10 years, and the least (10.4%) were less than 3 years. Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 7 of 20 Instruments and measures The survey strategy is popular in the social sciences and associated with a deductive research approach (Rahi, 2017). According to Jenny Rowley (2014), when a researcher wants to profile a sample in terms of statistics or determine the frequency of beliefs, atti - tudes, processes, behaviors, experience, or forecast, a questionnaire is utilized. A ques- tionnaire is the most appropriate method to collect data for this research, because it is easier to achieve responses from a huge number of employees in a short period (Rahi, 2017; Rowley, 2014). In addition, Sekaran and Bougie (2019) stated that it is easier to reach people in different geographical areas. As the research method is quantitative, it is perfect to use a survey questionnaire for inquiry mode (Khalid et al., 2012; Rahi, 2017; Rahi et al., 2019). The data collected might be observed to generate results that are more generalizable (Rowley, 2014). The questionnaire was divided into three main sections: 1) Demographic information: four items contain all the demographic details that distin- guish between the participants, including gender, age group, educational level, and years of experience in the functional area. 2) Individual creativity components: Amabile (1988) stated that all three elements of individual creativity (domain-relevant skills, creativity-relevant processes, and intrin- sic task motivation) are crucial. No one element is enough for creativity. Thus, all factors were assessed as follows: (a) domain-relevant skills: three items developed by Tierney (1997) were used to measure domain-relevant skills. Employees were asked about their confidence in their capability to be creative. An example item is “I feel that I am good at generating novel ideas.” (b) Creativity-relevant processes: five items developed by Sawyer (1992), four were used to measure creativity-relevant processes. Employees were asked about their certainty in terms of the procedures they must use at work. An example item is “I know how to divide my time among the tasks.” (c) Intrinsic task motivation: four items were developed by Eisenberger and Rhoades (2001) and adopted to assess the extent to which participants considered their work interesting, enjoyable, boring, and unpleasant. An example item is “My job is inter- esting.” 3) Willner et  al. (2020) developed work meaning, consisting of five orientations: job (financial compensation), career (advancement and influence), calling (prosocial duty), social embeddedness (belongingness), and busyness (filling idle time with activities). However, research in this field (e.g., Wrzesniewski et al., 1997) has focused on the tripartite concept (job, career, and calling orientations) developed by Bellah et al. (1996). (a) The job factor was assessed on a 5-item scale. An example item is “If I had enough money, I would not look for work.” (b) The career factor was assessed on a 5-item scale. An example item is “I would like to advance in the professional hierarchy of my field and receive additional duties and responsibilities.” (c) The call - ing factor was assessed on a 5-item scale. An example item is “I enjoy talking about my future work with others” all were adopted from Willner et al. (2020). 4) Six items were developed by Amabile et  al. (1996) and used to measure creativity. An example item is “My area of this organization is creative.” The instrument used a four-point scale to rate and assesses items based on different factors and creativity. Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 8 of 20 According to Holmes and Mergen (2014), in a four-point scale, the middle option does not exist. This type of scale is called a ‘forced choice’ method, because the neu - tral option is deleted (Allen & Seaman, 2007). The main reason for using a four-point scale is that the KEYS questionnaire uses the same ratings. The researchers were used: 1 = Never, 2 = Sometimes, 3 = Often, 4 = Always. Statistical procedure We employed partial least squares structural equation modeling (PLS–SEM), a vari- ance-based structural equation modeling technique. PLS–SEM is based on maximizing the explained variance of the endogenous latent variables. For exploratory and predic- tive studies, in particular, it is appropriate (Manley et al., 2021). This study followed the standard evaluation guidelines for reporting PLS–SEM results (e.g., Hair et  al., 2017, 2021; Henseler et al., 2016). PLS–SEM differs from covariance-based structural equation modeling (CB-SEM) in several important ways. For example, PLS–SEM differs from CB- SEM in that it does not impose minimal criteria or constrictive assumptions on meas- urement scales, sample sizes, or distributional assumptions (Hair et  al., 2017; Sarstedt et al., 2021). The following justifications support the use of PLS–SEM in this study: First, we used personal components and work orientation to predict employees’ crea- tivity, responding to the call to use PLS–SEM as a prediction-oriented approach (Manley et al., 2021). Second, the study model shows a relatively complex structure with a num- ber of manifest latent variables and the presence of multi-dimensionality (i.e., mediators) in the constructs included in the model (Hair et al., 2017; Sarstedt et al., 2021). Third, it is believed that the model’s structural relationships are still in the early stages of theory development or extension, enabling the exploration and development of new phenom- ena (Richter et al., 2015). Fourth, the latent variable scores were used in the subsequent analysis of predictive relevance, particularly in the two-stage technique for mediation analysis (Sarstedt et al., 2020; Wong, 2016). Finally, this study benefited from the advan - tages of PLS–SEM in terms of less rigorous requirements or restrictive assumptions, which enabled us to create and estimate our model without imposing additional con- straints (Hair et al., 2019). Analysis and results Under standard evaluation guidelines (Hair et  al., 2017), PLS–SEM analysis and inter- pretation have three stages: (1) assessing the reliability and validity of the measurement model; (2) assessing the structural model; and (3) assessing the structural equation mod- eling or global model fit. Measurement model A measurement model is a statistical model that links unobservable theoretical constructs, operationalized as latent variables, and observable properties, i.e., data about the world. By providing researchers and practitioners with a set of tools for making explicit and evaluating assumptions, measurement modeling fosters more transparency and accountability. Direct measurement constructs rely on samples of behavior, such as responses to test items or observations of behavior, while indirect Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 9 of 20 measurement constructs rely on samples of behavior, such as responses to test items or observations of behavior (Bandalos, 2018). The evaluation of the measurement model in PLS–SEM was based on the individual indicator reliability, composite reliability (CR), average variance extracted (AVE) and discriminant validity of the constructs. To measure the reliability, we have used Cronbach’s alpha (CA) and composite reliability (CR). The results for CA and CR are presented in Table  1 for calling fac- tor (0.825, 0.875), career factor (0.902, 0.928), creativity self-efficacy (0.743, 0.852), creativity (0.894, 0.919), intrinsic motivation (0.814, 0.879), job factor (0.917, 0.937), and creativity-relevant process (0.955, 0.965), respectively. CA and CR values higher than 0.70 are considered acceptable (Hair et al., 2011), and this study confirms that the values are within an acceptable range. We examined convergent validity to obtain AVE values. As suggested by Henseler et al. (2016), an AVE value ≥ 0.50, which means that ≥ 50% of the indicator variance should be accounted for. We looked at convergent validity to get AVE values, and all of them were greater than the 0.50 criterion (for the calling factor, career factor, cre- ativity self-efficacy, creativity, intrinsic motivation, job factor, and creativity-relevant process, respectively, the AVE values were 0.585, 0.720, 0.660, 0.656, 0.645, 0.748, and 0.671, respectively). Consistent with this recommendation, all constructs had AVE values that exceeded the 0.50 threshold (see Table 1). We also assessed the For- nell–Larcker and heterotrait–monotrait (HTMT) ratios to test discriminant valid- ity (Fornell & Larcker, 1981). Recently, the HTMT ratio has surpassed Fornell and Larcker (Henseler et al., 2016). Table 2 shows that the values of Fornell and Larcker’s tests are larger than the correlations among the variables. As per the Henseler et al. (2015) criterion, the HTMT values were below the threshold of 0.90 (see the values in Table 3). These results confirm the discriminant validity of this study. Assessment of structural model We assessed the issue of multicollinearity in the data using the variance inflation factor (VIF). Becker et  al. (2015) recommended that the values of VIF must be < 5, and this study found inner and outer model VIF values within the suggested range, depicting no issue of multicollinearity in the data (see Tables  4 and 5). Next, the structural model was evaluated using the standardized root mean square residual (SRMR) values should be lower than 0.08 for a sample size greater than 100 (Hense- ler et  al., 2016). As a result, we found a significant model fit for this study (0.076). Endogenous latent variables with coefficients of determination (R ) 0.75 or 0.5 can be described as substantial or moderate, respectively (Hair et  al., 2010, 2019). 2 2 Table 6 shows that R = 0.731 and R = 0.580, the structural (Creativity) (Intrinsic Motivation) model had satisfactory in-sample predictive power, consistent with prior research in this area (Ali et  al., 2019; Fischer et  al., 2019). Moreover, the value of Q should be higher than zero. Hence, this study’s results were both within the significance level, and the study model’s predictive relevance was achieved (Falk & Miller, 1992). Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 10 of 20 Table 1 Measurement model Construct Item code Loading Outer weights CA CR AVE Calling orientation 0.825 0.875 0.585 CallingF1 0.727 0.213 CallingF2 0.717 0.322 CallingF3 0.732 0.208 CallingF4 0.84 0.254 CallingF5 0.799 0.31 Career orientation 0.902 0.928 0.72 CareerF1 0.81 0.209 CareerF2 0.839 0.237 CareerF3 0.896 0.241 CareerF4 0.8 0.23 CareerF5 0.893 0.26 Domain-relevant skills 0.743 0.852 0.66 CreSeE2 0.886 0.425 CreSeE3 0.817 0.355 CreSeE1 0.726 0.269 Creativity 0.894 0.919 0.656 Creativity1 0.729 0.198 Creativity2 0.861 0.205 Creativity3 0.83 0.221 Creativity4 0.871 0.206 Creativity5 0.813 0.208 Creativity6 0.743 0.198 Intrinsic task motivation 0.814 0.879 0.645 IntTaM1 0.827 0.289 IntTaM2 0.774 0.311 IntTaM3 0.884 0.329 IntTaM4 0.719 0.319 Job orientation 0.917 0.937 0.748 JobF1 0.92 0.234 JobF2 0.848 0.247 JobF3 0.857 0.196 JobF4 0.894 0.308 JobF5 0.802 0.164 Creativity-relevant process 0.835 0.89 0.671 ProCla1 0.843 0.289 ProCla2 0.755 0.288 ProCla3 0.87 0.306 ProCla4 0.803 0.34 Average variance extracted (AVE); Cronbach’s alpha (CA); Composite reliability (CR); Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Structural equation modeling The modified model and the hypotheses only included the indirect relationships, because examining the mediating effects involves first testing the direct relationships. Thus, the following hypotheses were tested using PLS–SEM. Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 11 of 20 Table 2 Discriminant validity (Fornell–Larcker criterion) CallingF CareerF CreSeE Creativity IntTaM JobF ProCla CallingF 0.765 CareerF 0.753 0.849 CreSeE 0.717 0.554 0.812 Creativity 0.735 0.795 0.595 0.81 IntTaM 0.672 0.72 0.573 0.756 0.803 JobF − 0.072 − 0.052 − 0.114 − 0.014 − 0.088 0.865 ProCla 0.66 0.506 0.668 0.575 0.542 − 0.16 0.819 Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Table 3 HTMT (heterotrait–monotrait ratio) CallingF CareerF CreSeE Creativity IntTaM JobF ProCla CallingF CareerF 0.825 CreSeE 0.896 0.658 Creativity 0.830 0.883 0.712 IntTaM 0.787 0.837 0.722 0.886 JobF 0.104 0.073 0.129 0.073 0.104 ProCla 0.802 0.572 0.831 0.662 0.654 0.175 Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Table 4 Collinearity statistics (outer VIF values) VIF VIF VIF CallingF1 2.036 Creativity1 1.676 JobF1 4.941 CallingF2 1.475 Creativity2 4.006 JobF2 2.329 CallingF3 2.009 Creativity3 2.594 JobF3 5.001 CallingF4 3.082 Creativity4 4.148 JobF4 3.739 CallingF5 1.805 Creativity5 2.296 JobF5 4.151 CareerF1 2.127 Creativity6 1.877 ProCla1 2.709 CareerF2 2.238 IntTaM1 4.456 ProCla2 1.513 CareerF3 4.08 IntTaM2 1.603 ProCla3 2.936 CareerF4 1.943 IntTaM3 4.634 ProCla4 1.612 CareerF5 3.807 IntTaM4 1.42 CreSeE1 1.36 CreSeE2 1.711 CreSeE3 1.539 Variance inflation factor (VIF); Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) H1: Intrinsic motivation mediates the relationship between individual creativity com- ponents: (a) domain-relevant skills and (b) creativity-relevant processes, and employees’ creativity. H2: Intrinsic motivation mediates the relationship between work orientations (a) job, (b) career and (c) (calling and employees’ creativity. Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 12 of 20 Table 5 Collinearity statistics (inner VIF values) CallingF CareerF CreSeE Creativity IntTaM JobF ProCla CallingF 3.623 3.586 CareerF 2.889 2.318 CreSeE 2.431 2.396 Creativity IntTaM 2.382 JobF 1.031 1.023 ProCla 2.122 2.088 Variance inflation factor (VIF); Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Table 6 Saturated model results 2 2 2 Construct R R Adjusted Q SRMR predict Creativity 0.731 0.726 528 0.076 IntTaM 0.58 0.573 419 2 2 Standardized root mean square residual (SRMR); determination of coefficient (R ); cross-validiated redundancy (Q ); intrinsic motivation (IntTaM) Fig. 2 Structural model results. Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) The sizes and significances of the path coefficients that reflect the hypotheses were examined. The significance of the path coefficients was calculated using the bootstrap - ping procedure (with 5000 bootstrap samples). Figure  2 provides the structural model Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 13 of 20 results. Table  7 provides the path coefficients, standard deviation, t-statistics, and p values. According to the PLS–SEM findings, (H1 ) testing the direct effects of creative self- efficacy, which reflects domain-relevant skills, and employee creativity revealed a non- significant relationship (β = 0.041, t = 0.817, p = 0.414). While the indirect effects of intrinsic motivation on domain-relevant skills and employee creativity were significant (β = 0.047, t = 2.122, p = 0.034). It was concluded that intrinsic motivation fully mediated the relationships between creative self-efficacy, which refracted domain-relevant skills, and employees’ creativity. Thus, H1 was supported. (H1 ) found a significant relationship between process clarity, which reflects creativ - ity-relevant skills, and employee creativity (β = 0.099, t = 2.429, p = 0.015). In terms of mediating effects, there were positive indirect effects of process clarity on employee cre - ativity (β = 0.046, t = 2.082, p = 0.038) which reflects creativity-relevant skills via intrin - sic motivation. Therefore, it was concluded that intrinsic motivation partially mediated the relationships between process clarity, which reflected domain-relevant skills, and employees’ creativity. Thus, H1 was supported. The findings indicate that (H2 ) job orientation has no significant relationship with employee creativity (β = 0.061, t = 1.934, p = 0.054). In terms of the mediating effects, the result showed no indirect effects of job orientation, via intrinsic motivation on crea - tivity (β = − 0.006, t = 0.528, p = 0.598). Thus, H2 was not supported. (H2 ) career ori- a b entation has significant and positive effects on employees’ creativity (β = 0.406, t = 7.312, p = 0.000), and the indirect effects of intrinsic motivation between the career orientation and employees’ creativity were significant with (β = 0.145, t = 5.005, p = 0.000) which shows partial mediation in the model. Moreover, (H2 ) calling orientation has signifi - cant and positive effects on employees’ creativity (β = 0.138, t = 2.056, p = 0.041), and the indirect effects of intrinsic motivation between the career orientation and employ - ees’ creativity were significant with (β = 0.052, t = 2.001, p = 0.046), which shows partial mediation in the model. Thus, both H2 and H2 were supported. b c Conclusions and discussion The current study investigated the mediating effects of intrinsic motivation and on employee creativity triggered by employee creativity factors in the EIAR. A few pieces of literature support the findings of this study about the non-significant direct relation - ship between domain-relevant skills and their employees’ creativity, despite the claimed findings being inconsistent. Several empirical studies, for example, have investigated the Table 7 Hypothesis constructs Eec ff ts Indirect relationships Beta STDEV t-Vales P Values Decision H1 CreSeE—> IntTaM—> Creativity 0.037 0.018 2.122 0.034 H1 ; supported a a H1 ProCla—> IntTaM—> Creativity 0.046 0.019 2.082 0.038 H1 ; supported b b H2 JobF—> IntTaM—> Creativity -0.006 0.012 0.528 0.598 H2 ; not supported a a H2 CareerF—> IntTaM—> Creativity 0.145 0.029 5.005 0.000 H2 ; supported b b F2 CallingF—> IntTaM—> Creativity 0.052 0.023 2.001 0.046 H2 ; supported c c Domain-relevant skills (CreSeE); creativity-relevant process (ProCla); job orientation (JobF); career orientation (CaeerF); calling orientation (callingF); intrinsic motivation (IntTaM) Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 14 of 20 relationship between domain-relevant skills and employee creativity, with some stud- ies revealing a positive relationship (e.g., Amabile, 1989; Cai et al., 2019; Da Costa et al., 2015; Tanjung et al., 2022), and others revealing a non-significant relationship (Muñoz- Doyague et  al., 2008; van Broekhoven et  al., 2020). The insignificance of the direct relationship’s result and the above-reported mixed findings could be attributed to the influence of other variables on the relationship between the two variables. Eder and Saw - yer (2008), describing the contradictory findings and the positive and negative effects, suggested that researchers should keep looking into the work environments that help or hinder these relationships. This further supported the need to look at the variables that mediate the connection between domain-relevant skills and employees’ creativity. The findings of this study revealed that intrinsic motivation fully mediated the rela - tionship between domain-relevant skills and employees’ creativity. Providing more evidence for the mediating impact discovered in this study, Dul et  al.’s (2011) finding suggested that although personal traits influence an employee’s creativity, it can also be strengthened at the workplace. Birdi et  al. (2016) further support the finding of full mediating effects, reporting that, if change is to occur in the workplace, no matter how smart or knowledgeable an individual is, he or she must be willing to participate in the creative process. The high motivation enhanced engagement in creativity-related activi - ties, which in turn improved self-rated creativity (Tan et al., 2019). The findings not only shed light on mechanisms that underlie the domain-relevant skills linkage, but they also highlight the importance of intrinsic motivation and employees’ creativity in the relationships. The statistical analysis revealed a significant direct relationship between creativity- relevant processes and employees’ creativity. Results for this hypothesis are in line with past studies, reporting a positive relationship between creativity-relevant processes and individuals’ creativity (Amabile & Pillemer, 2012; Chang et al., 2018; Emami et al., 2023;  Stojcic et  al., 2018). Moreover, the results indicate that intrinsic motivation has a significant mediating effect between the relationships of creativity-relevant skills and employees’ creativity. This finding confirms the previous research findings (Chen et al., 2015; Li et al., 2020; Paulus & Nijstad, 2019). u Th s, the findings revealed that the mediat - ing effects demonstrated a significant indirect influence of creativity-relevant processes on employee creativity via intrinsic motivation. The statistical analysis showed a non-significant direct relationship between job orien - tation and employees’ creativity. Furthermore, the results of mediating effects revealed no indirect effects of job orientation on employee creativity via intrinsic motivation. uThs, H2 hypothesis was not supported. Other factors could alter both the direct and indirect relationship between those variables, explaining the non-significant relation - ships discovered in this study. However, it is plausible that if job orientation does emerge in broader cultural narratives about work, the increased value placed on creativity may be the trigger for such an orientation. Furthermore, research by Amabile and others has demonstrated that extrinsic rewards can function in conjunction with intrinsic motiva- tion or not (Amabile, 1993; Amabile & Pratt, 2016) and that job orientation provides a lens for understanding the meanings people attach to extrinsic motivation. The results indicate a significant direct relationship between career orientation and employees’ creativity. Moreover, the result of mediating effects showed an indirect effect Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 15 of 20 of career orientation via intrinsic motivation on employees’ creativity. In the literature, there have been conflicting results, with some findings showing a positive relationship between career orientation and individuals’ creativity (e.g., Scandura, 2017; To et  al., 2015), while others are unable to establish a significant relationship ( e.g., Fetzer & Pratt, 2020a, 2020b; Wang et  al., 2022). The findings of the partial mediating effect, which demonstrated a positive indirect effect of career orientation via intrinsic motivation on employees’ creativity, support the argument of some researchers that career orienta- tion by itself is insufficient for an individual’s creativity. The literature provides strong support for the current study’s findings. For example, Matsuo (2022) stated that when employees’ feel in charge of their work, they are better able to see problems from many angles and come up with different ideas when searching for solutions. This is because developmental occupations and goals support their creative activities. Finally, the statistical analysis of this study showed a significant direct relationship between calling orientation and employees’ creativity. In addition, the results indicate that intrinsic motivation has a partial mediating effect between the relationships of call - ing orientation and employees’ creativity. A result of the present study regarding the significant relationship between calling orientation and employees’ creativity is partly supported in the literature. For instance, Grant and Berry (2011) noted that for those with kinship or service orientations, engagement with beneficiaries, both inside and out - side the organization, should be the most significant. The best incentive for people with passion orientations is the work itself, so reducing barriers that hinder creative employ- ees from deeply engaging themselves in their work is probably the key (Fetzer & Pratt, 2020a, 2020b). However, no empirical study on the direct relationship between calling and creativity has been reported in the literature (Amabile & Pratt, 2016; Duan et  al., 2020). u Th s, this is the first study to have examined these direct relationships based on the dynamic componential model. Recently, very few studies have examined the mediat- ing impact of intrinsic motivation on the relationships between calling orientation and employees’ creativity. Of these studies, some showed results that partly aligned with the present study. For example, Duan et al. (2020) study found that employees who exhibit purposeful work and prosocial behavior in the workplace are likely to be relatively driven to come up with original ideas. Conclusion, implication, and limitations Conclusion Studies are still in the early stages of understanding the importance of work orienta- tions, their relationship to motivation, and their impact on employee creativity. This survey aims to contribute to these areas of inquiry. Overall, the quantitative, cross-sec- tional research findings serve to clarify the impacts of personal components, work ori - entations, and intrinsic motivation on employees’ creative performance. Based on the findings and discussion of the same, it is evident that creativity-relevant processes posi - tively affect employees’ creativity. However, the direct effect of domain-relevant skills on employees’ creativity was non-significant. The result of this non-significant effect does not imply that domain-relevant skills are any less significant. Instead, it shows a less pronounced importance compared to other significant independent variables. We observed that intrinsic motivation fully and partially mediates the relationship between Yesuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 16 of 20 domain-relevant skills and creativity-relevant skills with employees’ creativity, respec- tively. In addition, our results validate that dimensions of work orientations such as career and calling orientations have a significant impact on employees’ creativity; this study’s findings are the first to look at this relationship in the workplace. Implications The empirical results from the PLS–SEM analysis have significant managerial and prac - tical implications for organizations based on how personal factors and work orienta- tions affect the enhancement of employees’ creativity. First, the findings supported the positive impact of creativity-relevant skills, career orientation and calling orientation on employees’ creativity. However, because not every employee has intrinsic task motiva- tion, employers cannot rely only on an employee’s ability, knowledge, and work orienta- tion. To promote creativity in a directed manner and make use of these often available employees’ potential, intrinsic motivators should also be considered. In particular, lead- ers should understand that enhancing people’s creativity is difficult without motivation (Deci et  al., 2017; Ryan & Deci, 2017). Thus, leaders should pay attention to adopting organizational policies that foster creativity to achieve their maximum potential ben- efits. Second, decision-makers need to recognize that employing creative individuals and expecting creative performance are not adequate for organizations. One of a man- ager’s main tasks is to encourage the availability of various mechanisms that are related to employees’ motivation and creativity. Finally, these findings demonstrated the signifi - cance of intrinsic motivation in the relationships between different factors that foster employees’ creativity. Limitations This study, like any empirical study, contains limitations that provide opportunities for further research. First, while the majority of the hypothesized relationships are sup- ported by the empirical findings, the study is still in part exploratory. It should be noted that the research evidence pointing toward the effect of work orientations on creativ - ity is fairly new, and, like the research that preceded it, this research may not tell the whole story. Second, our study relied exclusively on the self-reporting method of data collection, which did not provide us with an “outside” or “independent” perspective on participants’ views. Participants may describe themselves differently for a variety of con - scious and unconscious reasons, making self-reported data susceptible to inaccuracies (Roth et al., 2022). Third, in the current study, the idea of creativity as a single construct relating to idea generation was covered (Amabile et  al., 1996, p. 1), while some studies have analyzed and compared various forms of creativity and their affecting elements, such as radical and incremental creativity (Madjar et al., 2011). u Th s, there is a need for future studies that examine such types of creativity and their influencing factors. Fourth, the current study focused only on the individual level. Amabile (1997) stated that the model can be applied to individuals and small teams. According to Nijstad and De Dreu (2002), understanding what impedes or encourages creativity and group innovation is crucial, since groups are important organizational building blocks in the workplace. It is, therefore, necessary to analyze the same model using a different unit of analysis, such as a team, to better understand the variables that affect group creativity. Finally, the role Y esuf et al. Journal of Innovation and Entrepreneurship (2023) 12:31 Page 17 of 20 of the extrinsic motivation factor could also be examined to explain individual creativity in future research. Some other mediating variables could be introduced to better explain this model. Abbreviations AVE Average variance extracted CA Cronbach alpha CaeerF Career orientation CallingF Calling orientation CB-SEM C ovariance based structural equation modeling CR Composite reliability CreSeE Domain-relevant skills EIAR Ethiopia institute of agricultural research IntTaM Intrinsic motivation JobF Job orientation PLS–SEM Partial list square–structural equation modeling ProCla Creativity-relevant process UoG Univ ersity of Gondar Acknowledgements We would like to show our gratitude to all participants in this survey. We are very grateful to Professor Susan Cozzen and Dr. Caleb Akinrinade for their feedback on an earlier version of the manuscript, which was handed in the form of a thesis. We are also grateful to Mulatu Tilahun for his wonderful support. Author contributions The theoretical foundation, research design, survey execution, data evaluation, and discussion were done by YMY. YMY wrote the first draft of the manuscript. The critical review and manuscript editing were provided by DAG and ATD. DAG and ATD have provided their written consent to the submission of the manuscript in this form. All authors read and approved the final manuscript. Funding This work was supported by UoG through the post graduate students research grant. Availability of data and materials Data sets for this study are available, and the same can be obtained from the corresponding author on reasonable request. Declarations Competing interests The authors declare that they have no competing interests. Received: 2 September 2022 Accepted: 4 May 2023 References Ali, I., Ali, M., Leal-Rodríguez, A. L., & Albort-Morant, G. (2019). 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Journal of Innovation and EntrepreneurshipSpringer Journals

Published: May 15, 2023

Keywords: Creativity; Intrinsic motivation; Domain-relevant skills; Creativity-relevant process; Job orientation; Career orientation; Calling orientation

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