Hostname: page-component-cd9895bd7-jkksz Total loading time: 0 Render date: 2024-12-24T17:43:00.808Z Has data issue: false hasContentIssue false

Examining the relationship between work conditions and entrepreneurial behavior of employees: does employee well-being matter?

Published online by Cambridge University Press:  18 March 2022

Ana B. Escrig-Tena*
Affiliation:
Department of Business Administration and Marketing, Universitat Jaume I, Castellón, Spain
Mercedes Segarra-Ciprés
Affiliation:
Department of Business Administration and Marketing, Universitat Jaume I, Castellón, Spain
Beatriz García-Juan
Affiliation:
Department of Business Administration and Marketing, Universitat Jaume I, Castellón, Spain
Georgiana-Alexandra Badoiu
Affiliation:
Department of Business Administration and Marketing, Universitat Jaume I, Castellón, Spain
*
Author for correspondence: Ana B. Escrig-Tena, E-mail: escrigt@uji.es
Rights & Permissions [Opens in a new window]

Abstract

Do perceptions of work conditions prompt employees to adopt entrepreneurial behaviors? Does well-being play a role in this relationship? This paper proposes an integrated model of the associations between perceptions of work conditions (job resources and job demands) and the dimensions of entrepreneurial behaviors (innovative behavior, proactive behavior, and risk-taking behavior). Following the job demands-resources model, we also explore whether employees' well-being (work engagement and emotional exhaustion) mediates the association between work conditions and employees' behavior. Survey data of 257 R&D employees from the chemical sector in Spain were analyzed. The research concludes that different work conditions correlate with the dimensions of entrepreneurial behavior of employees (EBE) in different ways. Job demands are associated with innovative work behavior. Feelings of engagement are related to the dimensions of EBE and play a mediating role between job resources and EBE. Moreover, feelings of exhaustion and risk-taking behavior are connected.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
Copyright © Cambridge University Press and Australian and New Zealand Academy of Management 2022

Introduction

The literature on intrapreneurship (e.g., Neessen, Caniëls, Vos, & de Jong, Reference Neessen, Caniëls, Vos and de Jong2019) has highlighted the bottom-up nature of the construct and the importance of the entrepreneurial behavior of employees (EBE) to conform to an organizational strategic orientation, capable of facing changing environmental conditions. In this context, EBE is defined as the extent to which employees carry out tasks at work in a proactive manner by taking risks and seizing opportunities to innovate (de Jong, Parker, Wennekers, & Wu, Reference de Jong, Parker, Wennekers and Wu2015; Rigtering & Weitzel, Reference Rigtering and Weitzel2013). Given the importance of analyzing how managerial action can shape employees' entrepreneurial behavior (e.g., Rigtering & Weitzel, Reference Rigtering and Weitzel2013), a stream of research has focused on the work conditions that could favor EBE (e.g., de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015; Kuratko, Hornsby, & Covin, Reference Kuratko, Hornsby and Covin2014; Rigtering & Weitzel, Reference Rigtering and Weitzel2013). However, the link between work conditions and EBE deserves further analysis. First, the conclusions from Rigtering and Weitzel (Reference Rigtering and Weitzel2013) and de Jong et al. (Reference de Jong, Parker, Wennekers and Wu2015) suggest a different association when the dimensions of EBE (innovative work behavior, proactive behavior, and risk-taking behavior) are taken separately. Although some scholars have analyzed work-enhancing conditions for particular dimensions of EBE, such as innovative work behavior (e.g., De Spiegelaere, Van Gyes, De Witte, Niesen, & Van Hootegem, Reference De Spiegelaere, Van Gyes, De Witte, Niesen and Van Hootegem2014; Hammond, Neff, Farr, Schwall, & Zhao, Reference Hammond, Neff, Farr, Schwall and Zhao2011), a holistic overview of the role of work conditions that consider all dimensions of EBE is yet to be framed.

Second, as Neessen et al. (Reference Neessen, Caniëls, Vos and de Jong2019) indicate, previous studies have mostly focused on job resources, understood as those work conditions that make it easier for employees to meet their basic needs for autonomy, feel competent, and maintain relationships with others, as well as complete their tasks in a successful way (Bakker & Demerouti, Reference Bakker and Demerouti2008). However, according to the job demands-resources (JD-R) model (Bakker & Demerouti, Reference Bakker and Demerouti2017; Demerouti, Bakker, Nachreiner, & Schaufeli, Reference Demerouti, Bakker, Nachreiner and Schaufeli2001), work conditions can be summarized in two categories: job resources (e.g., job autonomy and managerial support), and job demands (work conditions that require a sustained effort on the part of the employee, such as work overload). Hence, a broad analysis of work conditions in relation to EBE should also comprise job demands, which, to date, has been neglected in the literature.

Third, Mustafa, Martin, and Hughes (Reference Mustafa, Martin and Hughes2016) acknowledge that organizational factors do not directly explain EBE, and suggest that individual feelings and motivations about the job, such as job satisfaction, may contribute to understanding the paths from those organizational factors to EBE. In this vein, according to the JD-R, employees' well-being may mediate the association between organizational factors and employees' behavior. Therefore, it is relevant to focus on the indirect association between work conditions (both job resources and job demands) and EBE when well-being is considered a mediator variable.

Finally, the analysis of EBE and its antecedents is particularly relevant in the case of R&D employees in innovative sectors, where customer needs and technological solutions evolve dynamically, and anticipating developments and adapting to change are vital for success (Schweitzer, Palmié, & Gassmann, Reference Schweitzer, Palmié and Gassmann2018). Specifically, employees that work in R&D departments are comfortable in environments that are open to change and support creativity (Saether, Reference Saether2019).

In this context, this study adopts a behavioral approach to intrapreneurship and contributes to the study of the determinants of the three dimensions of EBE by considering a holistic model of relationships that other authors have taken individually. Although the JD-R model has only recently been applied to the study of EBE (e.g., Gawke, Gorgievski, & Bakker, Reference Gawke, Gorgievski and Bakker2018; Kattenbach & Fietze, Reference Kattenbach and Fietze2018), researchers have used it to explain the relationship between intrapreneurship and well-being (Gardiner & Debrulle, Reference Gardiner, Debrulle, Wall, Cooper and Brough2021). According to the JD-R model, working conditions generate feelings of well-being/discomfort at work that can explain employees' behavior (Bakker & Demerouti, Reference Bakker and Demerouti2017). In an entrepreneurial context, the JD-R model provides an informative framework for understanding the extent to which the perception of working conditions (job demands and resources) drives employees to adopt entrepreneurial behaviors and the mediating role of well-being in this relationship. From the viewpoint of the JD-R model, our aim is to study how perceptions of job resources (managerial support and job autonomy) and job demands (work overload) can shape the specific dimensions of EBE via their association with R&D employees' well-being. Although the concept of well-being at work has been conceptualized differently in different disciplines (Kowalski & Loretto, Reference Kowalski and Loretto2017), it can be broadly defined as the evaluations that employees make of their work experiences (Plomp, Tims, Akkermans, Khapova, Jansen, & Bakker, Reference Plomp, Tims, Akkermans, Khapova, Jansen and Bakker2016). Most studies on the relationship between entrepreneurship and well-being focus on positive emotions. Inspired by the JD-R model, this research considers both the positive and negative aspects of well-being at work. On one hand, we consider work engagement as a form of well-being that reflects a positive state of mind. On the other hand, we focus on emotional exhaustion as the central dimension of burnout, which is more directly related to work conditions (Schaufeli, Salanova, González-Romá, & Bakker, Reference Schaufeli, Salanova, González-Romá and Bakker2002).

In the following sections, we develop our research hypotheses, explain the empirical study conducted on a sample of employees in R&D departments in the Spanish chemical sector, and end with a discussion about the implications of the study's findings.

The entrepreneurial behavior of employees

Entrepreneurial behavior can be defined as ‘a set of activities and practices by which individuals at multiple levels, autonomously generate and use innovative resource combinations to identify and pursue opportunities’ (Mair, Reference Mair and Elfring2005: 51). Employees who display entrepreneurial behavior are innovation drivers (Grant & Ashford, Reference Grant and Ashford2008; Shir, Nikolaev, & Wincent, Reference Shir, Nikolaev and Wincent2019) who allow organizations to renew themselves and be more competitive in the market. This type of behavior is under-researched in the literature (Blanka, Reference Blanka2019; de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015), which has led to terminological and conceptual confusion with the appearance of terms such as intrapreneurial behavior (e.g., de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015) or entrepreneurial orientation (e.g., Razavi & Ab Aziz, Reference Razavi and Ab Aziz2017). Later works have also tried to clarify the concept (Blanka, Reference Blanka2019; Neessen et al., Reference Neessen, Caniëls, Vos and de Jong2019). Accordingly, this construct is usually explained as employee activities characterized by three dimensions: innovative work behavior, proactive behavior, and risk-taking behavior (de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015; Rigtering & Weitzel, Reference Rigtering and Weitzel2013; Valsania, Moriano, & Molero, Reference Valsania, Moriano and Molero2016).

Innovative work behavior can be conceptualized as the willingness to create new and useful ideas, processes, products, or procedures that differ from established practices (Shirokova, Osiyevskyy, & Bogatyreva, Reference Shirokova, Osiyevskyy and Bogatyreva2016). According to de Jong et al. (Reference de Jong, Parker, Wennekers and Wu2015), individuals with an innovative work behavior recognize problems easily and generate ideas, then share their ideas model with the organization and build prototypes or models for further adoption.

Proactive behavior is related to pursuing opportunities, initiative, and future-oriented action that involves change and improvement of the situation or oneself and attempts to lead rather than follow (de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015). According to Razavi and Ab Aziz (Reference Razavi and Ab Aziz2017), proactive individuals do not let their surrounding situations affect their pursuit of goals.

Risk-taking behavior is associated with the tolerance of failure and employees' preference to take actions that can not only produce positive consequences but also losses if the employee is not successful (Valsania, Moriano, & Molero, Reference Valsania, Moriano and Molero2016). Specifically, the risks that entrepreneurial employees may take could be associated with reputation damage, resistance from peers, or their own job losses (de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015).

In sum, innovative, proactive, and risk-taking behaviors are seen as essential dimensions of employees' entrepreneurial behavior, and represent a range of behaviors that entrepreneurial workers may engage in when recognizing opportunities, generating ideas, and searching for resources to exploit those opportunities (de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015; Rigtering & Weitzel, Reference Rigtering and Weitzel2013). Following Pinchot (Reference Pinchot1985), employees with entrepreneurial behavior are those who go beyond formal job descriptions even if this behavior may get them into trouble. Those employees display extra-role behaviors that include activities (Zahra, Reference Zahra1991) revealing innovative, proactive, and risk-taking behaviors, which occur either inside or outside the current strategy (Calisto, Reference Calisto2014; Covin, Rigtering, Hughes, Kraus, Cheng, & Bouncken, Reference Covin, Rigtering, Hughes, Kraus, Cheng and Bouncken2020).

Based on this conceptualization of EBE, we build on studies that have considered that each dimension may have a diverse impact when considered separately (de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015; Rigtering & Weitzel, Reference Rigtering and Weitzel2013), thereby suggesting that each dimension of EBE represents a unique aspect of an employee's behavior toward entrepreneurship inside the firm.

Work conditions as antecedents of the entrepreneurial behavior of employees

To investigate how work conditions relate to EBE and employees' well-being, we follow the JD-R model, which classifies work conditions into job resources and job demands, and considers them to be catalysts of work behaviors (Bakker & Demerouti, Reference Bakker and Demerouti2017). Job resources are defined as ‘physical, psychological, social, or organizational aspects of the job that may do any of the following: be functional in achieving work goals, reduce job demands at the associated physiological and psychological costs, stimulate personal growth and development’ (Demerouti et al., Reference Demerouti, Bakker, Nachreiner and Schaufeli2001: 501). Job demands are conceptualized as ‘those physical, psychological, social, or organizational aspects of the job that require sustained physical and/or psychological (cognitive and emotional) effort’ (Schaufeli & Bakker, Reference Schaufeli and Bakker2004: 296); they refer work environment features such as a large amount of work and limited time (Hessels, Rietveld, & van der Zwan, Reference Hessels, Rietveld and van der Zwan2017).

Job resources and the entrepreneurial behavior of employees

Previous studies on job design have demonstrated a positive influence of certain job resources on the EBE (e.g., Chouchane, Fernet, Austin, & Zouaoui, Reference Chouchane, Fernet, Austin and Zouaoui2021; Dediu, Leka, & Jain, Reference Dediu, Leka and Jain2018; de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015). For example, Hammond et al. (Reference Hammond, Neff, Farr, Schwall and Zhao2011), in their meta-analysis of individual-level innovation at work, found job autonomy and managerial support as drivers of innovative work behaviors. Both types of job resources are among the main organizational antecedents of EBE in the literature (e.g., Hornsby, Kuratko, Shepherd, & Bott, Reference Hornsby, Kuratko, Shepherd and Bott2009; Neessen et al., Reference Neessen, Caniëls, Vos and de Jong2019).

Job autonomy refers to ‘the degree to which the job provides substantial freedom, independence, and discretion to the individual in scheduling the work and in determining the procedures to be used in carrying it out’ (Hackman & Oldham, Reference Hackman and Oldham1980: 162). Drawing from JD-R theory, autonomy is conceived as a job resource that stimulates and supports experimentation and development at work. In this line, there is evidence of job autonomy as a predictor of innovative work behavior (e.g., De Spiegelaere et al., Reference De Spiegelaere, Van Gyes, De Witte, Niesen and Van Hootegem2014; Ramamoorthy, Flood, Slattery, & Sardessai, Reference Ramamoorthy, Flood, Slattery and Sardessai2005). Such autonomy provides employees with the control and freedom to make decisions about how to carry out tasks and to implement ideas freely (Hackman & Oldham, Reference Hackman and Oldham1980; Ramamoorthy et al., Reference Ramamoorthy, Flood, Slattery and Sardessai2005), which allows employees to feel secure and be open to criticism, and stimulates them to seek, generate, and implement new and beneficial work-related ideas (De Spiegelaere et al., Reference De Spiegelaere, Van Gyes, De Witte, Niesen and Van Hootegem2014).

Managerial support refers to employees' perceptions about how their managers value their contributions and whether they are concerned about employees' well-being (Neves & Eisenberger, Reference Neves and Eisenberger2014). Managerial support exists when employees perceive continuing reciprocal trust, respect, and socio-emotional exchange with their immediate managers (Agarwal, Reference Agarwal2014). Drawing on the leader-member exchange theory, previous studies (e.g., Agarwal, Reference Agarwal2014) have shown high-quality relationships between employees and supervisors as an important antecedent of innovative work behavior, since employees feel that they have the support needed to develop their ideas. Thus, the above arguments lead us to the following assumption:

Hypothesis 1a: Job resources (job autonomy and managerial support) are positively related to innovative work behavior.

Research has also shown that job autonomy is a relevant contextual antecedent of proactive behavior (e.g., Crant, Reference Crant2000; Grant & Ashford, Reference Grant and Ashford2008). Autonomy provides employees with the option to choose how to do their jobs as well as opportunities to acquire new skills and master new responsibilities (Parker, Reference Parker2000). Consequently, employees may be inclined to take initiative, as they are likely to feel confident and capable (De Spiegelaere et al., Reference De Spiegelaere, Van Gyes, De Witte, Niesen and Van Hootegem2014). Thus, autonomy stimulates challenging and enriching jobs in which employees have sufficient resources to engage in proactive behaviors at work (Parker, Reference Parker2000).

Crant (Reference Crant2000) also suggests that other contextual factors, such as managerial support, have a direct effect on proactive behaviors. Highly supportive management could be perceived by employees as a signal of the provision of resources by managers (Kuratko, Hornsby, & Covin, Reference Kuratko, Hornsby and Covin2014) and may provide employees with a positive sense of identity or value, making them feel more confident and easing problem-solving (Wood, Reference Wood2008). This, in turn, may stimulate employees to take initiative, undertake change, and pursue envisaged opportunities. Based on the above arguments, we propose the following:

Hypothesis 1b: Job resources (job autonomy and managerial support) are positively related to proactive behavior.

Finally, as Baskaran (Reference Baskaran2017) suggests, the amount of control afforded by one's job is a predictor of risk-taking behavior. The availability of freedom and decision-making latitude among employees improves intrapreneurs' conditions to engage more freely in sharing and trying out their ideas, even at the risk of failure (Baskaran, Reference Baskaran2017; Dediu, Leka, & Jain, Reference Dediu, Leka and Jain2018; Ramamoorthy et al., Reference Ramamoorthy, Flood, Slattery and Sardessai2005). Moreover, employees feel confident to take risky actions as part of their entrepreneurial endeavors when they feel empowered as a result of work discretion (ul Haq, Jingdong, Usman, & Khalid, Reference ul Haq, Jingdong, Usman and Khalid2018).

Managerial support is also related to both employees' willingness to take risks and their tolerance to failure when it occurs (Hornsby et al., Reference Hornsby, Kuratko, Shepherd and Bott2009). Neves and Eisenberger (Reference Neves and Eisenberger2014) demonstrated that perceived organizational support is associated with the failure-related trust that the organization will act in good faith in the event that employees' actions end in failure, which may reduce employees' fear of taking risks. In those cases, employees should not worry about their job security when they take risks and make mistakes (ul Haq et al., Reference ul Haq, Jingdong, Usman and Khalid2018). Moreover, the quality relationship between leader and employees motivates employees to take risks in generating, promoting, and implementing new ideas (Alnaimi & Rjoub, Reference Alnaimi and Rjoub2021). In sum, we expect that managerial support and freedom to make decisions on their jobs will lead employees to take risks in their work as a part of entrepreneurial behavior. Thus, we propose Hypothesis 1c:

Hypothesis 1c: Job resources (job autonomy and managerial support) are positively related to risk-taking behavior.

Job demands and the entrepreneurial behavior of employees

In the present study, we capture job demands using the concept of work overload, since it has been demonstrated as a major job demand and is one of the most interestingly examined (Schaufeli & Bakker, Reference Schaufeli and Bakker2004). This refers to the employees' perception that expectations of work go beyond the resources and time available (Cousins, Mackay, Clarke, Kelly, Kelly, & McCaig, Reference Cousins, Mackay, Clarke, Kelly, Kelly and McCaig2004). Further, work overload is especially relevant for sectors characterized by dynamic work environments (Carballo-Penela, Varela, & Bande, Reference Carballo-Penela, Varela and Bande2019), like those of R&D departments in innovation-oriented sectors. Past research findings (e.g., Binnewies, Sonnentag, & Mojza, Reference Binnewies, Sonnentag and Mojza2009) suggest that we should infer a positive link between job demands and EBE.

When experiencing work overload, an elevated state of arousal appears in employees (Bunce & West, Reference Bunce and West1994), which, according to the person-environment fit theory (Caplan, Reference Caplan and Cooper1983), leads workers to employ innovative actions as a problem-focused coping tactic (Bunce & West, Reference Bunce and West1994). Similarly, Hornsby et al. (Reference Hornsby, Kuratko, Shepherd and Bott2009) defend that time pressure supposes a stimulus driving employees to look for new and imaginative means of facing organizational issues.

Moreover, according to the challenge-hindrance framework, which distinguishes between challenge and hindrance demands (Van den Broeck, De Cuyper, De Witte, & Vansteenkiste, Reference Van den Broeck, De Cuyper, De Witte and Vansteenkiste2010), workload can be perceived as a challenge for employees, and stimulates their competences, capacities, and future gains (Olafsen, Deci, & Halvari, Reference Olafsen, Deci and Halvari2018) as well as their thoroughness and curiosity (Cavanaugh, Boswell, Roehling, & Boudreau, Reference Cavanaugh, Boswell, Roehling and Boudreau2000), which, as a last resort, may help to develop innovative work activities. Hence, our study's next hypothesis reads:

Hypothesis 2a: Job demands (work overload) are positively related to innovative work behavior.

Time pressure, specifically as a work situation that calls for a change (Ohly & Fritz, Reference Ohly and Fritz2010), has been found to be positively associated with proactive behavior in numerous types of jobs (e.g., Binnewies, Sonnentag, & Mojza, Reference Binnewies, Sonnentag and Mojza2009) since it can function as a useful way to neutralize such situations. Relying again on the person-environment fit theory and the challenges-hindrances framework, it makes sense that the augmented arousal and perception of challenge derived from work overload makes employees behave as a leader instead of a follower, and undertake changes and initiate future-oriented actions. Based on the above theoretical and empirical research, we propose the following:

Hypothesis 2b: Job demands (work overload) are positively related to proactive behavior.

Since, following the challenge-hindrance framework, work overload can be understood as challenges, and individual risk-taking embraces challenging the status quo, a background of challenge seems to be a common element shared by both work overload and risk-taking behavior. In a study conducted with a sample of university students, Dachner, Miguel, and Patena (Reference Dachner, Miguel and Patena2017) found that intellectual risk-taking (the risk of making mistakes or appearing less competent than classmates) is a consequence of perceiving high demands in their ‘work’ context. In a more general view, some authors (e.g., Dachner, Miguel, & Patena, Reference Dachner, Miguel and Patena2017) suggest that complex demands call for employees who take risks. This reasoning leads to the following hypothesis:

Hypothesis 2c: Job demands (work overload) are positively related to risk-taking behavior.

The mediating role of employee well-being

Uncertainty, time pressure, and the lack of references to provide guidelines are inherent to entrepreneurial action. In such environments, emotional states influence entrepreneurial behaviors and decisions (Baron, Reference Baron2008). From the entrepreneurial literature, well-being has been studied as a psychological resource for entrepreneurial activity (Wiklund, Nikolaev, Shir, Foo, & Bradley, Reference Wiklund, Nikolaev, Shir, Foo and Bradley2019). Highly activated emotions are associated with more entrepreneurial action and promote creativity and innovation behaviors (Baron & Tang, Reference Baron and Tang2011), but also lack of well-being (negative emotions) can drive entrepreneurial actions (Foo, Reference Foo2011). However, the related stream of research in entrepreneurial behavior has mainly focused on positive emotions. Based on the JD-R model, we analyze both the positive and negative aspects of well-being at work. This model provides a framework for understanding the emotions (positive and negative) that job demands and resources generate in employees, and how these emotional states are antecedents of their entrepreneurial behaviors.

The JD-R model suggests that employee well-being at work is explained by two different pathways, namely, the motivational and health-impairment processes. The motivational pathway explains that when employees have adequate resources at work, they have motivational reactions to their jobs, which are defined by vigor, dedication, and absorption (i.e., work engagement; Schaufeli & Bakker, Reference Schaufeli and Bakker2004). Previous studies have also demonstrated that work engagement fosters specific positive behaviors, such as proactivity (Crant, Reference Crant2000; Parker, Reference Parker2000; Salanova & Schaufeli, Reference Salanova and Schaufeli2008). It is, therefore, interesting to explore how, following the motivational process of JD-R, engagement may mediate into the association between employees' perceptions of job resources and the EBE dimensions discussed in the previous section.

The health-impairment process is caused by job demands. At excessive levels, such demands could entail physical and/or mental costs and could lead to symptoms such as emotional exhaustion, resulting in negative health consequences (Bakker & Demerouti, Reference Bakker and Demerouti2017). Moreover, previous research has shown an association between burnout in general, or emotional exhaustion in particular, and counterproductive work behavior and certain variables related to EBE (e.g., Shin, Hur, & Oh, Reference Shin, Hur and Oh2015). Hence, it is relevant to explore how feeling emotionally exhausted could mediate and alter the link between the perception of job demands and EBE.

In the following sections, we argue that work engagement and emotional exhaustion, as the criteria of both the motivational and the health impairment process, could be mediator variables that explain the link between employees' work conditions and entrepreneurial behavior.

Work engagement as a mediator of EBE

Work engagement is described as a beneficial, fulfilling state of mind at work that is characterized by high levels of energy and hard work (vigor), involvement and enthusiasm at work (dedication), and full immersion in one's work in which there is a loss of time awareness (absorption) (Bakker & Demerouti, Reference Bakker and Demerouti2008). Rather than a momentary state of mind, it refers to a persistent affective-motivational state.

Work engagement has been studied as a mediating variable in the relation between work conditions and employee behaviors (De Spiegelaere et al., Reference De Spiegelaere, Van Gyes, De Witte, Niesen and Van Hootegem2014). As previous studies suggest (e.g., Bakker & Demerouti, Reference Bakker and Demerouti2008; Hackman & Oldham, Reference Hackman and Oldham1980), job autonomy increases employee well-being through a motivational process that activates energy, enthusiasm, and concentration at work. Specifically, the adoption of innovative behaviors requires employees to invest substantial efforts in generating and implementing new ideas and methods (Agarwal, Reference Agarwal2014).

Similarly, in high-quality relationships based on trust, employees receive job resources, such as information, tangible resources, and social and emotional support, which trigger a motivational process that leads to high work engagement (Bakker & Demerouti, Reference Bakker and Demerouti2008). Consequently, this motivational state could allow employees to support the demanding efforts of innovative work behavior and to engage in trying out their ideas (Agarwal, Reference Agarwal2014). Thus, we propose the following hypothesis:

Hypothesis 3a: Work engagement positively mediates the relation between job resources (job autonomy and management support) and innovative work behavior.

Research has also found that the availability of job resources initiates a motivational process via work engagement, which leads to beneficial behaviors such as proactivity (e.g., De Spiegelaere et al., Reference De Spiegelaere, Van Gyes, De Witte, Niesen and Van Hootegem2014; Salanova & Schaufeli, Reference Salanova and Schaufeli2008). These resources instigate either an intrinsic motivational process, as they encourage employees' development, or an extrinsic motivational process, as they promote goal achievement (Bakker & Demerouti, Reference Bakker and Demerouti2008). As Salanova and Schaufeli (Reference Salanova and Schaufeli2008) note, work engagement stimulates employees to adopt self-starting and change-focused behaviors. Regarding job autonomy, previous studies have demonstrated that employees with work discretion achieve a higher degree of significance and work engagement in their tasks (e.g., Bakker & Bal, Reference Bakker and Bal2010), which in turn boosts employee proactivity (e.g., Grant & Ashford, Reference Grant and Ashford2008; Salanova & Schaufeli, Reference Salanova and Schaufeli2008). In a similar vein, managerial support is associated with high levels of work engagement, and employees who perceive high-quality relationships with managers feel more secure, motivated, and supported to engage in unexpected behaviors such as proactive behaviors (Crant, Reference Crant2000; Spreitzer, Lam, & Fritz, Reference Spreitzer, Lam, Fritz, Bakker and Leiter2010). In this line, we expect that:

Hypothesis 3b: Work engagement positively mediates the relation between job resources (job autonomy and management support) and proactive behavior.

As previously explained, job autonomy provides employees with a sense of control over their work and is likely to increase their work engagement (e.g., Bakker & Demerouti, Reference Bakker and Demerouti2008; De Spiegelaere, Van Gyes, & Van Hootegem, Reference De Spiegelaere, Van Gyes and Van Hootegem2016), and will probably provide them with organizational and psychological resources to engage in optimal risk-taking behavior. Similarly, employees who have trusting, high-quality relationships with their supervisors will experience psychological security, which is important for enhancing work engagement, and a motivational state that fosters taking interpersonal risks (Spreitzer, Lam, & Fritz, Reference Spreitzer, Lam, Fritz, Bakker and Leiter2010). These arguments lead us to the following hypothesis:

Hypothesis 3c: Work engagement positively mediates the relation between job resources (job autonomy and management support) and risk-taking behavior.

Emotional exhaustion as a mediator of EBE

Emotional exhaustion is understood as feelings of being overextended and drained by the emotional demands of duties in the workplace (Maslach, Schaufeli, & Leiter, Reference Maslach, Schaufeli and Leiter2001). It is one of the dimensions of burnout syndrome, which evokes traditional stress reactions (i.e., fatigue and psychosomatic complaints) that have been associated with job stressors, such as workload or role problems (e.g., Demerouti et al., Reference Demerouti, Bakker, Nachreiner and Schaufeli2001).

Past research in the JD-R model has demonstrated the link between job demands and burnout, including emotional exhaustion, or stress reactions (e.g., Hessels, Rietveld, & van der Zwan, Reference Hessels, Rietveld and van der Zwan2017). According to Hockey, Maule, Clough, and Bdzola (Reference Hockey, Maule, Clough and Bdzola2000), when perceiving job demands, employees mobilize a sympathetic activation (autonomic and endocrine) and/or increase subjective effort. The long-term effect of such a situation leads to some patterns of degradation, such as narrowing attention or high subjective fatigue. Even challenging demands can activate this process and result in emotional exhaustion (Schaufeli & Bakker, Reference Schaufeli and Bakker2004). When this health-impairment process is activated, negative consequences in employees' behavior, health, and attitudes arise (e.g., Schaufeli & Bakker, Reference Schaufeli and Bakker2004). Owing to ‘the basic tenet of fatigue’, employees develop an intolerance to effort (Schaufeli & Bakker, Reference Schaufeli and Bakker2004), so they do not display energy resources or feel motivated to perform normally.

Conservation of resources theory (Hobfoll, Reference Hobfoll2001) provides a theoretical explanation for the link between job demands, emotional exhaustion, and innovative work behavior. It asserts that people are motivated to keep their personal resources, and when those are at risk as a consequence of experiencing job demands and emotional exhaustion, employees try to compensate by investing less energy in their work. Consequently, creativity or innovativeness, which contains multiple processes and requires high-energy levels (Shin, Hur, & Oh, Reference Shin, Hur and Oh2015), is inhibited. Empirical studies show this link between emotional exhaustion and low creativity (e.g., Murnieks, Arthurs, Cardon, Farah, Stornelli, & Haynie, Reference Murnieks, Arthurs, Cardon, Farah, Stornelli and Haynie2020; Shin, Hur, & Oh, Reference Shin, Hur and Oh2015). Therefore, we hypothesize an indirect negative or inconsistent mediation (MacKinnon, Coxe, & Baraldi, Reference MacKinnon, Coxe and Baraldi2012), given that job demands would have both a direct and indirect impact on innovative work behavior with different signs:

Hypothesis 4a: Emotional exhaustion negatively mediates the relation between job demands (work overload) and innovative work behavior.

Parker, Bindl, and Strauss (Reference Parker, Bindl and Strauss2010) introduce an ‘energy’ pathway to argue the mediating process between work conditions and proactive behavior. The depletion of energy and the psychological withdrawal driven by high job demands and feelings of emotional exhaustion lead to high resistance toward future efforts and perseverance and hinder employees' self-initiated actions (Murnieks et al., Reference Murnieks, Arthurs, Cardon, Farah, Stornelli and Haynie2020). Since proactive behavior is noncompulsory and might not generate benefits for employees, they are less likely to be willing to display it. In this line, Shin, Hur, and Oh (Reference Shin, Hur and Oh2015) state that employees suffering from emotional exhaustion are less likely to be interested in voluntary and proactive actions beyond the obligations they are responsible for. Previous empirical studies from different sectors and occupations (e.g., Schmitt, Den Hartog, & Belschak, Reference Schmitt, Den Hartog and Belschak2015) have demonstrated the negative association between exhaustion and proactive behavior. Thus, as also proposed above, we state an inconsistent mediation case:

Hypothesis 4b: Emotional exhaustion negatively mediates the relation between job demands (work overload) and proactive behavior.

Chronic exposure to emotional exhaustion and the cognitive impairments associated with it leads to a decreased sense of care, which hinders decision-making (Maslach, Schaufeli, & Leiter, Reference Maslach, Schaufeli and Leiter2001). According to Michailidis and Banks (Reference Michailidis and Banks2016), a diminished sense of care may make emotionally exhausted employees more inclined to risk-taking since they might not value the outcomes of their actions. The dual-process theory provides a useful framework to understand such links. It states that individuals make decisions by falling back on automatic and mindless processes (such as risk-taking behavior) instead of better using deliberative and rational mechanisms, given that stressful conditions hamper this last type of process (Kahneman & Frederick, Reference Kahneman, Frederick, Gilovich, Griffin and Kahneman2002).

Some empirical evidence, although scarce, supports such ideas. For instance, Hockey et al. (Reference Hockey, Maule, Clough and Bdzola2000) investigate the association between fatigue and risk in decision-making, finding that the more fatigued participants were, the higher their inclinations toward risky alternatives. Therefore, our final hypothesis is as follows:

Hypothesis 4c: Emotional exhaustion positively mediates the relation between job demands (work overload) and risk-taking behavior.

Figure 1 graphically represents the proposed research model.

Figure 1. Research model.

Methodology

Sample

Our unit of analysis was a sample of R&D employees from organizations belonging to the chemical manufacturing sector in Spain (CNAE 20). According to the CNAE (Spanish nomenclature of economic activities), this sector covers the manufacture of basic chemical products (i.e., bulk petrochemicals), agrochemicals, specialty/final chemicals (which include paints, coatings, inks, and cleaning chemicals), customer products like soap and cosmetics, and manufacturing of fibers. It is considered to be an innovation-oriented sector in terms of the percentage of innovative firms and R&D investments, according to the Spanish National Institute of Statistics (INE), and with great influence in economic growth as a whole (e.g., Das & Icart, Reference Das and Icart2015). The chemical sector represents 6.3% of total industrial income in Spain and 4.3% of all industrial employment (INE, 2021). According to a report on data in the sector in 2019 (Feique, 2021), it is a large exporter in the Spanish economy, with 42.3% of sales outside Spain. Another important feature of the sector is its transversal nature, since it intervenes in practically all manufacturing industries' value chains: 98% of production activities require chemistry at some point in the manufacturing process. Regarding innovation, expenditure on R&D in the sector represented 26% of total industry expenditure and employed 22.5% of the research staff working in industrial companies. Moreover, Obeso, Luengo, and Areitio (Reference Obeso, Luengo, Areitio and Galbraith2014) concluded that people are the most relevant resource to promote innovation activities in this sector, thus the EBE could be especially relevant.

This study is part of a larger study on innovation in the chemical sector. The data collection first required contacting a sample of Spanish organizations in the sector, which were selected from those listed in the Iberian Balance sheet Analysis System (SABI) database (an information service that contains comprehensive information on firms in Spain) under CNAE 20. Following previous contributions (e.g., Llach, Casadesus, & Marimon, Reference Llach, Casadesus and Marimon2011), in order to ensure a minimum structure in terms of innovation, we selected the organizations in the chemical sector that have at least 50 employees, according to information in the SABI (Iberian Balance Analysis System) database. From the sector's population of 337 organizations with at least 50 employees, a sample of 80 organizations agreed to participate in the study, which represents 23.74%, and gave a sample error of ±9.58% at the 5% significance level. We contacted the innovation managers in the 80 firms by telephone in order to explain the study and identify the target employees. Managers were asked which areas in the organization they thought their core employees for innovation were working in. A large majority of organizations (82%) responded that their core employees were working in R&D areas and, consequently, this study focuses on employees in those areas.

Employees in R&D departments are professionals with scientific and technological backgrounds, are responsible for creating and sharing ideas and translating them into new products and processes, and for whom creativity and innovation are explicit expectations in their work (Henard & McFadyen, Reference Henard and McFadyen2006; Saether, Reference Saether2019). Given the sector dynamism, these professionals must be able to adapt to any scientific or technical novelty and behave creatively under circumstances that require personal initiative and searching for opportunities. The generation of new knowledge in the sector occurs at a dizzying speed, so these professionals should be prepared for continuous learning. In addition, according to Pearson and McCauley (Reference Pearson and McCauley1991) R&D employees are intrinsically motivated by the challenging nature of the work.

The field work was conducted in the second half of 2017. The innovation manager in each organization provided the number of employees in their R&D departments, and their collaboration was requested to help send R&D employees a message that explained the study with the link to an online questionnaire. To increase the response rate, a follow-up telephone call was conducted (Dillman, Smyth, & Christian, Reference Dillman, Smyth and Christian2009). Finally, our data comprise a sample of 257 employees in the R&D departments belonging to 80 organizations in the chemical sector. In total, 86.25% of the organizations are medium sized (<250 employees), and 13.75% are large organizations; this is representative of the chemical sector in Spain, which is characterized by small and medium organizations (Collado & Sánchez, Reference Collado and Sánchez2012). We obtained replies from between three and four informants per department, the average number of employees in the organizations' R&D departments in the sample being 11. Data showed that 53% of the employees in the sample are women, have an average age of 40 years (SD = 8.7), 85% have permanent contracts, 26% hold supervisory positions, and, on average, they have been working in the organizations for 10 years (SD = 8.8). Overall, the data were consistent with the descriptions of the chemical industry workforce in Spain provided in public reports, which show that 90% have fixed-term contracts, have an average age of 44 years, and that women represent about 40% of R&D positions (Feique, 2017; INE, 2020).

Measures

The measurement of the variables was taken from validated scales in the literature (see Table 1 for the specific items), using a 5-point Likert scale.

Table 1. Measurement

a Item dropped in the CFA; standardized factors loadings.

Dependent variables. Innovative work behavior is measured using the scale by Rigtering and Weitzel (Reference Rigtering and Weitzel2013). Employees were asked to indicate how often they engage in the generation, exploitation, championing, and implementation of ideas. To measure proactive behavior, following Rigtering and Weitzel (Reference Rigtering and Weitzel2013), we asked employees to evaluate their degree of agreement with the seven aspects concerning an active approach toward work. In the case of risk-taking behavior, employees rated their agreement with the three items introduced by de Jong et al. (Reference de Jong, Parker, Wennekers and Wu2015).

Independent variables. We measure job autonomy according to the scale of job control developed by Wood (Reference Wood2008), with five items that capture employees' perception of the degree of influence they have over specific aspects of their jobs. To assess managerial support, employees rated their agreement on six items proposed by Wood (Reference Wood2008) concerning the characteristics of managers in the workplace. To measure work overload, we used the scale developed by Cousins et al. (Reference Cousins, Mackay, Clarke, Kelly, Kelly and McCaig2004). Employees were asked to rate their level of agreement on some issues concerning the intensity and pressures they face at work.

Mediators. To measure work engagement, the short scale of nine items (Utrecht Work Engagement Scale-9) of Schaufeli and Bakker (Reference Schaufeli and Bakker2003) was employed to ask employees how often they felt vigorous, dedicated, and absorbed at work. Employees reported how often they felt emotionally exhausted using five items that reflect the stress dimension of burnout.

Control variables. In line with previous studies (e.g., de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015; Rigtering & Weitzel, Reference Rigtering and Weitzel2013), we controlled for demographic differences between employees. Following recommendations about incorporating controls related to the dependent variables, we included gender and whether the employee had a supervisory position by using two dummy variables (male and supervisor being equal to 1).

Analysis of the measurement models

Following Bagozzi and Yi (Reference Bagozzi and Yi2012), we assessed the reliability and validity of the measurement models using confirmatory factor analysis (CFA). Due to sample size restrictions, we relied on prior practices to estimate a set of sub-models of related constructs in lieu of a whole model. First, a CFA is estimated with innovative work behavior, proactive behavior, and risk-taking behavior as three correlated factors. In accordance with the Lagrange multiplier test, some items were deleted in order to fit the model to the data (deleted items are marked with an asterisk in Table 1). The fit indices of the final model (χ2 S-B = 84.8881, df = 71, p = .124; BBNNFI = .984; CFI = .988; RMSEA = .028) reached the recommended values, confirming the existence of the three dimensions of EBE.

Second, a CFA was estimated to examine the measurement model of managerial support, job autonomy, and work overload. After eliminating some items (see Table 1), the values of the fit indices were also appropriate (χ2 S-B = 113.3719, df = 86, p = .025; BBNNFI = .970; CFI = .976; RMSEA = .036), confirming the existence of three correlated factors. Third, the fit of the CFA for work engagement and emotional exhaustion confirms the existence of two separate factors (χ2 S-B = 166.3796, df = 71, p = .00; BBNNFI = .910; CFI = .930; RMSEA = .07).

The values of composite reliability (C.r.) in Table 1 show construct reliability. Regarding convergent validity, as recommended by Hair, Anderson, Black, Babin, and Black (Reference Hair, Anderson, Black, Babin and Black2010), all the standardized loadings of the items on their hypothesized factors were statistically significant and greater than .5. Moreover, the average variance extracted (AVE) reaches or is close to .5. Although for risk-taking behavior, the values do not reach the minimum recommended values (.7 for composite reliability, and .5 for AVE), we can rely on the scale since the values are close to the threshold and the other tests for convergent and discriminant validity are good. We tested the discriminant validity using two procedures. First, a pairwise test was conducted. The procedure collapsed each pair of constructs into a single factor model and compared them with a two-factor model. The scaled χ2 difference test for all pairs of factors showed that the difference in χ2 was statistically significant at the 5% level, which evidenced that each of the eight constructs differed from each other. Second, according to the values in Tables 1 and 2, the AVE for each construct is higher than the square of the correlation between the construct and each of the others.

Table 2. Descriptive statistics and correlations (N = 257)

Bivariate correlations; *p < .05 **p < .01.

Common method and non-response bias tests

In accordance with Podsakoff, MacKenzie, and Podsakoff (Reference Podsakoff, MacKenzie and Podsakoff2012), we followed some procedures to mitigate the threat of common method bias (CMB) in the design of the survey. First, we used an online questionnaire and provided a cover letter assuring anonymity, and that there were no right or wrong answers, which reduced the possibility of bias due to self-presentation. Second, we labeled and separated the questions measuring the dependent, mediator, and independent variables to avoid the potential influence of closeness. Then, we employed different response scales with a different anchor for different variables (e.g., agree/disagree, none/total, never/always). In addition, two statistical procedures were followed to address CMB (Podsakoff, MacKenzie, & Podsakoff, Reference Podsakoff, MacKenzie and Podsakoff2012). First, Harman's one-factor test clearly extracted eight factors, the same as the number of variables in our model, which explained 64% of the variance. The first factor accounted for only 12% of the variance, thereby verifying that no single factor accounting for most of the variance was present. Second, following other researchers (e.g., Craighead, Ketchen, Dunn, & Hult, Reference Craighead, Ketchen, Dunn and Hult2011), we used CFA to compute the χ2 difference test between a multifactor model and a one-factor model. Due to size restrictions, we estimated a set of models (one for each combination of one dependent, the two mediators, and one independent construct). In all estimations, the multifactor model fit significantly better than the one-factor model (the lowest difference was χ2 = 229.6, p-value = .000). Moreover, due to the inclusion of several predictors and the mediator variables, it was unlikely that the associations were derived from the cognitive maps of the respondents (e.g., Chang, Van Witteloostuijn, & Eden, Reference Chang, Van Witteloostuijn and Eden2010). Thus, the CMB did not seem to be a threat in our study.

To address the issue of non-response bias, we used a time-series extrapolation test (Armstrong & Overton, Reference Armstrong and Overton1977), where the early respondents (20% of the sample) were compared with the rest. The findings from a t-test evidenced that the variables in the model were not significantly different between the two groups (p > .05 in all variables).

Having analyzed the measurement models, the composite measure of each construct, calculated as the mean value of the retained indicators in Table 1, was used to reduce the complexity of the models and accommodate the model to the sample size restrictions (Bagozzi & Yi, Reference Bagozzi and Yi2012). Table 2 exhibits the descriptive statistics.

Analytical procedure

We used EQS statistical software (Bentler, Reference Bentler2006) to carry out a path analysis using robust maximum likelihood as the estimation method. Separate models for each dimension of EBE are examined. As the employees in our sample are nested in organizations, the dependency between observations was taken into account to estimate the models so as to provide results robust to complex samples. Specifically, to adjust standard errors and goodness-of-fit model, we instructed EQS to implement Satorra's (Reference Satorra1992) correction for clustering. Following MacKinnon, Coxe, and Baraldi (Reference MacKinnon, Coxe and Baraldi2012), a significant association between the independent variables and mediators, as well as between the mediators and the dependent variables should be observed to conclude mediation.

Results

Table 3 summarizes the findings from each path analysis. Although it was not hypothesized in our model, a negative association between managerial support and emotional exhaustion (β = −.231, p < .01) was observed and had to be introduced to fit the models.

Table 3. Findings on the relationships between the three EBE variables and the independent and mediator variables

*p < .05; **p < .01.

Only two direct associations are observed. Regarding Hypotheses 1, Hypothesis 1b is partially supported, since managerial support, but not job autonomy, exhibits a positive direct relationship with proactive behavior (β = .166, p < .01). As for Hypothesis 2, a positive direct association is found between perceptions of work overload and innovative work behavior (β = .148, p < .05), which supports Hypothesis 2a.

The decomposition of effects provided by EQS makes it possible to check the indirect associations. Hypotheses 3a, b, and c are supported in the case of job autonomy: there is a significant indirect association between job autonomy and innovative work behavior (β = .102, p < .01), proactive behavior (β = .082, p < .01), and risk-taking behavior (β = .042, p < .05) via employees' work engagement. In the case of managerial support, only Hypotheses 3a and 3b are confirmed since it is associated with innovative work behavior (β = .155, p < .01) and proactive behavior (β = .139, p < .01) via work engagement, but it failed to be significant in the case of risk-taking behavior.

As for the mediation of emotional exhaustion, only Hypothesis 4c is confirmed due to the association between work overload and emotional exhaustion (β = .342, p < .01), together with the association between emotional exhaustion and risk-taking behavior (β = .172, p < .05), which leads to a positive indirect link between work overload and risk-taking behavior (β = .059, p < .05). Therefore, the two inconsistent mediations proposed (Hypotheses 4a and 4b) are not supported.

Regarding the control variables, only two associations are statistically significant. Men exhibit greater innovative work behavior than women (β = .137, p < .01), and those employees that hold supervisory positions behave more proactively than those who do not hold such positions (β = .144, p < .05).

Discussion and conclusion

The purpose of this research is to shed light on how work conditions, indicated by perceptions of job resources and job demands, are associated with employees' entrepreneurial behavior and the extent to which this association depends on the way these work conditions shape perceptions of work engagement and emotional exhaustion. The contributions of the findings are discussed below.

Contributions to the literature

Different antecedents for different EBE dimensions

Our research contributes to the stream of literature that studies work context and well-being as antecedents of EBE (e.g., de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015; Neessen et al., Reference Neessen, Caniëls, Vos and de Jong2019; Rigtering & Weitzel, Reference Rigtering and Weitzel2013), and reveals that each dimension of EBE can be enhanced by different antecedents.

Innovative work behavior is positively associated, though indirectly, with perceptions of job autonomy and managerial support, and directly with perceptions of work overload, as suggested in previous research (e.g., Agarwal, Reference Agarwal2014; De Spiegelaere, Van Gyes, & Van Hootegem, Reference De Spiegelaere, Van Gyes and Van Hootegem2016; Hammond et al., Reference Hammond, Neff, Farr, Schwall and Zhao2011; Hornsby et al., Reference Hornsby, Kuratko, Shepherd and Bott2009). Our results reveal that job autonomy does not appear to directly foster entrepreneurial behaviors of employees. De Spiegelaere, Van Gyes, and Van Hootegem (Reference De Spiegelaere, Van Gyes and Van Hootegem2016) argue that the relationship between job autonomy and innovation behaviors depends on the type of job autonomy, specifically, these authors point out that only work method autonomy and locational autonomy (autonomy in deciding where to perform the job) contribute to enhance innovative work behavior. Scholars such as De Spiegelaere et al. (Reference De Spiegelaere, Van Gyes, De Witte, Niesen and Van Hootegem2014) also concluded that job autonomy and managerial support have an indirect effect on innovative work behavior through work engagement. This is consistent with the motivational pathway of the JD-R model (e.g., Bakker & Demerouti, Reference Bakker and Demerouti2017) and the Job Characteristic Model (Hackman & Oldham, Reference Hackman and Oldham1980). These findings suggest that organizations should not ignore the psychological mechanisms underlying employees' perceptions of work conditions in order to stimulate innovative behaviors in employees.

The association of these antecedents with proactive behavior is slightly different: work overload does not seem to be relevant to this behavior. Moreover, managerial support has a direct association, in addition to an indirect association, via the motivational process, showing its remarkable role in promoting proactive behavior, as found by Crant (Reference Crant2000).

However, managerial support is not relevant in explaining risk-taking behavior, which is only indirectly connected with job autonomy and work overload via its relationship with employee well-being. Hence, a motivational process is also observed in the case of risk-taking behavior because job autonomy appears to be related to work engagement, which in turn is connected with risk-taking. However, the health impairment process that links work overload with emotional exhaustion is not associated with a negative reaction on employees' behavior, but instead related to risk-taking propensity, as we discuss later. In spite of these indirect associations, the total effects of work conditions on risk-taking are not significant, which is consistent with previous contributions that found little evidence for the relation between work conditions and risk-taking behavior (e.g., de Jong et al., Reference de Jong, Parker, Wennekers and Wu2015; Rigtering & Weitzel, Reference Rigtering and Weitzel2013).

Accordingly, our findings suggest the need to analyze EBE at the level of dimensions, instead of considering it as a higher-order construct. Both conceptualizations of EBE have been used in the study of its organizational antecedents (Neessen et al., Reference Neessen, Caniëls, Vos and de Jong2019). However, de Jong et al. (Reference de Jong, Parker, Wennekers and Wu2015) found different impacts depending on the operationalization employed. Their study revealed that job autonomy was directly related to overall entrepreneurial behavior, as well as to its innovation and proactivity dimensions, but the association with risk-taking behavior was insignificant.

Job demand contribution to EBE

Our research fills the gap regarding the relative scarcity of studies that analyze the contribution of perceptions of job demands to EBE (Neessen et al., Reference Neessen, Caniëls, Vos and de Jong2019). Our findings support that the perception of work overload helps employees to display greater innovative work behavior, thus supporting ideas from the challenge-hindrance framework. In line with this framework, our findings suggest that work overload can foster employees' capacities and competences (Olafsen, Deci, & Halvari, Reference Olafsen, Deci and Halvari2018), as well as their thoroughness and curiosity (Cavanaugh et al., Reference Cavanaugh, Boswell, Roehling and Boudreau2000), promoting thus innovativeness. In contrast, according to our analyses, proactive behavior is not associated with work overload, and risk-taking behavior is only indirectly linked via emotional exhaustion. Perhaps the profile of the employees (from R&D departments) examined herein is more prone to developing innovativeness at work when feeling pressure in terms of workload. As Huhtala and Parzefall (Reference Huhtala and Parzefall2007) note, the challenges surrounding R&D jobs contribute to employees' level of stimulation at work, and they may respond to job demands with novel ideas and solutions. For innovation-oriented employees, as Tome and van der Vaart (Reference Tome and van der Vaart2020) remark, it has become common to work under high pressure, so they have developed the ability to perform better under this circumstance (which means, in this context, that they are better at innovating). The proactivity and risk-taking behavior of this kind of employee is, perhaps, more directly linked to aspects of personality (Major, Turner, & Fletcher, Reference Major, Turner and Fletcher2006). Considering that the R&D employees are expected to arrive at innovative solutions (Saether, Reference Saether2019) as their role-prescribed task activities, we can expect our findings to be relevant not only for R&D employees, but also for other job positions where EBE is an in-role behavior.

Well-being as a psychological resource of EBE

Our study contributes to the JD-R model by examining the generalizability of the motivational process and the health impairment process in an intrapreneurial context. This research furthers understanding of employee well-being as a psychological resource for intrapreneurial behavior, considering both the positive (work engagement) and negative emotions (exhaustion). New insights into the role of individual feelings about the job in EBE are derived from the research, which highlights the prominent role of work engagement in understanding the EBE. Thus, researchers can consider work engagement as an antecedent of EBE, together with variables such as job satisfaction or organizational identification addressed in previous studies (e.g., Mustafa, Martin, & Hughes, Reference Mustafa, Martin and Hughes2016).

Our research also contributes by adding to the scarce results on the relationship between negative emotions and entrepreneurial behaviors (Wiklund et al., Reference Wiklund, Nikolaev, Shir, Foo and Bradley2019). The analysis of employees' emotional exhaustion is especially interesting. Despite feeling emotionally exhausted, employees' levels of innovativeness and proactivity remain unaffected. In contrast, high levels of emotional exhaustion are associated with increased risk-taking behavior, in line with dual-process theory (Kahneman & Frederick, Reference Kahneman, Frederick, Gilovich, Griffin and Kahneman2002), which suggests that decision-making under circumstances of fatigue or stress can lead to less care and more mechanical decisions and behaviors. Previous studies (e.g., Nikolaev, Shir, & Wiklund, Reference Nikolaev, Shir and Wiklund2020) highlight that lack of well-being can encourage entrepreneurial behavior. Specifically, Nikolaev, Shir, and Wiklund (Reference Nikolaev, Shir and Wiklund2020) suggest that people with negative dispositional affect are more likely to pursue a risky career. The kind of employees in our sample may explain these results, as most employees have a permanent work contract, which may reduce their reluctance to take risks. Moreover, some authors suggest that the risk-taking behavior of employees is hard to promote with organizational policies or management exchange (e.g., Rigtering & Weitzel, Reference Rigtering and Weitzel2013). This is consistent with our findings: it seems that risk-taking behavior is more associated with personal states of stress (here, emotional exhaustion) than with demanding work characteristics since work overload did not exhibit a direct link with risk-taking behavior, but instead was connected via emotional exhaustion.

Managerial contributions

Our research suggests some managerial interventions to foster employees' engagement in entrepreneurial behaviors. In order to facilitate innovative and proactive work behaviors, managers can design the work context in such a way that employees could feel in control of how they do their jobs, as well as promoting fair and helpful interpersonal relationships with employees (particularly essential to foster proactive behaviors). This kind of work context is likely to fuel a motivational process in employees that leads them to generate and implement new ideas as well as take the initiative to search for opportunities. Moreover, as work overload may be perceived as a sort of challenge, for entrepreneurial behavior, it seems to be more important to provide enough resources capable of generating a motivational process in employees than to implement interventions to reduce work overload. In addition, managers should consider the importance of favoring the work engagement of employees in order to enhance entrepreneurial behavior. Finally, managers may provide their employees with alternative resources, as job security, to allow them to feel secure when taking risks. This prevents managers from relying on their employees' emotional exhaustion as a catalyst for risk-taking behaviors.

Limitations and future lines of research

Several factors should be considered to interpret the findings. First, the characteristics of the sample in the survey, where 80% of employees in the R&D department have permanent employment contracts and 26% hold supervisory positions, may condition our findings. Moreover, although we focused on R&D employees as those who have greater relationships with the development of new products, materials, and processes, and may be those with greater orientations toward entrepreneurial behaviors, we acknowledge that any employee may develop this type of behavior. Although the R&D department seems to be appropriate for developing an entrepreneurial behavior, the generalization of the current study's results may require future studies to replicate them in different contexts using alternative samples of employees. Second, this study has been limited to the analysis of some job resources addressed by the literature on antecedents of EBE. Our conclusions suggest that future research should address other work conditions that can also be considered as resources and potential antecedents, such as social support from colleagues or job security. Likewise, we focused on emotional exhaustion but future research could analyze whether the conclusions change if other dimensions of burnout are examined. Third, as risk-taking behavior seems to be less difficult to facilitate via interventions on the work context, more research would be needed on the antecedents of this kind of behavior. Fourth, we acknowledge that other variables could interact and modify the relationships examined. To account for this, and in line with recent suggestions from Bakker and de Vries (Reference Bakker and de Vries2021), it would be of special interest to study the interaction between job demands and resources and key personal resources, such as emotional intelligence (Bakker & de Vries, Reference Bakker and de Vries2021) or state mindfulness (Huang, Xie, Cheung, Zhou, & Ying, Reference Huang, Xie, Cheung, Zhou and Ying2021), and how they shape feelings of engagement and exhaustion. Through this same lens, job crafting (Tims, Bakker, & Derks, Reference Tims, Bakker and Derks2012) constitutes a key behavior to be taken into account within the JD-R model, since employees might transform their levels of job demands and resources to align them with their inclinations and capabilities and make their own tasks more satisfying and meaningful (Bipp, Kleingeld, & Ebert, Reference Bipp, Kleingeld and Ebert2019; Sharma & Nambudiri, Reference Sharma and Nambudiri2020). This boosts well-being and more innovative, risky, and proactive behaviors among employees (e.g., Kwon & Kim, Reference Kwon and Kim2020). As for the variables of organizational origin, entrepreneurial leadership has been shown as a powerful tool to mobilize organizational members to constantly innovate, take risks, and address changes (Lin & Yi, Reference Lin and Yi2021). Future research could explore the joint effect of this variable together with, for instance, job autonomy and managerial support to provide wider insights into their association with EBE, contributing to expanding JD-R model knowledge under different organizational contexts and conditions. Finally, some scholars (e.g., Gawke, Gorgievski, & Bakker, Reference Gawke, Gorgievski and Bakker2018) suggest the possibility that entrepreneurial behavior is a catalyst to obtaining more resources and then recursive relationships may be observed. Our cross-sectional data do not allow for inference of causality, and prevent a deeper analysis of the consequences of employees' entrepreneurial behavior as well as the dynamic nature of the relationships; this is an avenue for future research through longitudinal studies coupled with qualitative data.

Acknowledgements

The authors are grateful for the support from the Ministerio de Ciencia e Innovación of Spain and FEDER (PGC2018-099040-B-I00/MCIU/AEI/FEDER,UE) and the Universitat Jaume I (UJI-B2020-55).

Conflict of interest

None.

Data availability

The data that support the findings of this study are available on reasonable request from the corresponding author. The data are not publicly available due to privacy issues.

Prof. Ana B. Escrig-Tena is a professor at the Department of Business Administration and Marketing at the Universitat Jaume I (Castellón, Spain). She teaches courses at the MBA and PhD level on quality management. Her primary research interests cover human resource management, entrepreneurial behavior, and quality management. She is currently analyzing the contribution of human resource management practices to quality management initiatives and entrepreneurial behavior. She has published in journals such as International Journal of Operations and Production Management, International Journal of Production Economics, Journal of Management, and Journal of Operations Management.

Dr. Mercedes Segarra-Ciprés is an associate professor at the Department of Business Administration and Marketing at the Universitat Jaume I (Castellón, Spain). She obtained her PhD in Business Management from the same university. She teaches courses at the MBA and undergraduate level on Management. Her primary research interests cover innovation, entrepreneurship, and knowledge management. She has published in journals such as Organization Studies, Journal of Knowledge Management, International Journal of Production Economics, European Journal of Innovation Management and Tourism Management.

Dr. Beatriz García-Juan is an assistant professor at the Department of Business Administration and Marketing at the Universitat Jaume I (Castellón, Spain). She obtained her PhD in Business Management from the same university. She teaches courses at the MBA and undergraduate level on Management. Her main research interests refer to human resource management and quality management. She has published in journals such as International Journal of Production Economics, European Journal of Innovation Management, Human Resource Management Journal, and Total Quality Management & Business Excellence.

Georgiana-Alexandra Badoiu is a part-time professor at the Department of Business Administration and Marketing at the Universitat Jaume I (Castellón, Spain). She is a PhD candidate in Business Management from the same university. She teaches courses at the MBA and undergraduate level on Management. Her main research interests refer to entrepreneurship and human resource management. She has published in journals such as Personnel Review.

References

Agarwal, U. A. (2014). Examining the impact of social exchange relationships on innovative work behaviour: Role of work engagement. Team Performance Management, 20(3/4), 102120.CrossRefGoogle Scholar
Alnaimi, A. M. M., & Rjoub, H. (2021). Perceived organizational support, psychological entitlement, and extra-role behavior: The mediating role of knowledge hiding behavior. Journal of Management & Organization, 27(3), 507522.CrossRefGoogle Scholar
Armstrong, S. J., & Overton, T. S. (1977). Estimating non-response bias in mail surveys. Journal of Marketing Research, 14(3), 396402.CrossRefGoogle Scholar
Bagozzi, R. P., & Yi, Y. (2012). Specification, evaluation, and interpretation of structural equation models. Journal of the Academy of Marketing Science, 40(1), 834.CrossRefGoogle Scholar
Bakker, A. B., & Bal, M. P. (2010). Weekly work engagement and performance: A study among starting teachers. Journal of Occupational and Organizational Psychology, 83(1), 189206.CrossRefGoogle Scholar
Bakker, A. B., & Demerouti, E. (2008). Towards a model of work engagement. Career Development International, 13(3), 209223.CrossRefGoogle Scholar
Bakker, A. B., & Demerouti, E. (2017). Job demands-resources theory: Taking stock and looking forward. Journal of Occupational Health Psychology, 22(3), 273285.CrossRefGoogle ScholarPubMed
Bakker, A. B., & de Vries, J. D. (2021). Job demands–resources theory and self-regulation: New explanations and remedies for job burnout. Anxiety, Stress, & Coping, 34(1), 121.CrossRefGoogle ScholarPubMed
Baron, R. A. (2008). The role of affect in the entrepreneurial process. Academy of Management Review, 33(2), 328340.CrossRefGoogle Scholar
Baron, R. A., & Tang, J. (2011). The role of entrepreneurs in firm-level innovation: Joint effects of positive affect, creativity, and environmental dynamism. Journal of Business Venturing, 26(1), 4960.CrossRefGoogle Scholar
Baskaran, S. (2017). The role of work discretion in activating entrepreneurial orientation among employees. Singaporean Journal of Business, Economics and Management Studies, 5(9), 818.Google Scholar
Bentler, P. M. (2006). EQS structural equations program manual. Encino, CA: Multivariate Software, Inc.Google Scholar
Binnewies, C., Sonnentag, S., & Mojza, E. J. (2009). Feeling recovered and thinking about the good sides of one's work. Journal of Occupational Health Psychology, 14(3), 243256.CrossRefGoogle ScholarPubMed
Bipp, T., Kleingeld, A., & Ebert, T. (2019). Core self-evaluations as a personal resource at work for motivation and health. Personality and Individual Differences, 151, 109556. doi: 10.1016/j.paid.2019.109556CrossRefGoogle Scholar
Blanka, C. (2019). An individual-level perspective on intrapreneurship: A review and ways forward. Review of Managerial Science, 13(5), 919961.CrossRefGoogle Scholar
Bunce, D., & West, M. (1994). Changing work environments: Innovating coping responses to occupation stress. Work & Stress, 8(4), 319331.CrossRefGoogle Scholar
Calisto, M. D. L. (2014). Corporate entrepreneurship in hotel firms. European Journal of Tourism, Hospitality and Recreation, 5(3), 3347.Google Scholar
Caplan, R. D. (1983). Person-environment fit: Past, present, and future. In Cooper, C. (Ed.) Stress research (pp. 3578). New York: Wiley.Google Scholar
Carballo-Penela, A., Varela, J., & Bande, B. (2019). The direct and indirect effects of self-efficacy on salespeople's emotional exhaustion and work-family conflict: A study using the job demands-resources model. Canadian Journal of Administrative Sciences/Revue Canadienne des Sciences de l'Administration, 36(3), 363376.CrossRefGoogle Scholar
Cavanaugh, M. A., Boswell, W. R., Roehling, M. V., & Boudreau, J. W. (2000). An empirical examination of self-reported work stress among U.S. managers. Journal of Applied Psychology, 85(1), 6574.CrossRefGoogle ScholarPubMed
Chang, S. J., Van Witteloostuijn, A., & Eden, L. (2010). From the editors: Common method variance in international business research. Journal of International Business Studies, 41(2), 178184.CrossRefGoogle Scholar
Chouchane, R., Fernet, C., Austin, S., & Zouaoui, S. K. (2021). Organizational support and intrapreneurial behavior: On the role of employees’ intrapreneurial intention and self-efficacy. Journal of Management & Organization. doi: 10.1017/jmo.2021.14.CrossRefGoogle Scholar
Collado, J., & Sánchez, F. (2012). Evolución y perspectivas del sector químico español: Visión desde su observatorio industrial. Economía Industrial, 385, 8190.Google Scholar
Cousins, R., Mackay, C. J., Clarke, S. D., Kelly, C., Kelly, P. J., & McCaig, R. H. (2004). Management standards and work-related stress in the UK: Practical development. Work & Stress, 18(2), 113136.CrossRefGoogle Scholar
Covin, J. G., Rigtering, J. C., Hughes, M., Kraus, S., Cheng, C. F., & Bouncken, R. B. (2020). Individual and team entrepreneurial orientation: Scale development and configurations for success. Journal of Business Research, 112, 112.CrossRefGoogle Scholar
Craighead, C. W., Ketchen, D. J., Dunn, K. S., & Hult, G. T. M. (2011). Addressing common method variance: Guidelines for survey research on information technology, operations, and supply chain management. IEEE Transactions on Engineering Management, 58(3), 578588.CrossRefGoogle Scholar
Crant, J. M. (2000). Proactive behavior in organizations. Journal of Management, 26(3), 435462.CrossRefGoogle Scholar
Dachner, A. M., Miguel, R. F., & Patena, R. A. (2017). Risky business: Understanding student intellectual risk taking in management education. Journal of Management Education, 41(3), 415443.Google Scholar
Das, S., & Icart, I. B. (2015). Innovation policy of European chemical companies with special focus on large companies. International Journal of Organizations, 14, 123157.Google Scholar
Dediu, V., Leka, S., & Jain, A. (2018). Job demands, job resources and innovative work behaviour: A European Union study. European Journal of Work and Organizational Psychology, 27(3), 310323.CrossRefGoogle Scholar
de Jong, J., Parker, S. K., Wennekers, S., & Wu, C. H. (2015). Entrepreneurial behavior in organizations: Does job design matter? Entrepreneurship Theory and Practice, 39(4), 981995.CrossRefGoogle Scholar
Demerouti, E., Bakker, A. B., Nachreiner, F., & Schaufeli, W. B. (2001). The job demands-resources model of burnout. Journal of Applied Psychology, 86(3), 499512.CrossRefGoogle ScholarPubMed
De Spiegelaere, S., Van Gyes, G., De Witte, H., Niesen, W., & Van Hootegem, G. (2014). On the relation of job insecurity, job autonomy, innovative work behaviour and the mediating effect of work engagement. Creativity and Innovation Management, 23(3), 318330.CrossRefGoogle Scholar
De Spiegelaere, S., Van Gyes, G., & Van Hootegem, G. (2016). Not all autonomy is the same. Different dimensions of job autonomy and their relation to work engagement & innovative work behavior. Human Factors and Ergonomics in Manufacturing & Service Industries, 26(4), 515527.CrossRefGoogle Scholar
Dillman, D. A., Smyth, J. D., & Christian, L. (2009). Internet, mail and mixed-mode surveys: The tailored design method. New Jersey: John Wiley & Sons.Google Scholar
Feique (2017). Agenda sectorial de la industria química y del refino en España. Available at: https://www.feique.org/agenda-sectorial/.Google Scholar
Feique (2021). Snapshot of the Spanish Chemical Sector. Available at: https://www.feique.org/radiografia-economica-del-sector-quimico-espanol/.Google Scholar
Foo, M. D. (2011). Emotions and entrepreneurial opportunity evaluation. Entrepreneurship Theory and Practice, 35(2), 375393.CrossRefGoogle Scholar
Gardiner, E., & Debrulle, J. (2021). Intrapreneurship and wellbeing in organizations. In Wall, T., Cooper, C. L., & Brough, P. (Eds.), The SAGE handbook of organizational wellbeing (pp. 184198). London, UK: SAGE Publications.CrossRefGoogle Scholar
Gawke, J. C., Gorgievski, M. J., & Bakker, A. B. (2018). Personal costs and benefits of employee intrapreneurship: Disentangling the employee intrapreneurship, well-being, and job performance relationship. Journal of Occupational Health Psychology, 23(4), 508519.CrossRefGoogle ScholarPubMed
Grant, A. M., & Ashford, S. J. (2008). The dynamics of proactivity at work. Research in Organizational Behavior, 28, 334.CrossRefGoogle Scholar
Hackman, J. R., & Oldham, G. R. (1980). Work re-design. Reading, MA: Addison Wesley.Google Scholar
Hair, J., Anderson, R., Black, B., Babin, B., & Black, W. (2010). Multivariate data analysis. London: Pearson Education.Google Scholar
Hammond, M. M., Neff, N. L., Farr, J. L., Schwall, A. R., & Zhao, X. (2011). Predictors of individual-level innovation at work: A meta-analysis. Psychology of Aesthetics, Creativity, and the Arts, 5(1), 90105.CrossRefGoogle Scholar
Henard, D. H., & McFadyen, M. A. (2006). R&D knowledge is power. Research-Technology Management, 49(3), 4147.CrossRefGoogle Scholar
Hessels, J., Rietveld, C. A., & van der Zwan, P. (2017). Self-employment and work-related stress: The mediating role of job control and job demand. Journal of Business Venturing, 32(2), 178196.CrossRefGoogle Scholar
Hobfoll, S. E. (2001). The influence of culture, community, and the nested-self in the stress process: Advancing conservation of resources theory. Applied Psychology, 50(3), 337421.CrossRefGoogle Scholar
Hockey, G. R. J., Maule, A., Clough, P. J., & Bdzola, L. (2000). Effects of negative mood states on risk in everyday decision making. Cognition & Emotion, 14(6), 823855.CrossRefGoogle Scholar
Hornsby, J. S., Kuratko, D. F., Shepherd, D. A., & Bott, J. P. (2009). Managers’ corporate entrepreneurial actions: Examining perception and position. Journal of Business Venturing, 24(3), 236247.CrossRefGoogle Scholar
Huang, C., Xie, X., Cheung, S. P., Zhou, Y., & Ying, G. (2021). Job demands, resources, and burnout in social workers in China: Mediation effect of mindfulness. International Journal of Environmental Research and Public Health, 18(19), 10526. doi: doi.org/10.3390/ijerph181910526CrossRefGoogle ScholarPubMed
Huhtala, H., & Parzefall, M. R. (2007). A review of employee well-being and innovativeness: An opportunity for a mutual benefit. Creativity and Innovation Management, 16(3), 299306.CrossRefGoogle Scholar
INE (2021). Estadística Estructural de Empresas: Sector Industrial. Año 2019. Available at: https://www.ine.es/dyngs/INEbase/es/operacion.htm?c=estadistica_C&cid=1254736143952&menu=ultiDatos&idp=1254735576715.Google Scholar
Kahneman, D., & Frederick, S. (2002). Representativeness revisited: Psychology for behavioral economics. In Gilovich, T. D., Griffin, D., & Kahneman, D. (Eds.), Heuristics and biases: The psychology of intuitive judgment (pp. 4981). New York: Cambridge University Press.CrossRefGoogle Scholar
Kattenbach, R., & Fietze, S. (2018). Entrepreneurial orientation and the job demands-resources model. Personnel Review, 47(3), 745764.CrossRefGoogle Scholar
Kowalski, T. H. P., & Loretto, W. (2017). Well-being and HRM in the changing workplace. The International Journal of Human Resource Management, 28(16), 22292255.CrossRefGoogle Scholar
Kuratko, D. F., Hornsby, J. S., & Covin, J. G. (2014). Diagnosing a firm's internal environment for corporate entrepreneurship. Business Horizons, 57(1), 3747.CrossRefGoogle Scholar
Kwon, K., & Kim, T. (2020). An integrative literature review of employee engagement and innovative behavior: Revisiting the JD-R model. Human Resource Management Review, 30(2), 100704.CrossRefGoogle Scholar
Lin, Q., & Yi, L. (2021). The multilevel effectiveness of entrepreneurial leadership: A meta-analysis. Journal of Management & Organization. doi: 10.1017/jmo.2020.45.CrossRefGoogle Scholar
Llach, J., Casadesus, M., & Marimon, F. (2011). Relationship between quality-management systems and organizational innovations. Human Factors and Ergonomics in Manufacturing & Service Industries, 21(1), 5266.CrossRefGoogle Scholar
MacKinnon, D. P., Coxe, S., & Baraldi, A. N. (2012). Guidelines for the investigation of mediating variables in business research. Journal of Business and Psychology, 27(1), 114.CrossRefGoogle ScholarPubMed
Mair, J. (2005). Entrepreneurial behaviour in a large traditional firm: Exploring key drivers. In Elfring, T. (Ed.), Corporate entrepreneurship and venturing (pp. 4972). New York: Springer Science & Business Media.CrossRefGoogle Scholar
Major, D. A., Turner, J. E., & Fletcher, T. D. (2006). Linking proactive personality and the Big Five to motivation to learn and development activity. Journal of Applied Psychology, 91(4), 927935.CrossRefGoogle ScholarPubMed
Maslach, C., Schaufeli, W. B., & Leiter, M. P. (2001). Job burnout. Annual Review of Psychology, 52(1), 397422.CrossRefGoogle ScholarPubMed
Michailidis, E., & Banks, A. P. (2016). The relationship between burnout and risk-taking in workplace decision-making and decision-making style. Work & Stress, 30(3), 278292.CrossRefGoogle Scholar
Murnieks, C. Y., Arthurs, J. D., Cardon, M. S., Farah, N., Stornelli, J., & Haynie, J. M. (2020). Close your eyes or open your mind: Effects of sleep and mindfulness exercises on entrepreneurs’ exhaustion. Journal of Business Venturing, 35(2), 105918.CrossRefGoogle Scholar
Mustafa, M., Martin, L., & Hughes, M. (2016). Psychological ownership, job satisfaction, and middle manager entrepreneurial behavior. Journal of Leadership & Organizational Studies, 23(3), 272287.CrossRefGoogle Scholar
Neessen, P. C., Caniëls, M. C., Vos, B., & de Jong, J. P. (2019). The intrapreneurial employee: Toward an integrated model of intrapreneurship and research agenda. International Entrepreneurship and Management Journal, 15(2), 545571.CrossRefGoogle Scholar
Neves, P., & Eisenberger, R. (2014). Perceived organizational support and risk taking. Journal of Managerial Psychology, 29(2), 187205.CrossRefGoogle Scholar
Nikolaev, B., Shir, N., & Wiklund, J. (2020). Dispositional positive and negative affect and self-employment transitions: The mediating role of job satisfaction. Entrepreneurship Theory and Practice, 44(3), 451474.CrossRefGoogle Scholar
Obeso, M., Luengo, M. J., & Areitio, T. (2014). Innovation in the chemical industry: Evidences from Spanish businesses. In Galbraith, B. (Ed.), European conference on innovation and entrepreneurship (p. 346). Reading, UK: Academic Conferences International Limited.Google Scholar
Ohly, S., & Fritz, C. (2010). Work characteristics, challenge appraisal, creativity, and proactive behavior: A multi-level study. Journal of Organizational Behavior, 31(4), 543565.CrossRefGoogle Scholar
Olafsen, A. H., Deci, E. L., & Halvari, H. (2018). Basic psychological needs and work motivation: A longitudinal test of directionality. Motivation and Emotion, 42(2), 178189.CrossRefGoogle Scholar
Parker, S. (2000). From passive to proactive motivation: The importance of flexible role orientations and role breadth self-efficacy. Applied Psychology, 49(3), 447469.CrossRefGoogle Scholar
Parker, S. K., Bindl, U. K., & Strauss, K. (2010). Making things happen: A model of proactive motivation. Journal of Management, 36(4), 827856.CrossRefGoogle Scholar
Pearson, A. W., & McCauley, C. D. (1991). Job demands and managerial learning in the research and development function. Human Resource Development Quarterly, 2(3), 263275.CrossRefGoogle Scholar
Pinchot, G. I. I. I. (1985). Intrapreneuring: Why you don't have to leave the corporation to become an entrepreneur. New York, NY: Harper and Row.Google Scholar
Plomp, J., Tims, M., Akkermans, J., Khapova, S. N., Jansen, P. G. W., & Bakker, A. B. (2016). Career competencies and job crafting: How proactive employees influence their well-being. Career Development International, 21(6), 587602.CrossRefGoogle Scholar
Podsakoff, P. M., MacKenzie, S. B., & Podsakoff, N. P. (2012). Sources of method bias in social science research and recommendations on how to control it. Annual Review of Psychology, 63, 539569.CrossRefGoogle ScholarPubMed
Ramamoorthy, N., Flood, P. C., Slattery, T., & Sardessai, R. (2005). Determinants of innovative work behaviour: Development and test of an integrated model. Creativity and Innovation Management, 14(2), 142150.CrossRefGoogle Scholar
Razavi, S. H., & Ab Aziz, K. (2017). The dynamics between entrepreneurial orientation, transformational leadership, and intrapreneurial intention in Iranian R&D sector. International Journal of Entrepreneurial Behavior & Research, 23(5), 769792.CrossRefGoogle Scholar
Rigtering, J. P. C., & Weitzel, U. (2013). Work context and employee behaviour as antecedents for intrapreneurship. International Entrepreneurship and Management Journal, 9(3), 337360.CrossRefGoogle Scholar
Saether, E. A. (2019). Motivational antecedents to high-tech R&D employees’ innovative work behavior: Self-determined motivation, person-organization fit, organization support of creativity, and pay justice. The Journal of High Technology Management Research, 30(2), 112.CrossRefGoogle Scholar
Salanova, M., & Schaufeli, W. B. (2008). A cross-national study of work engagement as a mediator between job resources and proactive behavior. The International Journal of Human Resource Management, 19(1), 116131.CrossRefGoogle Scholar
Satorra, A. (1992). Asymptotic robust inferences in the analysis of mean and covariance structures. Sociological Methodology, 22, 249278.CrossRefGoogle Scholar
Schaufeli, W. B., & Bakker, A. (2003). UWES Utrecht Work Engagement Scale. Preliminary Manual. Occupational Health Psychology Unit, Utrecht University.Google Scholar
Schaufeli, W. B., & Bakker, A. B. (2004). Job demands, job resources, and their relationship with burnout and engagement: A multi-sample study. Journal of Organizational Behavior: The International Journal of Industrial, Occupational and Organizational Psychology and Behavior, 25(3), 293315.CrossRefGoogle Scholar
Schaufeli, W. B., Salanova, M., González-Romá, V., & Bakker, A. B. (2002). The measurement of engagement and burnout: A two sample confirmatory factor analytic approach. Journal of Happiness Studies, 3(1), 7192.CrossRefGoogle Scholar
Schmitt, A., Den Hartog, D. N., & Belschak, F. D. (2015). Is outcome responsibility at work emotionally exhausting? Investigating employee proactivity as a moderator. Journal of Occupational Health Psychology, 20(4), 491.CrossRefGoogle ScholarPubMed
Schweitzer, F., Palmié, M., & Gassmann, O. (2018). Beyond listening: The distinct effects of proactive versus responsive customer orientation on the reduction of uncertainties at the fuzzy front end of innovation. R&D Management, 48(5), 534551.Google Scholar
Sharma, A., & Nambudiri, R. (2020). Work engagement, job crafting and innovativeness in the Indian IT industry. Personnel Review, 49(7), 13811397.CrossRefGoogle Scholar
Shin, I., Hur, W. M., & Oh, H. (2015). Essential precursors and effects of employee creativity in a service context. Career Development International, 20(7), 733752.CrossRefGoogle Scholar
Shir, N., Nikolaev, B. N., & Wincent, J. (2019). Entrepreneurship and well-being: The role of psychological autonomy, competence, and relatedness. Journal of Business Venturing, 34(5), 105875.CrossRefGoogle Scholar
Shirokova, G., Osiyevskyy, O., & Bogatyreva, K. (2016). Exploring the intention–behavior link in student entrepreneurship: Moderating effects of individual and environmental characteristics. European Management Journal, 34(4), 386399.CrossRefGoogle Scholar
Spreitzer, G. M., Lam, C. F., & Fritz, C. (2010). Engagement and human thriving: Complementary perspectives on energy and connections to work. In Bakker, A. B. & Leiter, M. P. (Eds.), Work engagement: A handbook of essential theory and research (pp. 102117). Hove, East Sussex, England: Psychology Press.Google Scholar
Tims, M., Bakker, A. B., & Derks, D. (2012). Development and validation of the job crafting scale. Journal of Vocational Behavior, 80, 173186.CrossRefGoogle Scholar
Tome, J. D. S., & van der Vaart, L. (2020). Work pressure, emotional demands and work performance among information technology professionals in South Africa: The role of exhaustion and depersonalisation. SA Journal of Human Resource Management, 18, 12.Google Scholar
ul Haq, M. A., Jingdong, Y., Usman, M., & Khalid, S. (2018). Factors affecting entrepreneurial behavior among employees in organizations: Mediating role of affective commitment. Journal of Enterprising Culture, 26(04), 349378.CrossRefGoogle Scholar
Valsania, S. E., Moriano, J. A., & Molero, F. (2016). Authentic leadership and intrapreneurial behavior: Cross-level analysis of the mediator effect of organizational identification and empowerment. International Entrepreneurship and Management Journal, 12(1), 131152.CrossRefGoogle Scholar
Van den Broeck, A., De Cuyper, N., De Witte, H., & Vansteenkiste, M. (2010). Not all job demands are equal: Differentiating job hindrances and job challenges in the job demands–resources model. European Journal of Work and Organizational Psychology, 19(6), 735759.CrossRefGoogle Scholar
Wiklund, J., Nikolaev, B., Shir, N., Foo, M. D., & Bradley, S. (2019). Entrepreneurship and well-being: Past, present, and future. Journal of Business Venturing, 34(4), 579588.CrossRefGoogle Scholar
Wood, S. (2008). Job characteristics, employee voice and well-being in Britain. Industrial Relations Journal, 39(2), 153168.CrossRefGoogle Scholar
Zahra, S. A. (1991). Predictors and financial outcomes of corporate entrepreneurship: An exploratory study. Journal of Business Venturing, 6(4), 259285.CrossRefGoogle Scholar
Figure 0

Figure 1. Research model.

Figure 1

Table 1. Measurement

Figure 2

Table 2. Descriptive statistics and correlations (N = 257)

Figure 3

Table 3. Findings on the relationships between the three EBE variables and the independent and mediator variables