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Psychological need satisfaction, frustration, and unfulfillment profiles in the workplace: Their nature, predictors, and outcomes

Published online by Cambridge University Press:  18 September 2024

Tomas Jungert*
Affiliation:
Lund University, Lund, Sweden
Sylvain Caruana
Affiliation:
Laboratoire C2S, Université de Reims Champagne Ardenne, Reims, France
Nicolas Gillet
Affiliation:
Université de Tours, France (QualiPsy) and Institut Universitaire de France, Tours, France
Tiphaine Huyghebaert-Zouaghi
Affiliation:
Laboratoire C2S, Université de Reims Champagne Ardenne, Reims, France
*
Corresponding author: Tomas Jungert; Email: tomas.jungert@psy.lu.se
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Abstract

Based on self-determination theory, this research relied on person-centered analyses to show how the distinct components of psychological need states combine to produce distinct profiles. We also explored contemporarily antecedents (perceptions of the organization’s environmental corporate social responsibility and negative moral emotions related to the organization’s environmental (ir)responsibility) and organizational outcomes (affective organizational commitment, turnover intentions, and cyberslacking). Questionnaire surveys were completed by 525 French employees. Four profiles characterized by configurations of psychological need states were identified and showed well-differentiated patterns. Negative moral emotions predicted membership in the most detrimental need states profiles while corporate social responsibility perceptions did not. As expected, we found opposite patterns of associations between profile membership and affective organizational commitment and turnover intentions, while the highest levels of cyberslacking were found in the most positive need states profiles. The results add to person-centered research and emphasize the importance of psychological experiences in the workplace and organizational outcomes.

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 (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press in association with Australian and New Zealand Academy of Management.

Research based on self-determination theory (SDT; Ryan & Deci, Reference Ryan and Deci2017) has demonstrated that workplaces that satisfy employees’ psychological needs for autonomy, competence, and relatedness facilitate individuals’ adaptive functioning (e.g., autonomous motivation, work engagement, job performance, job satisfaction; Gillet, Forest, Benabou, & Bentein, Reference Gillet, Forest, Benabou and Bentein2015; Huyghebaert et al., Reference Huyghebaert, Gillet, Fernet, Lahiani, Chevalier and Fouquereau2018a; Trépanier, Fernet, & Austin, Reference Trépanier, Fernet and Austin2015). Conversely, research anchored in this theoretical framework has showed that the work environment could also lead to maladaptive functioning by frustrating employees’ psychological needs (e.g., burnout, work–family conflict, turnover, psychological distress; Gillet et al., Reference Gillet, Forest, Benabou and Bentein2015; Huyghebaert, Gillet, Fernet, Lahiani, & Fouquereau, Reference Huyghebaert, Gillet, Fernet, Lahiani and Fouquereau2018b; Trépanier et al., Reference Trépanier, Fernet and Austin2015). These bright and dark sides of employees’ work-related need states are thus key in understanding their (mal)adaptive functioning in the workplace. Interestingly, recent findings based on SDT showed that these opposite experiences were not sufficient to produce a full picture of work-related need states (Huyghebaert-Zouaghi, Ntoumanis, Berjot, & Gillet, Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021). More precisely, these recent theoretical advances showed that individuals’ psychological needs are not experienced in a dichotomous manner, through the beneficial and adverse experiences of need satisfaction and frustration, respectively (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021). Rather, this recent stream of research showed the existence of a third need state, when tested alongside need satisfaction and frustration. Employees may also undergo a more nuanced and less actively negative psychological experience (relative to need frustration), in the form of need unfulfillment (i.e., a negative psychological need experience of deactivation, where one feels that the psychological needs are in a state of negligence). Interestingly, this research showed need unfulfillment, need frustration, and need satisfaction to predict outcomes that differ in nature, and, thus, reinforced the importance of simultaneously considering the full range of employees’ psychological need states.

Yet, the variable-centered approach mostly used in past research on psychological needs (e.g., Gillet et al., Reference Gillet, Forest, Benabou and Bentein2015; Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021; Trépanier et al., Reference Trépanier, Fernet and Austin2015) focuses on average relations between each need state and covariates. These variable-centered studies have failed to address the possibility that need satisfaction, frustration, and unfulfillment may co-occur in different combinations (i.e., profiles) in employees. For instance, Rouse et al. (Reference Rouse, Turner, Siddall, Schmid, Standage and Bilzon2020) showed that workers could simultaneously experience high competence satisfaction and high competence frustration (e.g., mastery in some work areas but inadequacy in other areas). Interestingly, person-centered/profile analyses have important practical implications, for they appear to be a representative reflection of managers’ and human resources/occupational health professionals’ tendency to think of workers as falling into different types or categories of individuals.

Despite these important implications, only one recent study (Huyghebaert-Zouaghi, Gillet, Fernet, Thomas, & Ntoumanis, Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) has examined how employees’ psychological need satisfaction, frustration, and unfulfillment combine to form distinct profiles of employees. Yet, person-centered evidence is built upon results obtained across multiple samples, which is necessary to identify the core set of profiles that systematically appear and to distinguish them from those reflecting sample- or context-specific characteristics (Morin, Reference Morin and Meyer2016). Moreover, identifying emergent subpopulations allows the results to be generalized to all subjects that may be represented by these subpopulations (Howard & Hoffman, Reference Howard and Hoffman2018). Identifying multiple profiles is highly important in organizational research because it makes it possible to identify homogeneous subpopulations of employees within a heterogeneous population. Moreover, even though we do not control for occupations, this study can contribute by showing that the profiles can be generalized to other random samples of employees. As such we can expect these profiles to be found in a variety of samples, and thus target them as actionable levers for intervention etc. Such knowledge could have important theoretical and practical implications, regarding, for example, whether work conditions can best be improved by redesigning jobs, or by treating individuals, or both. The first goal of the present study was thus to expand upon Huyghebaert-Zouaghi et al.’s (Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) study to analyze the nature of psychological need states profiles and offer a test of generalizability to help identify need states profiles among distinct samples of employees.

In person-centered analyses, it is also critical to document the theoretical and practical implications of the identified profiles via the examination of their associations with relevant predictors and outcomes (Marsh, Lüdtke, Trautwein, & Morin, Reference Marsh, Lüdtke, Trautwein and Morin2009; Morin, Reference Morin and Meyer2016). On one hand, without information related to key predictors of psychological need states profiles, knowledge regarding the nature of these profiles will be of limited utility for managers and organizations who need to know which levers can be used to influence profile membership. Yet, in their study, Huyghebaert-Zouaghi et al. (Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) only investigated managerial antecedents of psychological need states profiles, thus limiting our understanding of other possible causes of these profiles. Importantly, climate change has become a key topic in the workplace, and organizations’ (ir)responsibility related to environmental issues comes with important implications for employees’ cognitions (e.g., perceptions of environmental corporate social responsibility [CSR]; El Akremi, Gond, Swaen, De Roeck, & Igalens, Reference El Akremi, Gond, Swaen, De Roeck and Igalens2018) and emotions (e.g., moral emotions regarding one’s organization’s environmental responsibility; Greenbaum, Bonner, Gray, & Mawritz, Reference Greenbaum, Bonner, Gray and Mawritz2020). Yet, little is known about the psychological implications (e.g., psychological needs) of these cognitions and emotions related to one’s organization’s environmental (ir)responsibility.

Regarding the chosen outcomes, we decided to focus on turnover intentions, cyberslacking, and affective commitment for several reasons. First, no research has documented the implications of psychological need states in the development of turnover intentions, cyberslacking, and affective commitment. As such, this research not only contributes novel insights to the field with methodologies that make the study particularly valuable, it also has potential real-world impact of the research findings as the outcomes of the study could inform interventions or policies aimed at improving working conditions for workers so that they may have less turnover intentions and negative aspects of cyberslacking and more affective organizational commitment (AOC). Second, all three phenomena are important for various reasons; cyberslacking is common in the workplace with potentially negative consequences (e.g., Tandon et al. (Reference Tandon, Dhir, Talwar, Kaur and Mäntymäki2022), one primary goal of HR practices is to decrease employee turnover rate (Gould-Williams, Reference Gould‐Williams2004), whereas AOC can be frequent but may vary to great extent (e.g., Stazyk et al., Reference Stazyk, Pandey and Wright2011) and can be costly for organizations and employees (Hayes et al., Reference Hayes, O’Brien-Pallas, Duffield, Shamian, Buchan, Hughes and Stone2006; Metin et al., Reference Metin, Taris, Peeters, Korpinen, Smrke, Razum and Gaioshko2020; Meyer & Herscovitch, Reference Meyer and Herscovitch2001). Third, CSR and moral emotions regarding organization’s environmental responsibility were primarily chosen as antecedents as, theoretically, basic psychological need theory postulates that environmental factors influence psychological need states (Ryan, Reference Ryan1995; Ryan & Deci, Reference Ryan and Deci2017). Indeed, research from longitudinal studies show that employees’ negative perceptions of their organization (e.g., organizational dehumanization) (Lagios, Caesens, Nguyen, & Stinglhamber, Reference Lagios, Caesens, Nguyen and Stinglhamber2022) as well as positive perceptions of their organization (e.g., perceived organizational support and supervisors’ interpersonal style) influence their psychological need states, and not the other way around (Gillet, Fouquereau, Forest, Brunault, & Colombat, Reference Gillet, Fouquereau, Forest, Brunault and Colombat2012). Finally, they were chosen given their importance for employees nowadays (e.g., Schaefer, Terlutter & Diehl, Reference Schaefer, Terlutter and Diehl2020). Indeed, sharing work values or norms with the organization fosters need fulfillment (e.g., Schreurs, van Emmerik, Van den Broeck, & Guenter, Reference Schreurs, van Emmerik, Van den Broeck and Guenter2014). Moreover, by investigating CSR, we aim to answer the recent call for both the use of more advanced methodologies research on employee experiences of CSR and investigations of outcomes such as well-being (Onkila & Sarna, Reference Onkila and Sarna2022). Some studies have indeed shown that CSR is associated with positive employees’ behavior (e.g., environmentally friendly behavior) and attitudes toward the organization (organizational pride, identification; El Akremi et al., Reference El Akremi, Gond, Swaen, De Roeck and Igalens2018; Fatima, Badar, Waqas, Ayub, & Haris, Reference Fatima, Badar, Waqas, Ayub and Haris2023), but the underlying mechanisms remain undocumented. As such, CSR is important as it may improve an organization’s value-creation, survivability, and performance as it could advance relationships with customers, suppliers, and employees and improve reputation. CSR is both a social concept and a corporate behavior and management philosophy, that can be a means to enact societal obligations and well as a strategic investment in intangible assets (Wang et al., Reference Wang, Dou and Jia2016). To reach a better understanding of these implications, while expanding the nomological network of psychological need states, our second goal was therefore to examine how employees’ cognitions and emotions related to their organization’s environmental (ir)responsibility associate with profile membership.

On the other hand, without information related to the outcomes of psychological need states profiles, it is impossible to assess the true desirability of these profiles. Yet, in their study, Huyghebaert-Zouaghi et al. (Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) investigated need states profiles’ associations with work motivation only. Thus, there is a gap in the literature regarding other possible consequences of these profiles, why our third goal was to investigate how profile membership relates to important organizational outcomes. The outcomes turnover intentions, cyberslacking, and lack of affective commitment can be costly for organizations and employees (Hayes et al., Reference Hayes, O’Brien-Pallas, Duffield, Shamian, Buchan, Hughes and Stone2006; Metin et al., Reference Metin, Taris, Peeters, Korpinen, Smrke, Razum and Gaioshko2020; Meyer & Herscovitch, Reference Meyer and Herscovitch2001), why conditions to prevent turnover intentions and cyberslacking and promote AOC should be created.

Psychological need states in the workplace

Research based on SDT has demonstrated the importance of the basic psychological needs for autonomy (feeling ownership of one’s actions), competence (feeling efficient in accomplishing personally important tasks), and relatedness (feeling secure and accepted in one’s relationships) in boosting individuals’ well-being (Ryan & Deci, Reference Ryan and Deci2017). Need satisfaction is the positive state that appears when the needs are fulfilled (i.e., feeling volitional, competent, and affiliated), while need frustration is a negative state where the needs are obstructed (i.e., feeling coerced, useless, and rejected). The distinctiveness of both these need states has been proven in a considerable amount of research conducted within various life contexts (Bartholomew, Ntoumanis, Ryan, Bosch, & Thøgersen-Ntoumani, Reference Bartholomew, Ntoumanis, Ryan, Bosch and Thøgersen-Ntoumani2011; Vansteenkiste, Ryan, & Soenens, Reference Vansteenkiste, Ryan and Soenens2020), including work (e.g., Gillet et al., Reference Gillet, Forest, Benabou and Bentein2015; Huyghebaert et al., Reference Huyghebaert, Gillet, Fernet, Lahiani, Chevalier and Fouquereau2018a; Jungert, Gradito Dubord, Högberg, & Forest, Reference Jungert, Gradito Dubord, Högberg and Forest2022; Trépanier et al., Reference Trépanier, Fernet and Austin2015). Recent research has shown the distinctiveness of a third psychological need state (i.e., need unfulfillment) when tested alongside need satisfaction and frustration (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021). Need unfulfillment is defined as the negative experiential state where one feels that the psychological needs are in state of neglect (i.e., feeling uncertain, dull, and disconnected). Thus, Huyghebaert-Zouaghi et al. (Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021) offered support for a 3 × 3 model of the distinct experiential states of satisfaction, frustration, and unfulfillment relating to each of the needs for autonomy, competence, and relatedness.

However, these authors examined these psychological need states from a variable-centered approach, yet it is only through the identification of different combinations (i.e., profiles) of psychological need states that their coexistence could be asserted.

Psychological need states profiles

Recently Vansteenkiste et al. (Reference Vansteenkiste, Ryan and Soenens2020) called for future research to focus on need profiles to reach a better understanding of within-person combinations of psychological need states. Indeed, the person-centered approach allows to capture the true complexity of employees’ psychological need states, which seldom involve a single psychological experience of either positive or negative nature (e.g., Rouse et al., Reference Rouse, Turner, Siddall, Schmid, Standage and Bilzon2020; Tóth-Király, Bőthe, Orosz, & Rigó, Reference Tóth-Király, Bőthe, Orosz and Rigó2020). Moreover, person-centered results allow practitioners for more tailored interventions that can target several need states at the same time. Despite these important implications, only one study (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) has thus far used this approach to investigate different combinations of need satisfaction, unfulfillment, and frustration. Thus, it is even more important to verify which of the profiles identified by Huyghebaert-Zouaghi et al. (Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a), if any, are representative among other populations of workers, and which are specific to their sample.

More precisely, Huyghebaert-Zouaghi et al. (Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) found a bifactor representation of psychological need states to be superior (i.e., one global factor and nine specific factors). Importantly, research also emphasizes that employees’ global levels of need satisfaction co-exist with specific levels which explain unique variability in outcomes (Gillet, Morin, Huart, Colombat, & Fouquereau, Reference Gillet, Morin, Huart, Colombat and Fouquereau2020).

Huyghebaert-Zouaghi et al. (Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) identified six profiles based on this bifactor solution: (1) Globally Positive and Average Specific (low levels of negative global psychological need experience and average-to-moderately low levels of specific need states), (2) Globally Average and Mixed Specific (moderately high levels of negative global psychological need experience, high levels of specific autonomy unfulfillment, and low levels of specific autonomy satisfaction, competence frustration, and relatedness frustration, while all other specific need states were characterized by average levels), (3) Globally Negative and Mixed Specific (moderately high levels of negative global psychological need experience, high levels of specific relatedness satisfaction, moderately high levels of specific competence frustration and competence unfulfillment, and moderately low levels of specific competence need satisfaction, while all other indicators were characterized by average levels), (4) Globally Very Positive and Average Specific (very low levels of negative global psychological need experience and average-to-moderately high or low levels of specific need states), (5) Globally Very Positive and Mixed Specific (very low levels of negative global psychological need experience and specific relatedness unfulfillment, low levels of specific competence unfulfillment, moderately low levels of specific autonomy unfulfillment, moderately high levels of specific competence and relatedness satisfaction, high levels of specific competence frustration, and very high levels of specific relatedness frustration, while specific autonomy satisfaction and autonomy frustration displayed average levels), and (6) Globally Very Negative and Mixed Specific (very high levels of negative global psychological need experience, high levels of specific competence satisfaction, relatedness unfulfillment, competence frustration, and relatedness frustration, low levels of specific relatedness satisfaction, and average levels of all other specific need states).

Based on this study examining need satisfaction/frustration/unfulfillment profiles (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a), and on prior research on employees’ need satisfaction (four profiles: Gillet, Morin, Choisay, & Fouquereau, Reference Gillet, Morin, Choisay and Fouquereau2019; Huyghebaert-Zouaghi, Morin, Forest, Fouquereau, & Gillet, Reference Huyghebaert-Zouaghi, Morin, Forest, Fouquereau and Gillet2022b) and need satisfaction/frustration (five profiles; Rouse et al., Reference Rouse, Turner, Siddall, Schmid, Standage and Bilzon2020) profiles, we expected to identify a similar (i.e., 4–6) number of profiles (Hypothesis 1a).

As to the nature of these profiles, based on prior person-centered research jointly examining need satisfaction and frustration (Rouse et al., Reference Rouse, Turner, Siddall, Schmid, Standage and Bilzon2020; Tóth-Király et al., Reference Tóth-Király, Bőthe, Orosz and Rigó2020), and on research examining employees’ need satisfaction, frustration, and unfulfillment profiles (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a), we expected to identify some or all of the following profiles (Hypothesis 1b): (1) a positive profile (high positive experiential need states and low negative experiential need states), (2) a negative profile (high negative experiential need states and low positive experiential need states), (3) a very positive profile (very high positive experiential need states and very low negative experiential need states), (4) a very negative profile (very high negative experiential need states and low positive experiential need states), (5) a normative profile (close to average levels across all experiential need states), and (6) a profile characterized by mixed experiential need states (e.g., low levels of need unfulfillment coupled with high levels of need satisfaction and frustration).

Predictors

Perceptions of environmental CSR

The United Nations introduced sustainable development goals in 2015, which explicitly emphasized that work organizations should achieve these goals (United Nations, 2015). Organizations can take up this role through environmental CSR, which covers an organization’s commitment to maximize long-term environmental well-being through business practices, policies, and resources (Du, Bhattacharya, & Sen, Reference Du, Bhattacharya and Sen2011). CSR considers the triple bottom line of organizations’ economic, social, and environmental performance (El Akremi et al., Reference El Akremi, Gond, Swaen, De Roeck and Igalens2018), and the focus of the current study is on perceptions of environmental CSR, in line with the rationale outlined on page 4–5 regarding the selection of variables. Interestingly, according to Rupp, Ganapathi, Aguilera, and Williams (Reference Rupp, Ganapathi, Aguilera and Williams2006), employees perceive, evaluate, and react to their organization’s CSR activities. Indeed, prior research has shown the positive influence of environmental CSR on performance (El Akremi et al., Reference El Akremi, Gond, Swaen, De Roeck and Igalens2018; Tsai, Tsang, & Cheng, Reference Tsai, Tsang and Cheng2012), organizational commitment (Kim, Kim, Han, Jackson, & Ployhart, Reference Kim, Kim, Han, Jackson and Ployhart2017), and organizational attractiveness for job seekers (El Akremi et al., Reference El Akremi, Gond, Swaen, De Roeck and Igalens2018; Rupp, Shao, Thornton, & Skarlicki, Reference Rupp, Shao, Thornton and Skarlicki2013). Perceptions of CSR have moreover been linked to employees’ organizational identification and job satisfaction (El Akremi et al., Reference El Akremi, Gond, Swaen, De Roeck and Igalens2018). El Akremi et al. (Reference El Akremi, Gond, Swaen, De Roeck and Igalens2018) suggest that these positive implications of CSR owe to how rewarding it is for employees’ self-image to belong to a socially responsible organization. More precisely, employees take pride in belonging to a fair and ethical organization, that creates shared value, which strengthens their self-worth and results in a positive assessment of this fulfilling work experience.

Moreover, recent research has shown that organizational CSR may directly influence the fulfillment of employees’ basic psychological needs. Indeed, when employees feel that their organization is committed to maximize long-term environmental well-being (Kim, Rhou, Topcuoglu, & Kim, Reference Kim, Rhou, Topcuoglu and Kim2020), they are likely to experience a sense of understanding and feel respected and valued by their organization, since it values and possibly shares some important and normative welfare principles (Gherman, Arhiri, Holman, & Soponaru, Reference Gherman, Arhiri, Holman and Soponaru2022). A recent study supported this assumption by showing perceptions of CSR to have a positive effect on employees’ need satisfaction (Kim et al., Reference Kim, Rhou, Topcuoglu and Kim2020). Yet, it should be noted that research has never explored the relation between perceptions of CSR and need frustration or need unfulfillment, thus leaving unknown whether employees’ perceptions of their organization’s environmental CSR could prevent negative experiential need states. More generally, most studies on CSR have investigated its positive consequences (e.g., El Akremi et al., Reference El Akremi, Gond, Swaen, De Roeck and Igalens2018; Tsai et al., Reference Tsai, Tsang and Cheng2012), leaving as uncharted territory whether CSR could help reduce negative work outcomes. Our study could therefore contribute to extend knowledge on this issue.

Interestingly, prior studies found CSR to negatively relate to burnout and turnover intentions (Lin & Liu, Reference Lin and Liu2017), which are known consequences of need frustration (Huyghebaert et al., Reference Huyghebaert, Gillet, Fernet, Lahiani and Fouquereau2018b). A recent study also found CSR to negatively relate to job boredom (Ohana, Murtaza, Al-Shatti, & Chi, Reference Ohana, Murtaza, Al-Shatti and Chi2023), which was documented to stem from need unfulfillment (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021). As such, prior variable-centered findings suggest that CSR could negatively relate to negative experiential need states. Indeed, when they believe that they belong to an ethical and value-creating organization, employees are less likely to experience feelings of coercion or uncertainty, uselessness, or dullness, and reject or disconnection. Based on prior variable-centered results, we could thus expect perceptions of environmental CSR to predict a higher likelihood of membership in the profile(s) dominated by need satisfaction and a lower likelihood of membership in the profile(s) dominated by need frustration and/or unfulfillment. Moreover, based on a prior person-centered examination of psychological need states (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a), we can expect positive work experiences such as perceptions of environmental CSR to predict a higher likelihood of membership in the profile(s) dominated by need satisfaction than in the mixed or average profile(s). Indeed, average or mixed profiles imply, alongside need satisfaction, the presence of need frustration and/or unfulfillment, which are unlikely to result from perceiving one’s organization to be ethical and socially responsible (Hypothesis 2a).

Employees’ perceptions of environmental CSR focus on the cognitive side (Peloza & Shang, Reference Peloza and Shang2011) of employees’ reactions to their organization’s environmental responsibility. However, there is also an emotional side to these reactions. Indeed, employees’ moral emotions regarding their organization’s environmental (ir)responsibility may help them assess their organization’s actions when it comes to promoting sustainable development. In other words, perceptions of CSR and moral emotions related to the environment are separate phenomena in their nature and valence but share a common source in the organization’s environmental (ir)responsibility. They could complement one another in explaining employees’ psychological experiences (i.e., need profiles) at work.

Negative moral emotions

Moral emotions may be defined as emotions ‘… linked to the interests or welfare of society as a whole or at least of persons other than the judge or agent’ (Haidt, Reference Haidt, Davison, Scherer and Goldsmith2003, p. 853). Moral emotions help to support the moral standards recognized by society (Haidt, Reference Haidt, Davison, Scherer and Goldsmith2003) and help individuals to assess their own and others’ actions when it comes to promoting or undermining a well‐functioning world. Moral emotions stem from biological hardwiring (Bloom, Reference Bloom2013), past experiences (Ekman, Reference Ekman1992), and social learning (e.g., Tangney et al., Reference Tangney, Stuewig, Mashek, Tracy, Robins and Tangney2007). In the literature, two often-discussed categories of negative moral emotions are other-condemning emotions and self‐conscious emotions (see Haidt, Reference Haidt, Davison, Scherer and Goldsmith2003). Employees experience other‐condemning moral emotions in response to other people’s moral transgressions, which can take the form of anger. Anger captures feelings of resentment that arise because someone has transgressed a moral standard without justification (Haidt, Reference Haidt, Davison, Scherer and Goldsmith2003). Employees can thus experience other-condemning moral emotions toward their organization when they feel that the latter does not play its role in preserving the environment. Conversely, individuals experience self‐conscious moral emotions when they violate moral standards (Leary, Reference Leary, Tesser, Stapel and Wood2002). Employees can thus feel that they contribute to violating moral standards when working for and being a part of an organization that does not live up to eco-friendly standards. They may then experience shame and/or guilt (Greenbaum et al., Reference Greenbaum, Bonner, Gray and Mawritz2020).

Although there has been a rise in research on moral emotions in organizations, this research field is understudied in terms of explaining their consequences for employees’ work-related experiences (Greenbaum et al., Reference Greenbaum, Bonner, Gray and Mawritz2020). More precisely, no study has explored the relations between employees’ work-related moral emotions and their need satisfaction, frustration, and unfulfillment. Yet, prior research has shown that when employees are faced with emotionally challenging work environments, they tend to experience more need frustration and less need satisfaction (e.g., Huyghebaert et al., Reference Huyghebaert, Gillet, Fernet, Lahiani, Chevalier and Fouquereau2018a). Similarly, when experiencing negative moral emotions regarding their organization’s environmental (ir)responsibility, employees may feel inauthentic as they work for an organization that does not match their environmental moral standards, which could turn into a deeper sense that they cannot express their true self in their work environment (e.g., need frustration and unfulfillment; Grandey & Gabriel, Reference Grandey and Gabriel2015). For instance, Gherman et al. (Reference Gherman, Arhiri, Holman and Soponaru2022) showed that nurses’ psychological needs were more frustrated and less satisfied when facing organizational events that were contradictory with their moral convictions. These results are in line with SDT, which posits need satisfaction to occur in environments that are in line with individuals’ intrinsic values, while need frustration occurs in environments that are not congruent with, or even obstruct, these values (Ryan & Deci, Reference Ryan and Deci2017).

However, no research has examined how employees’ moral or affective experiences in the workplace relate to need unfulfillment. Yet, need unfulfillment was found to be positively associated with state boredom (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021), which carries moral significance not only because it stems from the perception of lack of meaning and thus involves a moral judgment as to how meaningful the situation is, but also because it stands as an obstacle to flourishing (Elpidorou, Reference Elpidorou2017). Thus, we could expect negative moral judgments such as negative moral emotions to elicit more need unfulfillment. Consistent with the above rationale, a prior person-centered examination of psychological need states (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) showed that negative work-related experiences, such as negative moral emotions, predicted a lower likelihood of membership in the profile(s) dominated by need satisfaction and a higher likelihood of membership in the profile(s) dominated by (very) negative need states experiences (need frustration and unfulfillment). In sum, we expect negative moral emotions related to one’s organization’s environmental (ir)responsibility to predict a higher likelihood of membership in the predominantly negative profile(s) and a lower likelihood of membership in the profile(s) dominated by need satisfaction (Hypothesis 2b).

Outcomes

Affective organizational commitment

AOC refers to how employees attach to, identify with, and get involved in the organization (Meyer & Herscovitch, Reference Meyer and Herscovitch2001). Research has found that AOC influences important work behaviors like job involvement or absenteeism (Mercurio, Reference Mercurio2015; Meyer & Herscovitch, Reference Meyer and Herscovitch2001). It may also have ramifications for behaviors such as creativeness and innovativeness (Neininger, Lehmann-Willenbrock, Kauffeld, & Henschel, Reference Neininger, Lehmann-Willenbrock, Kauffeld and Henschel2010). Interestingly, previous research (e.g., Meyer & Maltin, Reference Meyer and Maltin2010) has shown that psychological need states were associated with affective commitment. Indeed, according to SDT (Ryan & Deci, Reference Ryan and Deci2017), need satisfaction promotes positive job attitudes such as AOC. For instance, Greguras and Diefendorff (Reference Greguras and Diefendorff2009) found that need satisfaction positively related to AOC and more recently, Gillet et al. (Reference Gillet, Forest, Benabou and Bentein2015) found that need satisfaction positively explained AOC while need frustration negatively explained AOC.

Meyer and Maltin (Reference Meyer and Maltin2010) propose that employees’ desire to belong and maintain membership in their organization (i.e., AOC) stems from the perception that their work allows them to behave in line with their intrinsic interests or values, which also underpins autonomous motivational processes such as need satisfaction (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021). Indeed, according to SDT, individuals experience need satisfaction when they can express their true self (Ryan & Deci, Reference Ryan and Deci2017). Conversely, when they feel that their true self is oppressed within their organization (need frustration) or when they feel unable to make sense of, or value, the organizational context (need unfulfillment), they may struggle to identify to their organization and to develop an affective bond to it (AOC). Yet, these findings are based on variable-centered results and ignore the fact that need satisfaction, frustration, and unfulfillment can combine in the work lives of employees, leaving unknown their joint implications for AOC. For instance, prior research has failed to address which configurations would be most detrimental for AOC: Would simultaneously high levels of need frustration and unfulfillment carry the worst consequences or would a profile dominated by one or the other of these negative experiences be more detrimental? A prior person-centered investigation of psychological need states (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) showed that identified motivation, which is conceptually very closely related to AOC as they both reflect employees’ genuine involvement in and identification with the values of their work/organization, was the lowest in a profile dominated by specific need unfulfillment and, equally, in a profile dominated by both specific need unfulfillment and need specific frustration. More studies are thus needed to disentangle how such need states profiles would affect AOC. In line with the above-mentioned prior variable-centered findings, we could still expect that members of the positive profile(s) would show higher levels of AOC, while member of the predominantly negative profile(s) would have the lowest levels of AOC (Hypothesis 3a).

Turnover intentions

Turnover is understood as ‘the termination of an individual’s employment with a given company’ (Tett & Meyer, Reference Tett and Meyer1993, p. 262) and can be either voluntary or involuntary. A high turnover rate is not only associated with extra costs (e.g., Hayes et al., Reference Hayes, O’Brien-Pallas, Duffield, Shamian, Buchan, Hughes and Stone2006), but also with negative effects on incumbent workers attitudes (e.g., Kuhn & Yu, Reference Kuhn and Yu2021). Through its effects on the organizational climate as well as the time and resources it demands, a high turnover rate weakens devotion of full effort into the goals and tasks of the organization (Kuhn & Yu, Reference Kuhn and Yu2021). Regarding voluntary turnover on the part of the employee, the decision to quit has been shown to be strongly preceded by a conscious and deliberate willfulness to leave the organization, referred to as turnover intentions (Tett & Meyer, Reference Tett and Meyer1993).

Turnover intentions have been negatively associated with need satisfaction (Trépanier et al., Reference Trépanier, Fernet and Austin2015; Van den Broeck, Ferris, Chang, & Rosen, Reference Van den Broeck, Ferris, Chang and Rosen2016) while need frustration was positively related to turnover intentions (e.g., Gherman et al., Reference Gherman, Arhiri, Holman and Soponaru2022; Huyghebaert et al., Reference Huyghebaert, Gillet, Fernet, Lahiani and Fouquereau2018b; Olafsen, Halvari, & Frølund, Reference Olafsen, Halvari and Frølund2021). Indeed, when the professional environment is experienced as frustrating or unsatisfying, employees might disengage and consider other job opportunities that could better fulfill their psychological needs. Yet, prior studies failed to address the role of need unfulfillment, and its combinations with need satisfaction and frustration, in the prediction of turnover intentions. One could wonder whether turnover intentions are more likely in cases of high need frustration or of high need unfulfillment, or of their combination. A prior person-centered examination of psychological need states suggests the latter to be most likely to fuel turnover intentions (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) as it showed that employees were most likely to engage in their work to avoid losing their job or other material losses (external-material regulation) when they experienced simultaneously high levels of need frustration and unfulfillment. This result suggests that, if they had more favorable job alternatives, employees facing simultaneously high levels of need frustration and unfulfillment might consider leaving their job (Maertz & Campion, Reference Maertz and Campion2004). As such, need frustration and unfulfillment may have additive effects and result in employees wanting to leave their job to protect their integrity (need frustration) and seek more meaningful work experiences (need unfulfillment). In sum, person-centered analyses should help identify at-risk profiles regarding turnover intentions. Based on the above-mentioned prior variable-centered research, we can at least expect the lowest levels of turnover intentions to be found in the predominantly positive profile, while the highest levels will be found for members of the predominantly negative profile (Hypothesis 3b).

Cyberslacking

Cyberslacking refers to minor (e.g., browsing, emailing, shopping) and major (e.g., blogging, gambling, surfing adult websites) personal activities that an employee voluntarily undertakes during work hours (Blanchard & Henle, Reference Blanchard and Henle2008). Since cyberslacking is a widespread phenomenon, it has raised substantial concerns about its influence on employee performance (Askew et al., Reference Askew, Buckner, Taing, Ilie, Bauer and Coovert2014). To prevent cyberslacking and its detrimental consequences, scholars have thus investigated its antecedents, although this research area still needs to be further explored. For instance, work engagement was found to negatively mediate the relationship between organizational trust and cyberslacking, indicating that organizational trust can reduce the occurrence of cyberslacking via work engagement (Oosthuizen, Rabie, & De Beer, Reference Oosthuizen, Rabie and De Beer2018). However, no research has documented the implications of psychological need states in the development of cyberslacking. Yet, recent findings from research conducted in education settings showed the importance of psychological need satisfaction and frustration in respectively negatively and positively predicting procrastination (Oram & Rogers, Reference Oram and Rogers2022).

Moreover, recent person-centered findings showed that the predominantly negative need states profiles were related to high levels of amotivation (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a), which shares conceptual similarities with cyberslacking, as they both reflect a lack of motivation to engage in one’s work and both imply that employees do not see the point of putting effort into work. As such, we could similarly expect to find the highest levels of cyberslacking among employees of the predominantly negative need states profile(s). Indeed, employees may engage in cyberslacking as a form of retaliation toward a frustrating and/or neglecting work environment, to reciprocate feelings of being unfairly treated (Venkatesh, Cheung, Davis, & Lee, Reference Venkatesh, Cheung, Davis and Lee2023). Employees may also engage in cyberslacking to restore autonomy (i.e., deciding to browse the internet instead of doing one’s work), mastery (e.g., engaging in an online game they feel competent at), and connection with others (e.g., using social network or texting family and friends). In sum, cyberslacking should be a relevant response when employees feel that their needs are neglected and frustrated by the organization. A person-centered analysis could thus be a first step to identify the relative relevance of the three psychological needs states but also to identify at-risk profiles regarding cyberslacking. Thus, we can expect to find the highest levels of cyberslacking among members of the predominantly negative profile(s) (Hypothesis 3c).

Method

Participants and procedure

The recruited participants had to be employed by an organization and to work in France. They were recruited by undergraduate students through network and snowball sampling procedures and were not compensated for their participation. Prior to data collection, potential participants received an email clarifying the general goal of the research and assuring them of the voluntary and anonymous nature of their participation. They were invited to provide a written informed consent. A total of 525 French employees (M age = 35.60 years; SD = 12.27; 56.80% women) completed the online survey. Most participants worked full-time (80.20%) for an average of 36.07 weekly hours (SD = 9.23). We aimed to include a diverse range of occupational groups, however, most participants (87.8%) worked in the service industry (market services: 35.8%; nonmarket services: 52.0%). Participants had been working for their current organization for an average of 8.51 years (SD = 9.23). Finally, participants were highly concerned by environmental issues (M = 7.45; SD = 1.94 on a scale from 1 – not concerned at all to 10 – very concerned).

Measures

Environmental CSR was measured with seven items (α = .92; e.g., ‘Our company takes action to reduce pollution related to its activities (e.g., choice of materials, eco-design, and dematerialization)’) developed by El Akremi et al. (Reference El Akremi, Gond, Swaen, De Roeck and Igalens2018). Participants reported how much they agreed with each statement on a scale from 1 (strongly disagree) to 6 (strongly agree).

Negative moral emotions related to organization’s environmental (ir)responsibility were measured with eight items (α = .94; e.g., ‘I get sad because of how my organization deals with the climate crisis’) with a scale that was adapted from Thornberg, Pozzoli, Gini, and Jungert (Reference Thornberg, Pozzoli, Gini and Jungert2015). Participants indicated their level of agreement with each statement on a scale from 1 (strongly disagree) to 5 (strongly agree).

Psychological need states were measured with the validated French version of the Psychological Need States at Work Scale (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021). Before completing this 37-item scale, workers were asked to consider their general experience in their current job to indicate the extent to which they agreed with each statement (1 – strongly disagree to 7 – strongly agree). Need satisfaction was measured by three items for autonomy (e.g., ‘I have a say in how things are done’; α = .87), three for competence (e.g., ‘I feel that I am capable’; α = .81), and six for relatedness (e.g., ‘I feel cared for’; α = .92). Need frustration was assessed via four items for autonomy (e.g., ‘I feel forced to follow decisions about my work’; α = .82), four for competence (e.g., ‘I feel like a failure’; α = .90), and five for relatedness (e.g., ‘I feel excluded’; α = .90). Need unfulfillment was measured through four items for autonomy (e.g., ‘I am confused as to when I can make decisions’; α = .82), three for competence (e.g., ‘I feel like I have improved less than I would have liked to’; α = .68), and five for relatedness (e.g., ‘I feel I don’t quite fit in with others’; α = .82).

AOC was measured with three items (α = .86; e.g., ‘I am proud to say that I work for my organization’) developed by Perreira et al. (Reference Perreira, Morin, Hebert, Gillet, Houle and Berta2018). Participants indicated their level of agreement with each statement on a scale from 1 (totally disagree) to 5 (totally agree).

Cyberslacking was measured with four items (α = .80; e.g., ‘I spend more than half an hour on social network sites (Facebook, Instagram, Twitter, etc.) per day for leisure purposes during working hours’) developed by Metin et al. (Reference Metin, Taris, Peeters, Korpinen, Smrke, Razum and Gaioshko2020). Participants were asked to report how frequently they engaged in each behavior on a scale from 1 (never) to 7 (always).

Turnover intentions were measured with three items (α = .89; e.g., ‘How often do you think about quitting your current organization?’) developed by Jaros (Reference Jaros1997). Each statement was rated on a scale from 1 (never) to 5 (always).

Analyses

Preliminary analyses

The psychometric properties of all multi-item measures used in this research were verified as part of preliminary factor analyses. Details on these analyses (factor structure, composite reliability, and correlations) are reported in the Online Supplements (Tables S1–S7). The subsequent main analyses relied on factor scores taken from these preliminary analyses (Morin, Reference Morin and Meyer2016) and estimated in standardized units (SD = 1; M = 0; for further information on the benefits of using factor scores, see Morin, Reference Morin and Meyer2016).

Latent profile analyses

Analyses were conducted using the maximum likelihood robust estimator implemented in Mplus 8.6 (Muthén & Muthén, Reference Muthén and Muthén2021). There were no missing responses given the way the survey was set up. We chose latent profile analysis (LPA) because of its added value relative to cluster analyses; LPA permits more flexible model specification than cluster analysis and LPA fit indexes allow different models to be compared and decisions on number of underlying classes to be made (Marsh et al., Reference Marsh, Lüdtke, Trautwein and Morin2009).

Model estimation

LPA solutions including one to eight profiles were first estimated using all need states as indicators, while allowing the means and variances of these indicators to be freely estimated (Morin & Litalien, Reference Morin and Litalien2019). LPA models are designed to identify a finite set of latent subpopulations (profiles) of participants characterized by distinct configurations on a set of indicators, while allowing for within profile variability on all indicators (McLachlan & Peel, Reference McLachlan and Peel2000). Each participant is assigned a probability of membership in each of the latent profiles, which provides a way to assess the LPA model while controlling for classification errors.

Model comparison and selection

We examined how many profiles to retain while relying on a consideration of whether the profiles themselves were meaningful, aligned with theory, and statistically adequate (Morin, Reference Morin and Meyer2016). Statistical indicators (McLachlan & Peel, Reference McLachlan and Peel2000) were also consulted. Specifically, statistical research has shown that lower values on the Bayesian information criterion, consistent Akaïke information criterion, sample-size adjusted Bayesian information criterion, and statistically significant p-values on the bootstrap likelihood ratio test indicate better fitting models and are efficient at helping to identify the number of latent profiles (e.g., Diallo, Morin, & Lu, Reference Diallo, Morin and Lu2016, Reference Diallo, Morin and Lu2017). Yet, the Akaïke information criterion and the adjusted Lo, Mendell, and Rubin’s (Reference Lo, Mendell and Rubin2001) likelihood ratio test should not be used for purposes of model comparison and selection (e.g., Diallo et al., Reference Diallo, Morin and Lu2016, Reference Diallo, Morin and Lu2017) but are reported for purposes of transparency. Because these tests all suffer from strong sample size dependency (Marsh et al., Reference Marsh, Lüdtke, Trautwein and Morin2009), they often fail to converge on a specific number of profiles. Thus, we also relied on a graphical display of these indicators (i.e., elbow plot), in which the observation of a plateau in the decrease in the value of these indicators helps to pinpoint the optimal solution (Morin et al., Reference Morin, Maïano, Nagengast, Marsh, Morizot and Janosz2011). Finally, we estimated the classification accuracy (from 0 to 1) by looking at the entropy value, which, however, should not be used to select the optimal number of profiles (Lubke & Muthén, Reference Lubke and Muthén2007).

The start values from the final solution were then used (rather than using random starts) to ensure that this solution would be replicated in all remaining analyses involving predictors and outcomes (Morin & Litalien, Reference Morin and Litalien2019).

Predictors and outcomes of profile membership

Predictors (environmental CSR and negative moral emotions related to organization’s environmental (ir)responsibility) and demographic controls (gender, age, environmental concerns, organizational tenure, and employment type) were first incorporated to the final LPA solution, using a multinomial logistic regression link function. We decided to include those demographic variables to ensure that our findings are not skewed by variations in demographic characteristics. Environmental concern was also important as we could expect it to influence the sensitiveness to the organization’s environmental behavior and environmental CSR perceptions. Outcomes of profile membership (AOC, cyberslacking, and turnover intentions) were then incorporated to the final LPA solution. Profiles were contrasted in relation to levels of outcome variables using the Auxiliary (DCON) approach (Asparouhov & Muthén, Reference Asparouhov and Muthén2014).

Results

Preliminary measurement models

Only two solutions were able to achieve an acceptable level of fit to the data: a nine-factor exploratory structural equation modeling (ESEM)model (autonomy satisfaction, relatedness satisfaction, competence satisfaction, autonomy frustration, relatedness frustration, competence frustration, autonomy unfulfillment, relatedness unfulfillment, and competence unfulfillment), like the solution retained by Huyghebaert-Zouaghi et al. (Reference Huyghebaert-Zouaghi, Morin, Forest, Fouquereau and Gillet2022), and a bifactor ESEM model including nine S-factors (autonomy satisfaction, relatedness satisfaction, competence satisfaction, autonomy frustration, relatedness frustration, competence frustration, autonomy unfulfillment, relatedness unfulfillment, and competence unfulfillment) and one G-factor (global psychological need experience), like the solution retained by Huyghebaert-Zouaghi et al. (Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a). Although the latter had a well-defined G-factor, not only did it display decreased levels of fit to the data (relative to the former), but it also resulted in several weakly defined S-factors (see Online Supplements for more detail). Contrastingly, the ESEM solution with nine factors displayed the best fit to the data and resulted in well-defined factors where all items significantly loaded on their a priori factor (with all positive significant cross-loadings being substantially smaller than the target loadings). These results thus supported the adequacy of the ESEM solution with nine factors, which was thus retained, as in Huyghebaert-Zouaghi et al. (2020).

Latent profile solutions

Fit indices resulting from the different LPA solutions are presented in Table S5 (see also their graphical illustration via elbow plots in Figure S1 of the Online Supplements). The Bayesian information criterion and the consistent Akaïke information criterion reached their lowest point in the six-profile solution, and the adjusted Bayesian information criterion kept on decreasing. Examination of the elbow plot was more informative, suggesting a plateau in the decrease of the value of most information criteria occurring after the third- or four-profile solutions. Solutions including three, four, and five profiles were therefore more thoroughly inspected. This examination showed that each new profile represented a meaningful addition up to four profiles, whereas the fifth profile only revealed a non-informative division of one already identified profile into two very similar ones. Therefore, the four-profile solution was selected, and is illustrated in Fig. 1. Fit indices from this final solution are presented in Table 1 and its parameter estimates are reported in the online supplements (Table S6). As shown in Table S7, this solution displayed a high classification accuracy (ranging from 94.0% to 98.2%), which is corroborated by a high entropy value (.919).

Note. A = autonomy; c = competence; r = relatedness; S = satisfaction; F = frustration; U = unfulfillment; Profile 1: Positive Need States Experience; Profile 2: Very Positive Need States Experience; Profile 3: Negative Need States Experience; Profile 4: Moderate and Mixed Need States Experience.

Figure 1. Final four-profile solution.

Table 1. Fit results from the final models

Note. LL = log-likelihood; #fp = number of free parameters; SC = scaling correction factor; AIC = Akaïke information criterion; BIC = Bayesian information criterion; CAIC = consistent AIC; ABIC = sample-size adjusted BIC.

Profile 1 displayed high levels of satisfaction of all three needs and low levels of unfulfillment and frustration of all three needs. This Positive Need States Experience profile characterized 31.30% of the participants. Members of Profile 2 reported very high levels of satisfaction of all three needs and low to very low levels of unfulfillment and frustration of all three needs. This Very Positive Need States Experience profile characterized 3.77% of the participants. Profile 3 displayed low levels of satisfaction of all three needs, and high to very high levels of unfulfillment and frustration of all three needs. This Negative Need States Experience profile characterized 28.09% of the participants. Members of Profile 4 reported average levels of satisfaction of all three needs and of autonomy frustration, average levels of competence and relatedness unfulfillment, moderately high levels of autonomy unfulfillment, and moderately low levels of competence and relatedness frustration. This Moderate and Mixed Need States Experience profile characterized 36.83% of the participants.

Predictors of profile membership

Fit indices from the predictive model are presented in Table 1 and detailed results are reported in Table 2. They revealed that most of the demographics (i.e., age, gender, environmental concerns, organizational tenure) were unrelated to profile membership, except for employment type. Indeed, employees working part-time were less likely to be members of the Moderate and Mixed Need States Experience profile (4), relative to Profiles 1 (Positive Need States Experience), 2 (Very Positive Need States Experience), and 3 (Negative Need States Experience). Employees working part-time were also more likely to be members of Profile 2 (Very Positive Need States Experience), relative to Profiles 1 (Positive Need States Experience) and 3 (Negative Need States Experience).

Table 2. Results from multinomial logistic regressions for the effects of the predictors and demographic variables on profile membership

Note. SE = standard error of the coefficient; OR = odds ratio; corporate social responsibility and negative moral emotions are estimated from factor scores with a standard deviation of 1 and a mean of 0; age, tenure, and environmental concerns were standardized prior to the analyses; gender: 1 for women and 2 for men; employment type: 1 for full-time and 2 for part-time; the coefficients and OR reflect the effects of the predictors on the likelihood of membership into the first listed profile relative to the second listed profile; Profile 1: Positive Need States Experience; Profile 2: Very Positive Need States Experience; Profile 3: Negative Need States Experience; Profile 4: Moderate and Mixed Need States Experience.

* p < .05; **p < .01.

Turning our attention to the predictors, environmental CSR perceptions were found to be unrelated to profile membership, thus contradicting Hypothesis 2a. However, negative moral emotions related to organization’s environmental (ir)responsibility predicted a higher likelihood of membership into Profile 3 (Negative Need States Experience) relative to Profiles 1 (Positive Need States Experience), 2 (Very Positive Need States Experience), and 4 (Moderate and Mixed Need States Experience). Negative moral emotions related to organization’s environmental (ir)responsibility also predicted a higher likelihood of membership into the Moderate and Mixed Need States Experience profile (4), relative to Profiles 1 (Positive Need States Experience) and 2 (Very Positive Need States Experience), thus confirming Hypothesis 2b.

Outcomes of profile membership

Fit indices from this model are presented in Table 1 and the relations between profile membership and outcome variables are presented in Table 3. Results showed that the highest levels of AOC were observed in Profile 2 (Very Positive Need States Experience), followed by Profile 1 (Positive Need States Experience), which was itself followed by Profile 4 (Moderate and Mixed Need States Experience), and then by Profile 3 (Negative Need States Experience), thus confirming Hypothesis 3a. The opposite pattern was found for turnover intentions, with the highest levels observed in Profile 3 (Negative Need States Experience), followed by Profile 4 (Moderate and Mixed Need States Experience), which was itself followed by Profiles 1 (Positive Need States Experience) and 2 (Very Positive Need States Experience), which did not differ from one another. Hypothesis 3b was thus confirmed.

Table 3. Associations between profile membership and the outcomes

Note. M = mean; CI = 95% confidence interval; affective organizational commitment, cyberslacking, and turnover intentions are estimated from factor scores with a mean of 0 and a standard deviation of 1; Profile 1: Positive Need States Experience; Profile 2: Very Positive Need States Experience; Profile 3: Negative Need States Experience; Profile 4: Moderate and Mixed Need States Experience.

Finally, the highest levels of cyberslacking were found in Profile 1 (Positive Need States Experience), followed by Profile 4 (Moderate and Mixed Need States Experience), which was itself followed by Profile 3 (Negative Need States Experience). Profile 3 also displayed significantly lower levels of cyberslacking than Profile 2 (Very Positive Need States Experience) which did not differ from Profile 4 (Moderate and Mixed Need States Experience). Finally, Profiles 1 (Positive Need States Experience) and 2 (Very Positive Need States Experience) did not differ from one another in terms of cyberslacking levels. These findings contradicted Hypothesis 3c.

Discussion

The present study aimed to offer a test of generalizability of employees’ psychological need states profiles (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) and to examine their contextual predictors and work-related outcomes.

Theoretical contributions

Our results add to the literature in numerous ways. First, we confirm the distinctiveness of need unfulfillment by showing this need state to coexist with need satisfaction and frustration in employees’ need states profiles, hence highlighting the significance of this need state (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021). Second, by examining the predictive value of perceptions of environmental CSR and moral emotions related to the organization’s environmental (ir)responsibility on profile membership, we provide a new perspective for SDT and organizational research. Finally, our findings show that these need states combinations not only predict motivational outcomes (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Morin, Fernet, Austin and Gillet2022), but are also associated with employees’ attitudes and behaviors (AOC, cyberslacking, and turnover intentions). We further discuss these contributions in the following sections.

Psychological need states profiles

In line with our expectations, results revealed the presence of four psychological need states profiles. As hypothesized, we identified two predominantly positive profiles (Profile 1: Positive Need States Experience and Profile 2: Very Positive Need States Experience) and a predominantly negative profile (Profile 3: Negative Need States Experience). These results are important as they show the generalizability of these profiles and suggest that they can be expected to systematically appear in various organizational settings, when accounting for both positive and negative need states experiences (e.g., Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a; Rouse et al., Reference Rouse, Turner, Siddall, Schmid, Standage and Bilzon2020). However, unlike Huyghebaert-Zouaghi et al. (Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a), we only identified one predominantly negative profile, thus suggesting that the identification of a very negative profile could be due to Huyghebaert-Zouaghi et al.’s reliance on a bifactor representation of psychological need states (one global factor and nine specific factors). More research relying on an ESEM representation of psychological need states is needed to confirm the identification of only one predominantly negative profile.

Finally, we identified a moderate profile (Profile 4: Moderate and Mixed Need States Experience) characterized by moderately high levels of autonomy unfulfillment and moderately low levels of competence and relatedness frustration. Interestingly, this profile is in line with Huyghebaert-Zouaghi et al.’s (Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) identification of a profile similarly characterized by the salience of high levels of autonomy unfulfillment (i.e., Globally Average and Mixed Specific). This result thus corroborates the importance of considering this distinct need experience (i.e., need unfulfillment states), as it reflects a reality that may be predominant in the professional life of most individuals (over 36% in this sample). In sum, our results (together with Huyghebaert-Zouaghi et al.’s 2022) provide evidence that the four identified psychological need states profiles reflect a phenomenon that can be relied upon to guide interventions (Morin, Reference Morin and Meyer2016).

Unexpectedly, we did not identify the hypothesized normative profile, which contrasts with prior person-centered research on psychological need satisfaction and frustration in the workplace (Gillet et al., Reference Gillet, Morin, Choisay and Fouquereau2019; Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Morin, Forest, Fouquereau and Gillet2022b; Rouse et al., Reference Rouse, Turner, Siddall, Schmid, Standage and Bilzon2020) but concurs with prior research encompassing need satisfaction, frustration, and unfulfillment (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a). It is thus possible that the identification of this normative profile in prior research on need satisfaction and frustration was simply the reflection of something missing (i.e., need unfulfillment). More person-centered research based on the 3 × 3 conceptualization of need states (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021) is needed to confirm this suggestion.

More generally, the identified profiles showed that the various psychological need states are distinctive and not mutually exclusive psychological experiences that may co-occur in the work lives of some people. For example, members of the Negative Need States Experience profile displayed high levels of both need frustration and need unfulfillment. While it is conceivable that these distinct need experiences stem from different aspects of the job, it is also possible that workers fluctuate between these different specific need states. On one hand, employees could have a general perception of ambiguity, dullness, and disconnection (need unfulfillment) in their job because of their supervisor’s behaviors (e.g., Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) while also feeling coerced, useless, and rejected (need frustration) because of emotional display rules (e.g., Huyghebaert et al., Reference Huyghebaert, Gillet, Fernet, Lahiani, Chevalier and Fouquereau2018a). Alternatively, workers could fluctuate between these different need states daily as their momentary work experiences go by (e.g., Hancox, Quested, Ntoumanis, & Duda, Reference Hancox, Quested, Ntoumanis and Duda2017). These two possibilities are not mutually exclusive and more research into the predictors, the temporal dynamics, and the inter- and intraindividual variations of psychological need states is needed to test these possibilities.

Predictors of psychological need states profiles

Contrary to our expectations, perceptions of environmental CSR were unrelated to membership in any profile, thus rejecting Hypothesis 2a. In other words, perceptions of one’s organization’s environmental CSR do not seem to play a role in predicting psychological need states profile membership. Although unexpected, this result could be explained by the cognitive nature of the environmental CSR perceptions’ scale and by the fact that we did not account for moral reflectiveness. Indeed, Afsar and Umrani (Reference Afsar and Umrani2020)showed that the effects of environmental CSR are explained by moral reflectiveness. People could thus note that their company has a weak environmental social responsibility without considering it as a moral violation, or without feeling responsible for it. However, when employees feel morally involved, those perceptions should elicit stronger reactions and then impair psychological need states experience.

In line with this interpretation and with our expectations, negative moral emotions regarding one’s organization’s environmental (ir)responsibility did predict profile membership. More precisely, negative moral emotions regarding one’s organization’s environmental (ir)responsibility predicted a higher likelihood of membership in the Negative Need States Experience profile compared to the other profiles, thus providing support for Hypothesis 2b. In other words, workers who experienced moral emotions such as shame and guilt because of how their organization deals with environmental issues were more likely to be members of the profile that was the most detrimental in terms of psychological need states (low levels of satisfaction of all three needs, and high to very high levels of unfulfillment and frustration of all three needs), relative to all other profiles. Moreover, negative moral emotions regarding one’s organization’s environmental (ir)responsibility predicted a higher likelihood of membership in the Average and Mixed profile, relative to both the positive need states profiles (i.e., Positive Need States Experience and Very Positive Need States Experience profiles). Altogether, these results show that when employees experience negative moral emotions such as anger, shame, and guilt when they perceive that their organization violates moral standards by having little or no sense of environmental issues, it increases their likelihood of experiencing negative need states dominated by the frustration and/or the unfulfillment of their basic psychological needs and decreases their likelihood of experiencing need satisfaction.

Theoretically, these results fill a gap in the literature in several ways. In a context where the consequences of moral emotions in organizations are understudied (Greenbaum et al., Reference Greenbaum, Bonner, Gray and Mawritz2020), we now provide important information by showing that negative moral emotions in organizations are related to negative psychological need states experiences, which are essential in predicting individual and organizational outcomes (e.g., Huyghebaert et al., Reference Huyghebaert, Gillet, Fernet, Lahiani and Fouquereau2018b; Trépanier et al., Reference Trépanier, Fernet and Austin2015). Our results also contribute to SDT (Ryan & Deci, Reference Ryan and Deci2017) by showing that individuals’ psychological needs are influenced by their moral emotions related to environmental issues. In a context where climate change has become a key topic for individuals and society, our results point to psychological needs as a possible mechanism to explain the detrimental consequences of environmental concerns on individuals’ well-being (e.g., eco-anxiety; Verplanken, Marks, & Dobromir, Reference Verplanken, Marks and Dobromir2020).

Outcomes of profile membership

Our results confirm Hypothesis 3a as the highest levels of AOC were observed in the Very Positive Need States Experience profile, followed by the Positive Need States Experience profile, which was itself followed by the Moderate and Mixed Need States Experience profile, and finally by the Negative Need States Experience profile. Our results are thus in line with prior variable-centered research, such as Greguras and Diefendorff (Reference Greguras and Diefendorff2009) and Gillet et al. (Reference Gillet, Forest, Benabou and Bentein2015), that has found need satisfaction to be an important mechanism to positively explain employees’ AOC and need thwarting to negatively explain AOC. Our results are also in line with prior person-centered research on psychological need states (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) by showing the combination of need frustration and need unfulfillment to carry the worst consequences in terms of AOC, thus showing the detrimental additive effect of these negative need states. Our results also expand the commitment literature and contribute to SDT by providing new information showing that need experiences dominated by need unfulfillment (i.e., Moderate and Mixed Need States Experience profile) are also detrimental for AOC. Indeed, need unfulfillment has recently been introduced in the literature (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021) and had not yet been studied in relation to AOC. Our results confirm the relevance of this distinctive need state as a powerful predictor of AOC deterioration and suggest that need unfulfillment may elicit protective reactions in the form of less attachment and identification with the organization. Thus, beyond the necessity to promote need satisfaction and avoid need frustration (Gillet et al., Reference Gillet, Forest, Benabou and Bentein2015), preventing employees’ feelings that their needs are abandoned also seems crucial to foster AOC.

Our results also confirm Hypothesis 3b as employees with the highest levels of turnover intentions were found among members of the Negative Need States Experience profile, followed by the Moderate and Mixed Need States Experience profile, which was itself followed by the Positive Need States Experience and Very Positive Need States Experience profiles. Our results are thus in line with prior variable-centered research (Huyghebaert et al., Reference Huyghebaert, Gillet, Fernet, Lahiani and Fouquereau2018b; Trépanier et al., Reference Trépanier, Fernet and Austin2015; Van den Broeck et al., Reference Van den Broeck, Ferris, Chang and Rosen2016), showing need satisfaction to negatively relate to turnover intentions, while need frustration positively predicts these withdrawal intentions. Our results are also in line with prior person-centered research on psychological need states showing the detrimental additive effects of need frustration and need unfulfillment (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) by emphasizing this combination to be the most powerful predictor of employees contemplating to leave their job. Our results also contribute to the turnover literature and to SDT by providing new information showing that need experiences dominated by need unfulfillment (i.e., Moderate and Mixed Need States Experience profile) are also predictive of turnover intentions. This research therefore allows to expand the nomological network of need unfulfillment by showing this work experience to not only relate to employees’ motivation (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) and work-related psychological health (Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Ntoumanis, Berjot and Gillet2021) but also to predict their behavioral intentions in the form of turnover intentions. This key organizational outcome emphasizes the importance of considering this psychological need state, together with need satisfaction and frustration, to get a broader understanding of employees’ potential withdrawal from their job. Indeed, when experiencing need unfulfillment, employees may consider leaving their job to search for more meaningful work experiences. More generally, this person-centered approach shed some new light on the configurations of need states experiences that are most detrimental for turnover intentions and allow to identify at risk profiles.

Finally, regarding Hypothesis 3c, results contradicted our expectations. The highest levels of cyberslacking were found in the Positive Need States Experience profile, which did not significantly differ from the Very Positive Need States Experience profile in terms of cyberslacking, while the lowest levels of cyberslacking were found in the Negative Need States Experience profile, followed by the Moderate and Mixed Need States Experience profile. In other words, the highest levels of cyberslacking were found in the most positive need states profiles, dominated by need satisfaction (i.e., Positive Need States Experience and Very Positive Need States Experience profiles), while the lowest levels of this form of procrastination were found in the most negative profiles dominated by need frustration and/or need unfulfillment (i.e., Negative Need States Experience and Moderate and Mixed Need States Experience profiles). A possible explanation for these counterintuitive results is that when feeling autonomous, competent, and affiliated, employees could respectively take the liberty to surf the internet and feel free to schedule their tasks around it, feel confident in their ability to catch up with their work later, and not fear the interpersonal consequences of their procrastination. On the contrary, frustrated and/or unfulfilled psychological needs could create pressures or uncertainty regarding the consequences of procrastination and employees could thus avoid cyberslacking. Moreover, the negative need states profiles may themselves originate from a lack of – or uncertainty regarding – one’s amount of latitude in one’s job and/or from pressures, making procrastination impossible in the first place. In other words, it is possible that employees experiencing positive need states experiences could be active procrastinators who make deliberate procrastination decisions and reap benefits from their procrastination behaviors in terms of well-being and performance (Chun Chu, & Choi, Reference Chun Chu and Choi2005). Yet, we did not differentiate between active and passive forms of cyberslacking, and more research is thus needed to reach a better understanding of the relations between psychological need states and procrastination. Alternatively, these counterintuitive results could also be explained by the cross-sectional nature of our research. Indeed, procrastination has been shown to come with short term benefits (Tice & Baumeister, Reference Tice and Baumeister1997). It is thus possible that it would come with higher need satisfaction on the short term, but employees could transition to profiles dominated by need unfulfillment or frustration over time. More research looking into the temporal dynamics of psychological need states and procrastination is thus needed to further explore this issue.

Limitations and suggestions for future research

Despite its important theoretical contributions, the present study has certain limitations. First, our reliance on a convenience sample of French employees that was overrepresented by employees in the service industry reduces the opportunities to generalize to other cultural groups and occupational groups. This is relevant as the universality of psychological need states is a key tenet of SDT (Vansteenkiste et al., Reference Vansteenkiste, Ryan and Soenens2020). However, we tried to overcome this limitation by exploring how some demographics (age, gender, environmental concerns, contract type, and organizational tenure) were associated with the profiles. These results showed that demographics were unrelated to profile membership. Moreover, we hope that the results from our sample can offer insights for other occupational groups as well. Future research is needed to confirm whether the identified profiles can generalize to employees from specific occupational groups and cultures. Second, we relied on only one source of information, which is sensitive to social desirability, perception and recall biases, and shared method variance effects. We tried to overcome this bias by specifically developing our survey with a number of strategies, including random ordering of questions. Future research could also separate the measures of the predictor and criterion variables and collect data from more sources (e.g., supervisor ratings of procrastination) and not only depend on self-reports, including more objective and performance-based outcomes (e.g., objective turnover data). Future studies could also control for the organization’s CSR performance. As data was collected online from employees working in different organizations, we focused on perceptions of CSR. Those perceptions are influenced by the organizations’ CSR performance, communication, and/or employees’ global attitudes and expectations about the organization. Controlling for objective CSR performance could thus be interesting to show that beyond objective CSR performance, communication about it can help to build a need satisfying environment. Furthermore, a cross-sectional study design was adopted; therefore, we were unable to determine the direction of effects between the variables. Future research is needed to take a longitudinal approach (e.g., Huyghebaert-Zouaghi et al., Reference Huyghebaert-Zouaghi, Gillet, Fernet, Thomas and Ntoumanis2022a) and examine directionality, including possible bidirectional relationships, among the study variables.

Practical contributions

Despite these limitations, the current findings have practical implications. Indeed, our findings showing the implications of psychological need states profiles (outcomes of profile membership), allow to assess their (dis)advantages and to decide which to target through intervention, based on our findings indicating which levers (predictors of profile membership) can be used to influence profile membership. More precisely, our results suggest that organizations and practitioners need to consider that worker’s negative moral emotions in relation to environmental issues seem to have an impact on their psychological need states. These results show that it is important for organizations to focus on environmental issues not only for the sake of the environment, but also to promote their employees’ psychological experiences in the workplace. As such, organizations could prevent workers’ negative moral emotions related to their organization’s environmental (ir)responsibility by communicating to their employees how they work to reach critical environmental goals. Indeed, employees’ negative moral emotions on such matters may not necessarily be due to the organization’s actual lack of environmental responsibility but simply a result of inadequate communication on the steps taken by the organization (Huyghebaert et al., Reference Huyghebaert, Gillet, Fernet, Lahiani and Fouquereau2018b) to protect the environment. Organizations may thus allow employees to share their moral standards on the matter and to reflect on how they, their teams, and the organization could work to better promote their organizations environmental responsibility. Managers could also help their employees regulate their negative moral emotions, for example by reappraisal. This could be done by training employees to ask themselves why they experience their emotions, which can help them understand if the emotion is useful or not, and how. Such self-understandings can improve positive need states, while still letting the emotion guide their moral judgment. However, this must be done with care as regulating guilt and shame by reappraisal undermines the important functions these emotions serve (Feinberg, Ford, & Flynn, Reference Feinberg, Ford and Flynn2020). It is therefore important that organizations balance the benefits of reappraisal with the costs it can impose. By promoting employees’ positive psychological need states experiences through such interventions, organizations could benefit from more committed employees (i.e., high AOC) with less turnover intentions, which is no little consideration in the age of the great resignation (Sheather & Slattery, Reference Sheather and Slattery2021).

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/jmo.2024.25.

Data availability statement

Data available upon request from the authors.

Acknowledgements

Tomas Jungert gratefully acknowledges financial support from Svensk-Franska Stiftelsen. We would also like to thank Lucas Boutteville and Thérence Rousseaux for their help with this study’s data collection as well as Anja Grim and Elvira Snygg Martin who provided valuable insights.

Author contributions

Tomas Jungert and Sylvain Caruana contributed equally to the work and should thus both be considered as a first author.

Conflict of interest

There was no conflict of interest in conducting or reporting this research.

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Figure 0

Figure 1. Final four-profile solution.

Note. A = autonomy; c = competence; r = relatedness; S = satisfaction; F = frustration; U = unfulfillment; Profile 1: Positive Need States Experience; Profile 2: Very Positive Need States Experience; Profile 3: Negative Need States Experience; Profile 4: Moderate and Mixed Need States Experience.
Figure 1

Table 1. Fit results from the final models

Figure 2

Table 2. Results from multinomial logistic regressions for the effects of the predictors and demographic variables on profile membership

Figure 3

Table 3. Associations between profile membership and the outcomes

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