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Article

Work-From-Home Productivity and Job Satisfaction: A Double-Layered Moderated Mediation Model

by
Kellyann Berube Kowalski
1,
Alex Aruldoss
2,
Bhuvaneswari Gurumurthy
3 and
Satyanarayana Parayitam
1,*
1
Department of Management and Marketing, Charlton College of Business University of Massachusetts Dartmouth, North Dartmouth, MA 02747-2300, USA
2
Department of Commerce (Bank Management) and Business Administration (Computer Applications), St. Joseph’s College of Arts & Science (Autonomous), Cuddalore 607001, India
3
Department of Commerce (Bank Management), St. Joseph’s College of Arts & Science (Autonomous), Cuddalore 607001, India
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(18), 11179; https://doi.org/10.3390/su141811179
Submission received: 2 August 2022 / Revised: 29 August 2022 / Accepted: 31 August 2022 / Published: 7 September 2022
(This article belongs to the Special Issue New Trends in Organizational Psychology)

Abstract

:
This study was conducted against the backdrop of the global-pandemic-induced change in work climate resulting in employees working from home (WFH). The current study investigated the relationship between work-from-home productivity (WFHP) and job satisfaction. Using a structured survey instrument, data were collected from 1158 respondents from a developing country, India. After checking the psychometric properties of the measures using the LISREL software of structural equation modeling (SEM), data were analyzed using Hayes’s PROCESS macros. The findings indicate that: (i) WFHP positively predicts (a) job satisfaction and (b) work–life balance (WLB), (ii) WLB positively predicts job satisfaction, and (iii) WLB mediates the relationship between WFHP and job satisfaction. The results also support that (i) work stress moderates the relationship between WFHP and WLB, (ii) work–personal life enhancement (WPLE) (second moderator) moderates the moderated relationship between WFHP and work stress (first moderator) in influencing WLB, (iii) emotional exhaustion moderates the relationship between WLB and job satisfaction, and (iv) WPLE (second moderator) moderates the relationship between WLB and emotional exhaustion (first moderator) in influencing job satisfaction. The first three-way interaction between WFHP, work stress, and WLB and the second three-way interaction between WLB, emotional exhaustion, and job satisfaction have been investigated for the first time, to the best of our knowledge. The conceptual double-layered moderated mediation model is a novel idea, and the results significantly contribute to the literature on WLB and job satisfaction. The implications for theory and practice are discussed.

1. Introduction

The unprecedented COVID-19 global pandemic has resulted in a phenomenal metamorphosis in the lives of people and organizations worldwide [1,2,3]. To prevent the spread of the virus, governments imposed frequent lockdowns and social distancing. Organizations did not have any alternative but to request employees to work remotely [4,5]. This study was conducted against the backdrop of this global-pandemic-induced WFH of employees in a developing country, India.
The separation of work from family has remained an exciting topic for organizational behavior and psychology researchers for over three decades [6,7,8,9,10]. Often, employees struggle to balance their work demands and personal priorities and preferences, resulting in a work–life imbalance. To help employees effectively balance work and life, organizations offer flexible working hours, remote working, or work from home (WFH) [11,12,13]. Several researchers documented that, in order to maintain a work–life balance (WLB), remote working or WFH is one of the essential tools where individuals can effectively balance office work and homework [14,15].
The COVID-19 global pandemic (COVID-19) has made WFH a rule worldwide [16,17]. Even before the pandemic, employees in developed countries were fully aware of the concept of remote working. However, in developing countries such as India, WFH was a rare phenomenon. In addition, organizations in developing countries were not equipped with adequate infrastructure to facilitate remote working. The global pandemic has forced almost all of the institutions to switch to WFH, though the infrastructure does not facilitate such a sudden shift.
This research investigates the effect of work-from-home productivity (WFHP) on employees’ job satisfaction, especially considering the global-pandemic-imposed work climate in organizations. During the COVID-19 period, several articles were published documenting the problems associated with the pandemic in various sectors (manufacturing and services), changes in consumer behavior, the supply chain, ways of operating in educational institutions, etc. [5,18,19]. Therefore, our intent in this paper is to unfold the relationships between the variables that the scar of the pandemic left on organizations. As the first step in that direction, we examine the boundary conditions of WFHP leading to employees’ job satisfaction.
Most importantly, we dwell on some of the most researched areas: work–life balance (WLB), work stress, emotional exhaustion, and work–personal life enhancement (WPLE). As the pandemic resulted in many organizations shifting to the work-from-home mode of operations, the psychological stress employees have experienced increased in alarming proportions [17,20]. Furthermore, to compensate for the loss of working days because of mandatory lockdowns and social distancing, employees were required to stretch their work, resulting in stress and emotional exhaustion [3,21]. Therefore, organizations embarked on resilient strategies to cope with the changes in the work climate [22,23].
This study is aimed at investigating the relationship between WFHP and WLB. Further, this research focuses on explaining how WFHP results in job satisfaction. Since the employees during the post-pandemic period experience stress and emotional exhaustion, this study aims to see how emotional exhaustion influences the relationships between WFHP, WLB, and job satisfaction. Most importantly, in this research, we explain how WPLE alleviates the adverse effects of work stress and emotional exhaustion and how it helps to enhance job satisfaction.
This study makes five contributions to the literature on WFH and WLB. First, the study indicates that WFH productivity positively predicts WLB and job satisfaction. Thus, the results extend the growing mountain of research in organizational behavior and psychology related to employee satisfaction. Second, global-pandemic-induced telecommuting and remote working has increased both work stress and emotional exhaustion, thus adversely affecting job satisfaction and disturbing the WLB of employees. In this study, we found that employees who feel more stressed at work had a low level of WLB. Further, the emotional exhaustion faced by employees adversely affected their job satisfaction. Third, in order to alleviate the adverse effects of work stress, this study found that WPLE can be used as a strategy.
When employees can take positive experiences of work to home and positive feelings of home to work, they are able to maintain work–personal life enhancement, which would reduce the negative impact of work stress on WLB. Fourth, this study found that WPLE also counters the negative effect of emotional exhaustion on job satisfaction. Finally, the conceptual model presented, and the hypotheses tested are the first of their kind to investigate the global-pandemic-induced work environment in the context of a developing country. It is a novel contribution to the literature on WLB and WFH. To sum up, this study offers some suggestions for increasing the job satisfaction of the employees who work from home.

2. Literature Review and Variables in the Study

The variables used in this study are work from home productivity (WFHP), work-life balance (WLB), work stress, emotional exhaustion, work personal life enhancement (WPLE), and job satisfaction. We cover the literature review about each of the variables in the following sub-sections.

2.1. WFHP

When organizations implement WFH strategies in the present-day context of the global pandemic, employees’ productivity plays a vital role in organizational performance. Work-from-home productivity (WFHP) refers to the quality of work of employees and the extent of the motivation to perform better. Employee productivity also depends on the amount of technical knowledge and authority to complete given tasks at home. Further, productive workers tend to clear the targets set by the employer and, if necessary, obtain instructions from the employer to complete the given tasks. As documented in the literature, WFH enhances worker productivity [24], and it is essential to see the effect of productivity on satisfaction [25,26]. Some researchers contend that working at home allows employees to avoid workplace stress and politics in offices [11,27], thus increasing productivity. During the global pandemic, as employees are forced to WFH, they save commuting time, which can be used productively to complete given tasks. Further, employees feel psychologically safe at home because they are not exposed to the virus-driven physical environment during the pandemic. Though some scholars evidenced that WFH may decrease productivity and result in an increase in work–family conflicts (WFC), a lack of options compels the employees to show productivity to maintain their job status [28].

2.2. WLB

WLB is concerned with how individuals can maintain the balance between the demands from work and non-work activities and promote their priorities at both work and home without sacrificing. The studies in [29,30] contend that it is not easy to maintain WLB. Furthermore, WLB is a self-determined and self-defined state that may differ across individuals. Some can manage multiple demands from work and also at home, whereas some may not be able to achieve a happy balance between these [31]. An increase in family demands may hurt WLB [32].
Research on WLB is very exhaustive [30,33,34,35,36,37,38]. It was found that WLB is positively associated with organizational commitment [39], job satisfaction [40], societal demands [41], and increased productivity [42].

2.3. Emotional Exhaustion

The pioneers of the construct [43], contend that emotional exhaustion is an essential component of burnout. When employees are overburdened by work, they feel exhausted and realize that their energies are burning out. There has been substantial evidence that emotional exhaustion has deleterious consequences: a low performance, high turnover, and low commitment [44,45,46,47]. There is consensus among organizational scholars that the urgency of performance and pressures results in emotional exhaustion, adversely affecting satisfaction [48,49,50,51].

2.4. Work Stress

Also known as job stress, workplace stress comes from the psychosocial work environment, increased workload, role ambiguity, role conflict, and lack of supervisor support [52,53,54]. Stress also may stem from incompatibility of the worker ability and work demands, known as a person–environment misfit [22]. Sometimes, stressful situations from the environment or uncertainties do not allow employees to perform their duties [55,56]. An example of stress created by the environment is the global-pandemic-induced stress, where individuals undergo psychological stress to maintain health and keep themselves from contacting the virus.
Extant research has identified the antecedents of work stress: job conflict, role conflict [57,58], and non-collegiality and increasing demands from the supervisors [59]. A majority of researchers reported that work stress is negatively related to the physical health of employees and WLB [14,60,61].

2.5. WPLE

Also labeled as work–life enrichment, work–personal life enhancement (WPLE) is related to “how positive experiences in work and non-work (home) lives interact to productivity gains in satisfaction, health, and performance” [62]. While a supportive organizational climate, social support from the peers, and family-friendly human resources management strategies are the antecedents to WPLE, outcomes include work engagement, performance, commitment, and job and family satisfaction [63,64,65].

2.6. Job Satisfaction

One of the widely studied dependent variables in the literature on organizational behavior and personnel psychology is ‘job satisfaction’ [66]. Job satisfaction is defined as a “pleasurable or positive emotional state resulting from the appraisal of one’s job or job experiences” [67] (p. 1304). Job satisfaction is a global measure that involves an individual’s evaluation of the job situation and various aspects of the job [68,69,70]. In this research, the primary dependent variable is job satisfaction, which was studied in connection with the productivity of employees performing work from home.

3. Theoretical Background and Hypotheses Development

The happy-productive worker thesis (HPWT) [71,72] provides a theoretical background for this research. The basic tenet of HPWT is that employees who are happier or more satisfied with their jobs likely perform better in the jobs [73]. There is compelling evidence that the productivity–satisfaction relationship is bi-directional, as revealed by a meta-analysis conducted by [68], and that productivity is likely to lead to satisfaction [74,75,76,77]. Further, [72] demonstrated that the productivity–satisfaction relationship would be stronger if it is operationalized more broadly than job satisfaction. The employee well-being and work–life balance would boost the performance of employees on the job. When individuals can assess their satisfaction with work and life and maintain a balance between these two [34], it is more likely that WLB leads to job satisfaction. As documented by [77], employees maintaining WLB are more motivated and productive and less stressed, and an increased productivity results in higher levels of job satisfaction. This research uses the constructs productivity (WFHP), work stress, emotional exhaustion, and job satisfaction. The HPWT framework would help to explain the relationship between these variables [78,79].
Using the HPWT framework, we developed a double-layered moderated mediation model (Figure 1) to explain the relationship between work-from-home productivity and job satisfaction. We will now discuss each connection in the model. The conceptual model is presented in Figure 1.

3.1. WFHP and Job Satisfaction

Organizations implement WFH policies to give the employees more flexibility in performing work and to increase productivity [80,81,82]. Extant research documented several benefits of WFH, including an improved performance, reduced employee turnover, and increased job satisfaction [24,26,27]. Since the productivity–satisfaction relationship has been well established in the organizational behavior and industrial psychology literature [66,83], it is more likely that WFHP leads to job satisfaction. Though some scholars argue that the productivity/performance and satisfaction relationship is spurious and that a definite cause-and-effect is unknown [84,85], a majority of the studies evidenced that, when employees are productive, they are likely to be satisfied [57]. Therefore, we offer the following hypothesis based on abundant empirical evidence.
Hypothesis 1 (H1):
WFHP positively predicts job satisfaction.

3.2. WFHP and WLB

Ever since the concepts of telecommuting (or WFH) and flexible working hours have been introduced in organizations, there has been resounding evidence that employees are happy, productive, and maintain a healthy WLB [86,87,88]. Earlier, organizations used to give employees the option of using telecommuting or remote working on some days in a week so that they maintain a happy balance between their work and life. Now, considering the global pandemic, remote working has become a rule rather than an exception because of periodical lockdowns and social distancing practices worldwide [16,17]. As a flexible work arrangement, teleworking has been recognized as a viable solution in crisis situations, such as a global pandemic. Though, in developing countries such as India, WFH as a concept is relatively new and not regularly practiced, individuals and families are getting adjusted to the change in work culture. Scant research that focused on the relationship between WFHP and WLB indicates that employees are happy because they are able to protect their health from being affected by the deadly pandemic and also remain productive in order to get paid (instead of being laid off). The logic behind a positive association of WFHP with WLB stems from the fact that, when employees are more productive, the pressures from employers will be low and hence workers will be able to devote their time to meeting the demands from life. On the contrary, when the productivity is low, demands from employers will be high and thus will not allow the workers to focus on life-related demands. Anecdotal evidence reveals that employees who show high productivity in jobs are able to maintain a balance between their work and lives. Thus, based on the available empirical evidence before and during the global pandemic, we offer the following hypothesis:
Hypothesis 2 (H2):
WFHP positively predicts WLB.

3.3. WLB and Job Satisfaction

Though challenging, balancing work and life with individuals is indispensable to maintaining job and life satisfaction [89]. In a large study conducted by [37] on 1416 employees from seven distinct populations (Malaysian, Chinese, New Zealand Maori, New Zealand European, Spanish, French, and Italian), WLB is strongly and positively associated with job satisfaction and life satisfaction. Past researchers documented that happy individuals at home also tend to be satisfied at work [13,90]. In one of the recent studies conducted in Indonesia, researchers reported that WLB strongly and positively influenced job satisfaction [91]. Abundant research provided evidence that employees who are high on balancing life and work tend to derive more job satisfaction. The literature reviews of [10,40,42,92] advocated that WLB has positive outcomes: job satisfaction, job performance, organizational commitment, and life satisfaction. Based on available abundant empirical support, we offer the following hypothesis:
Hypothesis 3 (H3):
WLB positively predicts job satisfaction.

3.4. WLB as a Mediator

Organizational psychologists contend that employee productivity is related to hedonic and eudaimonic satisfaction [93,94]. However, most importantly, productivity indirectly affects satisfaction through employee well-being, which can be seen in terms of WLB. In other words, WFH enables the employees to attend to the demands stemming from non-work activities while meeting the employer’s demands. This WLB is essential for the well-being of individuals, which, in turn, results in job satisfaction. That is to say, WFHP may have both direct and indirect effects through WLB on job satisfaction.
When employees can distribute time to be spent on work and their personal lives, work–family conflicts will be low, and satisfaction will be high [24,95,96,97]. In this study, we contend that WFH increases productivity and performance. At the same time, it will enable the employees to balance the demands of life and work, contributing to satisfaction. Based on the logos and intuitive appeal, we offer the following exploratory hypothesis:
Hypothesis 4 (H4):
WLB mediates between WFHP and job satisfaction.

3.5. First Stage Moderation of Work Stress

Work stress, also known as job stress or occupational stress, occurs when there is a mismatch between an individual’s capabilities and requirements and resources for completing a task [98,99]. Work stress is related to the psychological and physiological reactions to the conditions that employees face in the workplace and has adverse effects on employee well-being and health [100]. Researchers report that some of the antecedents of work stress include job conflict, role conflict [57,58], non-collegiality, and increasing demands from the supervisors [59]. In addition, extant research reported that work stress is negatively related to the physical health of employees and WLB [14,61].
Direct effects of work stress on job satisfaction and commitment aside, in this study, we argue that work stress changes the strength of the relationship between WFHP and WLB. Since the negative relationship between work stress and WLB has been established in some studies [57,61], it would be interesting to study the role of work stress as a moderator. In a recent study conducted on 369 employees working in banking and high-tech industries in Taiwan, researchers found that long working hours resulted in work stress adversely affecting the WLB and satisfaction [101]. As some studies during the global pandemic found that work stress adversely affected the performance of employees [3,102], we contend that work stress would significantly alter the positive association between WFHP and WLB. Abundant literature on the stress and mental health of the healthcare and frontline workers during the global pandemic reveals adverse consequences on anxiety [103] and WLB [104]. This study investigates work stress as a boundary condition influencing the relationship between WFHP. Based on the above, we offer the following exploratory moderation hypothesis:
Hypothesis 2a (H2a):
Work stress moderates between WFTP and WLB such that low (high) level work stress strengthens (weakens) the relationship.

3.6. Second Stage Moderation of WPLE

As work interfering with life (WIL) and life interfering with work (LIW) are inherent phenomena, these effects on WLB largely depend on how the employees work towards enhancing both work and life. Work’s role in individuals’ lives plays a crucial role because work is the source of income. Hence, employees generally consider work as essential and derive energy and motivation by performing work satisfactorily. At the same time, individuals tend to enjoy life because the goal of work is to spend life happily. Therefore, the spillover from work to life and life to work should be understood in order to see the effect of spillover on WLB. When a job gives energy to life and vice versa, employees tend to move towards enhancing both work and life. In a recent study conducted among 283 employees working in the information technology sector in India, WLB positively predicted employee retention and psychological empowerment [105].
Employees differ in managing their work and life domains [106]. However, some can effectively navigate by employing strategies to combat imbalance by focusing on the energy that they obtain from work and life. For example, though there is resounding evidence that working long hours increases work stress, employees feel that it is necessary to complete the demanding tasks in order to succeed professionally. Therefore, they attempt to rationalize their work and maintain sustainable WLB, which is rewarding. In other words, individuals may implement strategies to enhance the work–life interface to counter the negative effect of work stress on WLB. Following this logic, it would be interesting to see the impact of WPLE (second moderator) on the relationship between WFTP and work stress (first moderator) influencing WLB. Thus, we offer the following exploratory hypothesis:
Hypothesis 2b (H2b):
WPLE moderates the relationship between WFTP and work stress to influence WLB.

3.7. Third Stage Moderation of Emotional Exhaustion

It was evidenced by previous researchers, as discussed in the earlier sections, that WLB was positively associated with job satisfaction [74,107]. From the viewpoint of employees, it is essential to see how emotional exhaustion, which is related to physical fatigue and a personal drain of energy, affects job satisfaction [43]. Extant research reported that an unreasonable workload and time pressure in completing work might result in emotional exhaustion [108]. Previous studies examined the adverse effects of emotional exhaustion on employee turnover, commitment, and performance [44,46,109]. In a recent study conducted on Norwegian school principals, [110] found that emotional exhaustion was negatively related to job satisfaction.
While the adverse effects of emotional exhaustion on performance and satisfaction were well documented [111,112], some scholars studied the moderating role of emotional exhaustion in the relationship between role ambiguity and workload and performance [51]. During the global pandemic, employees worldwide have undergone severe emotional exhaustion, as has been reported by several scholars [113,114]. Exploring the moderating role of emotional exhaustion in the WLB–job satisfaction relationship would be interesting.
Tying emotional exhaustion to the consequences of WLB is another study objective. Individuals differ in how they feel exhausted at work; hence, the effect of WLB on job satisfaction depends on the strength of the emotional exhaustion that they experience. Since emotional exhaustion is a part of work-related stress, the greater the emotional exhaustion employees feel because of overburdened work, the more likely the positive relationship between WLB and job satisfaction would be affected. Conversely, under lower emotional exhaustion, the effect of WLB on job satisfaction would be lesser when compared to higher levels of emotional exhaustion. Though previous studies did not dwell on the moderating effect of emotional exhaustion, we offer the following exploratory hypothesis:
Hypothesis 3a (H3a):
Emotional exhaustion moderates between WLB and job satisfaction such that lower (higher) levels of emotional exhaustion interacting with WLB would result in higher (lower) job satisfaction.

3.8. Fourth Stage Moderation of WPLE

Past researchers documented that the spillover between work and personal life plays an important role [115,116]. To counter the negative effect of emotional exhaustion, we contend that positive energy derived from work and life helps to alleviate the negative impact of emotional exhaustion on job satisfaction. Over a decade ago, [117] empirically demonstrated that work–family enrichment was a mediator in the relationship between WLB and job outcomes. Sometimes, organizational interventions such as supportive work culture, human resource policies promoting family-friendly relations, and social support at the workplace contribute to WPLE. Previous researchers have established a positive relationship between organizational interventions and work–family enrichment [62,118].
Though positive outcomes of WPLE are understandable, it would be interesting to explore how WPLE helps to alleviate the ill effects of emotional exhaustion on job satisfaction. To the best of our knowledge, the moderating role of WPLE in influencing individual outcomes in terms of job commitment, performance, and satisfaction has not been extensively studied by past researchers. In the context of employees working from the home because of the global pandemic, WPLE plays a vital role in smoothening the relationship between WLB and job satisfaction by reducing the negative effect of emotional exhaustion. The three-way interaction between WLB, emotional exhaustion, and WPLE is not simply an academic exercise, and we argue that it would benefit the individuals by enhancing job satisfaction. Based on the positive effects of WLB on job satisfaction, adverse effects of emotional exhaustion on job satisfaction, and positive influence of WPLE, we offer the following exploratory moderated moderated-mediation hypothesis:
Hypothesis 3b (H3b):
WPLE moderates the relationship between WLB and emotional exhaustion to influence job satisfaction.

4. Method

4.1. Sample

Since the focus of this research is to investigate the impact of productivity of employees working remotely, especially during the COVID-19 pandemic, the respondents consisted of employees working from home. In India, as in other countries worldwide, many organizations resorted to work from home (WFH) to avoid spreading the virus. Therefore, we preferred to use Google forms to collect the data because of social distancing norms and periodical lockdowns. This has been followed by several researchers collecting surveys during the global pandemic [119,120].
According to the sample size tables prescribed by [121], the minimum required sample size when the population is over 100,000 is 384. Further, [122] recommends that a sample size of over 500 is considered very good (100 = poor; 200 = fair; 300 = good; 500 = very good; 1000 or more = excellent). Considering the post-pandemic scenario, we contacted the respondents personally and asked them to fill out the surveys using Google forms to collect the data. It took nearly six months to collect completed surveys from 1158 respondents. Thus, the final analysis consisted of 1158 completed surveys, considered ‘excellent’.

4.2. Data Collection

The respondents were from the southern part of India. Four research students were involved in collecting data, and visited the houses of these respondents, following the COVID-19 restrictions of wearing face masks and taking necessary precautions. First, we contacted the supervisors of organizations and secured information about the employees. We made sure that the organizations asked the employees to work from home. We asked a qualifying question, “Did you work from home during the global pandemic?”, and suggested that they proceed only if the answer was ‘Yes’. We followed convenience sampling, as some respondents were not filling out surveys, and, during the global pandemic, it was challenging to have a probability-based sample. Many researchers use snowball sampling to collect data by submitting Google forms [16,123,124]. In order to have representativeness, we concentrated on obtaining as many respondents as possible. We tested for non-response bias by comparing the first 100 responses to the final 100 responses and found no statistically significant difference between these groups.

4.3. Demographic Profile

The respondents were 529 (45.68%) males and 629 (54.32%) females. As far as age is concerned, 286 (24.78%) were less than 25 years old, 598 (51.64%) were between 25–30 years old, 132 (11.4%) were between 30–40 years old, 93 (8.03%) were between 40 and 50 years old, and 49 (4.23%) were over 50 years old. Regarding education, 196 (16.93%) had a high school diploma, 129 (11.14%) had an undergraduate (bachelors) degree, 159 (13.73%) had a professional degree, 533 (46.03%) had a post-graduate (masters’ degree), and 141 (12.18%) had vocational education.
With regard to annual income, 235 (20.29%) had less than INR (Indian Rupees) 300,000 (USD 4000), 710 (61.31%) had income between INR 300,000–600,000 (USD 4000–USD 8000), 105 (9.07%) had income between INR 600,000–900,000 (USD 8000–USD 12000), 57 (4.92%) had income between INR 900,000–1,200,000 (USD 12,000–USD 16,000), and 51 (4.40%) had income over INR 1,200,000 (USD 16,000). As far as family type is concerned, 437 (37.74%) had a joint family system, and 721 (62.26%) had a nuclear family system. As far as the number of dependents is concerned, 308 (26.60%) had 2 dependents, 531 (45.85%) had 2–4 dependents, 223 (19.26%) had 4–6 dependents, and 96 (8.29%) had over 6 dependents.

4.4. Measures

This study used six constructs, and the measures were adapted from the previously tested and validated sources. A five-point Likert scale (‘5’ = strongly agree; ‘1’ = strongly disagree) was used to measure the constructs. The constructs, indicators, and sources of these constructs are presented in Table 1.
WFHP was measured with ten items adapted from [125]. The sample items read as: “I am very productive while working from home” and “I feel that the quality of the work I do during working from home is better”. The reliability coefficient of WFHP was 0.93.
WLB was measured with eight items adapted from [126,127,128]. The sample items read as: “I have an adequate time to spend with the family even if I work in the organization or at home” and “I have sufficient time to take care of my children even if I work in organization or at home”. The reliability coefficient Cronbach’s alpha of WLB was 0.91.
Work stress was measured with six items adapted from [129]. The sample items read as: “I am discouraged about my work” and “I feel many things are beyond my control and ability while working from home”. The reliability coefficient Cronbach’s alpha of work stress was 0.89.
Job satisfaction was measured with five items adapted from [130]. The sample items read as “I am satisfied with my current job”, and “I am satisfied with my current co-workers”. The reliability coefficient of job satisfaction was 0.88.
WPLE was measured with four items adapted from [96]. The sample item reads as: “Personal life gives me energy for my job” and the reliability coefficient of WPLE was 0.84.
Emotional exhaustion was measured with four items adapted from [131]. The sample item reads as: “I have felt emotionally drained from my work”, and the reliability coefficient of emotional exhaustion was 0.85.

5. Analysis and Findings

5.1. Measurement Model and Confirmatory Factor Analysis (CFA)

As [132] suggested, we followed a two-step approach to checking the measurement and structural models. We used the LISREL software of structural equation modeling (SEM) to check the measurement model and performed a confirmatory factor analysis (CFA). The results of CFA are presented in Table 1.
As shown in Table 1, the factor loadings for all of the indicators are over 0.70, except for one indicator for job satisfaction, which is 0.67. Since this is a well-established measure, we retained this indicator in the analysis. The reliability coefficient (Cronbach’s alpha) for all six constructs was over 0.70, and the composite reliability (CR) values were over 0.70. Further, the average variance-extracted (AVE) estimates for all of the six constructs was greater than 0.50, and these statistics vouch for the measures’ reliability, convergent validity, and internal consistency [133,134].

5.2. Convergent Validity, Discriminant Validity, and Common Method Bias

To establish discriminant validity, the square root of AVEs of the variables must exceed the correlations between the variables [135]. In this research, discriminant validity is said to be established when the square root of AVEs of the variables exceeds the correlations between the variables [136,137].
The correlation between WFHP and WLB is 0.56, and the square root values of AVE are 0.77 and 0.75, respectively. Similarly, the correlation between emotional exhaustion and WLPE is −0.60, and the square roots of AVE are 0.77 and 0.76, respectively. For all other variables, the correlations between the variables were less than the square root of AVEs, thus providing support for discriminant validity between the variables.
We also compared the baseline six-factor model with five other alternative models, and the results are presented in Table 2.
A comparison of measurement models reveals that the six-factor model fit the data well (χ2 = 2160.36; df = 650; χ2/df = 3.32; root mean square error of approximation (RMSEA) = 0.045; root mean square residual (RMR) = 0.042; standardized RMR = 0.030; comparative fit index (CFI) = 0.946; goodness of fit index (GFI) = 0.942). A comparison of five alternative models with the baseline model (see Table 2) shows that the goodness of fit indices (RMSEA < 0.08; CFI > 0.90; and other indices) provided a good fit of the model to the data [138].

5.3. Descriptive Statistics and Multicollinearity

The descriptive statistics consisting of means, standard deviations, and zero-order correlations are presented in Table 3.
An assessment of multicollinearity requires observing correlations between the variables because correlations exceeding 0.75 signify the presence of multicollinearity [139]. The highest correlation was −0.74 (between WLB and work stress) and the lowest correlation was −0.47 (between work stress and job satisfaction). As an additional check, we verified the variance inflation factor (VIF) and noted that the values were less than 5 for all of the variables, suggesting that multicollinearity is not a problem with the data [140].

5.4. Common Method Variance

We checked the common method variance (CMV) in three ways. First, we performed Harman’s single-factor test, as suggested by [141], and found that a single factor accounted for less than a 25% variance (less than 50%), signifying that CMV is not a problem with the data. Second, we compared the goodness of statistics of the one-factor model with the six-factor model (see Table 3) and found that the one-factor model was a poor fit of the data (χ2 = 9562.98; df= 665; χ2/df = 14.38; RMSEA = 0.107; RMR = 0.123; standardized RMR = 0.089; CFI = 0.682; GFI = 0.528). Third, we performed a latent-factor method wherein all of the indicators were loaded into a single factor each time and checked the VIF values and found that these values were less than 3.3. If the VIF values are more than 3.3 the data indicate the existence of pathological collinearity and the model is inferred to be contaminated by common method variance [142]. All three tests indicate that CMV is not a problem in this research.

5.5. Hypotheses Testing

The structural model was tested using [143] PROCESS macros. We used model #4 for testing H1–H4 and present the results in Table 4.
Step 1 from Table 4 shows that the regression coefficient of WFHP on job satisfaction was positive and significant (β = 0.619, t = 26.14; p < 0.001). The results based on 20,000 bootstrap samples show that the 95 percent bias-corrected confidence interval (BCCI) was 0.5726 (LLCI) and 0.6566 (ULCI). These results support H1 in that WFHP positively predicts job satisfaction.
Hypothesis 2 proposes that WFHP positively impacts WLB. The regression coefficient of WFHP on WLB (step 2, Table 4) was positive and significant (β = 0.519; t = 22.67; p < 0.001). The 95 percent (BCCI), i.e., LLCI and ULCI, was 0.4745 and 0.5644, respectively, thus supporting H2.
Hypothesis 3 posits that WLB positively predicts job satisfaction. Step 3 (Table 4) shows that the regression coefficient of WLB on job satisfaction was positive and significant (β = 0.236; t = 7.99; p <0.001), thus supporting H3: 0.1230 (0.5194 × 0.2369 = 0.1230).
Hypothesis 4 states that WLB mediates the relationship between WFHP and job satisfaction. The indirect effect (as shown in the bottom of the Table 4) was 0.1230 (Boot se = 0.0221; Boot LLCI = 0.0829; Boot ULCI = 0.1692) and, since zero was not contained in the Boot LLCI and Boot ULCI, the results support the mediation hypothesis (i.e., H4).
We also double checked the results by adding the direct effect (0.4961) and indirect effect (0.1230) to obtain the total effect (0.6191) (i.e., 0.4961 + 0.1230 = 0.6191). Further, the indirect effect is a product of the regression coefficient of WFHP on WLB (0.5194) and that of WLB on job satisfaction (0.2369) [i.e., (0.5194 × 0.2369 = 0.2369). The indirect effect of WFHP WLB job satisfaction was significant, thus corroborating support of H4.

5.5.1. Testing the Moderated and Moderated Mediation Hypotheses (H2a and H2b)

We used Model #11 of [143] PROCESS macros to check the two-way and three-way interactions and present the results in Table 5.
As shown in Table 5, the regression coefficient of the interaction term (WFHP × work stress) was significant (βWFHP × work stress= 0.1164; t = 2.2956; p < 0.05; Boot LLCI (0.0169); Boot ULCI (0.2160). These results support H2a. The two-way interaction is presented in Figure 2.
As shown in Figure 2, at high levels of work stress, WFHP is associated with low WLB. Further, the slope of the line representing high work stress is negative and the slope of the line representing low work stress is positive, thus supporting the hypothesis that work stress moderates the relationship between WFHP and work stress (H2a).
Hypothesis 2b posits that WPLE (second moderator) and work stress (first moderator) interact with WFHP to influence WLB. The regression coefficient of the three-way interaction was significant (β WHFP × work stress × WPLE =−0.047; t = −3.42; p < 0.01). The conditional effects of the WLB at values of moderators work stress and WPLE are presented at the bottom of Table 5. The indirect effect of WFHP on job satisfaction is mentioned in Table 6.
The index of moderated moderated-mediation from 20,000 bootstrap samples was −0.0111. Boot SE (0.0038), Boot LLCI (−0.0191), and BOOT UL (−0.0043) present significant values, thus supporting H2b.
The visual presentation of the three-way interaction is shown in two panels of Figure 3. The relationship between WFHP, work stress, and WLB at low levels of WPLE (in Panel A), and at high levels of WPLE (Panel B) is shown. When WPLE is low, an increase in work stress decreases WLB as the curve has a negative slope. On the contrary, when WPLE is high, even when at higher levels of work stress, WLB increases, as the curve is positively sloped. These results corroborate the support for H2b.

5.5.2. Testing the Second Moderated Moderated-Mediation Hypotheses (H3a and H3b)

In order to test H3a and H3b, we used model #18 of [143] PROCESS macros and present the results in Table 7.
Hypothesis 3a posits that emotional exhaustion moderates the relationship between WOB and job satisfaction. The regression coefficient of the two-way interaction term was significant (β WLB × emotional exhaustion = 0.131; t = 1.99; p < 0.05). The bootstrapping results were based on 20,000 bootstrap samples and 95% Boot LLCI (0.0019) and BOOT ULCI (0.2595), and since ‘zero’ was not contained in the lower and upper limits, H3b is supported. The visual presentation of the interaction effect is shown in Figure 4.
As shown in Figure 4, lower levels of emotional exhaustion interacting and low levels of WLB are associated with a higher job satisfaction than higher levels of emotional exhaustion and lower levels of WLB. Further, when WLB increases from ‘low’ to ‘high’, job satisfaction falls when emotional exhaustion is high, as the curve representing high emotional exhaustion is negative. On the contrary, high levels of WLB combined with lower level of emotional exhaustion results in a higher job satisfaction, as the curve representing a low level of exhaustion is positive. These results corroborate the support for H3a.
Hypothesis 3b is related to the interaction between WLB, emotional exhaustion (first moderator) and WPLE (second moderator) influencing job satisfaction. The regression coefficient of the three-way interaction was significant (β WLB × emotional exhaustion × WPLE = −0.049; t = −2.87; p < 0.01). Conditional effects of the job satisfaction at values of emotional exhaustion and WPLE are presented at the bottom of Table 7. The indirect effect of WFHP on job satisfaction is mentioned in Table 8.
The index of moderated moderated-mediation from 20,000 bootstrap samples was −0.0254, and Boot SE (0.0090), Boot LLCI (−0.0429), and BOOT ULCI (−0.0075) present significant values, thus supporting H2b.
The visual presentation of the three-way interaction is shown in two panels of Figure 5. The relationship between WLB, emotional exhaustion, and job satisfaction at a low level of WPLE is shown in Panel A, and at a high level of WPLE in Panel B. When WPLE is low, an increase in emotional exhaustion decreases job satisfaction as the curve has a negative slope. On the contrary, when WPLE is high, even lower levels of WLB and lower levels of emotional exhaustion result in a higher job satisfaction when compared to higher levels of emotional exhaustion. When we move to Panel B, all three curves, representing low, middle, and higher levels of emotional exhaustion, are positive when WPLE is high. These results corroborate the support for H3b.

6. Discussion

As many organizations worldwide have embarked on employing strategies of shifting the work mode from office to home, this study aims to investigate the relationship between employee productivity of WFH and job satisfaction. A conceptual model was developed, and hypotheses were tested using a large sample (N = 1158) in the context of a developing country, India. First, the psychometric properties of the survey instrument were tested, and the structural model was tested using [143] PROCESS macros. In this study, all of the hypotheses were supported.
First, the results revealed that WFHP is positively associated with job satisfaction (Hypothesis 1), which is consistent with findings from the literature [23,25,80]. This result has intuitive appeal because, when employees are productive, they are likely to obtain monetary rewards and extrinsic satisfaction, and dedication to work gives them intrinsic satisfaction. Second, the positive relationship between WFHP and WLB (Hypothesis 2) was supported in this study. Again, these results are in line with the previous studies in the literature [15,86]. When employees remain productive while working from home, the pressures from employers would be low, and employees will have adequate time to devote to family activities. On the contrary, when the productivity is low, constant pressure from the employers would not enable the employees to divert their energies and time for non-work activities.
Third, this study reported a positive relationship between WLB and job satisfaction (Hypothesis 3); the finding corroborates with previous studies [12,91]. When employees can maintain a happy balance between work and life, they will more likely be satisfied both at work and at home. The results also support the indirect effect of WFHP on job satisfaction through WLB (Hypothesis 4); the finding is consistent with logic and predictions from the previous studies [23,95,96].
Fourth, a key finding from this research is the moderating effect of work stress on the relationship between WFHP and WLB (Hypothesis 2a). Though there were no previous studies to vouch for this interaction effect, the negative impact of work stress on individual outcomes (e.g., performance) supports the moderation hypothesis [61,101]. Fifth, as predicted, WPLE reduced the negative effect of work stress on WLB (Hypothesis 2b) and found support in this research. When employees derive energy from non-work activities and use that energy at work, and, at the same time, energy derived from work is applied to non-work activities, contributing to the enhancement of both work and personal life, it helps to reduce the negative effect of work stress [105].
Sixth, this research supports that emotional exhaustion experienced by employees has a deleterious effect on job satisfaction (Hypothesis 3a). Previous researchers have investigated the moderating role of emotional exhaustion in other contexts [51,110,111,113], and, hence, the finding from this study is consistent with the literature.
Seventh, another critical contribution from this study is the role of WPLE in reducing the negative impact of emotional exhaustion on job satisfaction (Hypothesis 3b). Though no previous studies were available to vouch for this result, the relationship is expected as some other researchers have documented the positive effect of WPLE in different contexts [115,118].
This research, riding on the HPWT [72], documents that worker productivity is a precursor for WLB and job satisfaction. Further, despite the negative effect of job stress and emotional exhaustion, which were predicted to have a negative impact on job satisfaction and a positive effect on turnover, WPLE acts as an antidote and helps employees to achieve a higher performance and satisfaction.

6.1. Theoretical Implications

The present study contributes to both the literature on WLB and job satisfaction. First, to the best of our knowledge, the conceptual model developed and tested in this study is the first of its kind in the Indian context, making a significant contribution to the growing literature on WLB. It is essential to observe that, though this study is conducted in the context of the developing country, India, the results are consistent with the findings from research on WLB in developed countries [32,115].
Second, considering the global pandemic scenario, when WFH has become a rule rather than an exception, the study found that employees’ productivity plays a vital role in enhancing WLB and job satisfaction.
Third, the present study supported the relationship between productivity (performance) and satisfaction, which has been exhaustively studied for the last five decades, thus adding to the literature.
Fourth, the effect of WFHP on job satisfaction through balancing work and life (WLB as a mediator) contributes to the literature on WLB in a modest way.
Fifth, an essential contribution is the moderating effect of work stress in the relationship between WFHP and WLB, which previous researchers have not investigated. Most importantly, the role of WPLE (second moderator) in alleviating the negative effect of work stress (first moderator) in the relationship between WHFP and job satisfaction mediated through WLB makes a unique contribution to the literature. Furthermore, the moderated mediation hypothesis, denoting the three-way interaction between WFHP, work stress, and WPLE, is a novel idea explored in this research for the first time.
Sixth, as mentioned in the title, regarding the double-moderation model, we investigated the role of WFHP (second moderator) in influencing the relationship between WLB and emotional exhaustion (first moderator) in predicting job satisfaction. The three-way interaction between WLB, emotional exhaustion, and WPLE is another fundamental contribution of this research.
In summary, the two two-way interactions (WFHP × work stress; WLB × emotional exhaustion) and two three-way interactions (WFHP × work stress × WPLE; WLB × emotional exhaustion × WPLE) provide a new dimension of research that makes a substantial contribution to the literature on organizational behavior and industrial psychology. Most importantly, the present study shows the benefits of WPLE in reducing the negative impact of work stress and emotional exhaustion in the global pandemic environment.
Riding on the HPWT framework, the results from this research extend the theoretical base of productivity relationship by adding the work–life balance as a significant contributor to satisfaction and performance. Though the notion of a satisfied worker need not be a productive worker and, vice versa, was in academic circles for some time, the latest scholars have a fresh look at this theory by identifying the bi-directional nature of satisfaction and performance [66,74,75,76]. Furthermore, the double-layered moderated mediation also adds to the approach to stress and emotional exhaustion by providing empirical evidence that supports alleviating the impact of stress and emotional exhaustion through work and personal life enhancement.

6.2. Practical Implications

The findings from this study have several implications for managers in organizations where employees are performing duties remotely. First, as the study documented, employee productivity plays a vital role in maintaining WLB; the managers must provide information about employee performance. As expected, a happy balance of work and life leads to job satisfaction; employees must devote time between work and home appropriately.
Second, as several researchers found that work stress has escalated because of the sudden shift from on-site to off-site (remote), which adversely affected WLB, employees need to focus on the strategies to enhance personal life and work (WPLE). To reduce the negative effect of stress on job satisfaction and WLB, managers need to see that employees are not under severe work pressure. This is because, in the global pandemic environment, workers already undergo the psychological stress of maintaining health while protecting themselves and their families from the virus.
The third important implication of this study is the role of WLB as a mediator in the relationship between WFHP and job satisfaction. As WLB is a precursor to job satisfaction, managers need to focus on the employees who cannot reconcile the demands from work and home and take corrective steps. If the resources required to complete given jobs assigned to the employees are inadequate, managers need to grant them resources. Further overburdening the employees with work to compensate for the accrued loss because of lockdowns and closure may result in emotional exhaustion that may adversely affect productivity and job satisfaction. The managers are, therefore, advised to give work that employees can shoulder.
Fourth, the study suggests that the employers conduct periodic surveys to see how the employees perceive the work pressure and whether they can maintain a balance between work and life. Employee satisfaction surveys can help the managers to identify the problems associated with work and life so that they can take appropriate measures to restore WLB. In summary, this study underscores the importance of maintaining WPLE in alleviating the ill effects of emotional exhaustion and work stress on job satisfaction and WLB.

6.3. Limitations

As with any social science research, this study has some limitations. This study was conducted in a global-pandemic-induced environment where employees work from home. Although the concept of WFH was in vogue two decades ago when employees had the option of remote working some days a week (especially in developed countries such as the USA, UK, and Australia), organizations worldwide have resorted to WFH during the pandemic, which is continuing. Even after the availability of vaccination, many employees continue to WFH for safety, and many employers continue encouraging the workers to work remotely. The conceptual model developed was focused on the productivity of workers engaging in WFH. When the situation becomes near normal, the dynamics of WFH and on-site productivity may be slightly different. Working in physical locations in some organizations is mandatory; hence, this study may not apply to organizations working on-site.
The second major limitation is that the study is conducted from the perspective of a developing country (i.e., India). The results are therefore generalizable across many developing countries. However, since the work culture, administrative apparatus, and technological infrastructure in developing countries are different, the results should be interpreted carefully when we apply these to developed countries.
Third, though the larger sample size in this study is a positive point, focusing on a variety of industries (technology, education, manufacturing, and services) in this study may be a limitation because the nature of work in these industries is different. However, the results are generalizable to the extent where the employees find similar problems (e.g., network).

6.4. Future Research

This study offers several avenues for future research. First, in addition to the variables in this research, future studies may involve the influence of work–family conflict (WFC) and family–work conflict (FWC) on WLB and job satisfaction. Second, work-to-family enrichment (WFE) and family-to-work enrichment (FEW), as suggested by [144], can be included in future studies on WLB and job satisfaction. Third, as organizational citizenship behavior (OCB) plays a vital role in individual and corporate performance, it would be of interest to future researchers to include OCB in affecting the WLB–job-satisfaction relationship. Fourth, a cross-country comparison of developed versus developing countries may help to identify the cultural differences in influencing the relationships between the variables in this study. Finally, future researchers may be encouraged to conduct longitudinal studies to see how the dynamics of the interaction of variables change over time.

7. Conclusions

In this research, we attempted to underscore the border conditions of alleviating the ill effects of work stress and emotional exhaustion in the global-pandemic-induced environment worldwide. As developed in this study, a double-layered moderated mediation model emphasizes the importance of maintaining work–life enrichment in order to counter emotional exhaustion and work stress. Further, this study highlights the importance of WLB and sustaining workers’ productivity at home to enhance job satisfaction. However, the pandemic is slowly becoming endemic before the organizations come to a near-normal situation. When the employees return to the usual way of functioning, the study provides direction to both the employer and employees on what to carry out to maintain WLB. It is concluded that, in addition to being productive, how employees perceive their work and family lives is vital in enhancing job satisfaction. Even after the restoration of normalcy, the research on WLB continues to be on the agenda of future researchers.

Author Contributions

Conceptualization, K.B.K. and A.A.; methodology, B.G.; software, S.P.; validation, K.B.K., A.A. and B.G.; formal analysis, resources, S.P.; investigation, data curation, A.A., writing—original draft preparation, S.P.; writing—review and editing, K.B.K.; visualization, B.G.; supervision, K.B.K.; project administration, S.P. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

This study did not require ethics approval. However, permission was obtained from head of the institution St. Joseph’s College of Arts and Sciences (Autonomous), Cuddalore, Tamil Nadu, India.

Informed Consent Statement

Informed consent was obtained from all subjects involved in this study.

Data Availability Statement

Not applicable.

Acknowledgments

We thank the Academic Editor, Janice Jia, and the anonymous reviewers for their constructive suggestions in the earlier versions of the manuscript.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Kumar, P.; Kumar, N.; Aggarwal, P.; Yeap, J.A. Working in lockdown: The relationship between COVID-19 induced work stressors, job performance, distress, and life satisfaction. Curr. Psychol. 2021, 40, 6308–6323. [Google Scholar] [CrossRef] [PubMed]
  2. Pinnington, A.H.; Ayoko, O.B. Managing physical and virtual work environments during the COVID-19 pandemic: Improving employee well-being and achieving mutual gains. J. Manag. Organ. 2021, 27, 993–1002. [Google Scholar] [CrossRef]
  3. Saleem, F.; Malik, M.I.; Qureshi, S.S. Work Stress Hampering Employee Performance During COVID-19: Is Safety Culture Needed? Front. Psychol. 2021, 12, 655839. [Google Scholar] [CrossRef] [PubMed]
  4. Baloran, E.T. Knowledge, Attitudes, Anxiety, and Coping Strategies of Students during COVID-19 Pandemic. J. Loss Trauma 2020, 25, 635–642. [Google Scholar] [CrossRef]
  5. Deng, S.; Wang, W.; Xie, P.; Chao, Y.; Zhu, J. Perceived Severity of COVID-19 and Post-pandemic Consumption Willingness: The Roles of Boredom and Sensation-Seeking. Front. Psychol. 2020, 11, 567784. [Google Scholar] [CrossRef]
  6. Galea, C.; Houkes, I.; De Rijk, A. An insider’s point of view: How a system of flexible working hours helps employees to strike a proper balance between work and personal life. Int. J. Hum. Resour. Manag. 2014, 25, 1090–1111. [Google Scholar] [CrossRef]
  7. Hakanen, J.J.; Peeters, M.C.W.; Perhoniemi, R. Enrichment processes and gain spirals at work and at home: A 3-year cross-lagged panel study. J. Occup. Organ. Psychol. 2011, 84, 8–30. [Google Scholar] [CrossRef]
  8. Lee, D.J.; Grace, B.Y.; Sirgy, M.J.; Singhapakdi, A.; Lucianetti, L. The effects of explicit and implicit ethics institutionalization on employee life satisfaction and happiness: The mediating effects of employee experiences in work life and moderating effects of work-family life conflict. J. Bus. Ethics 2018, 147, 855–874. [Google Scholar]
  9. O’Driscoll, M.; Ilgen, D.R. Time Devoted to job and off-job activities, Interrole conflict and affective Experiences. J. Appl. Psychol. 1992, 77, 272–279. [Google Scholar] [CrossRef]
  10. Yadav, V.; Sharma, H. Family-friendly policies, supervisor support, and job satisfaction: Mediating effect of work-family conflict. Vilakshan—XIMB J. Manag. 2021. [Google Scholar] [CrossRef]
  11. Golden, L. Limited access: Disparities in flexible work schedules and work-at-home. J. Fam. Econ. Issues 2008, 29, 86–109. [Google Scholar]
  12. Kitagawa, R.; Kuroda, S.; Okudaira, H.; Owan, H. Working from home and productivity under the COVID-19 pandemic: Using survey data of four manufacturing firms. PLoS ONE 2021, 16, e0261761. [Google Scholar] [CrossRef]
  13. Kurland, N.B.; Bailey, D.E. Telework: The advantages and challenges of working here, there, anywhere, and anytime. Organ. Dyn. 1999, 28, 53–68. [Google Scholar] [CrossRef]
  14. Aruldoss, A.; Kowalski, K.B.; Travis, M.L.; Parayitam, S. The relationship between work—Life balance and job satisfaction: Moderating role of training and development and work environment. J. Adv. Manag. Res. 2022, 18, 240–271. [Google Scholar] [CrossRef]
  15. Thilagavathy, S.; Geetha, S.N. Work-life balance—A systematic review. Vilakshan—XIMB J. Manag. 2021. [Google Scholar] [CrossRef]
  16. Irshad, H.; Umar, K.M.; Rehmani, M.; Khokhar, M.N.; Anwar, N.; Qaiser, A.; Naveed, R.T. Impact of Work-From-Home Human Resource Practices on the Performance of Online Teaching Faculty During Coronavirus Disease 2019. Front. Psychol. 2021, 12, 740644. [Google Scholar] [CrossRef]
  17. Lonska, J.; Mietule, I.; Litavniece, L.; Arbidane, I.; Vanadzins, I.; Matisane, L.; Paegle, L. Work–Life Balance of the Employed Population During the Emergency Situation of COVID-19 in Latvia. Front. Psychol. 2021, 12, 682459. [Google Scholar] [CrossRef]
  18. Çoban, S. Gender and telework: Work and family experiences of teleworking professional, middle-class, married women with children during the COVID-19 pandemic in Turkey. Gend. Work. Organ. 2021, 29, 241–255. [Google Scholar] [CrossRef]
  19. Rana, S.; Singh, A.K.; Singhania, S.; Verma, S.; Haque, M.M. Revisiting the factors influencing teaching choice framework: Exploring what fits with virtual teaching. Glob. Bus. Rev. 2021. [Google Scholar] [CrossRef]
  20. Qiu, J.; Shen, B.; Zhao, M.; Wang, Z.; Xie, B.; Xu, Y. A nationwide survey of psychological distress among Chinese people in the COVID-19 epidemic: Implications and policy recommendations. Gen. Psychiatry 2020, 33, e100213. [Google Scholar] [CrossRef]
  21. Ram, N.; Khoso, I.; Shah, A.A.; Chandio, F.R.; Shaikih, F.M. Role conflict and role ambiguity as factors in work stress among managers: A case study of manufacturing sector in Pakistan. Asian Soc. Sci. 2011, 7, 113–118. [Google Scholar] [CrossRef]
  22. Sivagnanam, P.; Pillai, A.R.; Elangovan, R.; Parayitam, S. Knowledge management process, infrastructure, and system quality as resilient strategies to respond to COVID-19 pandemic challenges: Evidence from higher educational institutions in India. Knowl. Process Manag. 2022, 1–22. [Google Scholar] [CrossRef]
  23. Zieba, M.; Bongiovanni, I. Knowledge management and knowledge security—Building an integrated framework in the light of COVID-19. Knowl. Process Manag. 2022, 1–11, 121–131. [Google Scholar] [CrossRef]
  24. Baker, E.; Avery, G.C.; Crawford, J. Satisfaction and perceived productivity when professionals work from home. Res. Pract. Hum. Resour. Manag. 2007, 15, 37–62. [Google Scholar]
  25. Frolick, M.N.; Wilkes, R.B.; Urwiler, R. Telecommuting as a workplace alternative: An identification of significant factors in American firms’ determination of work-at-home policies. J. Strateg. Inf. Syst. 1993, 2, 206–220. [Google Scholar] [CrossRef]
  26. Singh, R.; Kumar, M.A.; Varghese, S.T. Impact of working remotely on productivity and professionalism. J. Bus. Manag. 2017, 19, 17–19. [Google Scholar]
  27. Lim, V.K.G.; Teo, T.S.H. To work or not to work at home-An empirical investigation of factors affecting attitudes towards teleworking. J. Manag. Psychol. 2000, 15, 560–586. [Google Scholar] [CrossRef]
  28. Lakshmi, V.; Nigam, R.; Mishra, S. Telecommuting—A key driver to work-life balance and productivity. IOSR J. Bus. Manag. 2017, 19, 20–23. [Google Scholar] [CrossRef]
  29. Kalliath, T.; Brough, P. Work-life balance: A review of the meaning of the balance construct. J. Manag. Organ. 2008, 14, 323–327. [Google Scholar] [CrossRef]
  30. Powell, G.N.; Greenhaus, J.H.; Allen, T.D.; Johnson, R.E. Introduction to special topic forum: Advancing and expanding work-life theory from multiple perspectives. Acad. Manag. Rev. 2019, 44, 54–71. [Google Scholar] [CrossRef]
  31. Zheng, C.; Kashi, K.; Fan, D.; Molineux, J.; Ee, M.S. Impact of individual coping strategies and organizational work-life balance programs on Australian employee well-being. Int. J. Hum. Resour. Manag. 2016, 27, 501–526. [Google Scholar] [CrossRef]
  32. Haar, J.M.; Sune, A.; Russo, M.; Ollier-Malaterre, A. A cross-national study on the antecedents of work-life balance from the fit and balance perspective. Soc. Indic. Res. 2019, 142, 261–282. [Google Scholar] [CrossRef]
  33. Gragnano, A.; Simbula, S.; Miglioretti, M. Work-life balance: Weighing the importance of work-family and work-health balance. Int. J. Environ. Res. Public Health 2020, 17, 907. [Google Scholar] [CrossRef] [PubMed]
  34. Greenhaus, J.; Allen, T. Work–family balance: A review and extension of the literature. In Handbook of Occupational Health Psychology; Quick, J.C., Tetrick, L.E., Eds.; American Psychological Association: Washington, DC, USA, 2011. [Google Scholar]
  35. Guest, D.E. Perspectives on the study of work–life balance. Soc. Sci. Inf. 2002, 41, 255–279. [Google Scholar] [CrossRef]
  36. Kossek, E.E.; Baltes, B.B.; Matthews, R.A. How work-family research can finally have an impact in the workplace. Ind. Organ. Psychol. Perspect. Sci. Pract. 2011, 4, 352–369. [Google Scholar] [CrossRef]
  37. Haar, J.M.; Russo, M.; Suñe, A.; Ollier-Malaterre, A. Outcomes of work–life balance on job satisfaction, life satisfaction and mental health: A study across seven cultures. J. Vocat. Behav. 2014, 85, 361–373. [Google Scholar] [CrossRef]
  38. Maertz, C.P.; Boyar, S.L. Work-family conflict, enrichment, and balance under ‘levels’and ‘episode’ approaches. J. Manag. 2011, 37, 68–98. [Google Scholar]
  39. Emre, O.; De Spiegeleare, S. The role of work-life balance and autonomy in the relationship between commuting, employee commitment, and well-being. Int. J. Hum. Resour. Manag. 2019, 32, 1–25. [Google Scholar] [CrossRef]
  40. Singh, S.; Singh, S.K.; Srivastava, S. Relational exploration of the effect of the work-related scheme on job satisfaction. Vilakshan—XIMB J. Manag. 2020, 17, 111–128. [Google Scholar] [CrossRef]
  41. Mushfiqur, R.; Mordi, C.; Oruh, E.S.; Nwagbara, U.; Mordi, T.; Turner, I.M. The impacts of work-life balance (WLB) challenges on social sustainability: The experience of Nigerian female medical doctors. Empl. Relat. 2018, 40, 868–888. [Google Scholar] [CrossRef]
  42. Jackson, L.T.; Fransman, E.I. Flexi work, financial well-being, work-life balance and their effects on subjective experiences of productivity and job satisfaction of females in an institution of higher learning. S. Afr. J. Econ. Manag. Sci. 2018, 21, 1–13. [Google Scholar] [CrossRef]
  43. Maslach, C.; Jackson, S. The measurement of experienced burnout. J. Organ. Behav. 1981, 2, 99–113. [Google Scholar] [CrossRef]
  44. Cordes, C.L.; Dougherty, T.W. A review and an integration of research on job burnout. Acad. Manag. Rev. 1993, 18, 621–656. [Google Scholar] [CrossRef]
  45. Demerouti, E.; Bakker, A.B.; Nachreiner, F.; Schaufeli, W.B. The job demands-resources model of burnout. J. Appl. Psychol. 2001, 86, 499–512. [Google Scholar] [CrossRef]
  46. Halbesleben, J.R.B.; Bowler, W.M. Emotional exhaustion and job performance: The mediating role of motivation. J. Appl. Psychol. 2007, 92, 93–106. [Google Scholar] [CrossRef]
  47. Pehlivanoglu, M.Ç.; Civelek, M.E. The effects of emotional exhaustion and depersonalization on personal accomplishment in pharmaceutical industry. OPUS–Int. J. Soc. Res. 2019, 11, 2071–2086. [Google Scholar] [CrossRef]
  48. Alarcon, G.M. A meta-analysis of burnout with job demands, resources, and attitudes. J. Vocat. Behav. 2011, 79, 549–613. [Google Scholar] [CrossRef]
  49. Bowling, N.A.; Alarcon, G.M.; Bragg, C.B.; Hartman, M.J. A meta-analytic examination of the potential correlates and consequences of workload. Work Stress 2015, 29, 95–113. [Google Scholar] [CrossRef]
  50. D’Souza, G.S.; Irudayasamy, F.G.; Parayitam, S. Emotional exhaustion, emotional intelligence and task performance of employees in educational institutions during COVID-19 global pandemic: A moderated-mediation model. Pers. Rev. 2022. [Google Scholar] [CrossRef]
  51. Parayitam, S.; Usman, S.A.; Namasivaayam, R.R.; Naina, M.S. Knowledge management and emotional exhaustion as moderators in the relationship between role conflict and organizational performance: Evidence from India. J. Knowl. Manag. 2021, 25, 1456–1485. [Google Scholar] [CrossRef]
  52. Jex, S.M.; Beehr, T.A. Emerging theoretical and methodological issues in the study of work-related stress. Res. Pers. Hum. Resour. Manag. 1991, 9, l–365. [Google Scholar]
  53. Rodríguez, I.; Kozusznik, M.W.; Peiró, J.M.; Tordera, N. Individual, co-active and collective coping and organizational stress: A longitudinal study. Eur. Manag. J. 2019, 37, 86–98. [Google Scholar] [CrossRef]
  54. Yunita, P.I.; Saputra, I.G.N.W.H. Millennial generation in accepting mutations: Impact on work stress and employee performance. Int. J. Soc. Sci. Humanit. 2019, 3, 102–114. [Google Scholar] [CrossRef]
  55. Ayoko, O.B.; Ashkanasy, N.M. Guest Editorial: The physical environment of organizational behavior (OB). J. Manag. Psychol. 2021, 36, 301–309. [Google Scholar] [CrossRef]
  56. McCoy, J.M.; Evans, G.W. Physical work environment. In Handbook of Work Stress; Barling, J., Kelloway, E.K., Frone, M.R., Eds.; SAGE: Thousand Oaks, CA, USA, 2005; pp. 219–245. [Google Scholar]
  57. Aruldoss, A.; Kowalski, K.B.; Parayitam, S. The relationship between quality of work life and work life balance mediating role of job stress, job satisfaction and job commitment: Evidence from India. J. Adv. Manag. Res. 2021, 18, 36–62. [Google Scholar] [CrossRef]
  58. Schuler, R.S. An integrated transactional process model of stress in organizations. J. Occup. Behav. 1982, 3, 5–19. [Google Scholar] [CrossRef]
  59. Behr, T.A.; Glazer, S. A cultural perspective of social support in relation to occupational stress. In Research in Occupational Stress and Wellbeing; Perrewe, P.L., Ganster, D.C., Eds.; Volume 1: Exploring Theoretical Mechanisms and Perspectives; JAI Press: New York, NY, USA, 2001; pp. 97–142. [Google Scholar]
  60. Bell, A.; Rajendran, D.; Theiler, S. Job Stress, Wellbeing, Work-Life Balance and Work-Life Conflict among Australian Academics. Electron. J. Appl. Psychol. 2012, 8, 25–37. [Google Scholar] [CrossRef]
  61. Zaheer, A.; Ul Islam, J.; Darakhshan, N. Occupational stress and work life balance: A study of female faculties in central universities in Delhi, India. J. Hum. Resour. Manag. 2015, 4, 1–5. [Google Scholar] [CrossRef]
  62. Brough, P.; Hassan, Z.; O’Driscoll, M. Work-Life Enrichment. In Psychosocial Factors at Work in the Asia Pacific; Dollard, M., Shimazu, A., Bin Nordin, R., Brough, P., Tuckey, M., Eds.; Springer: Dordrecht, The Netherlands, 2014. [Google Scholar] [CrossRef]
  63. Allis, P.; O’Driscoll, M. Positive effects of nonwork-to-work facilitation on well-being in work, family and personal domains. J. Manag. Psychol. 2008, 23, 273–291. [Google Scholar] [CrossRef]
  64. Brough, P.; O’Driscoll, M.; Kalliath, T. The ability of ‘family friendly’ organisational resources to predict work-family conflict and job and family satisfaction. Stress Health 2005, 21, 223–234. [Google Scholar] [CrossRef]
  65. Grzywacz, J.G.; Marks, N.F. Reconceptualizing the work–family interface: An ecological perspective on the correlates of positive and negative spillover between work and family. J. Occup. Health Psychol. 2000, 5, 111–126. [Google Scholar] [CrossRef] [PubMed]
  66. Judge, T.A.; Thoresen, C.J.; Bono, J.E.; Patton, G.K. The job satisfaction-job performance relationship: A qualitative and quantitative review. Psychol. Bull. 2001, 127, 376–407. [Google Scholar] [CrossRef] [PubMed]
  67. Locke, E.A. The nature and causes of job satisfaction. In Handbook of Industrial and Organizational Psychology; Dunette, M., Ed.; Rand-McNally: Chicago, IL, USA, 1976; pp. 1297–1349. [Google Scholar]
  68. Baeriswyl, S.; Krause, A.; Schwaninger, A. Emotional exhaustion and job satisfaction in Airport security officers—Work-family conflict as mediator in the job demands–Resources model. Front. Psychol. 2016, 7, 1–13. [Google Scholar] [CrossRef] [PubMed]
  69. Weiss, E.M. Deconstructing job satisfaction: Separating evaluations, beliefs and affective experiences. Hum. Resour. Manag. Rev. 2002, 12, 173–194. [Google Scholar] [CrossRef]
  70. Zembylas, M.; Papanastasiou, E. Job satisfaction among school teachers in Cypros. J. Educ. Adm. 2006, 42, 357–374. [Google Scholar] [CrossRef]
  71. Wright, T.A.; Staw, B.M. Affect and favourable work outcomes: Two longitudinal tests of the happy-productive worker thesis. J. Organ. Behav. 1999, 20, 1–23. [Google Scholar] [CrossRef]
  72. Wright, T.A.; Cropanzano, R. The role of psychological well-being in job performance: A fresh look at an age old quest. Organ. Dyn. 2004, 33, 338–351. [Google Scholar] [CrossRef]
  73. Madjar, N.; Oldham, G.R.; Pratt, M.G. There’s no place like home? The contributions of work and non-work creativity support to employee’s creative performance. Acad. Manag. J. 2002, 45, 757–767. [Google Scholar]
  74. Shaffer, M.A.; Reiche, B.S.; Dimitrova, M.; Lazarova, M.; Chen, S.; Westman, M.; Wurtz, O. Work and family role adjustment of different types of global professionals: Scale development and validation. J. Int. Bus. Stud. 2016, 47, 113–139. [Google Scholar] [CrossRef]
  75. Obeidat, A.M.; Abualoush, S.; Irtaimeh, H.; Khaddam, A.A.; Bataineh, K. The role of organizational culture in enhancing the human capital applied study on the social security corporation. Int. J. Learn. Intellect. Cap. 2018, 15, 258–276. [Google Scholar] [CrossRef]
  76. Zelenski, J.M.; Murphy, S.A.; Jenkins, D.A. The Happy-Productive Worker Thesis Revisited. J. Happiness Stud. 2008, 9, 521–537. [Google Scholar] [CrossRef]
  77. Byron, K. A meta-analytic review of work-family conflict and its antecedents. J. Vocat. Behav. 2005, 62, 169–198. [Google Scholar] [CrossRef]
  78. Wright, T.A.; Cropanzano, R. Emotional exhaustion as a predictor of job performance and voluntary turnover. J. Appl. Psychol. 1998, 83, 486–493. [Google Scholar] [CrossRef]
  79. Wright, T.A.; Cropanzano, R.; Meyer, D.G. State and trait correlates of job performance: A tale of two perspectives. J. Bus. Psychol. 2004, 18, 365–383. [Google Scholar] [CrossRef]
  80. Bao, L.; Li, T.; Xia, X.; Zhu, K.; Li, H.; Yang, X. How does working from home affect developer productivity?—A case study of baidu during COVID-19 pandemic. Sci. China Inf. Sci. 2020, 2, 1–17. [Google Scholar] [CrossRef]
  81. Bloom, N. To raise productivity, let more employees work from home. Harv. Bus. Rev. 2014, 2, 1–5. [Google Scholar]
  82. Chidambaram, V.; Ramachandran, G.; Chandrasekar, T.; Parayitam, S. Relationship between stress due to COVID-19 pandemic, telecommuting, work orientation and work engagement: Evidence from India. J. Gen. Man. 2022, 1–14. [Google Scholar] [CrossRef]
  83. Iaffaldano, M.T.; Muchinsky, P.M. Job satisfaction and job performance: A meta-analysis. Psychol. Bull. 1985, 97, 251–273. [Google Scholar] [CrossRef]
  84. Bowling, N.A. Is the job satisfaction-job performance relationship spurious? A meta-analytic examination. J. Vocat. Behav. 2007, 71, 167–185. [Google Scholar] [CrossRef]
  85. Peiro, J.M.; Kozusznik, M.W.; Rodríguez-Molina, I.; Tordera, N. The Happy-Productive Worker Model and Beyond: Patterns of Wellbeing and Performance at Work. Int. J. Environ. Res. Public Health 2019, 16, 479. [Google Scholar] [CrossRef]
  86. Darcy, C.; Mccarthy, A.; Hill, J.; Grady, G. Work–life balance: One size fits all? An exploratory analysis of the differential effects of career stage. Eur. Manag. J. 2012, 30, 111–120. [Google Scholar] [CrossRef]
  87. Darko-Asumadu, D.A.; Sika-Bright, S.; Osei-Tutu, B. The influence of work-life balance on employees’ commitment among bankers in Accra, Ghana. Afr. J. Soc. Work. 2018, 8, 47–55. [Google Scholar]
  88. Dolcos, S.M.; Daley, D. Work pressure, workplace social resources, and work–family conflict: The tale of two sectors. Int. J. Stress Manag. 2009, 16, 291–311. [Google Scholar] [CrossRef]
  89. Ferguson, M.; Carlson, D.; Zivnuska, S.; Whitten, D. Support at work and home: The path to satisfaction through balance. J. Vocat. Behav. 2012, 80, 299–307. [Google Scholar] [CrossRef]
  90. Koubova, V.; Buchko, A.A. Life-work balance: Emotional intelligence as a crucial component of achieving both personal life and work performance. Manag. Res. Rev. 2013, 36, 700–719. [Google Scholar] [CrossRef]
  91. Irawanto, D.W.; Novianti, K.R.; Roz, K. Work from home: Measuring satisfaction between work–life balance and work stress during the COVID-19 pandemic in Indonesia. Economies 2021, 9, 96. [Google Scholar] [CrossRef]
  92. Sirgy, M.; Lee, D.J. Work-Life Balance: An Integrative Review. Appl. Res. Qual. Life 2018, 13, 229–254. [Google Scholar] [CrossRef]
  93. Ryan, R.M.; Deci, E.L. On Happiness and Human Potentials: A Review of Research on Hedonic and Eudaimonic Well-Being. Annu. Rev. Psychol. 2001, 52, 141–166. [Google Scholar] [CrossRef] [PubMed]
  94. Wayne, H.L.; Knight, T.; Richardson, B. An Exploration of the Well-Being benefits of Hedonic and Eudaimonic Behaviour. J. Posit. Psychol. 2013, 8, 322–336. [Google Scholar] [CrossRef]
  95. Abioro, M.A.; Oladejo, D.; Ashogbon, F. Work life balance practices and employees productivity in the Nigerian university system. Crawford J. Bus. Soc. Sci. 2018, 13, 49–59. [Google Scholar]
  96. Hayman, J. Psychometric Assessment of an Instrument Designed to Measure Work Life Balance. Res. Pract. Hum. Resour. Manag. 2005, 13, 85–91. [Google Scholar]
  97. Lazar, I.; Osoian, C.; Ratiu, P. The role of work-life balance practices in order to improve organizational performance. Eur. Res. Stud. J. 2010, 13, 201–214. [Google Scholar] [CrossRef]
  98. Cooper, C.L.; Marshall, J. Occupational sources of stress: A review of the literature relating to coronary heart disease and mental ill health. J. Occup. Psychol. 1976, 49, 11–28. [Google Scholar] [CrossRef]
  99. Frone, M.R. Intolerance of ambiguity as a moderator of the occupational role stress—Strain relationship: A meta-analysis. J. Organ. Behav. 1990, 11, 309–320. [Google Scholar] [CrossRef]
  100. Williams, L.J.; Hazer, J.T. Antecedents and consequences of satisfaction and commitment in turnover models: A re-analysis using latent variable structural equation methods. J. Appl. Psychol. 1986, 72, 219–231. [Google Scholar] [CrossRef]
  101. Hsu, Y.Y.; Bai, C.H.; Yang, C.M.; Huang, Y.C.; Lin, T.T.; Lin, C.H. Long hours’ effects on work-life balance and satisfaction. BioMed Res. Int. 2019, 8, 5046934. [Google Scholar] [CrossRef] [PubMed]
  102. Arslan, G.; Yıldırım, M.; Tanhan, A.; Bulu, S.M.; Allen, K.A. Coronavirus stress, optimism-pessimism, psychological inflexibility, and psychological health: Psychometric properties of the Coronavirus stress measure. Int. J. Ment. Health Addict. 2020, 1–17. [Google Scholar] [CrossRef]
  103. Galbraith, N.; Boyda, D.; McFeeters, D.; Hassan, T. The mental health of doctors during the COVID-19 pandemic. BJPsych Bull. 2021, 45, 93–97. [Google Scholar] [CrossRef]
  104. Magnavita, N.; Tripepi, G.; Di Prinzio, R.R. Symptoms in health care workers during the COVID-19 epidemic. A cross-sectional survey. Int. J. Environ. Res. Public Health 2020, 17, 5218. [Google Scholar] [CrossRef]
  105. Panda, A.; Sahoo, C.K. Work–life balance, retention of professionals and psychological empowerment: An empirical validation. Eur. J. Manag. Stud. 2021, 26, 103–123. [Google Scholar] [CrossRef]
  106. Kreiner, G.E.; Hollensbe, E.C.; Sheep, M.L. On the edge of identity: Boundary dynamics at the interface of individual and organizational identities. Hum. Relat. 2006, 59, 1315–1341. [Google Scholar] [CrossRef]
  107. Joo, B.K.; Lee, I. Workplace happiness: Work engagement, career satisfaction, and subjective well-being, Evidence-based HRM. Glob. Forum Empir. Scholarsh. 2017, 5, 206–221. [Google Scholar] [CrossRef]
  108. Koch, A.K.; Adler, M. Emotional exhaustion and innovation in the workplace-a longitudinal study. Ind. Health 2018, 56, 524–538. [Google Scholar] [CrossRef] [PubMed]
  109. Cropanzano, R.; Rupp, D.E.; Byrne, Z.S. The relationship of emotional exhaustion to work attitudes, job performance, and organizational citizenship behaviors. J. Appl. Psychol. 2003, 88, 160–169. [Google Scholar] [CrossRef]
  110. Skaalvik, C. Emotional exhaustion and job satisfaction among Norwegian school principals: Relations with perceived job demands and job resources. Int. J. Leadersh. Educ. 2020, 9. [Google Scholar] [CrossRef]
  111. Prajogo, W. The relationship among emotional exhaustion, job satisfaction, performance, and intention to leave. Adv. Manag. Appl. Econ. 2019, 9, 21–29. [Google Scholar]
  112. Chao, M.; Chen, X.; Liu, T.; Yang, H.; Hall, B.J. Psychological distress and state boredom during the COVID-19 outbreak in China: The role of meaning in life and media use. Eur. J. Psychotraumatol. 2020, 11, 1769379. [Google Scholar] [CrossRef]
  113. Khasne, R.W.; Dhakulkar, B.S.; Mahajan, H.C.; Kulkarni, A.P. Burnout among Healthcare Workers during COVID-19 Pandemic in India: Results of a Questionnaire-based Survey. Indian J. Crit. Care Med. 2020, 24, 664–671. [Google Scholar]
  114. Santarone, K.; McKenny, M.; Elkbuli, A. Preserving mental health and resilience in front line healthcare workers during COVID 19. Am. J. Emerg. Med. 2020, 38, 1530–1531. [Google Scholar] [CrossRef] [PubMed]
  115. Grzywacz, J.G.; Almeida, D.M.; McDonald, D.A. Work-family spillover and daily reports of work and family stress in the adult labor force. Fam. Relat. 2002, 51, 28–36. [Google Scholar] [CrossRef]
  116. Hsieh, Y.-C.; Pearson, T.; Chang, H.-C.; Uen, J.F. Spillover Between Work and Personal Life for Lodging Managers. J. Hum. Resour. Hosp. Tour. 2005, 3, 61–83. [Google Scholar] [CrossRef]
  117. Baral, R.; Bhargava, S. Work-family enrichment as a mediator between organizational interventions for work-life balance and job outcomes. J. Manag. Psychol. 2010, 25, 274–300. [Google Scholar]
  118. Zhang, H.; Kwong Kwan, H.; Everett, A.M.; Jian, Z. Servant leadership, organizational identification, and work-to-family enrichment: The moderating role of work climate for sharing family concerns. Hum. Resour. Manag. 2012, 51, 747–767. [Google Scholar] [CrossRef]
  119. Madhu, S.; Soundararajan, V.; Parayitam, S. Online Promotions and Hedonic Motives as Moderators in the Relationship Between e-Impulsive Buying Tendency and Customer Satisfaction: Evidence from India. J. Internet Commer. 2022. [Google Scholar] [CrossRef]
  120. Rajagopalan, M.; Sathar, M.B.A.; Parayitam, S. Self-efficacy and Emotion Regulation as Moderators in the Relationship Between Learning Strategies of Students and Academic Performance: Evidence from India. FIIB Bus. Rev. 2022, 1–15. [Google Scholar] [CrossRef]
  121. Krejcie, R.V.; Morgan, D.W. Determining sample size for research activities. Educ. Psychol. Meas. 1970, 30, 607–610. [Google Scholar] [CrossRef]
  122. Comrey, A.L.; Lee, H.B. A First Course in Factor Analysis, 2nd ed.; Lawrence Erlbaum: Hillsdale, NJ, USA, 1992. [Google Scholar]
  123. Ahmed, R.R.; Streimikiene, D.; Rolle, J.-A.; Duc, P.A. The COVID-19 Pandemic and the Antecedents for the Impulse Buying Behavior of US Citizens. J. Compet. 2020, 12, 5–27. [Google Scholar] [CrossRef]
  124. Goel, P.; Parayitam, S.; Sharma, A.; Rana, N.P.; Dwivedi, Y.K. A moderated mediation model for e-impulse buying tendency, customer satisfaction and intention to continue e-shopping. J. Bus. Res. 2022, 142, 1–16. [Google Scholar] [CrossRef]
  125. Neufeld, D.J.; Fang, Y. Individual, social and situational determinants of telecommuter productivity. Inf. Manag. 2005, 42, 1037–1049. [Google Scholar] [CrossRef]
  126. Fisher, G.G.; Bulger, C.A.; Smith, C.S. Beyond Work and Family: A Measure of Work/Nonwork Interference and Enhancement. J. Occup. Health Psychol. 2009, 14, 441–456. [Google Scholar] [CrossRef] [PubMed]
  127. Helmle, J.R.; Botero, I.C.; Seibold, D.R. Factors that influence perceptions of work-life balance in owners of copreneurial firms. J. Fam. Bus. Manag. 2014, 4, 110–132. [Google Scholar] [CrossRef]
  128. Shukla, A.; Srivastava, R. Development of short questionnaire to measure an extended set of role expectation conflict, coworker support and work-life balance: The new job stress scale. Cogent Bus. Manag. 2016, 3, 1–19. [Google Scholar] [CrossRef]
  129. Lait, J.; Wallace, J.E. Stress at Work: A Study of Organizational-Professional Conflict and Unmet Expectations. Relat. Ind. 2002, 57, 463–490. [Google Scholar]
  130. Schriesheim, C.; Tsui, A.S. Development and Validation of a Short Satisfaction Instrument for Use in Survey Feedback Interventions. West. Acad. Manag. Meet. 1980, 1980, 115–117. [Google Scholar]
  131. Maslach, C.; Jackson, S.E. Maslach Burnout Inventory, 2nd ed.; Consulting Psychologists Press: Palo Alto, CA, USA, 1986. [Google Scholar]
  132. Anderson, J.C.; Gerbing, D.W. Structural equation modeling in practice: A review and recommended two-step approach. Psychol. Bull. 1988, 103, 411–423. [Google Scholar] [CrossRef]
  133. Hair, J.F.; Anderson, R.E.; Tatham, R.L.; Black, W.C. Multivariate Data Analysis, 5th ed.; Prentice Hall International: Upper Saddle River, NJ, USA, 1998. [Google Scholar]
  134. Nunnally, J.C. Psychometric Theory 3E; Tata McGraw-Hill Education: New York, NY, USA, 1994. [Google Scholar]
  135. Moss, S.A.; McFarland, J.; Ngu, S.; Kijowska, A. Maintaining an open mind to closed individuals: The effect of resource availability and leadership style on the association between openness to experience and organizational commitment. J. Res. Personal. 2007, 41, 259–275. [Google Scholar] [CrossRef]
  136. Fornell, C.; Larcker, D. Evaluating structural equation models with unobservable variables and measurement error. J. Mark. Res. 1981, 18, 39–50. [Google Scholar] [CrossRef]
  137. Netemeyer, R.G.; Johnston, M.W.; Burton, S. Analysis of role conflict and role ambiguity in a structural equations framework. J. Appl. Psychol. 1990, 75, 148–157. [Google Scholar] [CrossRef]
  138. Browne, M.W.; Cudeck, R. Alternative ways of assessing model fit. In Testing Structural Equation Models; Bollen, K.A., Long, J.S., Eds.; SAGE: Newcastle upon Tyne, UK, 1993; pp. 136–162. [Google Scholar]
  139. Tsui, A.S.; Ashford, S.J.; St Clair, L.; Xin, K.R. Dealing with discrepant expectations: Response strategies and managerial effectiveness. Acad. Manag. J. 1995, 38, 1515–1543. [Google Scholar]
  140. Montgomery, D.C.; Peck, E.A.; Vining, G.G. Introduction to Linear Regression Analysis; John Wiley & Sons: Hoboken, NJ, USA, 2021. [Google Scholar]
  141. Podsakoff, P.M.; MacKenzie, S.B.; Lee, J.-Y.; Podsakoff, N.P. Common method biases in behavioral research: A critical review of the literature and recommended remedies. J. Appl. Psychol. 2003, 88, 879–903. [Google Scholar] [CrossRef]
  142. Kock, N. Common method bias in PLS-SEM: A full collinearity assessment approach. Int. J. e-Collab. 2015, 11, 1–10. [Google Scholar] [CrossRef]
  143. Hayes, A.F. Introduction to Mediation, Moderation, and Conditional Process Analysis: A Regression-Based Approach; The Guilford Press: New York, NY, USA, 2018. [Google Scholar]
  144. Carlson, D.S.; Kacmar, K.M.; Wayne, J.H.; Grzywacz, J.G. Measuring the positive side of the work-family interface: Development and validation of a work-family enrichment scale. J. Vocat. Behav. 2006, 68, 131–164. [Google Scholar] [CrossRef]
Figure 1. Conceptual model.
Figure 1. Conceptual model.
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Figure 2. Work stress moderating between work-from-home productivity and work–life balance.
Figure 2. Work stress moderating between work-from-home productivity and work–life balance.
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Figure 3. (A): the moderating effect of work stress and work-from-home productivity at low levels of personal life enhancement. (B): the moderating effect of work stress and work-from-home productivity at high levels of personal life enhancement.
Figure 3. (A): the moderating effect of work stress and work-from-home productivity at low levels of personal life enhancement. (B): the moderating effect of work stress and work-from-home productivity at high levels of personal life enhancement.
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Figure 4. Emotional exhaustion moderates the relationship between work–life balance and job satisfaction.
Figure 4. Emotional exhaustion moderates the relationship between work–life balance and job satisfaction.
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Figure 5. (A): The moderating effect of emotional exhaustion and work–life balance at Low levels of work–personal life enhancement. (B): The moderating effect of emotional exhaustion and work–life balance at high levels of work–personal life enhancement.
Figure 5. (A): The moderating effect of emotional exhaustion and work–life balance at Low levels of work–personal life enhancement. (B): The moderating effect of emotional exhaustion and work–life balance at high levels of work–personal life enhancement.
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Table 1. Confirmatory factor analysis.
Table 1. Confirmatory factor analysis.
Constructs and the Sources of the MeasuresAlphaCRStandardized
Loadings
yi)
Reliability
2yi)
Variance
(Var(εi))
Average
Variance-
Extracted
Estimate
Σ (λ2yi)/
[(λ2yi) + (Var(εi))]
WFHP [125]0.930.94 0.60
I am very productive while working from home. 0.760.580.42
I feel that the quality of the work I carry out during working from home is better. 0.790.620.38
Working from home is personally beneficial for me at work. 0.810.660.34
Working from home motivates me to work better. 0.770.590.41
I have sufficient technical knowledge in completing work during working from home. 0.770.590.41
I have sufficient authority in carrying out work during working from home. 0.780.600.40
I have clear work targets when working from home. 0.800.640.36
My boss is concerned about my well-being during working from home. 0.770.590.41
I receive technical assistance from my workplace in completing work during working from home. 0.740.550.45
I can concentrate on getting work done even when there are distractions from family members during working from home. 0.760.570.43
WLB [126,127,128]0.910.91 0.56
I have adequate time to spend with the family even if I work in the organization or at home. 0.740.550.45
I have sufficient time to take care of my children even if I work in the organization or at home. 0.760.580.42
I have enough time to take care of elderly dependents even if I work in the organization or at home. 0.760.580.42
I am not missing important social occasions even if I work in the organization or at home. 0.740.540.46
I can maintain my work and family with a proper schedule even if I work in the organization or at home. 0.770.590.41
I have enough time to take medical health checkups even if I work in the organization or at home. 0.750.560.44
My personal life does not suffer because of work. 0.700.490.51
I do not neglect personal needs because of work. 0.750.570.43
Work Stress [129]0.890.89 0.57
I am discouraged about my work. 0.700.490.51
I feel many things are beyond my control and ability while working from home. 0.760.570.43
I feel overwhelmed by completing work during working from home. 0.770.600.40
I feel like giving up on work during working from home. 0.740.540.46
I feel unable to get out from my work during working from home. 0.780.610.39
I feel frustrated with my work-from-home job. 0.790.620.38
Job Satisfaction [130]0.880.88 0.59
I am satisfied with my current job. 0.780.610.39
I am satisfied with my current co-workers. 0.780.600.40
I am satisfied and feel happy with my current boss. 0.810.650.35
I am satisfied with my current salary. 0.670.440.56
Overall, I am satisfied with my current job. 0.810.660.34
WPLE [96]0.840.85 0.58
Personal life gives me energy for my job. 0.770.590.41
My job gives me energy to pursue personal activities. 0.760.570.43
I have a better mood at work because of personal life. 0.780.610.39
I have a better mood because of my job. 0.740.550.45
Emotional Exhaustion [131]0.850.85 0.60
I have felt emotionally drained from my work. 0.770.590.41
I have felt used up at the end of the workday. 0.770.590.41
I have felt fatigued when getting up in the morning and having to face another day on the job. 0.810.660.34
I have felt burned out from my work. 0.740.540.46
Table 2. Comparison of measurement models.
Table 2. Comparison of measurement models.
Factorsχ2df∆χ2RMSEARMRStandardized
RMR
CFITLI = NNFIGFI
Null 28,719.23703
BaselinemodelSix Factors: WFHP, WLB, WS, JSAT, WLPE, EMOEX2160.36650 0.0450.0420.0300.9460.9420.904
Model 1Five-Factor Model: WFHP, +WLB;
WS; JSAT; WLPE; EMOEX
5418.446553258.08 *0.0790.1030.0750.8300.8180.663
Model 2Four-Factor Model: WFHP, +WLB +
WS; JSAT; WLPE; EMOEX
6692.276594531.91 *0.0890.1070.0760.7850.7700.599
Model 3Three-Factor Model: WFHP, +WLB + WS
+JSAT; WLPE; EMOEX
8194.416626034.05 *0.0990.1180.0850.7310.7140.558
Model 4Two-Factor Model: WFHP, +WLB +
WS + JSAT + WLPE; EMOEX
8825.126646664.76 *0.1030.1210.0870.7090.6920.544
Model 5One-Factor Model: WFHP, +WLB+
WS + JSAT + WLPE + EMOEX
9562.986657402.62 *0.1070.1230.0890.6820.6640.528
* p < 0.01. WFHP = work-from-home productivity; WLB = work–life balance; WS = work stress; JSAT = job satisfaction; WLPE = work–personal life enhancement; EMOEX = emotional exhaustion.
Table 3. Descriptive statistics: means, standard deviations, and zero-order correlations.
Table 3. Descriptive statistics: means, standard deviations, and zero-order correlations.
Mean Standard
Deviation
123456AlphaCIAVE
1.WFHP3.940.960.77 0.930.940.60
2.WLB3.760.900.56 ***0.75 0.910.910.56
3.Work Stress4.300.93−0.53 ***−0.74 ***0.75 0.890.890.57
4.Emotional Exhaustion4.250.92−0.52 ***−0.60 ***0.64 ***0.77 0.850.850.60
5.WPLE 3.990.950.64 ***0.56 ***−0.52 ***−0.60 ***0.76 0.840.850.58
6.Job Satisfaction4.090.980.61 ***0.49 ***−0.47 ***−0.50 ***0.66 ***0.770.880.890.59
*** p < 0.01. CI = composite reliability; AVE = average variance extracted; numbers in the diagonals are square root of AVE.
Table 4. Testing H1, H2, and H3.
Table 4. Testing H1, H2, and H3.
DV = Job SatisfactionDV = WLB H2DV = Job Satisfaction
Step 1Step 2Step 3
CoeffseTpCoeffsetpCoeffsetp
Constant1.27660.073217.44670.00001.23040.070817.38590.00000.98520.080012.30960.0000
WFHP H1 0.61910.023726.14200.00000.51940.022922.67640.00000.49610.027717.89510.0000
WLB H3 0.23690.02967.99850.0000
R-square0.371 0.308 0.404
F683.40 514.21 392.30
df11 1 2
df21156 1156 1155
p0.0000 0.0000 0.0000
Total Effect
Total EffectsetpLLCIULCI
0.61910.023726.14200.00000.57260.6656
Direct Effect
Direct EffectsetpLLCIULCI
WFHP → Job Satisfaction0.49610.027717.89510.00000.44170.5505
Bootstrapping Indirect Effect (H4)
Indirect EffectBOOT seBOOT
LLCI
BOOT
ULCI
WFHP → WLB → Job Satisfaction0.1230 (0.5194 × 0.2369 = 0.1230)0.02210.08290.1692
Notes: N = 1158, Boot LLCI = bootstrapping lower limit confidence interval, Boot ULCI = bootstrapping upper limit confidence interval. The results were based on 20,000 bootstrapping samples [p < 0.05]. It is recommended to use four decimal digits because some values may be very close to zero.
Table 5. Testing of H2a (two-way interaction) and hypothesis 2b (three-way interaction) [R2 = 0.599].
Table 5. Testing of H2a (two-way interaction) and hypothesis 2b (three-way interaction) [R2 = 0.599].
DV = WLB
VariablesCoeffsetpLLCIULCI
Constant3.40840.69054.93600.00002.05364.7632
WFHP0.03410.21310.15980.8731−0.38410.4523
Work Stress−0.65020.1548−4.19910.0000−0.9540−0.3464
WPLE0.08230.20610.39930.6897−0.32210.4868
WFHP × Work Stress H2a0.11640.05072.29560.02190.01690.2160
WFHP × WPLE0.07290.05611.30050.1937−0.03710.1829
WPLE × Work Stress0.07570.05021.50890.1316−0.02270.1742
WFHP × Work Stress × WPLE H2b−0.04680.0137−3.42210.0006−0.0737−0.0200
R-square0.599
F246.11
df17
df21150
p0.0000
Conditional effects of the focal predictor (WLB) at values of moderators (Work Stress × WPLE)
Work StressWPLEEffectseTpLLCIULCI
LowLow0.23150.05324.35140.00000.12710.3359
LowMedium0.19630.03655.37880.00000.12470.2679
LowHigh0.16110.03544.54850.00000.09160.2305
MediumLow0.25020.03557.05080.00000.18050.3198
MediumMedium0.17430.02506.98420.00000.12530.2233
MediumHigh0.09840.02873.43280.00060.04220.1547
HighLow0.26880.03457.78710.00000.20110.3365
HighMedium0.15230.03134.86010.00000.09080.2138
HighHigh0.03580.03980.89900.3688−0.04230.1139
Moderator value(s) defining Johnson–Neyman significance region(s)
Value% below% above
3.526475.129524.8705
Table 6. Indirect effect (WFHP → WLB → Job Satisfaction).
Table 6. Indirect effect (WFHP → WLB → Job Satisfaction).
Work StressWPLEEffectBoot SEBoot LLCIBoot ULCI
2.3663 (Low)2.0601 (Low)0.05480.01580.02570.0876
2.3663 (Low)2.9899 (Medium)0.04650.01200.02480.0717
2.3663 (Low)3.9196 (High)0.03810.01150.01770.0630
3.2995 (Medium)2.0601 (Low)0.05930.01340.03560.0877
3.2995 (Medium)2.9899 (Medium)0.04130.00980.02460.0625
3.2995 (Medium)3.9196 (High)0.02330.00950.00710.0444
4.2327 (High)2.0601 (Low)0.06370.01690.03510.1012
4.2327 (High)2.9899 (Medium)0.03610.01290.01450.0648
4.2327 (High)3.9196 (High)0.00850.0124−0.01390.0352
Index of moderated moderated-mediation
IndexBOOT SE BOOT LLCIBOOT ULCI
−0.01110.0038−0.0191−0.0043
Indices of moderated moderated-mediation by work stress
WPLEIndexBOOT SEBOOT LLCIBOOT ULCI
Low0.00470.0100−0.01320.0260
Medium−0.00560.0083−0.02120.0114
High−0.01590.0078−0.0317−0.0008
Table 7. Testing of H3a (two-way interaction) and hypothesis 3b (three-way interaction) [R2 = 0.525].
Table 7. Testing of H3a (two-way interaction) and hypothesis 3b (three-way interaction) [R2 = 0.525].
DV = Job Satisfaction
VariablesCoeffsetpLLCIULCI
Constant1.13380.86581.30950.1906−0.56502.8326
WFHP0.23670.02958.03000.00000.17890.2945
WLB0.06090.27800.21920.8265−0.48460.6064
Emotional Exhaustion−0.36260.1912−1.89670.0581−0.73770.0125
WPLE0.36040.23641.52430.1277−0.10350.8243
WLB × Emotional Exhaustion H3a0.13070.06571.99030.04680.00190.2595
WLB × WPLE0.03120.06870.45420.6498−0.10360.1661
WPLE × Emotional Exhaustion0.11470.05352.14290.03230.00970.2197
WLB × Emotional Exhaustion × WPLE H3b−0.04880.0170−2.87040.0042−0.0822−0.0155
R-square0.525
F158.50
df18
df21149
p0.0000
Conditional Effects of the Focal Predictor (Job Satisfaction) at Values of Moderators (Emotional Exhaustion × WPLE)
Emotional ExhaustionWPLEEffectsetpLLCIULCI
LowLow0.19540.07222.70570.00690.05370.3371
LowMedium0.11860.04562.59880.00950.02900.2081
LowHigh0.04170.03911.06790.2858−0.03490.1183
MediumLow0.22300.04924.53690.00000.12660.3194
MediumMedium0.10450.03193.28120.00110.04200.1670
MediumHigh−0.01400.0385−0.36270.7169−0.08960.0616
HighLow0.25060.04455.62550.00000.16320.3380
HighMedium0.09050.03832.36290.01830.01530.1656
HighHigh−0.06970.0543−1.28160.2002−0.17630.0370
Moderator value(s) defining Johnson–Neyman significance region(s)
Value% below% above
3.871680.051819.9482
Table 8. Indirect Effect (WFHP → WLB → Job Satisfaction).
Table 8. Indirect Effect (WFHP → WLB → Job Satisfaction).
Emotional ExhaustionWPLEEffectBoot SEBoot LLCIBoot ULCI
2.3319 (Low)2.0601 (Low)0.10150.04740.00790.1925
2.3319 (Low)2.9899 (Medium)0.06160.03020.00270.1198
2.3319 (Low)3.9196 (High)0.02170.0252−0.02700.0729
3.2489 (Medium)2.0601 (Low)0.11580.03460.04800.1829
3.2489 (Medium)2.9899 (Medium)0.05430.02140.01290.0974
3.2489 (Medium)3.9196 (High)−0.00730.0267−0.05880.0464
4.1659 (High)2.0601 (Low)0.13020.03400.06420.1972
4.1659 (High)2.9899 (Medium)0.04700.0263−0.00320.1010
4.1659 (High)3.9196 (High)−0.03620.0373−0.10780.0396
Index of moderated moderated mediation
IndexBOOT SE BOOT LLCIBOOT ULCI
−0.02540.0090−0.0429−0.0075
Indices of moderated moderated mediation by emotional exhaustion
WPLEIndexBOOT SEBOOT LLCIBOOT ULCI
Low2.06010.01560.0245−0.0313
Medium2.9899−0.00800.0202−0.0461
High3.9196−0.03150.0188−0.0676
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Kowalski, K.B.; Aruldoss, A.; Gurumurthy, B.; Parayitam, S. Work-From-Home Productivity and Job Satisfaction: A Double-Layered Moderated Mediation Model. Sustainability 2022, 14, 11179. https://doi.org/10.3390/su141811179

AMA Style

Kowalski KB, Aruldoss A, Gurumurthy B, Parayitam S. Work-From-Home Productivity and Job Satisfaction: A Double-Layered Moderated Mediation Model. Sustainability. 2022; 14(18):11179. https://doi.org/10.3390/su141811179

Chicago/Turabian Style

Kowalski, Kellyann Berube, Alex Aruldoss, Bhuvaneswari Gurumurthy, and Satyanarayana Parayitam. 2022. "Work-From-Home Productivity and Job Satisfaction: A Double-Layered Moderated Mediation Model" Sustainability 14, no. 18: 11179. https://doi.org/10.3390/su141811179

APA Style

Kowalski, K. B., Aruldoss, A., Gurumurthy, B., & Parayitam, S. (2022). Work-From-Home Productivity and Job Satisfaction: A Double-Layered Moderated Mediation Model. Sustainability, 14(18), 11179. https://doi.org/10.3390/su141811179

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