Professional social media-enabled productivity: a five-wave longitudinal study on the role of professional social media invasion, work engagement and work exhaustion

Reetta Oksa (Tampere University, Tampere, Finland)
Henri Pirkkalainen (Tampere University, Tampere, Finland)
Markus Salo (University of Jyväskylä, Jyväskylä, Finland)
Nina Savela (Tampere University, Tampere, Finland)
Atte Oksanen (Tampere University, Tampere, Finland)

Information Technology & People

ISSN: 0959-3845

Article publication date: 18 November 2022

Issue publication date: 19 December 2022

3576

Abstract

Purpose

Social media platforms are increasingly used at work to facilitate work-related activities and can either challenge or make people feel more productive at jobs. This study drew from technostress and employee well-being literature and analyzed longitudinal effects of professional social media (PSM) invasion, work engagement and work exhaustion on PSM-enabled productivity.

Design/methodology/approach

Nationally representative five-wave survey data of Finnish employees were analyzed with hybrid multilevel linear regression analysis. Outcome measure was PSM-enabled productivity and the predictors included PSM invasion, work exhaustion and work engagement. Age, gender, education, occupational sector, managerial position, remote work and personality traits were used as control variables.

Findings

PSM invasion and work engagement had both within-person and between-person effects on PSM-enabled productivity. Higher educated and individuals with open personality reported higher PSM-enabled productivity. No association between work exhaustion and PSM-enabled productivity was found.

Originality/value

The findings are central considering the increasing use of social media and other technologies for work purposes. The authors challenge the dominant view in the literature that has often seen PSM invasion as a negative factor. Instead, PSM invasion's positive association with PSM-enabled productivity and the association of work engagement and PSM-enabled productivity should be recognized in work life.

Keywords

Citation

Oksa, R., Pirkkalainen, H., Salo, M., Savela, N. and Oksanen, A. (2022), "Professional social media-enabled productivity: a five-wave longitudinal study on the role of professional social media invasion, work engagement and work exhaustion", Information Technology & People, Vol. 35 No. 8, pp. 349-368. https://doi.org/10.1108/ITP-11-2021-0899

Publisher

:

Emerald Publishing Limited

Copyright © 2022, Reetta Oksa, Henri Pirkkalainen, Markus Salo, Nina Savela and Atte Oksanen

License

Published by Emerald Publishing Limited. This article is published under the Creative Commons Attribution (CC BY 4.0) licence. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this licence may be seen at http://creativecommons.org/licences/by/4.0/legalcode


1. Introduction

Digital collaborative tools, such as social media platforms, had already increasingly been used for professional purposes prior to the COVID-19 pandemic and increased as a response to the pandemic (Cao and Yu, 2019; Kodama, 2020; Leonardi, 2020; Nisar et al., 2019). Thus, the popular tools such as Microsoft Teams and Zoom have been surreptitiously conquering employees' private lives for some time (Barnes, 2020; Tams et al., 2020). Professional social media (PSM) use refers to the use of social media platforms for work purposes such as professional social networking; discussing, following, producing, or sharing content related to work or the organization; and working collaboratively and having online meetings regardless of location (Oksa et al., 2020, 2021; Oksanen et al., 2021). These outcomes can occur through public social media services, such as Facebook and LinkedIn, or via organizations' internal social media platforms, such as Workplace from Meta and MS Teams.

Studies suggest that PSM facilitates enhanced working practices, such as improved communication possibilities, information access and sharing (Liu and Bakici, 2019; Nisar et al., 2019; Sun et al., 2020). Moreover, PSM provides good opportunities for task-oriented and relationship-building behaviors, organizational identification and transparency (Ali et al., 2020; Carlson et al., 2016; Men et al., 2020; Oksa et al., 2020). Working virtually provides employees with flexibility in completing their work, considering family responsibilities and work life balance and can foster work performance, productivity and work engagement (i.e. the motivational state of employee well-being; Schaufeli and Bakker, 2004a; Fusi and Feeney, 2018; Leftheriotis and Giannakos, 2014; Nisar et al., 2019; Oksa et al., 2020).

In addition to the positive consequences, PSM can have negative effects on users. One of the main aspects is its invasiveness, a perception that PSM use interferes with one's private life and has negative outcomes for the individual (e.g. Salo et al., 2019; Tarafdar et al., 2020a). In the context of this study, PSM invasion is defined as the invasive effect of social media use on work-related situations, where employees can be technically reached anytime and feel the need to be constantly connected, hence the boundaries of work and private life can be challenged by pervasive technology and social media (Ayyagari et al., 2011; Del Bosque, 2013; Fieseler et al., 2015; Leung and Zhang, 2017; Ollier-Malaterre et al., 2013; Tarafdar et al., 2020b). The conflicts involved in combining the work and home domains can lead to negative psychological outcomes, such as work exhaustion, which is a key stress dimension of employee burnout (Bakker et al., 2005; Demerouti et al., 2004). In addition to boundary-management issues, constant connectivity and interruptions by social media can lower work performance and productivity (Cao and Yu, 2019; Yu et al., 2018). This can also lead to technostress (Bucher et al., 2013), which refers to the stress people experience due to their use of technology, and it is characterized by the struggle to manage the demands caused by technology use (Ayyagari et al., 2011; Tarafdar et al., 2019).

Our article focuses on PSM-enabled productivity that involves a person's positive acknowledgment that the use of social media at work facilitates work tasks and makes them feel more productive (Ali-Hassan et al., 2015; Leftheriotis and Giannakos, 2014). We analyzed the longitudinal effects of PSM invasion, work engagement and work exhaustion on PSM enabled productivity. The study is based on technostress literature and concepts of technology invasion and technology-enabled productivity (Ragu-Nathan et al., 2008; Tarafdar et al., 2019). In addition, the study combines theories of work engagement, burnout, job demands and job resources (e.g. Bakker et al., 2014; Demerouti et al., 2001; Schaufeli and Bakker, 2004a) to study the association of PSM-enabled productivity with work exhaustion and work engagement.

2. Theoretical background and hypothesis development

2.1 Social media invasion as a techno-stressor

Besides the above-mentioned positive impacts of new technologies at work, the use of such technologies at work can trigger stress (i.e. technostress) and related negative consequences (Ragu-Nathan et al., 2008). Two particularly important concepts in terms of technostress are techno-stressors and strain (Ayyagari et al., 2011; Ragu-Nathan et al., 2008). In line with the transactional view of stress (Lazarus, 1966; Lazarus and Folkman, 1984), techno-stressors refer to the stress creators as demand conditions that form within the interactions between the individual and the technology. In prior research, recurrent techno-stressors included techno-invasion, techno-overload, techno-complexity, techno-insecurity and techno-uncertainty (cf., Fischer and Riedl, 2017; Tarafdar et al., 2019).

Strain refers to an individual's negative psychological, physiological, or behavioral response in relation to techno-stressors (Ayyagari et al., 2011). Furthermore, strain is associated with various behavioral outcomes, such as reduced work productivity (Tarafdar et al., 2010, 2015) and declining organizational commitment (Ragu-Nathan et al., 2008; Tarafdar et al., 2007). Altogether, technostress emerges when techno-stressors exceed an individual's resources for managing them, resulting in strain and other potential negative outcomes such as exhaustion and burnout (Ayyagari et al., 2011; Cooper et al., 2001). Furthermore, a techno-stressor labeled technology invasion (i.e. technology use constantly invading one's life) is one of the core elements creating technostress (Tarafdar et al., 2007, 2019) and has been positively associated with strain (Fischer and Riedl, 2017; Molino et al., 2020; Tarafdar et al., 2019).

As technology is easily invasive, understanding technostress factors more thoroughly is crucial since technostress has rooted itself in the workplace context (Bondanini et al., 2020; Srivastava et al., 2015; Tarafdar et al., 2015) and has raised concerns about how to maintain employees' well-being and support in mitigating stress, especially during COVID-19 (Fieseler et al., 2014; Spagnoli et al., 2020). Moreover, prior studies indicate that technostress can potentially have severe consequences for organizations, such as weaker job satisfaction and commitment, performance and productivity issues, increased absenteeism and burnout and higher intentions to leave, which should gain managerial attention (Ayyagari et al., 2011; Boyer-Davis, 2019; Tarafdar et al., 2015, 2019).

Technology and social media specifically, along with work tasks, more frequently follows employees from their workplaces to their homes, therefore invading employees' private lives (Ayyagari et al., 2011; Del Bosque, 2013; Fieseler et al., 2015; Ollier-Malaterre et al., 2013; Tams et al., 2020). PSM use is ubiquitous, and it absorbs users in dynamic social networks and interactions that make users prone to remaining constantly available and to receiving invading messages or other notifications also outside office hours (Barber et al., 2019; Maier et al., 2015; Salo et al., 2019). Excessive amounts and unpredictable work can be received through digital means (Fusi and Feeney, 2018; Ragu-Nathan et al., 2008), in addition to communication, information and social overload (Yu et al., 2018). PSM can increase cognitive preoccupation, which can restrict employees to combining work with their personal and family lives (Cao and Yu, 2019; Zheng and Lee, 2016). Furthermore, studies on remote workers have demonstrated that technostress and especially technology invasion are associated with work–family conflicts (Barber et al., 2019; Leung and Zhang, 2017; Molino et al., 2020).

Previous research has repeatedly found that invasion and other techno-stressors are negatively associated with technology-enabled productivity and performance at work (Tarafdar et al., 2007, 2015; Tu et al., 2005). Decreased productivity and performance occur when employees are faced with technology-enabled demands to receive and browse through endless digital content and incoming notifications, to stay constantly available and to continue the workday after hours at home or other places (Tarafdar et al., 2007, 2015; Tu et al., 2005). These demands can erode the same resources that employees designate and use for other work tasks. When work can always be accessed, it can lead to social media exhaustion, resulting in decreased job performance (Yu et al., 2018). Furthermore, excessive social media use can stimulate technology–work conflicts and strain, which can reduce job performance (Cao and Yu, 2019). Therefore, we propose the following hypothesis:

H1.

PSM invasion predicts low PSM-enabled productivity.

2.2 Employee well-being in the context of work productivity

Employee well-being can be approached in many ways. Its definitions are commonly based on a more general well-being conceptualization by Ryff (1989) that denotes the behavioral elements of well-being and affective well-being conceptualization by Warr (1994) that is work context specific. Based on those conceptualizations also cognitive well-being, professional well-being, social well-being and psychosomatic well-being have been considered as part of employee well-being (Van Horn et al., 2004). Affective well-being, however, is regarded as the principal element of well-being (Diener et al., 2009). Warr's (2007) four quadrant model includes work engagement, workaholism, burnout and job satisfaction. The model has been developed from Russell's (1980, 2003) circumflex model of affect (i.e. emotional states of high versus low activation and pleasure versus displeasure) which is applied more in detail in the work context to regard subjective employee well-being (e.g. Bakker and Oerlemans, 2011; Mäkikangas et al., 2015; Mäkikangas et al., 2016; Salanova et al., 2014). It is evident that examining both positive and negative aspects are needed to understand affective employee well-being holistically. In this article, we focus on work engagement and exhaustion. The latter is a core dimension of burnout and key to its development (Shirom, 2005).

Work engagement is defined as a rewarding, comprehensive and long-lasting affective-cognitive work-related state of mind (Schaufeli and Bakker, 2004a; Schaufeli et al., 2002). Work engagement consists of three dimensions: vigor (e.g. mental resilience while working), dedication (e.g. enthusiasm) and absorption (e.g. full concentration on work; Schaufeli and Bakker, 2004a; Schaufeli et al., 2002). Work engagement is a motivational state commonly explained by high job resources (Bakker, 2011; Schaufeli and Bakker, 2004a). Job resources are positive psychological, physical, social and organizational characteristics that are essential drivers of work engagement – for example, task variety and autonomy (Demerouti et al., 2001; Hakanen et al., 2008a, b; Schaufeli and Bakker, 2004a). Previous studies have found a positive relationship between work engagement and enhanced work productivity and performance (Christian et al., 2011; Halbesleben and Wheeler, 2008; Harter et al., 2002; Rich et al., 2010; Shimazu et al., 2018).

Work engagement and burnout have been developed on same grounds of burnout research (Maslach et al., 1996) and are interrelated, but still independent employee well-being concepts (Bakker et al., 2014). Burnout is a work-stress syndrome that consists of three dimensions: exhaustion (personal fatigue), cynicism (a distant attitude toward work) and reduced professional efficacy (social and nonsocial work accomplishments; Maslach et al., 2001). Job demands are work-related elements that require constant psychological or physical effort from employees, which can decrease work engagement and lead to exhaustion, strain and burnout (Bakker et al., 2014; Demerouti et al., 2001; Schaufeli and Bakker, 2004a). Sufficient resources can buffer strain and burnout (Bakker et al., 2014).

According to Hobfoll's (2001)'s conservation of resources (COR) theory, people try to maintain their valuable resources from depletion against job demands, and if there is potential or actual loss of those resources, stress and burnout can emerge. Work exhaustion is the key individual stress dimension of burnout, the state when individual's mental resources are depleted and decreased by high job demands (Taris et al., 2005). Burnout and its component work exhaustion have been associated with lowered productivity in prior employee well-being studies (Halbesleben and Bowler, 2007; Swider and Zimmerman, 2010; Taris, 2006; Virga et al., 2019).

In addition to its enhancing influence on employee well-being, PSM use can increase job demands, such as time management issues, increased workload and cognitive burden (Fusi and Feeney, 2018; Maier et al., 2015), thus decreasing the resources needed to keep employees engaged at work. Strain experienced from technology use can also decrease work engagement and, in turn, lead to lower productivity (Tarafdar et al., 2010, 2015). Moreover, the inability to draw boundaries between private and work life and constantly being available for work purposes via social media, can cause negative psychological outcomes for individuals, such as concentration problems, strain, exhaustion and burnout (Cao and Yu, 2019; Maier et al., 2015; Salo et al., 2019; van Zoonen et al., 2016a, 2017), which can compromise work productivity accordingly (Tarafdar et al., 2007, 2010, 2015). Thus, we expect the following:

H2.

High work exhaustion predicts low PSM-enabled productivity.

PSM use can, however, promote job resources, including enhanced communication and real-time information accessibility (Sun et al., 2020; van Zoonen et al., 2017), cooperation with colleagues and stakeholders and act as a platform for social support (Kang and Beydoun, 2021; Leidner et al., 2018; Oksa et al., 2020). Past research indicates that there is a link between the use of communication technology and job performance, as employees' beliefs about being effective in their work are prompted by technology usage (Chesley, 2010). In addition to the negative psychological consequences of PSM invasion, using PSM can positively blur the boundaries between work and social lives and, in turn, enhance positive emotions and perceived social, physical, intellectual and psychological resources (Koch et al., 2012). Therefore, PSM use can be seen as a job resource, empowering employees toward better performance and productivity at work (Ali-Hassan et al., 2015; Leftheriotis and Giannakos, 2014; Olmstead et al., 2015).

Notably, PSM use can foster employees' engagement with their work (e.g. Oksa et al., 2020, 2021; Sharma and Bhatnagar, 2016; van Zoonen and Banghart, 2018; van Zoonen et al., 2017). When employees experience work engagement, they are more likely to be proactive at work (Hakanen et al., 2008a, b). There are also studies regarding the association of work engagement, work productivity and performance in different work contexts, such as among dentists (Hakanen and Koivumäki, 2014) and teachers (Bakker and Bal, 2010). Based on the above arguments, we expect the following:

H3.

High work engagement predicts high PSM-enabled productivity.

We expect differences between people and within people in time points for all hypotheses. The hypothesized model for all the hypotheses and control variables is shown in Figure 1.

3. Methods

3.1 Participants and procedure

To examine the relationships of PSM invasion, work engagement and work exhaustion with PSM-enabled productivity, we used a longitudinal survey design with five waves. The first wave (T1) of data was collected from Finnish employees of different occupational fields (see Appendix) during March–April 2019. The survey participants (N = 1,817) were aged between 18 and 65 (M = 41.75, SD = 12.19); 46.84% were female and 53.16% were male). The participants were recontacted in September–October 2019 (Time Point 2 [T2]; N = 1,318), March–April 2020 (Time Point 3 [T3]; N = 1,081), September–October 2020 (Time Point 4 [T4]; N = 1,152) and March–April 2021 (Time Point 5 [T5]; N = 1,018). The fourth and fifth surveys were sent to all original respondents, whereas the third was sent only to those who had responded to the second survey. Of the original respondents, 46.23% responded to all five surveys (N = 840). The final sample used in this study (N = 733, 42.43% female, Mage = 43.79, SD = 10.55) included only those respondents who were working during each time point. In other words, those retired, unemployed or otherwise temporarily out of work were excluded from the analysis.

Data collection was organized by Norstat, who was our collaborator in this research and who recruited the participants from their pool of volunteers (Norstat, 2021). The online survey was distributed to participants via email. A representative sample of the Finnish workforce population in terms of age and gender was gathered through our stratified sampling strategy. Nonresponse analyses between each time point was conducted and no major bias was recognized. The samples closely resembled the Finnish working population regarding age, gender, most populated area, and educational level. Additionally, the participants were from different occupational fields (Oksa et al., 2020; Oksanen et al., 2020).

The survey aimed to discover the usage of social media for professional purposes and the concepts drawn from technostress literature, specifically PSM-enabled productivity and PSM invasion, in addition to the work exhaustion and work engagement factors of employee well-being. The survey was framed to concern PSM use, and it was targeted to employees that were working at the time of the survey. The framing of the survey and guidelines therein informed the respondent that nonwork-related social media was excluded from the study. Participation in the study was voluntary. Participants were informed of the study aims and informed of their right to withdraw from the study during data collection. The Academic Ethics Committee of Finland's Tampere region granted the research approval.

3.2 Measures

3.2.1 Professional social media-enabled productivity

The PSM-enabled productivity scale was adjusted from the technology-enabled productivity scale (Tarafdar et al., 2007) to measure individuals' perceptions of PSM-enabled productivity. It was measured with the following statements: “social media helps to improve the quality of my work”; “social media helps me to accomplish more work than would otherwise be possible”; and “social media helps me to perform my job better.” The answer options used a Likert scale (from 1 = strongly disagree to 7 = strongly agree). The scale showed excellent internal consistency based on McDonald's omega (T1: ω = 0.95, T2: ω = 0.95, T3: ω = 0.95, T4: ω = 0.95, T5: ω = 0.95). The descriptive statistics of the control variables are provided in Table 1.

3.2.2 Professional social media invasion

The PSM invasion scale was adjusted from the technology invasion scale (Ragu-Nathan et al., 2008) as there was no existing scale measuring social media invasion in professional contexts. PSM invasion was measured with the following three statements: “I always have to be available due to social media”; “I feel my personal life is being invaded by social media”; and “I have to sacrifice time to keep current on new social media services.” The answer options used a Likert scale (from 1 = strongly disagree to 7 = strongly agree). The internal consistency of the scale was good at all time points (T1: ω = 0.82, T2: ω = 0.84, T3: ω = 0.86, T4: ω = 0.86, T5: ω = 0.85).

3.2.3 Work exhaustion

Five statements from the Maslach Burnout Inventory (MBI-GS; Maslach et al., 2018) were used to measure work exhaustion: “I feel emotionally drained from my work”; “I feel used up at the end of the workday”; “I feel tired when I get up in the morning and have to face another day on the job”; “Working all day is really a strain for me”; and “I feel burned out from my work.” Answer options were “never,” “a few times a year or less,” “once a month or less,” “a few times a month,” “once a week,” “a few times a week,” and “every day,” with answers given numerical values of 0–6, respectively. The scale ranged from 0 to 30 with higher scores indicating higher work exhaustion. The internal consistency of the scale was excellent at all time points (T1: ω = 0.93, T2: ω = 0.93, T3: ω = 0.92, T4: ω = 0.93, T5: ω = 0.93).

3.2.4 Work engagement

Commonly, work engagement is measured with the Utrecht Work Engagement Scale (UWES; Schaufeli and Bakker, 2004b; Schaufeli et al., 2002). In this study, work engagement was measured with the Finnish nine-item version of the UWES (Seppälä et al., 2009). This scale measured all three dimensions of work engagement – i.e. vigor, dedication and absorption. Each dimension had three questions. The answer options were “never,” “almost never/a few times a year,” “rarely/once a month or less,” “sometimes/a few times a month,” “often/once a week,” “very often/a few times a week,” and “always/every day.” The answers were given numerical values of 0–6, respectively. All three dimensions were included in the scale with a range of 0–54. A higher score indicated higher work engagement. The internal consistency of the scale was excellent at all time points (T1: ω = 0.96, T2: ω = 0.96, T3: ω = 0.96, T4: ω = 0.96, T5: ω = 0.96).

3.2.5 Control variables

The sociodemographic and work-related variables included age, gender, education, occupational sector, managerial position, remote work and personality. Education was categorized into a dummy variable indicating those with MA degrees from university or higher. The occupational sector was categorized into those working with the industrial sector and others. Those respondents who indicated that they were working remotely at least 3 days a week were considered remote workers in this study. Each time point includes information about remote working. Similarly, each time point includes information about whether participants acted in a managerial position. We also used the 15-item Big Five Inventory for personality (Hahn et al., 2012). All items had responses ranging from 1 to 7, leading to five scales ranging from 3 to 21: openness (M = 14.73; SD = 3.31), conscientiousness (M = 15.65; SD = 3.00), extroversion (M = 13.50; SD = 4.33), agreeableness (M = 14.41; SD = 2.99) and neuroticism (M = 11.70; SD = 3.61). The internal consistency of the traits varied from acceptable (openness: ω = 0.70, conscientiousness ω = 0.70, agreeableness: ω = 0.60, neuroticism: ω = 0.71) to good (extroversion: ω = 0.88).

3.3 Statistical techniques

The main analyses were conducted using linear multilevel hybrid models (Schunck and Perales, 2017) that allow the estimation of within-person effects and between-person effects at the same time. Within-person effects show how time-variant changes in independent variables are associated with the change in the time-variant dependent variables, PSM-enabled productivity (Schunck and Perales, 2017). Between-person effects involve more static associations between variables, for example how people with high work engagement differ from those people with low work engagement (Schunck and Perales, 2017). Hybrid models combine the strengths of random-effects and fixed-effects approaches and solve their shortcomings (Schunck, 2013; Schunck and Perales, 2017). Models were run with the xthybrid command in Stata 16.1 (Schunck and Perales, 2017). In our models, all main time-varying variables had both within-person and between-person effects. The models also included several between-person control variables. A dummy variable for COVID-19 time (T3–T5) was included in the model. Our sensitivity analyses also involved checking interaction with time to see whether any of the effects were different at different time points.

4. Results

The key results of our study are shown in Table 1 and Figure 2. The main models showed a strong within-person effect of PSM invasion on PSM-enabled productivity (B = 0.38; p < 0.001). This effect indicates that over-time positive changes, i.e. an increase in PSM invasion are associated with over-time positive change, i.e. an increase in PSM-enabled productivity. In addition, the between-person effect of PSM invasion was statistically significant, indicating that those individuals who were invaded also reported higher PSM-enabled productivity compared to those who were not (B = 0.56; p < 0.001). No statistically significant within-person or between-person association to work exhaustion was discovered.

Out of other variables of our model, work engagement had both within-person (B = 0.02; p = 0.002) and between-person (B = 0.07; p < 0.001) effect on PSM-enabled productivity. More highly educated people (B = 0.89, p = 0.003) and individuals with open personality (B = 0.08; p = 0.022) reported higher PSM-enabled productivity than others. Industrial sector workers (B = −0.57; p = 0.015) and conscientious individuals (B = −0.11; p = 0.011) reported lower PSM-enabled productivity than others.

Descriptive results of our additional analyses showed an increase in the dependent variable of PSM-enabled productivity during the COVID-19 pandemic in Spring 2020 – Spring 2021 (see Table 1). This increase was also statistically significant in our statistical models (B = 0.24; p = 0.011; see Table 2). In addition to the dependent variable, we analyzed whether the effects of the three main independent variables were stronger or different before and during the COVID-19 period. However, the main independent variables of PSM invasion, work engagement, and work exhaustion showed no statistically significant differences in the effects between the time points. Hence, these results underline the relevance of the main effects of this study.

5. Discussion

This study investigated the longitudinal effects of PSM invasion, work engagement and work exhaustion on PSM-enabled productivity at work. The study, based on technostress literature, focused specifically on the concept of perceived technology-enabled productivity and technology invasion (e.g. Ragu-Nathan et al., 2008; Tarafdar et al., 2019). In addition, the study combined theories of work engagement, burnout, job demands and job resources (e.g. Bakker et al., 2014; Demerouti et al., 2001; Schaufeli and Bakker, 2004a).

H1 examined whether PSM invasion predicts low PSM-enabled productivity. The hypothesis was based on the dominant view in the prior literature of the negative consequences of technology and social media invasion on productivity (Tarafdar et al., 2007, 2015; Tu et al., 2005; Yu et al., 2018). Notably, the first hypothesis was not supported by our findings. On the contrary, we found within-person effects indicating that an increase in PSM invasion leads to higher PSM-enabled productivity. Besides this, we also found between-person effects showing that invaded workers reported that PSM enhances their work quality and performance and helps them accomplish more than would otherwise be possible. Remarkably, this positive association was not found among those workers less invaded. As suggested by prior research, this positive aspect of PSM invasion may be explained by employees' ability to manage and combine their work and private boundaries effectively (Fieseler et al., 2015; Leonardi et al., 2013; Ollier-Malaterre et al., 2013; van Zoonen et al., 2016b).

H2 investigated whether high work exhaustion would predict lower PSM-enabled productivity. Our findings did not support the second hypothesis either. No association between work exhaustion and PSM-enabled productivity was established. This is a noteworthy finding, as prior studies suggest that technostress can manifest strain and exhaustion (Ayyagari et al., 2011), which in turn are associated with lower productivity (Tarafdar et al., 2010, 2015). As noted in previous studies, technology-related demands such as constant connectivity, notifications and after-hour work can decrease productivity (Tarafdar et al., 2007, 2015; Tu et al., 2005). The current nonexistent relationship between exhaustion and decreased PSM-enabled productivity might be explained by the role of social media as a resource-boosting vehicle for productivity (Ali-Hassan et al., 2015; Leftheriotis and Giannakos, 2014; Olmstead et al., 2015).

With H3, we examined whether high work engagement predicts high PSM-enabled productivity. We did find support for the third hypothesis. Moreover, we found that work engagement had both within-person and between-person effects indicating that positive over time changes in work engagement are associated with an increase of PSM-enabled productivity, and individuals reporting higher work engagement have higher PSM enabled productivity. Moreover, individuals with open personalities and higher education reported higher PSM-enabled productivity than others. The relationship between work engagement and PSM-enabled productivity can be explained by the possibility of employees deciding for themselves when and where they should engage with their work considering other factors—for example, family duties, which can boost their work engagement, work performance and productivity (Fusi and Feeney, 2018; Leftheriotis and Giannakos, 2014; Nisar et al., 2019; Oksa et al., 2020). These results indicate that work engaged employees have resources and energy to perform well in their work.

6. Study implications

The current study considers several theoretical and practical implications for scholars, social media users, practice and work life.

6.1 Theoretical implications

Although there are recent articles on holistic technostress (Califf et al., 2020; Fischer and Riedl, 2017; Tarafdar et al., 2019), the current technostress literature is limited in terms of empirically examining the positive side of technostress, especially related to PSM-enabled productivity and PSM invasion, to which this study contributed. Prior research (Brooks, 2015; Brooks and Califf, 2017; Maier et al., 2015) has explored personal social media usage in a work context and the relation to performance and productivity, but the literature is lacking on the evidence regarding PSM, which this study aimed to add. One of the strengths of this study is also that we were able to measure PSM-enabled productivity longitudinally prior to and during the COVID-19 pandemic. Our longitudinal results are strong and generalizable, and the main investigated effects were equally strong in the pre-pandemic era, and these are contributing to the current literature.

Our study revealed that PSM invasion has positive outcomes—i.e. PSM-enabled productivity, contrary to our hypothesis 1. This finding seems to also deviate significantly from the prior technostress literature, which has underlined the negative role of PSM invasion (e.g. Fischer and Riedl, 2017; Maier et al., 2015; Tarafdar et al., 2015). The positive side of technostress has indeed received very little attention (Califf et al., 2020; Fischer and Riedl, 2017; Tarafdar et al., 2019), especially in a work life context. There are only a few studies on the positive aspects of PSM invasion in private life (e.g. van Zoonen and Banghart, 2018; van Zoonen et al., 2016b). In this way, we offer one answer to the calls for empirically exploring the positive side of technostress (Srivastava et al., 2015; Tarafdar et al., 2019) by detailing the complexity of both positive and negative outcomes in the context of PSM invasion.

Our results provide further evidence with a strong longitudinal and nationally representative dataset that technostress and social media invasion in the work life context have a positive side despite the global COVID-19 pandemic. Hence, the study introduces the need for researchers to focus on employees' mixed psychological and behavioral responses in relation to PSM invasion. Our findings support the prior research on the positive relationship between social media use to psychologically detach from pandemic stress and enhanced psychological well-being (Mäntymäki and Riemer, 2016). However, the social media use as coping strategy against COVID-19 stressors can induce social networking site exhaustion and, in turn, reduce the use (Islam et al., 2022).

To further extend prior technostress research in the work life context, we utilized longitudinal data and found that the effects of social media invasion persist over time. Hence, we address researchers' calls for longitudinal technostress studies that can explore the potentially long-lasting consequences of techno-stressors' (Fischer and Riedl, 2017; Tarafdar et al., 2015) by uncovering that social media invasion at a given point in time explained PSM-enabled productivity at other time points. Such findings about the longevity of the invasion's positive effects imply that work-related techno-stressors may be even more influential than previously thought.

We also investigated the previously less studied association of work engagement and PSM-enabled productivity indicating a positive within-person and between-person relationship between the two. Recent studies imply that social media usage for work purposes can enhance employees' engagement in work (Oksa et al., 2020, 2021). Furthermore, studies on work engagement suggest that engaged employees are satisfied with their work (e.g. Schaufeli et al., 2002), and work engagement has also been linked to enhanced work productivity (Bakker and Bal, 2010; Christian et al., 2011; Hakanen and Koivumäki, 2014; Halbesleben and Wheeler, 2008; Harter et al., 2002; Rich et al., 2010; Shimazu et al., 2018). Our results enforce these prior findings and contribute by showing this positive relationship in the PSM context. The findings also demonstrate that the increasing relationship between work engagement and PSM-enabled productivity persists over time, i.e. there were no statistically significant differences on the effects of work engagement between the time points.

Moreover, the relationship between work engagement and PSM-enabled productivity can be explained by employees' opportunities for autonomously used social media, irrespective of time and space. Thus, our findings also provide opposing evidence to prior studies (van Zoonen and Banghart, 2018) regarding technology-enabled boundary management conflicts between work and private lives. These opposing findings may result from the investigation of different work technologies since social media notably differs from traditional work systems due to its ubiquitous characteristics.

Notably, our findings also demonstrate that work exhaustion is not associated with lower PSM-enabled productivity. The results provide contradicting evidence to the current technostress literature, which proposes that the invasive nature of technology is a core element merely creating negative technostress and outcomes such as work exhaustion which, in turn, can lower work productivity (Maier et al., 2015; Tarafdar et al., 2007, 2015). However, there are studies indicating only weak or no significant negative relationships between work exhaustion and productivity (Demerouti and Cropanzano, 2010; Hakanen and Koivumäki, 2014). Hence, our results support these findings and provide new insights to this relationship in PSM context.

This finding is also outstanding considering the mental burden of COVID-19 and changed working conditions for workers around the globe, which have raised concerns on how to maintain employees' well-being and how to support them in mitigating stress (Fieseler et al., 2014; Spagnoli et al., 2020). After all, increased technology and social media use has induced technostress during COVID-19 (Camacho and Barrios, 2022; Oksanen et al., 2021), but has also been regarded as a tool for maintaining work performance (Saleem et al., 2021) and well-being (Mäntymäki and Riemer, 2016; Oksa et al., 2021).

6.2 Practical implications

Our findings provide implications for practice and work life. The results are very timely and significant considering the current outbreak of COVID-19 and increased use of technology and social media for work purposes from home, which can blur the boundaries of private and work life. Although PSM invasion can cause negative psychological consequences such as strain and exhaustion for employees, our results showed that PSM invasion can improve employees' PSM-enabled productivity. This PSM-enabled productivity means that employees feel that social media can enable them to accomplish more work than would otherwise be possible. This could be because information is easily available, collaboration is effortless between colleagues and stakeholders and work can be completed flexibly wherever and whenever. Hence, in work life it is important to acknowledge the positive side of PSM invasion and that it can boost employees' feelings of working productively.

The possibility of managing the boundaries of work and private life and effectively combine the two can empower employees' performance. For practitioners, it is important to recognize that PSM use and invasion can be a significant positive factor for organizations and their working practices. Notably, the experience of PSM-enabled productivity is higher for employees engaged at work. As job resources have been demonstrated to foster work engagement (e.g. Demerouti et al., 2001; Hakanen et al., 2008a, b), it is important to promote job resources, such as autonomy and the possibility to participate in decision-making at workplaces. Both work-related and nonwork-related social media communication have been associated with enhanced work engagement (Oksa et al., 2020, p. 201); therefore, encouraging social media use and having such communication within organizations is recommended.

7. Limitations and future work

This study is subject to certain limitations. First, we chose to focus on employees' perceptions and thus employed self-reported data. Although stress can also be studied with physiological measures, stress is considered a subjective phenomenon (Lazarus and Folkman, 1984), and similar research designs with self-reported data have been considered reliable for studying technostress (Ayyagari et al., 2011; Maier et al., 2015; Tarafdar et al., 2015). In addition, a body of research has demonstrated that self-assessment is a valid method for measuring productivity (Bortoluzzi et al., 2018; Gardner et al., 2016; Haynes, 2007). Furthermore, we ran standard analyses on data quality prior to the main analysis and did not find any major issues. Second, our findings reflect Finnish employees. There may be cultural differences regarding employees' experiences of social media invasion and the related factors. Therefore, cross-national investigation on social media invasion could be a potential arena for future research.

8. Conclusion

In conclusion, this nationwide longitudinal study has revealed that PSM invasion has a direct positive association with PSM-enabled productivity with within-person and between-person effects. The findings provide new insights for theory and practice because they highlight that PSM invasion is not only a negative factor but more a positive factor, as it can increase PSM-enabled productivity even in times of the COVID-19 pandemic. Furthermore, PSM-enabled productivity and work engagement were positively associated, indicating both within-person and between-person effects. These findings provide new and timely knowledge for research in technostress and employee well-being with practical implications. Hence, we suggest that PSM use related positive outcomes, in addition to the stress potential, should be recognized in work life and should be investigated further.

Figures

The proposed model based on hypotheses

Figure 1

The proposed model based on hypotheses

The estimated model based on hypotheses

Figure 2

The estimated model based on hypotheses

Descriptive statistics of main study variables

Outcome variableRangeT1, mean (SD)T2, mean (SD)T3, mean (SD)T4, mean (SD)T5, mean (SD)
PSM-enabled productivity3–217.40 (4.51)7.43 (4.56)7.76 (4.62)7.77 (4.55)7.61 (4.60)
Continuous predictorsRangeT1, mean (SD)T2, mean (SD)T3, mean (SD)T4, mean (SD)T5, mean (SD)
PSM invasion3–216.96 (4.09)7.09 (4.28)7.16 (4.25)7.06 (4.24)6.84 (4.14)
Work engagement0–5438.66 (12.25)38.89 (12.35)39.51 (11.73)38.39 (12.14)38.16 (12.09)
Work exhaustion0–3014.53 (7.70)14.41 (7.75)13.76 (7.42)14.11 (7.60)13.88 (7.73)
Categorical predictorsCodingT1, %T2, %T3, %T4, %T5, %
Supervisor0/121.0920.8319.9219.9218.10
Remote work (≥3 days a week)0/14.955.2111.2024.4833.59

Hybrid models showing within-person and between-person effects on professional social media-enabled productivity

BRobust SE (B)95%CIp
Within-person variables
PSM invasion0.380.030.320.44<0.001
Work engagement0.020.010.010.040.007
Work exhaustion0.000.01−0.030.020.913
Remote work0.380.20−0.020.780.061
Supervisor0.190.27−0.350.720.491
Between-person variables
PSM invasion0.560.040.470.64<0.001
Work engagement0.070.010.040.10<0.001
Work exhaustion0.020.02−0.020.060.330
Remote work0.400.47−0.531.330.401
Supervisor0.260.31−0.350.870.401
Controls
Female−0.360.24−0.830.120.139
Age−0.020.01−0.040.000.098
MA degree or higher0.890.300.301.480.003
Industrial sector−0.570.23−1.03−0.110.015
Openness0.080.040.010.160.022
Conscientiousness−0.110.04−0.19−0.020.011
Extroversion0.040.03−0.030.100.252
Agreeableness−0.010.04−0.090.070.870
Neuroticism−0.040.04−0.120.040.293
COVID-19-time (T3–T5)0.250.100.060.440.011

Note(s): Statistically significant correlations (p < 0.05) highlighted with italics

Appendix Key measures used in the study

Professional Social Media-Enabled Productivity

Social media helps me improve the quality of my work.

Social media helps me to accomplish more work than would otherwise be possible.

Social media helps me to perform my job better.

Response options range from 1 completely disagree to 7 completely agree.

Professional Social Media Invasion

Due to social media I need to be always in touch.

I feel my personal life is being invaded by social media.

I have to sacrifice my time to keep current on new social media developments.

Response options range from 1 completely disagree to 7 completely agree.

Utrecht Work Engagement Scale (UWES)

At my work, I feel bursting with energy.

At my job, I feel strong and vigorous.

I am enthusiastic about my job.

My job inspires me.

When I get up in the morning, I feel like going to work.

I feel happy when I am working intensely.

I am proud on the work I do.

I am immersed in my work.

I get carried away when I'm working.

Response options: Never [0], A few times a year or less [1], Once a month or less [2], A few times a month [3], One a week [4], A few times a week [5], Every day [6]

Work Exhaustion from Maslach Burnout Indicator (MBI-GS)

I feel emotionally drained from my work.

I feel used up at the end of the workday.

I feel tired when I get up in the morning and have to face another day on the job.

Working all day is really a strain for me.

I feel burned out from my work.

Response options: Never [0], A few times a year or less [1], Once a month or less [2], A few times a month [3], One a week [4], A few times a week [5], Every day [6]

References

Ali, A., Bahadur, W., Wang, N., Luqman, A. and Khan, A.N. (2020), “Improving team innovation performance: role of social media and team knowledge management capabilities”, Technology in Society, Vol. 61, 101259, doi: 10.1016/j.techsoc.2020.101259.

Ali-Hassan, H., Nevo, D. and Wade, M. (2015), “Linking dimensions of social media use to job performance: the role of social capital”, The Journal of Strategic Information Systems, Vol. 24 No. 2, pp. 65-89, doi: 10.1016/j.jsis.2015.03.001.

Ayyagari, R., Grover, V. and Purvis, R. (2011), “Technostress: technological antecedents and implications”, MIS Quarterly, Vol. 35 No. 4, pp. 831-858, doi: 10.2307/41409963.

Bakker, A.B. (2011), “Evidence-based model of work engagement”, Current Directions of Psychological Science, Vol. 20 No. 4, doi: 10.1177/0963721411414534.

Bakker, A.B. and Bal, P.M. (2010), “Weekly work engagement and performance: a study among starting teachers”, Journal of Occupational and Organizational Psychology, Vol. 83, pp. 183-206, doi: 10.1348/096317909X402596.

Bakker, A.B. and Oerlemans, W. (2011), “Subjective well-being in organizations”, in Cameron, K.S. and Spreitzer, G.M. (Eds), The Oxford Handbook of Positive Organizational Scholarship, Oxford University Press, New York, NY, pp. 178-189, doi: 10.1093/oxfordhb/9780199734610.013.0014.

Bakker, A.B., Demerouti, E. and Euwema, M.C. (2005), “Job resources buffer the impact of job demands on burnout”, Journal of Occupational Health Psychology, Vol. 10 No. 2, pp. 170-180, doi: 10.1037/1076-8998.10.2.170.

Bakker, A.B., Demerouti, E. and Sanz-Vergel, A.I. (2014), “Burnout and work engagement: the JD-R approach”, Annual Review of Organizational Psychology and Organizational Behavior, Vol. 1, pp. 389-411, doi: 10.1146/annurev-orgpsych-031413-091235.

Barber, L.K., Conlin, A.L. and Santuzzi, A.M. (2019), “Workplace telepressure and work-life balance outcomes: the role of work recovery experiences”, Stress and Health, Vol. 35 No. 3, pp. 1-13, doi: 10.1002/smi.2864.

Barnes, S. (2020), “Information management research and practice in the post-COVID-19 world”, International Journal of Information Management, Vol. 55, 102175, doi: 10.1016/j.ijinfomgt.2020.102175.

Bondanini, G., Giorgi, G., Ariza-Montes, A., Vega-Muñoz, A. and Andreucci-Annunziata, P. (2020), “Technostress dark side of technology in the workplace: a scientometric analysis”, International Journal of Environmental. Research and Public Health, Vol. 17 No. 21, 8013, doi: 10.3390/ijerph17218013.

Bortoluzzi, B., Carey, D., McArthur, J.J. and Menassa, C. (2018), “Measurements of workplace productivity in the office context: a systematic review and current industry insights”, Journal of Corporate Real Estate, Vol. 20 No. 4, pp. 281-301, doi: 10.1108/JCRE-10-2017-0033.

Boyer-Davis, S. (2019), The Empirical Relationship between Leadership Style and Technostress, American Society of Business and Behavioral Sciences, San Diego, available at: https://libproxy.tuni.fi/login?url=https://www.proquest.com/conference-papers-proceedings/empirical-relationship-between-leadership-style/docview/2232452932/se-2?accountid=14242

Brooks, S. (2015), “Does personal social media usage affect efficiency and well-being?”, Computers in Human Behavior, Vol. 46, pp. 26-37, doi: 10.1016/j.chb.2014.12.053.

Brooks, S. and Califf, C. (2017), “Social media-induced technostress: its impact on the job performance of it professionals and the moderating role of job characteristics”, Computer Networks, Vol. 14, pp. 14-153, doi: 10.1016/j.comnet.2016.08.020.

Bucher, E., Fieseler, C. and Suphan, A. (2013), “The stress potential of social media in the workplace”, Information, Communication and Society, Vol. 16 No. 10, pp. 1639-1667, doi: 10.1080/1369118x.2012.710245.

Califf, C.B., Sarker, S. and Sarker, S. (2020), “The bright and dark sides of technostress: a mixed-method study involving healthcare IT”, MIS Quarterly, Vol. 44 No. 2, pp. 809-856, doi: 10.25300/MISQ/2020/14818.

Camacho, S. and Barrios, A. (2022), “Teleworking and technostress: early consequences of a COVID-19 lockdown”, Cognition, Technology and Work, Vol. 24, pp. 441-457, doi: 10.1007/s10111-022-00693-4.

Cao, X. and Yu, L. (2019), “Exploring the influence of excessive social media use at work: a three-dimension usage perspective”, International Journal of Information Management, Vol. 46, pp. 83-92, doi: 10.1016/j.ijinfomgt.2018.11.019.

Carlson, J., Zivnuska, S., Harris, R.B., Harris, K.J. and Carlson, D.S. (2016), “Social media use in the workplace: a study of dual effects”, Journal of Organizational and End User Computing, Vol. 28 No. 1, pp. 15-31, doi: 10.4018/JOEUC.2016010102.

Chesley, N. (2010), “Technology use and employee assessments of work effectiveness, workload, and pace of life”, Information, Communication and Society, Vol. 13 No. 4, pp. 485-514, doi: 10.1080/13691180903473806.

Christian, M.S., Garza, A.S. and Slaughter, J.E. (2011), “Work engagement: a qualitative review and test of its relations with task and contextual performance”, Personnel Psychology, Vol. 64 No. 1, pp. 89-136, doi: 10.1111/j.1744-6570.2010.01203.x.

Cooper, C.L., Dewe, P.J. and O’Driscoll, M.P. (2001), Organizational Stress: A Review and Critique of Theory, Research, and Applications, Sage Publications, Thousand Oaks.

Del Bosque, D. (2013), “Will you be my friend? Social networking in the workplace”, New Library World, Vol. 114 Nos 9/10, pp. 428-442, doi: 10.1108/NLW-04-2013-0033.

Demerouti, E. and Cropanzano, R. (2010), “From thought to action: employee work engagement and job performance”, in Bakker, A.B. and Leiter, M.P. (Eds), Work Engagement: A Handbook of Essential Theory and Research, Psychology Press, New York, NY, pp. 147-163.

Demerouti, E., Bakker, A.B., Nachreiner, F. and Schaufeli, W.B. (2001), “The job demands- resources model of burnout”, Journal of Applied Psychology, Vol. 86 No. 3, pp. 499-512, doi: 10.1037/0021-9010.86.3.499.

Demerouti, E., Bakker, A.B. and Bulters, A. (2004), “The loss spiral of work pressure, work-home interference and exhaustion: reciprocal relations in a three-wave study”, Journal of Vocational Behavior, Vol. 64, pp. 131-149, doi: 10.1016/S0001-8791(03)00030-7.

Diener, E., Wirtz, D., Tov, W., Kim-Prieto, C., Choi, D., Oishi, S. and Biswas-Diener, R. (2009), “New measures of well-being: flourishing and positive and negative feelings”, Social Indicators Research, Vol. 39, pp. 247-266, doi: 10.1007/978-90-481-2354-4_12.

Fieseler, C., Grubenmann, S., Meckel, M. and Mueller, S. (2014), “The leadership dimension of coping with technostress”, 47th Hawaii International Conference on System Sciences, IEEE, doi: 10.1109/HICSS.2014.73.

Fieseler, C., Meckel, M. and Ranzini, G. (2015), “Professional personae—how organizational identification shapes online identity in the workplace”, Journal of Computer-Mediated Communication, Vol. 20 No. 2, pp. 153-170, doi: 10.1111/jcc4.12103.

Fischer, T. and Riedl, R. (2017), “Technostress research: a nurturing ground for measurement pluralism?”, Communications of the Association for Information Systems, Vol. 40, pp. 375-401, doi: 10.17705/1CAIS.04017.

Fusi, F. and Feeney, M.K. (2018), “Social media in the workplace information exchange, productivity, or waste?”, American Review of Public Administration, Vol. 48 No. 5, pp. 395-412, doi: 10.1177/0275074016675722.

Gardner, B., Dale, A.M., Buckner-Petty, S., Van Dillen, L., Amick, B. and Evanoff, B. (2016), “Comparison of employer productivity metrics to lost productivity estimated by commonly used questionnaires”, Journal of Occupational and Environmental Medicine, Vol. 58 No. 2, pp. 170-177, doi: 10.1097/JOM.0000000000000587.

Hahn, E., Gottschling, J. and Spinath, F.M. (2012), “Short measurements of personality–validity and reliability of the GSOEP Big Five Inventory (BFI-S)”, Journal of Research in Personality, Vol. 46 No. 3, pp. 355-359, doi: 10.1016/j.jrp.2012.03.008.

Hakanen, J. and Koivumäki, J. (2014), “Engaged or exhausted—how does it affect dentists' clinical productivity”, Burnout Research, Vol. 1 No. 1, pp. 12-18, doi: 10.1016/j.burn.2014.02.002.

Hakanen, J., Perhoniemi, R. and Toppinen-Tanner, S. (2008a), “Positive gain spirals at work: from job resources to work engagement, personal initiative and work-unit innovativeness”, Journal of Vocational Behavior, Vol. 73 No. 1, pp. 78-91, 10.1016/j.jvb.2008.01.003.

Hakanen, J., Schaufeli, W.B. and Ahola, K. (2008b), “The job demands-resources model: a three-year cross-lagged study of burnout, depression, commitment, and work engagement”, Work and Stress, Vol. 22 No. 3, pp. 224-241, doi: 10.1080/02678370802379432.

Halbesleben, J.R. and Bowler, W.M. (2007), “Emotional exhaustion and job performance: the mediating role of motivation”, Journal of Applied Psychology, Vol. 92 No. 1, pp. 93-106, doi: 10.1037/0021-9010.92.1.93.

Halbesleben, J.R.B. and Wheeler, A.R. (2008), “The relative role of engagement and embeddedness in prediction job performance and turnover intention”, Work Stress, Vol. 22 No. 3, pp. 242-256, doi: 10.1080/02678370802383962.

Harter, J.K., Schmidt, F.L. and Hayes, T.L. (2002), “Business-unit-level relationship between employees satisfaction, employee engagement, and business outcomes: a meta-analysis”, Journal of Applied Psychology, Vol. 87 No. 2, pp. 268-279, doi: 10.1037/0021-9010.87.2.268.

Haynes, B.P. (2007), “An evaluation of office productivity measurement”, Journal of Corporate Real Estate, Vol. 9 No. 3, pp. 144-156, doi: 10.1108/14630010710845730.

Hobfoll, S. (2001), “The influence of culture, community, and the nested-self in the stress process: advancing conservation of resources theory”, Applied Psychology, Vol. 50 No. 3, pp. 337-421, doi: 10.1111/1464-0597.00062.

Islam, N.K., Mäntymäki, M., Laato, S. and Turel, O. (2022), “Adverse consequences of emotional support seeking through social network sites in coping with stress from a global pandemic”, International Journal of Information Management, Vol. 62, p. 102431, doi: 10.1016/j.ijinfomgt.2021.102431.

Kang, K. and Beydoun, G. (2021), “How the structures provided by social media enable collaborative outcomes: a study of service co-creation in nonprofits”, Information Systems Frontiers, Vols 1-19, doi: 10.1007/s10796-020-10090-9.

Koch, H., Gonzalez, E. and Leidner, D.E. (2012), “Bridging the work/social divide: the emotional response to organizational social networking sites”, European Journal of Information Systems, Vol. 21 No. 6, pp. 699-717, doi: 10.1057/ejis.2012.18.

Kodama, M. (2020), “Digitally transforming work styles in an era of infectious disease”, International Journal of Infomation Management, Vol. 55, 102172, doi: 10.1016/j.ijinfomgt.2020.102172.

Lazarus, R.S. (1966), Psychological Stress and the Coping Process, McGraw-Hill, New York.

Lazarus, R.S. and Folkman, S. (1984), Stress, Appraisal, and Coping, Springer, New York.

Leftheriotis, I. and Giannakos, M.N. (2014), “Using social media for work: losing your time or improving your work?”, Computers in Human Behavior, Vol. 31, pp. 134-142, doi: 10.1016/j.chb.2013.10.016.

Leidner, D.E., Gonzalez, E. and Koch, H. (2018), “An affordance perspective of enterprise social media and organization socialization”, The Journal of Strategic Information Systems, Vol. 27 No. 2, pp. 117-138, doi: 10.1016/j.jsis.2018.03.003.

Leonardi, P.M. (2020), “COVID-19 and the new technologies of organizing: digital exhaust, digital footprints, and artificial intelligence in the wake of remote work”, Journal of Management Studies, Vol. 58 No. 1, pp. 249-253, doi: 10.1111/joms.12648.

Leonardi, P.M., Huysman, M. and Steinfield, C. (2013), “Enterprise social media: definition, history and prospects for the study of social technologies in organizations”, Journal of Computer-Mediated Communication, Vol. 19 No. 1, pp. 1-19, doi: 10.1111/jcc4.12029.

Leung, L. and Zhang, R. (2017), “Mapping ICT use at home and telecommuting practices: a perspective from work/family border theory”, Telematics and Informatics, Vol. 34 No. 1, pp. 385-396, doi: 10.1016/j.tele.2016.06.001.

Liu, Y. and Bakici, T. (2019), “Enterprise social media usage: the motives and the moderating role of public social media experience”, Computers in Human Behavior, Vol. 101, pp. 163-172, doi: 10.1016/j.chb.2019.07.029.

Mäkikangas, A., Rantanen, J., Bakker, A.B., Kinnunen, M.-L., Pulkinen, L. and Kokko, K. (2015), “The circumplex model of occupational well-being: its relation with personality”, Journal for Person-Oriented Research, Vol. 1 No. 3, pp. 114-129, doi: 10.17505/jpor.2015.13.

Mäkikangas, A., Kinnunen, U., Feldt, T. and Schaufeli, W. (2016), “The longitudinal development of employee well-being: a systematic review”, Work and Stress, Vol. 30 No. 1, pp. 46-70, doi: 10.1080/02678373.2015.1126870.

Maier, C., Laumer, S., Weinert, C. and Weitzel, T. (2015), “The effects of technostress and switching stress on discontinued use of social networking services: a study of Facebook use”, Information Systems Journal, Vol. 25 No. 3, pp. 275-308, doi: 10.1111/isj.12068.

Mäntymäki, M. and Riemer, K. (2016), “Enterprise social networking: a knowledge management perspective”, International Journal of Information Management, Vol. 36 No. 6, pp. 1042-1052, doi: 10.1016/j.ijinfomgt.2016.06.009.

Maslach, C., Jackson, S. and Leiter, M.P. (1996), MBI: Maslach Burnout Inventory Manual, 3rd ed., Consulting Psychologists, Palo Alto, CA.

Maslach, C., Schaufeli, W.B. and Leiter, M.P. (2001), “Job burnout”, Annual Review of Psychology, Vol. 52, pp. 397-422, doi: 10.1146/annurev.psych.52.1.397.

Maslach, C., Jackson, S.E. and Leitner, M.P. (2018), Maslach Burnout Inventory Manual, 4th ed., Mind Garden, Menlo Park, CA.

Men, L.R., O'Neil, J. and Ewing, M. (2020), “Examining the effects of internal social media usage on employee engagement”, Public Relations Review, Vol. 46 No. 2, 101880, doi: 10.1016/j.pubrev.2020.101880.

Molino, M., Ingusci, E., Signore, F., Manuti, A., Giancaspro, M.L., Russo, V. and Cortese, C.G. (2020), “Wellbeing costs of technology use during Covid-19 remote working: an investigation using the Italian translation of the technostress creators scale”, Sustainability, Vol. 12 No. 15, 5911, doi: 10.3390/su12155911.

Nisar, T.M., Prabhakar, G. and Strakova, L. (2019), “Social media information benefits, knowledge management and smart organizations”, Journal of Business Research, Vol. 94, pp. 264-272, doi: 10.1016/j.jbusres.2018.05.005.

Norstat (2021), “Client panels”, available at: https://norstatgroup.com/offering/client-panels (accessed 27 January 2021).

Oksa, R., Kaakinen, M., Savela, N., Ellonen, N. and Oksanen, A. (2021), “Professional social media usage: work engagement perspective”, New Media and Society, Vol. 23 No. 8, pp. 2303-2326, doi: 10.1177/1461444820921938.

Oksa, R., Kaakinen, M., Savela, N., Hakanen, J. and Oksanen, A. (2021), “Professional social media usage and work engagement: a four-wave follow-up study of Finnish professionals before and during the COVID-19 outbreak”, Journal of Medical Internet Research, Vol. 23 No. 6, doi: 10.2196/29036.

Oksanen, A., Oksa, R., Savela, N., Kaakinen, M. and Ellonen, N. (2020), “Cyber-bullying victimization at work: social media identity bubble approach”, Computers in Human Behavior, Vol. 109, August, doi: 10.1016/j.chb.2020.106363.

Oksanen, A., Oksa, R., Savela, N., Mantere, E. and Kaakinen, M. (2021), “COVID-19 crisis and digital stressors at work: a longitudinal study on the Finnish working population”, Computers in Human Behavior, Vol. 122, 106853, doi: 10.1016/j.chb.2021.106853.

Ollier-Malaterre, A., Rothbard, N.P. and Berg, J.M. (2013), “When worlds collide in cyberspace: how boundary work in online social networks impacts professional relationships”, Academy of Management Review, Vol. 38 No. 4, pp. 645-669, doi: 10.5465/amr.2011.0235.

Olmstead, K., Lampe, C. and Ellison, N.B. (2015), “Social media and the workplace. New platforms can be tools for connection with colleagues and outside experts, but can also serve as distractions while on the job”, Pew Research Centre, available at: http://assets.pewresearch.org/wp-content/uploads/sites/14/2016/06/PI_2016.06.22_Social-Media-and-Work_FINAL.pdf

Ragu-Nathan, T.S., Tarafdar, M., Ragu-Nathan, B.S. and Qiang, T. (2008), “The consequences of technostress for end users in organizations: conceptual development and empirical validation”, Information Systems Research, Vol. 19 No. 4, pp. 417-433, doi: 10.1287/isre.1070.0165.

Rich, B.L., Lepine, J.A. and Crawford, E.R. (2010), “Job engagement: antecedents and effects on job performance”, Academy of Management Journal, Vol. 53 No. 53, pp. 617-635, doi: 10.5465/amj.2010.51468988.

Russell, J.A. (1980), “A circumplex model of affect”, Journal of Personality and Social Psychology, Vol. 39, pp. 1161-1178, doi: 10.1037/h0077714.

Russell, J.A. (2003), “Core affect and the psychological construction of emotion”, Psychological Review, Vol. 110, pp. 145-172, doi: 10.1037/0033-295X.110.1.145.

Ryff, C.D. (1989), “Happiness in everything, or is it? Exploration of the meaning of psychological well-being”, Journal of Personality and Social Psychology, Vol. 57 No. 6, pp. 1069-1081, doi: 10.1037/0022-3514.57.6.1069.

Salanova, M., Del Libano, M., Llorens, S. and Schaufeli, W. (2014), “Engaged, workaholic, burned-out or just 9-to-5? Toward a typology of employee well-being”, Stress and Health, Vol. 30 No. 1, pp. 71-81, doi: 10.1002/smi.2499.

Saleem, F., Malik, M.I., Qureshi, S.S., Farid, M.F. and Qamar, S. (2021), “Technostress and employee performance nexus during COVID-19: training and creative self-efficacy as moderators”, Frontiers in Psychology, Vol. 12, 595119, doi: 10.3389/fpsyg.2021.595119.

Salo, M., Pirkkalainen, H. and Koskelainen, T. (2019), “Technostress and social networking services: explaining users' concentration, sleep, identity, and social relation problems”, Information Systems Journal, Vol. 29 No. 2, pp. 408-435, doi: 10.1111/isj.12213.

Schaufeli, W.B. and Bakker, A.B. (2004a), “Job demands, job resources, and their relationship with burnout and engagement: a multi-sample study”, Journal of Organizational Behaviour, Vol. 25 No. 3, pp. 293-315, doi: 10.1002/job.248.

Schaufeli, W.B. and Bakker, A.B. (2004b), UWES Utrecht Work Engagement Scale. Preliminary Manual [Version 1.1, December 2004], Utrecht University: Occupational Health Psychology Unit, available at: www.wilmarschaufeli.nl/publications/Schaufeli/Test/%20Manuals/Test_manual_UWES_English.pdf

Schaufeli, W.B., Salanova, M., Gonzales-Roma, V. and Bakker, A.B. (2002), “The measurement of engagement and burnout: a two sample confirmative factor analytic approach”, Journal of Happiness Studies, Vol. 3 No. 1, pp. 71-92, doi: 10.1023/A:1015630930326.

Schunck, R. (2013), “Within and between estimates in random-effects models: advantages and drawbacks of correlated random effects and hybrid models”, The Stata Journal: Promoting Communications on Statistics and Stata, Vol. 13 No. 1, pp. 65-76, doi: 10.1177/1536867X1301300105.

Schunck, R. and Perales, F. (2017), “Within- and between-cluster effects in generalized linear mixed models: a discussion of approaches and the xthybrid command”, The Stata Journal: Promoting Communications on Statistics and Stata, Vol. 17 No. 1, pp. 89-115, doi: 10.1177/1536867X1701700106.

Seppälä, P., Mauno, S., Feldt, T., Hakanen, J., Kinnunen, U., Tolvanen, A. and Schaufeli, W. (2009), “The construct validity of the Utrecht work engagement scale: multi-sample and longitudinal evidence”, Journal of Happiness Studies, Vol. 10 No. 4, pp. 459-481, doi: 10.1007/s10902-008-9100-y.

Sharma, A. and Bhatnagar, J. (2016), “Enterprise social media at work: web-based solutions for employee engagement”, Human Resource Management International Digest, Vol. 24 No. 7, pp. 16-19, doi: 10.1108/HRMID-04-2016-0055.

Shimazu, A., Schaufeli, W.B., Kubota, K., Watanabe, K. and Kawakami, N. (2018), “Is too much work engagement detrimental? Linear or curvilinear effects on mental health and job performance”, PLoS ONE, Vol. 13 No. 12, e0208684, doi: 10.1371/journal.pone.0208684.

Shirom, A. (2005), “Reflections on the study of burnout”, Work and Stress, Vol. 19, pp. 263-270, doi: 10.1080/02678370500376649.

Spagnoli, P., Molino, M., Molinaro, D., Giancaspro, L., Manuti, A. and Ghislieri, C. (2020), “Workaholism and technostress during the COVID-19 emergency: the crucial role of the leaders on remote working”, Frontiers in Psychology, doi: 10.3389/fpsyg.2020.620310.

Srivastava, S.C., Chandra, S. and Shirish, A. (2015), “Technostress creators and job outcomes: theorising the moderating influence of personality traits”, Information Systems Journal, Vol. 25 No. 4, pp. 355-401, doi: 10.1111/isj.12067.

Sun, Y., Wang, C. and Jeyaraj, A. (2020), “Enterprise social media affordances as enablers of knowledge transfer and creative performance: an empirical study”, Telematics and Informatics, Vol. 51, 101402, doi: 10.1016/j.tele.2020.101402.

Swider, B.W. and Zimmerman, R.D. (2010), “Born to burnout: a meta-analytic path model of personality, job burnout, and work outcomes”, Journal of Vocational Behavior, Vol. 76 No. 3, pp. 487-506, doi: 10.1016/j.jvb.2010.01.003.

Tams, S., Ahuja, M., Thatcher, J. and Grover, V. (2020), “Worker stress in the age of mobile technology: the combined effects of perceived interruption overload and worker control”, Journal of Strategic Information Systems, Vol. 29 No. 1, 101595, doi: 10.1016/j.jsis.2020.101595.

Tarafdar, M., Tu, Q., Ragu-Nathan, B.S. and Ragu-Nathan, T.S. (2007), “The impact of technostress on role stress and productivity”, Journal of Management Information Systems, Vol. 24, pp. 301-328, doi: 10.2753/MIS0742-1222240109.

Tarafdar, M., Tu, Q. and Ragu-Nathan, T.S. (2010), “Impact of technostress on end-user satisfaction and performance”, Journal of Management Information Systems, Vol. 27, pp. 303-334, doi: 10.2307/29780194.

Tarafdar, M., Pullins, E.B. and Ragu-Nathan, T.S. (2015), “Technostress: negative effect on performance and possible mitigations”, Information Systems Journal, Vol. 25 No. 2, pp. 103-132, doi: 10.1111/isj.12042.

Tarafdar, M., Cooper, C.L. and Stich, J.F. (2019), “The technostress trifecta—techno eustress, techno distress and design: theoretical directions and an agenda for research”, Information Systems Journal, Vol. 29 No. 1, pp. 6-42, doi: 10.1111/isj.12169.

Tarafdar, M., Maier, C., Laumer, S. and Weitzel, T. (2020a), “Explaining the link between technostress and technology addiction for social networking sites: a study of distraction as a coping behavior”, Information Systems Journal, Vol. 30 No. 1, pp. 96-124, doi: 10.1111/isj.12253.

Tarafdar, M., Pirkkalainen, H., Salo, M. and Makkonen, M. (2020b), “Taking on the “dark side”– coping with technostress”, IT Professional, Vol. 22 No. 6, pp. 82-89, doi: 10.1109/MITP.2020.2977343.

Taris, T.W. (2006), “Is there a relationship between burnout and objective performance? A critical review of 16 studies”, Work and Stress, Vol. 20 No. 4, pp. 316-334, doi: 10.1080/02678370601065893.

Taris, W.T., Le Blanc, P.M., Schaufeli, W.B. and Schreurs, P.J.G. (2005), “Are there causal relationships between the dimensions of the Maslach Burnout Inventory? A review and two longitudinal tests”, Work and Stress, Vol. 19 No. 3, pp. 238-255, doi: 10.1080/02678370500270453.

Tu, Q., Wang, K. and Shu, Q. (2005), “Computer-related technostress in China”, Communications of the ACM, Vol. 48 No. 4, pp. 77-81, doi: 10.1145/1053291.1053323.

Van Horn, J.E., Taris, T.W., Schaufeli, W.B. and Schreurs, P.J. (2004), “The structure of occupational well-being: a study among Dutch teachers”, Journal of Occupational and Organizational Psychology, Vol. 77 No. 3, pp. 365-375, doi: 10.1348/0963179041752718.

van Zoonen, W. and Banghart, S. (2018), “Talking engagement into being: a three-wave panel study linking boundary management preferences, work communication on social media, and employee engagement”, Journal of Computer-Mediated Communication, Vol. 23 No. 5, pp. 278-293, doi: 10.1093/jcmc/zmy014.

van Zoonen, W., Verhoeven, J.W.M. and Vliegenthart, R. (2016a), “Social media's darkside: including boundary conflicts”, Journal of Managerial Psychology, Vol. 31 No. 8, pp. 1297-1311, doi: 10.1108/JMP-10-2015-0388.

van Zoonen, W., Verhoeven, J.W.M. and Vliegenthart, R. (2016b), “How employees use Twitter to talk about work: a typology of work-related tweets”, Computers in Human Behavior, Vol. 55, Part A, pp. 329-339, doi: 10.1016/j.chb.2015.09.021.

van Zoonen, W., Verhoeven, J.W.M. and Vliegenthart, R. (2017), “Understanding the consequences of public social media use for work”, European Management Journal, Vol. 35 No. 5, pp. 595-605, doi: 10.1016/j.emj.2017.07.006.

Virga, D., Schaufeli, W.B., Taris, T.W., van Beek, I. and Sulea, C. (2019), “Attachment styles and employee performance: the mediating role of burnout”, The Journal of Psychology, Vol. 153 No. 4, pp. 383-401, doi: 10.1080/00223980.2018.1542375.

Warr, P.B. (1994), “A conceptual framework for the study of work and mental health”, Work and Stress, Vol. 8 No. 2, pp. 84-97, doi: 10.1080/02678379408259982.

Warr, P. (2007), Work, Happiness, and Unhappiness, Lawrence Erlbaum, Mahwah, NJ.

Yu, L., Cao, X., Liu, Z. and Wang, J. (2018), “Excessive social media use at work exploring the effects of social media overload on job performance”, Information Technology and People, Vol. 31 No. 6, pp. 1091-1112, doi: 10.1108/ITP-10-2016-0237.

Zheng, X. and Lee, M.K.O. (2016), “Excessive use of mobile social networking sites: negative consequences on individuals”, Computers in Human Behavior, Vol. 65, pp. 65-76, doi: 10.1016/j.chb.2016.08.011.

Acknowledgements

This research received funding from the Finnish Work Environment Fund (Professional Social Media Use and Work Engagement Among Young Adults Project, Project Number 118055, principal investigator: Atte Oksanen). Data collection was also partly funded by the Faculty of Social Sciences at the Tampere University. The Finnish Cultural Foundation funded Reetta Oksa.

Corresponding author

Reetta Oksa can be contacted at: reetta.oksa@tuni.fi

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