Hostname: page-component-54dcc4c588-rz4zl Total loading time: 0 Render date: 2025-10-04T06:22:38.927Z Has data issue: false hasContentIssue false

The effects of being under watch: The impact of electronic monitoring on remote workers’ psychological safety

Published online by Cambridge University Press:  28 August 2025

Monique Delfim Andrade*
Affiliation:
Faculty of Psychology and Education Sciences, University of Coimbra, Coimbra, Portugal Faculty of Psychology and Speech Therapy, University of Valencia, Valencia, Spain
Mario Martínez-Córcoles
Affiliation:
IDOCAL, University of Valencia, Valencia, Spain
Pedro Fialho
Affiliation:
Faculty of Psychology and Education Sciences, University of Coimbra, Coimbra, Portugal
Milena Guimaraes
Affiliation:
Faculty of Psychology and Education Sciences, University of Coimbra, Coimbra, Portugal IDOCAL, University of Valencia, Valencia, Spain
*
Corresponding author: Monique Delfim Andrade; Email: mdelfimandrade@gmail.com
Rights & Permissions [Opens in a new window]

Abstract

Electronic monitoring emerged as a common practice in the post pandemic telework. Whereas existing research has mainly focused on the effects of this work model on individual performance and well-being, it has overlooked how specific circumstances, such as new control dynamics, can influence employees’ behaviors. We cover this gap by investigating the relationship between electronic monitoring in telework – including its clarification by the organization and the access to data by employees – and psychological safety, which is associated with key performance behaviors such as learning, voice and knowledge-sharing. Quantitative data collected through an online survey with 382 hybrid and remote workers were analyzed. Results indicate no statistically significant differences in psychological safety levels between monitored and unmonitored groups. However, additional analyses suggest that how monitoring is implemented can be key to keeping psychological safety levels, resulting in actionable recommendations for managers and organizations to enhance telework implementation.

Information

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2025. Published by Cambridge University Press in association with Australian and New Zealand Academy of Management.

Introduction

Information and Communication Technologies have turned remote work into a possibility for decades (Bailey & Kurland, Reference Bailey and Kurland2002). It has gained the world, though, during the Covid-19 pandemic (International Labour Office, 2020a; Manokha, Reference Manokha2020). What came into many organizations as an emergency social distancing measure was actually a jump to a new work model that could have taken longer to be established in other conditions (Aloisi & De Stefano, Reference Aloisi and De Stefano2021; Delgado, Reference Delgado2022; International Labour Office, 2020a). Despite a promising beginning, workers and organizations also came across unwanted effects and difficulties (Baert, Lippens, Moens, Weytjens & Sterkens, Reference Baert, Lippens, Moens, Weytjens and Sterkens2020b; Felstead, Jewson & Walters, Reference Felstead, Jewson and Walters2003; Illegems & Verbeke, Reference Illegems and Verbeke2004; International Labour Office, 2020b). They have raised debates about how to effectively manage remote workforce and stimulated an early return to face-to-face work for some companies, as we would testify in the following years (Christian, Reference Christian2023; Sevilla, Reference Sevilla2023).

Amidst the pandemic, monitoring practices became part of the new normal, not only for those known as front line employees but also for the new teleworkers (Aloisi & De Stefano, Reference Aloisi and De Stefano2021). As telework was being consolidated, implementation of monitoring software rose dramatically (Aloisi & De Stefano, Reference Aloisi and De Stefano2021; Eurofound, 2020; International Labour Office, 2020b). To what extent these practices have an influence on employees’ attitudes is something still unclear. Hence, if the abrupt adoption of this model in the pandemic did not allow much reflection or preparation, we must now further explore the circumstances and effects related to telework in order to structure its permanent adoption.

Although much attention has been given to the effects of monitoring on trust across literature, the impact of monitoring practices on the psychological safety of employees remains scarcely observed. Psychological safety is known for being positively related to team and organizational learning, voice behavior (Edmondson & Lei, Reference Edmondson and Lei2014; Newman, Donohue & Eva, Reference Newman, Donohue and Eva2017), and knowledge-sharing behavior (Hao, Zhang, Shi & Yang, Reference Hao, Zhang, Shi and Yang2022). Also, it has been seen as a connection between trust and outcomes (Chughtai, Reference Chughtai2020; Hao et al., Reference Hao, Zhang, Shi and Yang2022; Vaida & Ardelean, Reference Vaida and Ardelean2019).

We want to understand this impact and find out if other monitoring-related practices less addressed by literature – more specifically, the clarification provided about monitoring and the access of employees to the collected data – also shape employees’ reactions. Previous research indicates that, despite its legitimate protection purposes (e.g., Abraham et al., Reference Abraham, Niessen, Schnabel, Lorek, Grimm, Möslein and Wrede2019; Aloisi & De Stefano, Reference Aloisi and De Stefano2021; Yost, Behrend, Howardson, Badger Darrow & Jensen, Reference Yost, Behrend, Howardson, Badger Darrow and Jensen2018), electronic monitoring erodes trust (Doğru, Reference Doğru2021; Holland, Cooper & Hecker, Reference Holland, Cooper and Hecker2015; Thiel, Prince & Sahatjian, Reference Thiel, Prince and Sahatjian2022) and is not connected with improved performance (Ravid, White, Tomczak, Miles & Behrend, Reference Ravid, White, Tomczak, Miles and Behrend2022; Siegel, König & Lazar, Reference Siegel, König and Lazar2022). The way monitoring is implemented can also lead to different outcomes, as suggested by some scholars (Weibel et al., Reference Weibel, Den Hartog, Gillespie, Searle, Six and Skinner2015). Yet, importantly, few studies have framed these practices in the context of post-pandemic telework (Delgado, Reference Delgado2022).

This study goes beyond the comparison between work performed from home and on-site work by acknowledging circumstances that may fundamentally alter dynamics and relationships in remote work environments (Aloisi & De Stefano, Reference Aloisi and De Stefano2021; Pianese, Errichiello & Cunha, Reference Pianese, Errichiello and Cunha2022). Specifically, we examine electronic monitoring – an increasingly common feature of contemporary telework – which can shape broader outcomes of this work model by influencing, for example, how safe employees feel to speak up and share knowledge. This is particularly relevant in the current scenario, where collaboration and innovation seem to be under threat (Gibbs, Mengel & Siemroth, Reference Gibbs, Mengel and Siemroth2024) and used as justification for return to office mandates (Gibson, Gilson, Griffith & O’Neill, Reference Gibson, Gilson, Griffith and O’Neill2023). The findings presented expand the telework literature by exploring conditions that ensure its effectiveness, aligning with calls from previous studies encouraging scholars to explore technology and control dynamics in virtual work (e.g., Gajendran, Ponnapalli, Wang & Javalagi, Reference Gajendran, Ponnapalli, Wang and Javalagi2024; Gohoungodji, N’Dri & Matos, Reference Gohoungodji, N’Dri and Matos2022; Pianese et al., Reference Pianese, Errichiello and Cunha2022). Moreover, we contribute to psychological safety literature by examining conditions that can potentially hinder its development in new work models, adding to extant research that is predominantly focused on factors that contribute to its emergence. From a practical standpoint, our findings offer actionable insights for designing telework policies that support essential organizational behaviors – even in contexts where electronic monitoring is implemented.

We first review key concepts and empirical findings on telework, electronic monitoring, and psychological safety. Next, we describe our methodology – analyzing data from 382 hybrid or fully remote workers, mainly based in Brazil. Our results suggest that monitoring itself does not imply reduced psychological safety, but monitoring-related practices such as the clarification provided to employees are associated with higher psychological safety. We conclude with theoretical and practical implications for managers navigating telework environments.

Literature review and hypotheses development

Telework

The term telecommuting was coined in the 1970s to describe a work arrangement motivated primarily by transport-related aspects (Bailey & Kurland, Reference Bailey and Kurland2002). Surprisingly, the model did not gain popularity in its beginning (Bailey & Kurland, Reference Bailey and Kurland2002; Felstead et al., Reference Felstead, Jewson and Walters2003; Kaplan, Engelsted, Lei & Lockwood, Reference Kaplan, Engelsted, Lei and Lockwood2017), which was attributed to managerial difficulties (Bailey & Kurland, Reference Bailey and Kurland2002). Until the first two decades of the 2000s, telecommuting had been adopted in very specific situations, despite formal telework programs and benefits spread by organizations. It was restricted to highly trustful, self-disciplined employees (Felstead et al., Reference Felstead, Jewson and Walters2003) and in cases necessarily encouraged by managers (Illegems & Verbeke, Reference Illegems and Verbeke2004; Rose & Brown, Reference Rose and Brown2021). In 2020, the mass adoption of remote work during the Covid-19 pandemic has noticeably changed perspectives over this model of work (ILO, 2020b; Rose & Brown, Reference Rose and Brown2021), and there was an implied consensus that it would be a definitive change in the word of labor (Baert et al., Reference Baert, Lippens, Moens, Weytjens and Sterkens2020b).

In a literature review, Leite, da Cunha Lemos and Aldir Schneider (Reference Leite, da Cunha Lemos and Aldir Schneider2019) named telework a way of working outside the physical structure of the organization, using Information and Communication Technologies, on a part-time or full-time basis. Literature presents different terminologies to refer to this idea, such as telecommuting, telework, remote work, work from home, without a clear or consensual distinction. In this paper, these names will be used interchangeably.

Benefits of telework include work flexibility (Raišienė, Rapuano, Dőry & Varkulevičiūtė, Reference Raišienė, Rapuano, Dőry and Varkulevičiūtė2021), autonomy, work–life balance, no need to commute (Manokha, Reference Manokha2020), reduction of job-related stress (Baert et al., Reference Baert, Lippens, Moens, Weytjens and Sterkens2020b; Illegems & Verbeke, Reference Illegems and Verbeke2004) improved efficiency and work concentration (Baert et al., Reference Baert, Lippens, Moens, Weytjens and Sterkens2020b), as well as productivity gains (Delgado, Reference Delgado2022; Franken et al., Reference Franken, Bentley, Shafaei, Farr-Wharton, Onnis and Omari2021). Despite that, some difficulties have been repeatedly reported by workers: concerns regarding promotion opportunities (Baert et al., Reference Baert, Lippens, Moens, Weytjens and Sterkens2020b; Illegems & Verbeke, Reference Illegems and Verbeke2004), quality of work equipment and resources (Franken et al., Reference Franken, Bentley, Shafaei, Farr-Wharton, Onnis and Omari2021), weakened relationship with direct supervisor (Illegems & Verbeke, Reference Illegems and Verbeke2004), working extra hours (ILO, 2020b), as well as harmed social and professional interaction (ILO, 2020b; Felstead et al., Reference Felstead, Jewson and Walters2003; Raišienė et al., Reference Raišienė, Rapuano, Dőry and Varkulevičiūtė2021). Recent meta-analysis including post-pandemic studies by Gajendran et al. (Reference Gajendran, Ponnapalli, Wang and Javalagi2024) found that remote work intensity is associated with both perceived autonomy and isolation. The negative impacts of the latter, however, are outweighed by the positive impacts of autonomy, so that remote work leads to beneficial outcomes such as job satisfaction, organizational commitment, supervisor-rated performance, and reduced turnover intentions.

One point that has been overlooked in the telework literature is the dynamics of control within this work model and how it can impact employees’ behaviors. Ideally, this model of work should not be based on time controlling (Moon, Reference Moon2021) but instead measure performance by outcomes (Aloisi & De Stefano, Reference Aloisi and De Stefano2021; International Labour Office, 2020a; International Labour Office, 2020b). Nonetheless, it appears that the switch for telework usually does not represent the necessary switch in hierarchical control relations – instead, it might be worsening controlling and power dynamics (Aloisi & De Stefano, Reference Aloisi and De Stefano2021). This is partly due to a constant perception that one should be available on a full-time basis (Manokha, Reference Manokha2020; Sewell & Taskin, Reference Sewell and Taskin2015) and above any suspicion or accusation (Pianese et al., Reference Pianese, Errichiello and Cunha2022). Aiming to comply with new control mechanisms, as argued by Cunha, Errichiello and Pianese (Reference Cunha, Errichiello and Pianese2023), teleworkers take the burden of producing a set of electronic representations out of records and traces of interactions to ensure visibility and reachability.

Electronic monitoring

Electronic monitoring refers to ‘the continuous gathering, examining, and/or recording of employee work-related data with technological assistance in real time and can be used, inter alia, to monitor worker behaviour, performance, safety, and health’ (Abraham et al., Reference Abraham, Niessen, Schnabel, Lorek, Grimm, Möslein and Wrede2019, p.658). These activities had been traditionally more suitable for places such as manufacturing and call centers (Sewell & Barker, Reference Sewell and Barker2006). Slowly, however, monitoring in workplaces has evolved to a broad and continuous activity in which every task is under watch – by means of, for example, the capture of keystrokes, screens, audio and video recordings (Carroll, Reference Carroll2008; Yost et al., Reference Yost, Behrend, Howardson, Badger Darrow and Jensen2018).

There is a wide range of terms used in literature to refer to monitoring. Ravid et al. (Reference Ravid, White, Tomczak, Miles and Behrend2022), who use the term Electronic Performance Monitoring (EPM), proposed a four-category division for this activity based on its purpose: (1) Performance EPM, used to strengthening performance contingencies and reduce unwanted behaviors; (2) Development EPM, to provide feedback, adjustments, and improvements; (3) Administrative and Safety EPM, meant to identify and prevent harm to employees or organizations; (4) Surveillance or Authoritarian EPM, which describes monitoring without explicit purpose. These functions are all of interest for this paper’s purpose, as long as they are made electronically. Henceforth, we will refer to all such activities simply as ‘monitoring’.

As telework adoption rose, the use of software designed specifically for monitoring outside traditional offices boomed and became more sophisticated (Aloisi & De Stefano, Reference Aloisi and De Stefano2021; Eurofound, 2020; ILO, 2020b; Manokha, Reference Manokha2020). For some authors, this is attributed to managerial challenges brought by aspects such as the lack of visibility of workers (Aloisi & De Stefano, Reference Aloisi and De Stefano2021; ILO, 2020b) – an issue commonly reported by both employees and managers (Felstead et al., Reference Felstead, Jewson and Walters2003; Hafermalz, Reference Hafermalz2020). For workers, whereas real-time visibility in the office could be a source of self-discipline and surveillance by others (Felstead et al., Reference Felstead, Jewson and Walters2003), low visibility in remote work could lead to feeling isolated, fear of being excluded from decision making or from allocation of meaningful work (Sewell & Taskin, Reference Sewell and Taskin2015), and difficulty to demonstrate honesty, reliability, and productivity (Felstead et al., Reference Felstead, Jewson and Walters2003). Indeed, teleworkers often engage in behaviors to stay visible in ways they would not do in a traditional setting, such as working extra hours (Pianese et al., Reference Pianese, Errichiello and Cunha2022; Sewell & Taskin, Reference Sewell and Taskin2015), which also can favor a higher acceptance of electronic monitoring (Felstead et al., Reference Felstead, Jewson and Walters2003).

The impacts of electronic monitoring have been extensively explored by researchers, yet with different approaches and controversial results. Authors such as Carroll (Reference Carroll2008) found a relationship with performance improvement, although her meta-analysis was more focused on monitoring as a feedback intervention. Later, Ravid et al. (Reference Ravid, White, Tomczak, Miles and Behrend2022), in meta-analysis including 94 independent samples, found no evidence that monitoring improves performance. Instead, they observed that increased stress is an outcome regardless of how monitoring is conducted. In this line, another recent meta-analysis conducted by Siegel et al. (Reference Siegel, König and Lazar2022) investigated the effects of electronic monitoring in job satisfaction, stress, performance and counterproductive work behavior, which were also the most addressed variables in previous studies. The fact of being watched slightly decreases job satisfaction among employees, slightly increases stress and CWB, and presents no relationship with performance (Siegel et al., Reference Siegel, König and Lazar2022).

Trust is also a key element in a telework reality (Felstead et al., Reference Felstead, Jewson and Walters2003; ILO, 2020b; Stephens et al., Reference Stephens, Jahn, Fox, Charoensap-Kelly, Mitra, Sutton and Meisenbach2020), considered vital for overcoming the challenges associated with lack of visibility (Felstead et al., Reference Felstead, Jewson and Walters2003). While trust fosters autonomy and collaboration, using monitoring software based on a concern with employees’ CWB and crime (Alder, Noel & Ambrose, Reference Alder, Noel and Ambrose2006; Aloisi & De Stefano, Reference Aloisi and De Stefano2021; Eurofound, 2020) can instead create an atmosphere of mistrust (Alder et al., Reference Alder, Noel and Ambrose2006). Empirical evidence suggests that the adoption of monitoring tools has a negative relationship with trust in management not only for manual employees (Holland et al., Reference Holland, Cooper and Hecker2015) but also for remote workers in the post pandemic reality (Doğru, Reference Doğru2021; Thiel et al., Reference Thiel, Prince and Sahatjian2022). Yet, research investigating this impact under the new labor settings after mass telework adoption is scarce, and further investigation is necessary.

Another noteworthy aspect of the monitoring’s impact has been pointed out by scholars such as Tomczak, Lanzo and Aguinis (Reference Tomczak, Lanzo and Aguinis2018) and Weibel et al. (Reference Weibel, Den Hartog, Gillespie, Searle, Six and Skinner2015). They argue that well implemented control systems can be minimally invasive or even enhance trust among employees, whereas poorly implemented ones can lead to a wide range of negative employee reactions. As summarized by Ambrose and Alder (Reference Ambrose and Alder2000, p. 189) ‘the technology itself is neutral; it is how the system is designed, implemented and used that affects employee reactions and the systems effectiveness.’ Further examining monitoring features can therefore provide detailed and valuable evidence to existing literature on how to shape monitoring practices and their effects in organizational behavior.

Psychological safety

Psychological safety is a concept that gained relevance in the 1990s, being mentioned by authors such as Kahn (Reference Kahn1990) in his famous study about engagement and disengagement at work. According to him, psychological safety, together with meaningfulness and availability, is one of the conditions for people to engage – employ their personal selves, cognitively and emotionally – in a workplace. ‘Psychological safety was experienced as feeling able to show and employ one’s self without fear of negative consequences to self-image, status, or career’ (Kahn, Reference Kahn1990, p. 708).

Later, Edmondson (Reference Edmondson1999) was one who further developed the concept while investigating team learning behavior. She argued that learning, ‘an ongoing process of reflection and action, characterized by asking questions, seeking feedback, experimenting, reflecting on results, and discussing errors or unexpected outcomes of actions’ (Edmondson, Reference Edmondson1999, p. 353) requires exposure and the risk of being judged or punished. Thus, for people to behave as expected to promote learning, it is essential that they feel comfortable, fearless of others’ reactions and not under threat. This ‘belief that the team is safe for interpersonal risk taking’ (Edmondson, Reference Edmondson1999, p. 354) was then called psychological safety.

When defining this construct, it is important to distinguish it from trust. Edmondson (Reference Edmondson, West, Tjosvold and Smith2003) asserts that even though they hold many similarities – as far as both involve perceptions of risk and vulnerability – there are important conceptual differences: (1) temporal immediacy – psychological safety is more focused on a short-term risk assessment whereas trust incorporates a wide temporal range; (2) focus on self versus other – psychological safety has an internal focus. It is about me being given credit to speak up. Trust, for its turn, is about me giving credit to others; (3) levels of analysis – trust is more of a dyadic relationship and psychological safety a perception that is usually shared by a team.

Research has shown a strong positive relationship of psychological safety with learning and the behavior of speaking up, also known as voice (Edmondson & Lei, Reference Edmondson and Lei2014; Newman et al., Reference Newman, Donohue and Eva2017). Performance has also been examined from multiple perspectives. A recent longitudinal study conducted by Higgins, Dobrow, Weiner and Liu (Reference Higgins, Dobrow, Weiner and Liu2020) found that psychological safety is not, on its own, associated with higher performance over time. However, there is evidence from many studies of positive relationship with performance considering three levels of analysis – individual, group, and organizational (e.g., Edmondson & Lei, Reference Edmondson and Lei2014; Newman et al., Reference Newman, Donohue and Eva2017).

Electronic monitoring and psychological safety

Psychological safety has greater relevance and value in uncertain scenarios, since it mainly involves engagement in interpersonal risks (Edmondson, Reference Edmondson2019; Edmondson & Lei, Reference Edmondson and Lei2014). In post pandemic workplaces, not only team settings were radically transformed but also widespread uncertainty and fear regarding career perspectives became prevalent (Aloisi & De Stefano, Reference Aloisi and De Stefano2021; Baert, Lippens, Moens, Sterkens & Weytjens, Reference Baert, Lippens, Moens, Sterkens and Weytjens2020a). This hostile environment can change perceptions of psychological safety. Simultaneously, it boosts its value for today’s organizations that want to achieve their aims by means of employees’ collaboration and learning behaviors.

To date, few studies have framed psychological safety under the new models of work, and there is growing evidence that it functions as an important mechanism – either as a mediator or moderator – leading to outcomes such as performance, well-being, and knowledge-sharing behavior. For instance, Gibson and Gibbs (Reference Gibson and Gibbs2006) found that psychological safety mitigates the negative effects of virtuality on innovation, highlighting its foundational role in digitally mediated collaboration. More recently, research conducted by Sjöblom, Juutinen and Mäkikangas (Reference Sjöblom, Juutinen and Mäkikangas2022) demonstrated that psychological safety acts as moderator in the relationship between self-leadership and well-being in the context of enforced telework. Hao et al. (Reference Hao, Zhang, Shi and Yang2022) found that psychological safety mediates the relationship between trust in coworkers and knowledge-sharing behavior. Interestingly, this relationship proved to be stronger in virtual environments.

Recent studies have also identified interventions with the potential of fostering psychological safety in remote settings. Seeber, Fleischmann, Cardon and Aritz (Reference Seeber, Fleischmann, Cardon and Aritz2024) found that psychological safety can be fostered in global virtual teams through two types of interventions; team-based interactions (such as peers reminding each other about deadlines) and digital reminder nudges that enhance role transparency. Lechner and Tobias Mortlock (Reference Lechner and Tobias Mortlock2022), in turn, examined how virtual teams navigate interpersonal challenges and sustain psychological safety over time. They found that relational practices – such as explicitly checking in on colleagues’ well-being, establishing shared team norms, and making time for informal connection – play a crucial role in mitigating the relational fragmentation often caused by remote work. These contributions highlight practices that enhance psychological safety in remote work; however, less is known about the organizational practices that may undermine it – a gap this study aims to address.

We draw on Edmondson’s (Reference Edmondson1999, Reference Edmondson2019) theory of psychological safety, which emphasizes trust as a necessary precondition for this perception to emerge. When organizational practices such as electronic monitoring are perceived as signals of distrust – particularly in remote settings where opportunities to build trust through informal, face-to-face interactions are limited – they may undermine the necessary conditions for psychological safety to develop. Since prior research has shown that psychological safety can buffer the negative effects of virtuality on innovation (Gibson & Gibbs, Reference Gibson and Gibbs2006), recent work has turned to identifying practices that actively foster psychological safety remote work environments (e.g., Lechner & Tobias Mortlock, Reference Lechner and Tobias Mortlock2022; Seeber et al., Reference Seeber, Fleischmann, Cardon and Aritz2024). The present study seeks to explore whether certain organizational practices – such as electronic monitoring – may have the opposite effect, constraining rather than enabling psychological safety in telework contexts. In this sense, we will first investigate whether remote monitoring practices are associated with lower levels of psychological safety perceived by remote employees.

Hypothesis 1: There is a statistically significant difference in the perceived psychological safety across monitored and unmonitored remote workers.

We expect that the unmonitored group will have higher levels of psychological safety than the monitored one. This would be similar to the effect found on trust by previous research (Doğru, Reference Doğru2021; Holland et al., Reference Holland, Cooper and Hecker2015; Thiel et al., Reference Thiel, Prince and Sahatjian2022). As trust is a key condition for psychological safety to emerge – and both are positively associated with group learning and development (Edmondson, Reference Edmondson, West, Tjosvold and Smith2003) – we anticipate that jeopardizing trust will also hamper psychological safety, which we approach here as a broader construct shaped by team dynamics. Psychological safety captures not only the presence of trust but also the individual’s willingness to take interpersonal risks in a group setting, such as voicing concerns, asking for help, or acknowledging failure. As such, it offers a richer lens through which to understand how employees experience electronic monitoring in remote work contexts and how this may affect collaboration, learning behaviors, and innovation.

Also, to check the relevance of the perception remote workers hold toward monitoring, the relationship between the perceived appropriateness of the monitoring practices and psychological safety will be verified.

Hypothesis 2: There is a positive relationship between the perceived appropriateness of the monitoring practices and the perceived psychological safety.

We expect that employees who perceive the monitoring practices as more appropriate will experience higher levels of psychological safety. Employees’ perceptions about human resources practices can shape attitudes (Nishii et al., Reference Nishii, Lepak and Schneider2008) and this can be key in unraveling the impacts of electronic monitoring on employees’ risk-taking behaviors.

One of the key aspects in monitoring implementation seems to be the prior notice or clarification provided about monitoring practices (Moon, Reference Moon2021; Tomczak et al., Reference Tomczak, Lanzo and Aguinis2018). Alder et al. (Reference Alder, Noel and Ambrose2006) pointed out that silent or covert monitoring may be the most controversial of its aspects. These authors found that advance notice was related to higher post implementation trust in a longitudinal study conducted with employees in the retail and service industry. Ravid et al. (Reference Ravid, White, Tomczak, Miles and Behrend2022) also state that if the companies are transparent toward monitoring, more positive attitudes from employees can be expected.

Together with prior communication of the rules, the access of employees to the data is another factor that can shape the acceptance of monitoring by employees (Abraham et al., Reference Abraham, Niessen, Schnabel, Lorek, Grimm, Möslein and Wrede2019). However, Siegel et al. (Reference Siegel, König and Lazar2022) found in their meta-analysis that feedback from monitoring actually worsened the negative effects of these practices in job satisfaction and stress. So far, this aspect has been less addressed by scholars and deserves deeper investigation. Ravid et al. (Reference Ravid, White, Tomczak, Miles and Behrend2022) pointed to the impact of the synchronicity of feedback from electronic monitoring as an avenue for further investigation.

To investigate the impact of specific practices, two other analyses will be carried out. First, the clarification about the adoption of monitoring provided by the organization. Second, the access of the employees to the data that has been generated by these practices, as a source of feedback.

Hypothesis 3: There is a statistically significant difference in the perceived psychological safety between those who consider the clarification provided by the organization as appropriate and those who consider it inappropriate.

Hypothesis 4: There is a statistically significant difference in the perceived psychological safety between those who have access to the collected data and those who do not have access.

We anticipate that those who received clear explanations and those with data access will report greater psychological safety. Being aware of the existence and reasoning behind electronic monitoring could shape perceptions about its use and lead to less threatening risk assumptions. Similarly, if employees can see what data is collected about them, this might be seen as less harmful or threatening. Different features and implementation methods are supposed to buffer the negative effects of monitoring, as suggested by Abraham et al. (Reference Abraham, Niessen, Schnabel, Lorek, Grimm, Möslein and Wrede2019), Ravid et al. (Reference Ravid, White, Tomczak, Miles and Behrend2022), and Weibel et al. (Reference Weibel, Den Hartog, Gillespie, Searle, Six and Skinner2015).

Method

Procedures

Data were collected by a 29-item online questionnaire, written in Portuguese and powered in Google Forms, from February to May 2023. The instrument was co-owned by a research group investigating telework and shared mainly through social media platforms – specially LinkedIn. An active search for potential respondents was also conducted, and invitations to participate in the study were send to employees of big companies in Brazil and Portugal. All invitations specified the study’s purpose, eligibility criteria, completion time, and confidentiality assurances.

Participants first consented to data use and confidentiality, then passed two screening items assessing they were currently employed and performed their tasks using Information and Communication Technologies’. All eligible respondents completed Sociodemographic, Work Model, and Psychological Safety sections; those working hybrid or full-time remotely also answered the Remote Work section, and among these, only those reporting organizational monitoring practices completed the Monitoring section.

Participants

Of 506 respondents, 463 met screening criteria, and 382 were considered valid for our research – only those who said they work in a hybrid (65.2%) or remote work model (34.8%). Participants had the following characteristics: 57.3% were female, 96.9% were Brazilian, 93.7% had at least an undergraduate degree. The average age was 34 years. Regarding work conditions, 86.9% had a permanent work contract, 67.5% work at large organizations (> 500 employees) and 24.1% are in leadership positions. 145 (37.9%) said they are monitored. The average tenure with the same organization was 5.2 years, and the average tenure in the same position was 3.9 years.

Measures

Sociodemographic data, work model, and monitoring practices

Objective questions were designed by the researchers to gather sociodemographic data and details on work model and monitoring practices. Sociodemographics included nationality, age, gender, education level, contract type (autonomous, freelancer, temporary, permanent, intern, other), employer size (small, medium, large, unknown), tenure in the organization and position (years or months), and leadership status.

Psychological Safety Scale

Psychological safety was assessed through the 7-item Team Psychological Safety Scale, developed by Edmondson (Reference Edmondson1999) and yet the most used by researchers (Edmondson & Lei, Reference Edmondson and Lei2014), which Portuguese version was used by Gari, Dimas, Lourenço and Rebelo (Reference Gari, Dimas, Lourenço, Rebelo, da Silva, Jorge and Sá2020). To preserve the validity and psychometric properties of the original instrument, answers are given on a Likert scale, varying from 1 (very inaccurate) to 7 (very accurate).

Data analyses

Preliminary analyses

Preliminary analyses were conducted to investigate the appropriateness of the Psychological Safety Scale for the present sample. First, all reverse-coded items (1, 3, and 5) were re-coded prior to analysis so that higher values consistently reflected higher levels of psychological safety. Confirmatory factor analysis was used to check for the validity of the scale’s structure and the coefficients Cronbach’s alpha and McDonalds’ omega were verified to assess reliability. These analyses were run using Jamovi 2.3.21 for Windows.

Regarding the confirmatory factor analysis, considering the characteristics of the variable, the estimation method was Maximum Likelihood (Schermelleh-Engel, Moosbrugger & Müller, Reference Schermelleh-Engel, Moosbrugger and Müller2003). Normality was considered supported when skewness and kurtosis values for the data distribution were in the range −1 to +1 (Muthén & Kaplan, Reference Muthén and Kaplan1985). The parameters considered to evaluate the fit of the model were as follows: Comparative Fit Index > .90 = acceptable, > .95 = excellent (Marsh, Hau & Grayson, Reference Marsh, Hau and Grayson2005); Tucker–Lewis Index/Non-Normed Fit Index > .90 = acceptable, > .95 = excellent (Marsh et al., Reference Marsh, Hau and Grayson2005); Standardized Root Mean Residual < .08 = acceptable (Schermelleh-Engel et al., Reference Schermelleh-Engel, Moosbrugger and Müller2003); and Root Mean Square Error of Approximation < .08 = acceptable, < .05 = satisfactory (Schermelleh-Engel et al., Reference Schermelleh-Engel, Moosbrugger and Müller2003). Scale consistency was deemed acceptable with Cronbach’s α > .70 (Nunnally, Reference Nunnally1978) and McDonald’s ω > .70 – the latter known for providing more accurate estimations of reliability due to its assumptions (McNeish, Reference McNeish2018).

Hypotheses testing analyses

Hypotheses were tested using SPSS 28.0.1.1 (14) for Windows. For Hypothesis 1, homoscedasticity was verified through Levene’s Test for Equality of Variances, for which a p value < .05 was considered significant. Normality was again checked through skewness and kurtosis values, considering acceptable if coefficients were close to the range of −1 to +1 (Muthén & Kaplan, Reference Muthén and Kaplan1985). Once assumptions of normality and homoscedasticity were supported for full sample and subsamples, a t-test verified the difference in the psychological safety means across groups, which were based on the answer (yes or no) to the question: ‘Does your organization adopt any kind of monitoring software?’ A p value < .05 was considered significant and the size effect was considered as follows: ≥ .20 = small, ≥ .50 = medium and ≥ .80 = large (Cohen, Reference Cohen1988).

Hypothesis 2 was verified by linear regression analysis, considering two quantitative scales from the questionnaire. The perceived appropriateness of the monitoring practices was assessed through the question ‘How appropriate do you consider the tools adopted for monitoring in your organization?,’ answered on a 5-point Likert scale. Perceived psychological safety, for its turn, was assessed through the Psychological Safety Scale described in the Measures section of this study. A p value < .05 for the regression analysis was considered significant. Assumptions of normality, homoscedasticity, independence of errors, linearity and outlying values were also assessed according to Schmidt and Finan (Reference Schmidt and Finan2018).

Hypotheses 3 and 4 were analyzed with the same procedure used for Hypothesis 1. For Hypothesis 3, two groups were set based on the question: ‘How appropriate do you think was the information provided by the organization about the tools that are used for monitoring?,’ which required answers on a 5-point Likert scale. Those who have chosen 1 or 2 were in the ‘inappropriate clarification’ group, whereas those who have chosen 4 or 5 were in the ‘appropriate clarification’ group. Those who were neutral (3) were not considered for this test. Additionally, a robustness check for Hypothesis 3 was conducted using a data-driven grouping approach based on the mean and standard deviation of responses, which confirmed the significance and direction of the results. For Hypothesis 4, we classified respondents by their answer to ‘How do you access the data that is collected?’ Those indicating total or partial access to their own data were coded as having access, while those reporting no access or access only to their team’s data were coded as not having personal data access.

Results

Validity and reliability

Descriptive statistics of psychological safety for the full sample and subsamples are provided on Table 1. With regard to the confirmatory factor analysis, initially the 1-factor model showed no fit to data (ꭓ2 = 85.5, df = 14, p < .001; Root Mean Square Error of Approximation = .116; Comparative Fit Index = .845; Tucker–Lewis Index = .767; Standardized Root Mean Residual = .0659), despite the statistically significant factor loadings (p < .001). To improve the results, modification indices were verified, and residuals of the following items were correlated: 1 and 5, then 3 and 5. Results still showed poor fit to data (ꭓ2 = 38.8, df = 12, p < .001; Root Mean Square Error of Approximation = .0765; Comparative Fit Index = .942; Tucker–Lewis Index = .898; Standardized Root Mean Residual = .0445). After another evaluation of the modification indices, residuals of items 1 and 3 were also correlated. Then, the model showed excellent fit to data (ꭓ2 = 21.5, df = 11, p = .028; Root Mean Square Error of Approximation = .050; Comparative Fit Index = .977; Tucker–Lewis Index = .956; Standardized Root Mean Residual = .0318).

Table 1. Descriptive statistics

It is important to note that items 1, 3 and 5 are the ones that are reversed in the questionnaire. In this respect, literature has already pointed out that negative-worded items often appear as a separate factor, and this is attributed to a method effect rather than a substantive one (Marsh, Reference Marsh1996). Thus, considering that the psychological safety scale is a widely adopted instrument (Edmondson & Lei, Reference Edmondson and Lei2014) and the construct is conceived as unidimensional, we opted for not taking the two-factor solution and instead correlating residuals to achieve a better model fit – which is in line with prior statistical literature (Marsh, Reference Marsh1996; Merritt, Reference Merritt2011; Schmitt & Stults, Reference Schmitt and Stults1985). Regarding reliability, the scale had satisfactory results (α = .675 and ω = .714). Considering that factor loadings were varied across the items (item 1 = .606; item 2 = .970; item 3 = .546; item 4 = .997; item 5 = .464; item 6 = .616; item 7 = 1.322), this is a case where tau-equivalence assumption is violated and Cronbach’s alpha underestimates reliability (Green & Yang, Reference Green and Yang2008). In this case, Omega provides a more appropriate measure for the consistency of the scale. Therefore, results provided evidence of validity and reliability for the Psychological Safety scale.

Hypotheses testing analyses

As far as the Hypothesis 1 is concerned, the homogeneity of variance assumption was supported, as Levene’s test showed no significant difference in the variance of psychological safety scores between monitored and unmonitored employees (F(1, 331) = 0.06, p = .81). Results of the t-test showed no statistically significant difference in the perceived psychological safety between the monitored (M = 5.21, SD = .989) and the unmonitored group (M = 5.41, SD = .979), (t(331) = 1.81, p = .070). Thus, Hypothesis 1 is not supported.

Regarding Hypothesis 2, a preliminary Pearson correlation analysis revealed a moderate positive association between the perceived appropriateness of monitoring practices and psychological safety, r(143) = .38, p < .001. Results of a simple linear regression showed that the linear relationship between the variables is statistically significant [F(1,143) = 23.71, p < .001, R 2 = 14.2]. The perceived appropriateness of the monitoring practices accounted for 14.2% of explained variability in the perceived psychological safety. The standardized coefficient for the predictor was .377, and the nonstandardized .286, both statistically significant. It can be affirmed that each additional point in the perceived appropriateness of monitoring practices accounts for an increase of .286 in the perceived psychological safety.

To ensure the robustness of findings, control variables were tested. Leadership status did not significantly predict psychological safety (p = .373), nor did its inclusion alter the main effect of monitoring appropriateness. In contrast, age emerged as a statistically significant negative predictor (p = .047), slightly increasing the model’s explanatory power. In the simplified final model including only age as a control, the overall regression remained significant, F(2,138) = 13.69, p < .001, with R 2 = .166. The standardized coefficient for monitoring appropriateness was β = .265 (p < .001), and for age, β = –.017 (p = .047), indicating a small negative association between age and perceived psychological safety.

A hierarchical regression further confirmed that monitoring appropriateness explains a significant amount of additional variance in psychological safety above and beyond age, ΔR 2 = .121, F-change (1,138) = 19.69, p < .001. This final model reflects a medium effect size (Cohen’s f 2 ≈ .20), which is considered both common and practically meaningful in applied psychology (Funder & Ozer, Reference Funder and Ozer2019). Although age contributed to the explained variance, the practical impact of the model remained primarily driven by the perception of monitoring appropriateness. The results support the practical importance of clearly communicating and implementing appropriate monitoring practices in shaping employees’ psychological safety. Accordingly, Hypothesis 2 is supported.

Concerning the third hypothesis, Levene’s test indicated that the assumption of homogeneity of variances was met for psychological safety scores across groups, F(1, 113) = 1.98, p = .16. Results of the t-test showed that there is a statistically significant difference in the perceived psychological safety between those who consider the clarification provided by the organization as appropriate (M = 5.51, SD = .824) and those who consider it inappropriate (M = 4.89, SD = 1.09); (t(113) = 3.43, p < .001). According to the effect size (Cohen’s d = −0.662) the difference between the group means is medium. Recent empirical benchmarks suggest this value is above average for studies in applied psychology. However, small samples are known for often producing larger effect sizes than subsequent replication studies with larger samples (Funder & Ozer, Reference Funder and Ozer2019). We therefore interpret this effect as practically meaningful, so that clear and appropriate explanations about monitoring are suggested to noticeably enhance how safe employees feel to speak up or take interpersonal risks at work. A robustness check using an alternative, data-driven categorization based on the distribution of responses (excluding midpoints and grouping individuals below and above ±0.5 SD from the mean) yielded similar results: participants who perceived the clarification as appropriate (M = 5.72, SD = .76) reported significantly higher psychological safety than those who perceived it as inappropriate (M = 4.65, SD = 1.14); t(40.86) = 4.06, p < .001. Thus, Hypothesis 3 is supported.

For the fourth hypothesis, Levene’s test confirmed the assumption of homogeneity of variances across groups, F(1, 118) = 0.01, p = .92. Results of the t-test showed no statistically significant difference in the perceived psychological safety between the group with access to data (M = 5.19, SD = .931) and the group with no access to data (M = 5.19, SD = 1.04); (t(117) = .044, p = .965). Therefore, Hypothesis 4 is not supported.

Discussion

This research has sought to analyze the impact of electronic monitoring and related practices on psychological safety perceived by remotely monitored workers. Overall, the results provide guidance on this matter with two main conclusions: (1) monitoring itself might not be problematic, but the perception of employees toward it is suggested to be highly relevant as a predictor of psychological safety levels; (2) when adopting monitoring, appropriate clarification about what is going on is crucial to prevent harmful effects on psychological safety.

Despite the existent difference between monitored and unmonitored groups regarding psychological safety levels, it was not statistically significant. This find contradicts expectations and differs from the effect found on trust in previous studies, which can reinforce distinctions between both constructs. One possible explanation is that the sample size was not enough to prove the effect, since only 145 out of 382 people were classified as monitored. However, this result can also be an indication that workers in fact do not mind being monitored. Actually, they might even want or feel that they need to be seen by the organization. In this sense, the prevalent fear and job uncertainty in the post pandemic reality might have played a role. Hafermalz (Reference Hafermalz2020) named fear of exile a source of anxiety and existential concern for remote workers. According to her, being away from the center of organizational life had a logic of expulsion, in the face of which the need for recognition and exposure was raised. Therefore, the question was not about the mere expectancy of being observed, but instead voluntarily ‘visibilizing’ practices as a response to the fear of exile. This threat, as the author adds, is intensified in a scenario of labor precarity and recession, which matches the reality of the world of work today.

Hypothesis 2 highlights an interesting point in showing a positive relationship between the perceived appropriateness of monitoring practices and the level of psychological safety. The existence of monitoring itself did not prove to be relevant. On the other hand, it can be the employees’ judgments about it that will predict if the environment will be considered safe enough to take interpersonal risks. Since employees’ perceptions are likely to be based (at least, in part) on how monitoring is conducted, we could conclude that these practices should not be deployed carelessly. Instead, efforts need to be put into guaranteeing transparency and a reasonable justification toward what is being adopted.

The paradox presented by Sewell and Barker (Reference Sewell and Barker2006) enlightens how employees’ perceptions and reactions can be shaped. They point out organizational surveillance’s dual character: it can either be coercive – a tool of domination used by managers to forcibly direct activities of employees who, in turn, are seen as lazy and deviant – or an instrument of care – based on an implicit contract that guarantee that everyone fulfills their obligations, therefore protecting interests of all. Likewise, employees can either see monitoring as a sign of distrust or, on the contrary, a sense of collective protection can take place. The latter seems to be a suitable atmosphere for psychological safety to emerge.

As expected, and in line with the latter hypothesis, Hypothesis 3 showed that those provided with appropriate clarification about monitoring had higher psychological safety levels. Trying to secretly spy on employees is harsh because it can invoke what Rousseau (Reference Rousseau1989) denominated psychological contract violation. That would mean breaking an implicit contract with set behavioral expectations within an employee–employer relationship. It generates feelings of betrayal, mistrust and, as suggested, can also threaten psychological safety. Conversely, disclosure about monitoring practices can reinforce perceptions of fair treatment and transparency toward the organization.

The speech of protecting employees’ interests regarding health and security was highlighted by authors such as Aloisi and De Stefano (Reference Aloisi and De Stefano2021). According to them, however, it results in a disguised dynamic of subjection. In this respect, we must assume that communication is only one part of the company’s position regarding monitoring. It must be accompanied by a justifiable and coherent attitude toward collecting and using data. In our sample, since monitoring is a recent and frequently undisclosed occurrence, some employees that do not feel fully aware of it might have preferred to declare themselves unmonitored. It should be noted that our focus in this research was to capture perceptions rather than facts. Nevertheless, this also implies some disguised – and perhaps of the most perverse ways of – monitoring might have been out of the spotlight. To analyze the whole picture that composes an employee’s perception of appropriateness, further research is essential.

The lack of a significant difference in psychological safety between monitored and unmonitored workers (Hypothesis 1) and our conclusion that monitoring should be implemented with care (Hypotheses 2 and 3) may seem paradoxical at first glance. If monitoring, as a binary condition, does not impact on psychological safety, one might assume that how it is implemented would also be irrelevant. However, further analysis of the monitored sample suggests a more nuanced reality: within this group, psychological safety levels differed significantly depending on whether the monitoring was perceived as appropriate and whether clear communication was provided. In this respect, it is helpful to distinguish three layers of electronic monitoring: (1) its mere presence (what); (2) its purpose or rationale (why), as investigated by previous research (see Ravid et al., Reference Ravid, White, Tomczak, Miles and Behrend2022); and (3) its implementation features (how). In other words, our study suggests that it is not the mere presence of monitoring that shapes employee experience (what), but rather the way it is interpreted and implemented (how).

Hypothesis 4, as opposed to expectations, was not significant. We expected that having access to collected data as a source of feedback could reduce the perception of monitoring as something harmful and risky, therefore allowing higher levels of psychological safety. First, because it could raise a sense of participation and transparency in monitoring. Second, because it could enhance its role as a tool for improving performance. Conversely, access to data did not prove to be relevant.

Previous investigations already indicated that the effects of assessing the data were controversial. Some studies that portrayed feedback from monitoring as a source of feedback reported beneficial effects on performance (e.g., Carroll, Reference Carroll2008; Ko & Baek, Reference Ko and Baek2024). Other studies, however, found detrimental effects. It might be the case that for some people it constantly reinforces that fact that they are being monitored, therefore eliciting negative feelings such as anxiety, stress, and fear. Moreover, employees might simply not feel that the data provided is useful (Siegel et al., Reference Siegel, König and Lazar2022). Possible explanations also include stress from a depersonalization of the workplace and reduced interaction with supervisors, as suggested by Alder and Ambrose (Reference Alder and Ambrose2005). Regarding the effect on psychological safety levels, the results are also not conclusive and reinforce the idea of a dual character of monitoring technologies, as argued by many scholars (e.g., Abraham et al., Reference Abraham, Niessen, Schnabel, Lorek, Grimm, Möslein and Wrede2019; Aloisi & De Stefano, Reference Aloisi and De Stefano2021; Carroll, Reference Carroll2008). This could also be attributed to the small sample size – only 45 workers reported having access to data – and a lack of distinction between the different ways this information can be presented to employees (e.g. constructively, associated with performance targets, presented by the supervisor). Further research should strive for larger samples and provide a more nuanced view of the access to data to unravel its effects on psychological safety.

The fact that the analyzed sample is primarily Brazilian yells an examination of cultural aspects when generalizing this study’s results. According to Hofstede’s cultural dimensions (Hofstede, Hilal, Malvezzi, Tanure & Vinken, Reference Hofstede, Hilal, Malvezzi, Tanure and Vinken2010), Brazilian culture is highly hierarchical and structured, overall marked by high Power Distance – which speaks about the acceptance of inequalities in power distribution – and Uncertainty Avoidance – which indicates the need for rules and legal systems to guide life. These aspects would point toward higher acceptance of electronic monitoring as part of the organizational system, especially if enforced by higher management, which would hinder a generalization of results. However, a recent study conducted by Schwambach, López, Sott, Carvalho Tedesco and Molz (Reference Schwambach, López, Sott, Carvalho Tedesco and Molz2022), comparing the acceptance of wearable monitoring technologies at work, found very similar acceptance levels between Brazilian and European samples of industry workers. This may suggest that demographic characteristics – such as the level of education or employment sector – can exert a stronger influence than the national culture in certain work contexts. Still, our findings should be generalized with caution and further studies are necessary to replicate this study in other populations.

This research adds to literature first by building evidence about the impacts of electronic monitoring in the post pandemic telework context, where different work dynamics take place – not only there was an widespread adoption of this resource, which started to ubiquitously track employees in domestic spaces (Aloisi & De Stefano, Reference Aloisi and De Stefano2021; Manokha, Reference Manokha2020), but it also became a replacement of the managerial gaze given the lack of visibility in the office (Pianese et al., Reference Pianese, Errichiello and Cunha2022). In this context, electronic monitoring might be accepted by employees as a managerial tool, as long as it is carefully implemented by organizations. Second, by expanding research on monitoring-related aspects that have not been explored in past research and that can help to compose a comprehensive framework of monitoring impacts. Finally, it helps to unpack the dynamics of psychological safety in new work models, unraveling its antecedents at the organizational level, also shedding light on its distinction from trust. We therefore go beyond effects of monitoring on dyadic relationships – whether of individuals and managers or individuals and organizations – to explore behavior within teams that can speak about valuable organizational outcomes such as collaboration and idea sharing.

Regarding practical implications, this research brings feasible prospects to organizations. Guaranteeing transparent communication and clear justification for collecting and using employees’ data constitutes relevant goals, at least in what concerns psychological safety. First, to keep the use of data consistent and fair from employees’ perspectives, organizations should build and make available internal policies and rules describing which data will be collected, for what purposes, who will have access and for how long the data will be retained. Ideally, employees’ input would be considered for the design of monitoring systems (through advisory committees or surveys, for example) to help identify acceptable boundaries and perceptions of fairness. Second, organizations must ensure that extensive disclosure of this policy will occur before monitoring practices are implemented, and this can be done by both detailed informative texts on regular communication channels and interactive sessions. It would be important to provide space for doubts (Q&A sessions) and suggestions to address any concerns from employees. Third, individual consent could be obtained through a warning button on computers that require active acknowledgement of monitoring activities upon system login, for example. Fourth, it would also be important to ensure ongoing alignment between the policy and practice by conducting regular audits and feedback gathering from employees – preventing any misuse or unintended consequences of monitoring. Finally, another important line of action involves training managers to interpret and communicate monitoring data in a constructive and ethical manner, fostering a team climate that supports psychological safety.

Limitations and future research

This study has several limitations regarding sampling, design and measures. Despite a high response rate, only 145 participants indicated they were monitored. Of this group, 72 perceived the clarification given by the organization as appropriate (vs. 43 who perceived it as inappropriate) and only 45 reported having access to data from monitoring. This might have affected the results and effect sizes, as well as prevented possibilities of some intra-group analyses, such as identifying potential distinct effects of each of the monitoring features. Moreover, this study used a non-probabilistic, convenience sample, primarily composed of hybrid or remote professionals working in Brazil, recruited through LinkedIn. Similar sampling strategies are common in organizational research, and prior studies suggest that professionally oriented convenience samples can still yield valid insights (Mullinix, Leeper, Druckman & Freese, Reference Mullinix, Leeper, Druckman and Freese2015). Nonetheless, it limits the generalizability of our findings. Future research should consider probability-based or stratified sampling methods to enhance external validity and replicate findings across broader populations.

Even though we can draw suggestions from a theoretical basis, as a cross-sectional study relying entirely on self-reports, our findings cannot establish causality and remain vulnerable to uncontrolled biases and subjectivities. We must note that in the psychological safety scale, reverse-coded items showed lower loadings and required residual correlations to improve model fit. This issue, often linked to method effects rather than construct validity, may reflect occasional respondent fatigue or cognitive strain in a minority of cases (Marsh, Reference Marsh1996). Still, we kept the original item structure to maintain consistency with the validated scale. Moreover, the remote work and monitoring measures present limitations. First, although the kind of monitoring of interest for this study was specified in the questionnaire, there is no control over what is exactly monitored across the respondents. Second, while some recent studies have been adopting the idea of remote work intensity, remote work adoption was here considered as a binary variable. Different instruments could be used to replicate our findings in future studies.

This research contributes to theory and delivers actionable guidance for managers. Nonetheless, further research is necessary to build on the present findings. One path of future investigation can concentrate on the aspects that compose perceptions of workers toward monitoring, considering organizational and individual variables. The first aspect to be further analyzed in combination with our findings could be the perceived purpose of monitoring, which was not captured in the present study. Despite being largely explored by previous research, there is no consistent evidence regarding the effects of monitoring purpose on employees’ performance, attitudes, or stress (Ravid et al., Reference Ravid, White, Tomczak, Miles and Behrend2022). One possible reason is that employees form their own assumptions about the purpose of monitoring, regardless of what is communicated. Future research could therefore aim to disentangle the communicated versus perceived purpose of monitoring and examine how these interpretations influence employee responses. Second, the different features that compose monitoring software deserve deeper investigation, since they are being developed in varied levels of invasiveness. Finally, the access to collected data remains a controversial aspect that can be key to making monitoring a beneficial resource for organizations and workers alike – researchers could therefore examine when and how providing such access contributes positively to employee outcomes.

Data Availability Statement

Data are available from the authors upon request.

Funding Statement

No funding was received for conducting this study.

Conflict of Interest

The author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.

Ethical Standards

This study was conducted in accordance with ethical research guidelines. Participants provided informed consent before completing the survey. Participation was voluntary, and anonymity and confidentiality were ensured.

Monique Delfim Andrade is an Organizational Psychologist with a master’s degree in Work, Organizational, and Personnel Psychology through the Erasmus Mundus program from the University of Coimbra and the University of Valencia, and a bachelor’s degree in Psychology from Universidade Federal de Minas Gerais. Her main research interests are new work arrangements, workplace controls, work motivation and leadership. With an applied background, she also has over five years of experience in HR policy design and implementation across private and public organizations in Brazil.

Mario Martínez-Córcoles is Associate Professor in Work and Organizational Psychology at the University of Valencia. He has previously worked as professor in several universities: Autonomous University of Barcelona (2013–2014), Tallinn University of Technology (Estonia) (2014–2018), and University of Valladolid (2018–2020). His research focuses on leadership, safety in critical infrastructures, proactivity, and the impact of information technology on work. He has published numerous research studies in international scientific journals such as Safety Science, Risk Analysis or Journal of Safety Research. Mario Martínez-Córcoles has also worked as consultant for international agencies such as the International Atomic Energy Agency of United Nations (IAEA), or the World Institute of Nuclear Security (WINS).

Pedro Fialho is an Invited Assistant Professor at the University of Maia. He has completed his Ph.D. at the University of Evora, focusing on Performance Management, Rule Efficiency, and Organizational Trust. These topics remain as his main research interests, while also recently adding a focus on Working Models (hybrid\remote\in person) as well as Psychological Safety. He has also been the Tutor for several different Master Theses. Simultaneously, he has been working in the HR field for over 18 years, mostly in companies in hyper-growth which have a strong connection to Technology.

Milena Guimaraes is a PhD candidate at the University of Valencia, Spain. She holds a bachelor’s degree in Psychology from Pontifícia Universidade Católica do Rio de Janeiro, Brazil, and an Erasmus Mundus Master’s in Work, Organizational, and Personnel Psychology from the Universities of Coimbra, Portugal, and Valencia, Spain. With a background in HR, her research interests focus on leadership, psychological safety, teleworking, and wellbeing.

November 2024

References

Abraham, M., Niessen, C., Schnabel, C., Lorek, K., Grimm, V., Möslein, K., & Wrede, M. (2019). Electronic monitoring at work: The role of attitudes, functions, and perceived control for the acceptance of tracking technologies. Human Resource Management Journal, 29(4), 657675. https://doi.org/10.1111/1748-8583.12250CrossRefGoogle Scholar
Alder, G. S., & Ambrose, M. L. (2005). Towards understanding fairness judgments associated with computer performance monitoring: An integration of the feedback, justice, and monitoring research. Human Resource Management Review, 15(1), 4367. https://doi.org/10.1016/j.hrmr.2005.01.001CrossRefGoogle Scholar
Alder, G. S., Noel, T. W., & Ambrose, M. L. (2006). Clarifying the effects of Internet monitoring on job attitudes: The mediating role of employee trust. Information & Management, 43(7), 894903. https://doi.org/10.1016/j.im.2006.08.008CrossRefGoogle Scholar
Aloisi, A., & De Stefano, V. (2021). Essential jobs, remote work and digital surveillance: Addressing the COVID‐19 pandemic panopticon. International Labour Review, 161(2). https://doi.org/10.1111/ilr.12219Google Scholar
Ambrose, M., & Alder, G. S. (2000). Designing, implementing, and utilizing computerized performance monitoring: Enhancing organizational justice. Research in Personnel and Human Resource Management, 18, 187219.Google Scholar
Baert, S., Lippens, L., Moens, E., Sterkens, P., & Weytjens, J. (2020a). How Do We Think the Covid-19 Crisis Will Affect Our Careers (If Any Remain)? SSRN Electronic Journal. https://doi.org/10.2139/ssrn.3584927CrossRefGoogle Scholar
Baert, S., Lippens, L., Moens, E., Weytjens, J., & Sterkens, P. (2020b). The Covid-19 Crisis and Telework: A Research Survey on Experiences, Expectations and Hopes. SSRN Electronic Journal. https://doi.org/10.2139/ssrn.3596696CrossRefGoogle Scholar
Bailey, D. E., & Kurland, N. B. (2002). A review of telework research: Findings, new directions, and lessons for the study of modern work. Journal of Organizational Behavior, 23(4), 383400. https://doi.org/10.1002/job.144CrossRefGoogle Scholar
Carroll, W. R. (2008). The effects of electronic performance monitoring on performance outcomes: A review and meta-analysis. Employee Rights and Employment Policy Journal, 12, 29.Google Scholar
Christian, A. (2023 February 7 ). The companies backtracking on flexible work. BBC. https://www.bbc.com/worklife/article/20230206-the-companies-backtracking-on-flexible-workGoogle Scholar
Chughtai, A. A. (2020). Trust propensity and job performance: The mediating role of psychological safety and affective commitment. Current Psychology. https://doi.org/10.1007/s12144-020-01157-6Google Scholar
Cohen, J. (1988). Statistical Power Analysis for the Behavioral Sciences (2nd ed.). Journal of the American Statistical Association, 84(408), 1096. https://doi.org/10.2307/2290095Google Scholar
Cunha, J., Errichiello, L., & Pianese, T. (2023). The Axis of Accessibility and The Duality of Control of Remote Workers: A Literature Review. Journal of Information Technology, 39(1). https://doi.org/10.1177/02683962231208218Google Scholar
Delgado, C. (2022). Teletrabalho e relações de poder: O impacto da COVID-19 na adaptação dos controlos organizacionais exercidos sobre os colaboradores.Google Scholar
Doğru, Ç. (2021). The Effects of Electronic Surveillance on Job Tension, Task Performance and Organizational Trust. Business Systems Research Journal, 12(2), 125143. https://doi.org/10.2478/bsrj-2021-0023CrossRefGoogle Scholar
Edmondson, A. (1999). Psychological safety and learning behavior in work teams. Administrative Science Quarterly, 44(2), 350383. https://doi.org/10.2307/2666999CrossRefGoogle Scholar
Edmondson, A. C. (2003). Managing the Risk of Learning: Psychological Safety in Work Teams. In West, M. A., Tjosvold, D. & Smith, K. G. (Eds.), International Handbook of Organizational Teamwork and Cooperative Working (pp. 255275). John Wiley & Sons Ltd. https://doi.org/10.1002/9780470696712.ch13CrossRefGoogle Scholar
Edmondson, A. C. (2019). The fearless organization: Creating psychological safety in the workplace for learning, innovation, and growth. John Wiley & Sons, Inc.Google Scholar
Edmondson, A. C., & Lei, Z. (2014). Psychological Safety: The History, Renaissance, and Future of an Interpersonal Construct. Annual Review of Organizational Psychology and Organizational Behavior, 1(1), 2343. https://doi.org/10.1146/annurev-orgpsych-031413-091305CrossRefGoogle Scholar
Eurofound. (2020). Employee monitoring and surveillance: The challenges of digitalisation. Luxembourg: Publications Office of the European Union.Google Scholar
Felstead, A., Jewson, N., & Walters, S. (2003). Managerial Control of Employees Working at Home. British Journal of Industrial Relations, 41(2), 241264. https://doi.org/10.1111/1467-8543.00271CrossRefGoogle Scholar
Franken, E., Bentley, T., Shafaei, A., Farr-Wharton, B., Onnis, L., & Omari, M. (2021). Forced Flexibility and Remote working: Opportunities and Challenges in the New Normal. Journal of Management & Organization, 27(6), 119. https://doi.org/10.1017/jmo.2021.40CrossRefGoogle Scholar
Funder, D. C., & Ozer, D. J. (2019). Evaluating Effect Size in Psychological Research: Sense and Nonsense. Advances in Methods and Practices in Psychological Science, 2(2), 156168. https://doi.org/10.1177/2515245919847202CrossRefGoogle Scholar
Gajendran, R. S., Ponnapalli, A. R., Wang, C., & Javalagi, A. A. (2024). A dual pathway model of remote work intensity: A meta‐analysis of its simultaneous positive and negative effects. Personnel Psychology, 1(36). https://doi.org/10.1111/peps.12641Google Scholar
Gari, F., Dimas, I., Lourenço, P. R., & Rebelo, T. (2020). On the Mediating Role of Team Psychological Safety in the Relationship between Transformational Leadership and Team Process Improvement. In da Silva, P., Jorge, S. & , P. (Eds.), Emerging Topics in Management Studies (pp. 235254). Coimbra University Press. Available from http://monographs.uc.pt/iuc/catalog/book/109.Google Scholar
Gibbs, M., Mengel, F., & Siemroth, C. (2024). Employee innovation during office work, work from home and hybrid work. Scientific Reports, 14(1). https://doi.org/10.1038/s41598-024-67122-6CrossRefGoogle ScholarPubMed
Gibson, C. B., & Gibbs, J. L. (2006). Unpacking the Concept of Virtuality: The Effects of Geographic Dispersion, Electronic Dependence, Dynamic Structure, and National Diversity on Team Innovation. Administrative Science Quarterly, 51(3), 451495. https://doi.org/10.2189/asqu.51.3.451CrossRefGoogle Scholar
Gibson, C. B., Gilson, L. L., Griffith, T. L., & O’Neill, T. A. (2023). Should employees be required to return to the office? Organizational Dynamics, 52(2), 100981. https://doi.org/10.1016/j.orgdyn.2023.100981CrossRefGoogle ScholarPubMed
Gohoungodji, P., N’Dri, A. B., & Matos, A. L. B. (2022). What makes telework work? Evidence of success factors across two decades of empirical research: A systematic and critical review. The International Journal of Human Resource Management, 34(3), 145. https://doi.org/10.1080/09585192.2022.2112259Google Scholar
Green, S. B., & Yang, Y. (2008). Reliability of Summed Item Scores Using Structural Equation Modeling: An Alternative to Coefficient Alpha. Psychometrika, 74(1), 155167. https://doi.org/10.1007/s11336-008-9099-3CrossRefGoogle Scholar
Hafermalz, E. (2020). Out of the Panopticon and into Exile: Visibility and control in distributed new culture organizations. Organization Studies, 42(5), 017084062090996. https://doi.org/10.1177/0170840620909962Google Scholar
Hao, Q., Zhang, B., Shi, Y., & Yang, Q. (2022). How trust in coworkers fosters knowledge sharing in virtual teams? A multilevel moderated mediation model of psychological safety, team virtuality, and self-efficacy. Frontiers in Psychology, 13, 899142. https://doi.org/10.3389/fpsyg.2022.899142CrossRefGoogle ScholarPubMed
Higgins, M., Dobrow, S. R., Weiner, J. M., & Liu, H. (2020). When is Psychological Safety Helpful? A Longitudinal Study. Academy of Management Discoveries, 8(1). https://doi.org/10.5465/amd.2018.0242Google Scholar
Hofstede, G., Hilal, A. V. G., Malvezzi, S., Tanure, B., & Vinken, H. (2010). Comparing Regional Cultures Within a Country: Lessons From Brazil. Journal of Cross-Cultural Psychology, 41(3), 336352. https://doi.org/10.1177/0022022109359696CrossRefGoogle Scholar
Holland, P. J., Cooper, B., & Hecker, R. (2015). Electronic monitoring and surveillance in the workplace. Personnel Review, 44(1), 161175. https://doi.org/10.1108/pr-11-2013-0211CrossRefGoogle Scholar
Illegems, V., & Verbeke, A. (2004). Telework: What Does it Mean for Management? Long Range Planning, 37(4), 319334. https://doi.org/10.1016/j.lrp.2004.03.004CrossRefGoogle Scholar
International Labour Office. (2020a). Employers’ Guide On Working From Home In Response To The Outbreak Of Covid-19. Bureau For Employers’ Act.Google Scholar
International Labour Office. (2020b). Teleworking During the Covid-19 Pandemic and Beyond. Bureau For Employers’ Act.Google Scholar
Kahn, W. A. (1990). Psychological Conditions of Personal Engagement and Disengagement at Work. Academy of Management Journal, 33(4), 692724. https://journals.aom.org/doi/abs/10.5465/256287CrossRefGoogle Scholar
Kaplan, S., Engelsted, L., Lei, X., & Lockwood, K. (2017). Unpackaging Manager Mistrust in Allowing Telework: Comparing and Integrating Theoretical Perspectives. Journal of Business and Psychology, 33(3), 365382. https://doi.org/10.1007/s10869-017-9498-5CrossRefGoogle Scholar
Ko, Y. H., & Baek, I. G. (2024). The Effect of Computer Monitoring on Employees’ Productivity in Telecommuting Arrangements. Management Science, 71(1). https://doi.org/10.1287/mnsc.2022.00588Google Scholar
Lechner, A., & Tobias Mortlock, J. (2022). How to create psychological safety in virtual teams. Organizational Dynamics, 51(2), 100849. https://doi.org/10.1016/j.orgdyn.2021.100849CrossRefGoogle Scholar
Leite, A. L., da Cunha Lemos, D., & Aldir Schneider, W. (2019). Teletrabalho: Uma Revisão Integrativa da Literatura Internacional. Contextus – Revista Contemporânea De Economia E Gestão, 17(3), 186209. https://doi.org/10.19094/contextus.v17i3.42743CrossRefGoogle Scholar
Manokha, I. (2020). Covid-19: Teleworking, Surveillance and 24/7 Work. Some Reflexions on the Expected Growth of Remote Work After the Pandemic. Political Anthropological Research on International Social Sciences, 1(2), 273287. https://doi.org/10.1163/25903276-bja10009Google Scholar
Marsh, H. W. (1996). Positive and negative global self-esteem: A substantively meaningful distinction or artifactors? Journal of Personality and Social Psychology, 70(4), 810819. https://doi.org/10.1037/0022-3514.70.4.810CrossRefGoogle ScholarPubMed
Marsh, H. W., Hau, K.-T., & Grayson, D. (2005). In A. Maydeu-Olivares, & J. J., McArdle (Eds.), Contemporary Psychometrics: A Festschrift for Roderick P. McDonald (pp. 275340). https://psycnet.apa.org/record/2005-04585-010Google Scholar
McNeish, D. (2018). Thanks coefficient alpha, we’ll take it from here. Psychological Methods, 23(3), 412433. https://doi.org/10.1037/met0000144CrossRefGoogle Scholar
Merritt, S. M. (2011). The Two-Factor Solution to Allen and Meyer’s (1990) Affective Commitment Scale: Effects of Negatively Worded Items. Journal of Business and Psychology, 27(4), 421436. https://doi.org/10.1007/s10869-011-9252-3CrossRefGoogle Scholar
Moon, M. M. (2021). In Employees We Must Trust: Using Employee Monitoring Software for Good and Not Evil. Workforce Solutions Review, 2, 2024.Google Scholar
Mullinix, K. J., Leeper, T. J., Druckman, J. N., & Freese, J. (2015). The Generalizability of Survey Experiments. Journal of Experimental Political Science, 2(2), 109138. https://doi.org/10.1017/xps.2015.19CrossRefGoogle Scholar
Muthén, B., & Kaplan, D. (1985). A comparison of some methodologies for the factor analysis of non-normal Likert variables. British Journal of Mathematical and Statistical Psychology, 38(2), 171189. https://doi.org/10.1111/j.2044-8317.1985.tb00832.xCrossRefGoogle Scholar
Newman, A., Donohue, R., & Eva, N. (2017). Psychological safety: A systematic review of the literature. Human Resource Management Review, 27(3), 521535. https://doi.org/10.1016/j.hrmr.2017.01.001CrossRefGoogle Scholar
Nishii, L. H., Lepak, D. P., & Schneider, B. (2008). Employee attributions of the “why” of HR practices: Their effects on employee attitudes and behaviors, and customer satisfaction. Personnel Psychology, 61(3), 503545. https://doi.org/10.1111/j.1744-6570.2008.00121.xCrossRefGoogle Scholar
Nunnally, J. C. (1978). Psychometric Theory (2nd ed.). McGraw-Hill.Google Scholar
Pianese, T., Errichiello, L., & Cunha, J. V. (2022). Organizational control in the context of remote working: A synthesis of empirical findings and a research agenda. European Management Review. https://doi.org/10.1111/emre.12515Google Scholar
Raišienė, A. G., Rapuano, V., Dőry, T., & Varkulevičiūtė, K. (2021). Does telework work? Gauging challenges of telecommuting to adapt to a “new normal. Human Technology, 17(2), 126144. https://doi.org/10.14254/1795-6889.2021.17-2.3Google Scholar
Ravid, D. M., White, J. C., Tomczak, D. L., Miles, A. F., & Behrend, T. S. (2022). A meta‐analysis of the effects of electronic performance monitoring on work outcomes. Personnel Psychology. https://doi.org/10.1111/peps.12514Google Scholar
Rose, P. A., & Brown, S. (2021). Reconstructing Attitudes towards Work from Home during COVID-19: A Survey of South Korean Managers. Behavioral Sciences, 11(12), 163. https://doi.org/10.3390/bs11120163CrossRefGoogle ScholarPubMed
Rousseau, D. M. (1989). Psychological and implied contracts in organizations. Employee Responsibilities and Rights Journal, 2(2), 121139. https://doi.org/10.1007/bf01384942CrossRefGoogle Scholar
Schermelleh-Engel, K., Moosbrugger, H., & Müller, H. (2003). Evaluating the Fit of Structural Equation Models: Tests of Significance and Descriptive Goodness-of-Fit Measures. Methods of Psychological Research Online, 8(2), 2374. https://doi.org/10.1016/j.techsoc.2021.101840Google Scholar
Schmidt, A. F., & Finan, C. (2018). Linear regression and the normality assumption. Journal of Clinical Epidemiology, 98, 146151. https://doi.org/10.1016/j.jclinepi.2017.12.006CrossRefGoogle ScholarPubMed
Schmitt, N., & Stults, D. M. (1985). Factors Defined by Negatively Keyed Items: The Result of Careless Respondents? Applied Psychological Measurement, 9(4), 367373. https://doi.org/10.1177/014662168500900405CrossRefGoogle Scholar
Schwambach, G. C. S., López, Ó. H., Sott, M. K., Carvalho Tedesco, L. P., & Molz, R. F. (2022). Acceptance and perception of wearable technologies: A survey on Brazilian and European companies. Technology in Society, 68, 101840. https://doi.org/10.1016/j.techsoc.2021.101840CrossRefGoogle Scholar
Seeber, I., Fleischmann, C., Cardon, P., & Aritz, J. (2024). Fostering Psychological Safety in Global Virtual Teams: The Role of Team-Based Interventions and Digital Reminder Nudges. Group Decision and Negotiation, 33. https://doi.org/10.1007/s10726-024-09899-5CrossRefGoogle Scholar
Sevilla, G. (2023 April 13 ). Big Tech companies push for return to office, but workers are pushing back. Insider Intelligence. https://www.insiderintelligence.com/content/big-tech-companies-push-return-office-workers-pushing-backGoogle Scholar
Sewell, G., & Barker, J. R. (2006). Coercion Versus Care: Using Irony to Make Sense of Organizational Surveillance. Academy of Management Review, 31(4), 934961. https://doi.org/10.5465/amr.2006.22527466CrossRefGoogle Scholar
Sewell, G., & Taskin, L. (2015). Out of Sight, Out of Mind in a New World of Work? Autonomy, Control, and Spatiotemporal Scaling in Telework. Organization Studies, 36(11), 15071529. https://doi.org/10.1177/0170840615593587CrossRefGoogle Scholar
Siegel, R., König, C. J., & Lazar, V. (2022). Impact of electronic monitoring on employees: A meta-analysis. Computers in Human Behavior Reports, 8, 100227. https://doi.org/10.1016/j.chbr.2022.100227CrossRefGoogle Scholar
Sjöblom, K., Juutinen, S., & Mäkikangas, A. (2022). The Importance of Self-Leadership Strategies and Psychological Safety for Well-Being in the Context of Enforced Remote Work. Challenges, 13(1), 14. https://doi.org/10.3390/challe13010014CrossRefGoogle Scholar
Stephens, K. K., Jahn, J. L. S., Fox, S., Charoensap-Kelly, P., Mitra, R., Sutton, J., … Meisenbach, R. J. (2020). Collective Sensemaking Around COVID-19: Experiences, Concerns, and Agendas for our Rapidly Changing Organizational Lives. Management Communication Quarterly, 34(3), 426457. https://doi.org/10.1177/0893318920934890CrossRefGoogle Scholar
Thiel, C. E., Prince, N., & Sahatjian, Z. (2022). The (electronic) walls between us: How employee monitoring undermines ethical leadership. Human Resource Management Journal, 32(4). https://doi.org/10.1111/1748-8583.12462CrossRefGoogle Scholar
Tomczak, D. L., Lanzo, L. A., & Aguinis, H. (2018). Evidence-based recommendations for employee performance monitoring. Business Horizons, 61(2), 251259. https://doi.org/10.1016/j.bushor.2017.11.006CrossRefGoogle Scholar
Vaida, S., & Ardelean, I. (2019). Psychological Safety and Trust. A Conceptual Analysis. Studia Universitatis Babe?-Bolyai Psychologia-Paedagogia, 64(1), 87101. https://doi.org/10.24193/subbpsyped.2019.1.05CrossRefGoogle Scholar
Weibel, A., Den Hartog, D. N., Gillespie, N., Searle, R., Six, F., & Skinner, D. (2015). How Do Controls Impact Employee Trust in the Employer? Human Resource Management, 55(3), 437462. https://doi.org/10.1002/hrm.21733CrossRefGoogle Scholar
Yost, A. B., Behrend, T. S., Howardson, G., Badger Darrow, J., & Jensen, J. M. (2018). Reactance to Electronic Surveillance: A Test of Antecedents and Outcomes. Journal of Business and Psychology, 34(1), 7186. https://doi.org/10.1007/s10869-018-9532-2CrossRefGoogle Scholar
Figure 0

Table 1. Descriptive statistics