Abstract
Keywords
Introduction
With the advent of the AI era, the significant advantages of AI in cost reduction, efficiency enhancement, innovation promotion, and growth facilitation are profoundly reshaping organizational structures and the career development paths of employees across various industries (Sadeghi et al., 2024; Wu et al., 2024; Wu & Zhang, 2024; Yi et al., 2024). Recent studies indicate that employees’ awareness of AI (AI awareness, AIA) consists of two distinct dimensions: threat appraisal and opportunity appraisal (J. Y. Bai et al., 2025). However, research has shown that employees’ most salient and pervasive psychological responses to AI center on threat appraisal. Threat appraisal refers to employees’ perception that AI may jeopardize job security, diminish the relevance of their skills, or disrupt career trajectories—particularly concerns about being replaced by AI. Compared with opportunity appraisal, these negative experiences more directly predict stress reactions and job burnout (JB). In addition, this perception reflects a form of job-related psychological stress rooted in resource threat, which aligns with both the Conservation of Resources Theory (COR; Hobfoll, 2001; Hobfoll et al., 2018) and the Job Demands–Resources (JD-R) Model (Ab, 2007). According to COR, perceived threats to valued resources (e.g., stable employment or professional identity) are potent triggers of emotional exhaustion. Similarly, the JD-R model identifies threat appraisal as a job demand that consumes emotional energy and contributes to burnout. Given that resource threats generally exert stronger and more immediate psychological effects than potential gains, this study focuses on the threat appraisal dimension of AIA to investigate its impact on job burnout and to examine the mediating mechanisms within a resource-based theoretical framework.
Theories and Hypotheses
Theoretical Basis
The COR conceptualizes stress as arising from the perceived depletion or tangible reduction of valued resources (Hobfoll, 2001; Hobfoll et al., 2018). In this study, AIA is defined as a perception of technological threat—specifically, the risk of job replacement or erosion of professional relevance. This framing aligns with the JD-R Model (Ab, 2007), which categorizes job characteristics into demands and resources. Here, AIA functions as a job demand, representing a psychological stressor that consumes energy and elicits emotional strain. Empirically, Zheng and Zhang (2025) showed that AIA positively predicts job insecurity, which subsequently leads to emotional exhaustion via work–family interference. Similarly, B. J. Kim and Kim (2024) found that AI-induced job insecurity reduces psychological safety and increases knowledge-hiding behaviors.
The JD-R model underscores that job resources, such as perceived organizational support (POS) and organizational commitment (OC), serve as key factors in alleviating the strain caused by job demands. In line with this, POS serves as a contextual resource that restores emotional and psychological reserves. Hou and Fan (2024) found that POS mitigates the detrimental effects of AI-induced stress on employees’ work engagement, confirming its role as a protective factor. Moreover, POS can enhance OC, an attitudinal resource that reinforces employee resilience. Thus, combining COR and JD-R perspectives, this study positions AIA as a perceived threat, while POS and OC represent sequential job resources that help sustain well-being and reduce burnout. This integrated model offers a strong theoretical foundation and directly addresses the reviewer’s concern by justifying AIA as a valid form of job-related stressor.
AIA and JB
JB is a psychological syndrome primarily characterized by stress responses resulting from prolonged work pressure. It typically stems from a mismatch or incompatibility between employee expectations and job demands and is regarded as a persistent, chronic stress state (Maslach, 2003; P. Zeng & Hu, 2024). Maslach and Jackson (1981) classified JB into three dimensions: emotional exhaustion (feeling drained due to the excessive use of emotional resources), depersonalization (manifesting as indifferent or even inhumane reactions toward colleagues and clients), and reduced personal accomplishment (negative self-evaluation of work abilities and achievements). This physically and mentally exhausting state of burnout has serious adverse effects on both organizational development and employee well-being, including increased turnover rates, deteriorating health, decreased work efficiency, reduced organizational citizenship behaviors, and a significant decline in overall well-being (Xie et al., 2024). In recent years, research on the factors influencing JB has primarily focused on both internal individual factors and external environmental factors (P. Zeng & Hu, 2024). Internal factors include personal cognition (such as AIA and OC) and individual characteristics (including personality, empathy, and emotional intelligence; Kong et al., 2021; Parmar et al., 2022; Yue et al., 2022). External environmental factors encompass OC (X. Zeng et al., 2020), work stress (Zhao et al., 2021), and social support (Moisoglou et al., 2024). In the context of the AI era, AIA is considered one of the key triggers of JB. For example, Kong et al. (2021) found in their study on the impact of AIA on hotel employees that AIA not only directly increased employee JB but also exacerbated burnout through a mediating mechanism of reduced OC. Therefore, effectively alleviating the JB caused by AIA has become a major focus of both academic research and practical intervention.
AIA, POS, JB
Among the external environmental factors that alleviate JB, POS has garnered increasing attention as a crucial resource. POS reflects how employees perceive the support provided by their organization, including its care for their needs and recognition of their contributions (Eisenberger et al., 1986). According to the COR, receiving additional resource support can effectively offset the emotional exhaustion caused by resource depletion (Hobfoll, 2001). Therefore, POS can effectively moderate the impact of negative emotions, reduce work-related stress and anxiety, and help alleviate JB levels (Tang et al., 2023; Q. Wang & Wang, 2020; X. Zeng et al., 2020). For instance, Tang et al. (2023) examined the psychological well-being of psychiatric nurses and found a significant negative correlation between POS and JB, meaning that nurses who perceived more support showed fewer signs of burnout. When employees face challenges and stress at work, additional organizational support can serve as a valuable resource that replenishes emotional and social reserves, enabling them to cope more effectively with work demands (Y. Li, 2023; Stinglhamber et al., 2016). When employees perceive AI implementation as a potential threat to their job security, organizational support can serve as a buffer, easing their anxiety and lowering the likelihood of turnover. Nonetheless, current research seldom investigates the mediating role of POS between AIA and JB.
AIA, OC, JB
Similarly, the important role of OC in alleviating JB among employees has also garnered increasing attention. OC reflects how strongly employees identify with their organization and engage in its activities, as well as their willingness to continue working there (Allen & Meyer, 1996). According to Allen and Meyer (1996), OC can be broken down into three key elements: emotional attachment, dependency, and ethical obligation. Affective commitment involves the emotional connection and sense of belonging employees experience with their organization; continuance commitment arises from the perceived personal or financial drawbacks of leaving; normative commitment is based on employees’ feeling of moral duty to stay with the organization, often due to a sense of social duty (N. Li et al., 2022). According to the COR, OC represents an attitudinal resource that can help employees preserve and protect other valuable resources. Higher OC enhances employees’ emotional attachment and loyalty toward the organization, which in turn increases their willingness to invest energy in work and reduces the risk of JB (Chambel & Carvalho, 2022; Drew et al., 2024; X. Wang et al., 2022). For example, X. Wang et al. (2022) highlighted a clear negative link between OC and JB when examining factors affecting employee job performance in China’s district-level healthcare system. Similarly, Chambel and Carvalho (2022) studied the relationship between organizational affective commitment and well-being among contact center employees, finding that affective commitment effectively reduced JB. Furthermore, Kong et al. (2021) confirmed that OC mediates the relationship between AIA and JB. With the introduction of AI, changes in organizational models, and the increase in job instability and uncertainty, employees’ OC has declined. When OC decreases, it commonly leads to lower levels of employee motivation and a rise in JB (Kong et al., 2021).
AIA, POS, OC, JB
According to COR, when employees receive sufficient organizational support, it serves as a valuable resource that helps them maintain and build other resources. Such support enhances employees’ ability to cope with work demands, fosters greater engagement and job satisfaction, and reduces their intention to leave the organization (Caesens & Stinglhamber, 2020; Stinglhamber et al., 2016). OST suggests that POS has a significant positive impact on employees’ OC (Duong et al., 2024; Silva et al., 2022; C. J. Wang, 2022). For example, Duong et al. (2024) investigated the complex relationships among POS, mental health, OC, and nurses’ intention to stay in Vietnam’s healthcare system, finding that POS significantly enhanced nurses’ mental health, strengthened their OC, and increased their intention to remain in the organization. Furthermore, based on the Job Demands-Resources (JD-R) Theory, a lack of job resources or uncertainty around them can cause ongoing energy depletion at work, which decreases OC and may also trigger JB (Bakker, 2015). In contrast, when employees have more resources at work (such as social support from colleagues and supervisors, as well as positive work relationships), they feel more supported and recognized by the organization. As a result, they invest more energy into their work, alleviating concerns about work uncertainty (such as AIA), which not only effectively mitigates JB but also helps enhance employees’ work engagement (Pimenta et al., 2024).
Current Study
Based on the above theories and researches, the impact of AIA on employee JB may be mitigated through the chain mediation of POS and OC. Given the complex effects of AI’s widespread application in the workplace on employees’ psychology and behavior, and in order to fill the research gap in this area, this study systematically explores the mechanism through which AIA influences employee JB. It also provides the first in-depth analysis of the chain mediating roles of POS and OC in this process. Unlike previous studies that mainly examined either direct effects or a single mediator, this model simultaneously incorporates POS and OC to reveal how contextual resources and attitudinal resources interact in sequence to reduce burnout. This chain mediation perspective offers a clearer view of the resource-gain process within the COR framework, highlighting a novel pathway for mitigating AI-related burnout. Building on previous empirical studies, we have developed the theoretical hypothesis model shown in Figure 1 and propose the following hypotheses:

Hypothesis model.
Method
Sample and Data Collection
The survey was conducted via the Questionnaire Star online platform (www.Sojump.com) between September and December 2024, and the sample consisted exclusively of faculty members from multiple universities in China. This occupational group was chosen because university teachers perform core tasks such as preparing and delivering lectures, grading assignments, and advising students, which are increasingly supported or partially replaced by AI technologies (e.g., automated grading systems, AI-based course design, intelligent tutoring systems). These developments make them particularly relevant for examining AIA and burnout. A preliminary pilot study was administered to teachers from the intended sample group to ensure that the items were clear, the wording was appropriate, and the overall survey procedure was feasible. Insights gained from the pilot study were applied to optimize the questionnaire before the official data collection began. In the main survey, convenience sampling was adopted, and faculty leaders from various universities distributed the survey information and QR code to faculty work groups via WeChat. All participants were full-time university faculty members, and administrative staff were not included. Each individual received information regarding the research purpose, procedure, and data security prior to submitting online informed consent.
A total of 452 questionnaires were collected for this study. Eighteen invalid questionnaires were discarded, resulting in 434 valid responses (Zhou, 2025). The exclusion of 18 participants’ data was due to two reasons: first, if more than 20% of the questions in a questionnaire were left unanswered, the questionnaire was deemed invalid; second, some participants failed to answer the questionnaire seriously, selecting extreme options (i.e., “Strongly Agree” or “Strongly Disagree”) for more than 80% of the questions. Such response tendencies may introduce bias into the data, potentially reducing the precision of subsequent analyses (D. Wang et al., 2012). Therefore, the final valid sample consisted of 434 responses. The model ensured that no endogenous latent construct was targeted by more than three directional paths. J. F. Hair (2011) noted that, at a 1% significance level, a minimum of 65 participants is necessary for the model to reach an
Demographic Characteristics of the Sample.
Measurement Instruments
The questionnaire is divided into two main sections: the first section collects participants’ demographic information, and the second section gathers self-reported data on various constructs. Validated scales were employed to measure these constructs, with necessary adaptations to fit the specific aims and setting of the research. Beyond collecting basic demographic details, the survey also covered core variables including AIA, POS, OC, and JB. A 7-point Likert scale was employed for scoring, ranging from (1) “strongly disagree” to (7) “strongly agree.”
The AI Awareness Scale, adapted from S. Bai et al. (2024), measures employees’ concerns about being replaced by AI. In adapting the scale, the term “employees” in the original items was replaced with “teachers” to reflect the cultural and occupational context of the education sector, while preserving the original meaning and measurement intent of each item. It consists of four items (e.g., “I believe my job could be replaced by artificial intelligence”). The scale demonstrated good reliability and validity, with a Cronbach’s alpha of .745 and confirmatory factor analysis (CFA) showed satisfactory fit: χ2/DF = 1.871 (≤5), CFI = .995 (≥0.9), TLI = .985 (≥0.9), RMSEA = .045 (≤0.1).
The Perceived Organizational Support Scale, based on the work of Hoa et al. (2020), evaluates employees’ perceptions of the support provided by their organization. It includes 16 items (e.g., “The company assesses my contributions through benefits”). Following Sarstedt et al. (2021), items with standardized outer loadings below 0.70 were examined for removal, and those whose deletion improved composite reliability (CR ≥ 0.70) and average variance extracted (AVE ≥ 0.50) were deleted. Three items were removed based on these criteria, resulting in a 13-item scale, with a Cronbach’s alpha of .920 and CFA showed satisfactory fit: χ2/DF = 1.857 (≤5), CFI = .978 (≥0.9), TLI = .973 (≥0.9), RMSEA = .044 (≤0.1).
The Organizational Commitment Scale, adapted from Alomran et al. (2024), assesses employees’ sense of identification with and loyalty to their organization. It comprises three dimensions: affective commitment, continuance commitment, and normative commitment, with a total of nine items. To reduce measurement redundancy, two items with inter-item correlations exceeding 0.7 were removed. The scale’s Cronbach’s alpha was .865, and CFA showed satisfactory fit: χ2/DF = 4.427 (≤5), CFI = 0.958 (≥0.9), TLI = 0.937 (≥0.9), RMSEA = 0.089 (≤0.1).
The Job Burnout Scale, developed based on Xie et al. (2024), consists of three dimensions: emotional exhaustion, work attitude, and personal accomplishment. It measures the psychological and emotional depletion resulting from prolonged emotional investment and high-intensity work. In total, the scale includes 15 items, following the guidelines of Sarstedt et al. (2021), items with standardized factor loadings below 0.60 were removed, and items with loadings between 0.40 and 0.60 were considered for removal if doing so improved the composite reliability (CR ≥ 0.70) and average variance extracted (AVE ≥ 0.50) while maintaining theoretical consistency. Based on these criteria, six items were deleted, resulting in a final nine-item scale. The Cronbach’s alpha of .877 and CFA showed satisfactory fit: χ2/DF = 4.225 (≤5), CFI = .940 (≥0.9), TLI = .920 (≥0.9), RMSEA = .086 (≤0.1).
The translation process for the scales was conducted collaboratively by two experts: one was a domain expert fluent in both English and Chinese, and the other was a linguist specializing in Chinese language. Experts performed independent translations of the original English scales into Chinese, ensuring accuracy in both meaning and linguistic expression. Through review and discussion, major discrepancies between the two versions were reconciled, resulting in a unified final version. This final version underwent a pilot test with 20 Chinese employees to identify and resolve potential issues arising during the translation process, leading to the completion of the adapted Chinese versions of the scales.
Data Analysis
We used SPSS Statistics 26 to carry out all data analyses. To begin, we calculated descriptive statistics and performed correlation analyses, along with reliability and validity checks, to understand the basic distribution of the data and the performance of each measurement instrument. Prior to hypothesis testing, we examined potential common method variance and assessed multicollinearity to confirm the suitability of the data for multivariate analysis. We then used multiple regression to analyze the associations among AIA, POS, OC, and JB. To further explore the sequential mediation process, PROCESS macro (Model 6) was employed, allowing us to assess whether AIA influences JB through a stepwise effect via POS and OC. The bootstrapping approach with 5,000 samples was used to estimate indirect effects with confidence intervals, ensuring greater accuracy and the stability of the mediation findings.
Results
Common Method Bias Test
We applied the Harman single-factor test to check for common method bias. The exploratory factor analysis extracted 11 factors with eigenvalues above 1, and the first factor explained 36.624% of the variance, remaining below the critical 40% cutoff (Podsakoff & Organ, 1986). Moreover, the results of the latent variable approach for testing common method bias showed that the chi-square difference between the constrained model and the baseline model was 3.334 (
Collinearity Test
A collinearity test was conducted on the data obtained in this study. Typically, multicollinearity issues in the model can be assessed using the variance inflation factor (VIF). According to the empirical rule, all constructs should have VIF values below 3.3 (J. Hair et al., 2021). The VIF values for all variables, presented in Table 2, range from 1.702 to 1.753, confirming that multicollinearity does not pose any problem in the model.
Collinearity Test Results.
Reliability Assessment of the Measurement Model
Following the recommendations of J. Hair et al. (2021), the reliability of the scales was assessed through measurement model analysis. Reliability indicators included item external loadings and CR, with loadings above 0.7 considered acceptable (J. Hair et al., 2021). As shown in Table 3, all items’ loadings and CR values met the recommended criteria, indicating satisfactory internal consistency reliability. In addition, the AVE values were all greater than 0.5, meeting the criterion for convergent validity.
Reliability and Validity of the Model.
Descriptive Outcomes and Correlation Findings
Based on the descriptive and correlation findings presented in Table 4, significant correlations were found among AIA, POS, OC, and JB (
Descriptive Statistics and Correlation Coefficients of AIA, POS, OC, and JB.
Mediation Effect Analysis
After adjusting for factors such as gender, age, years of work experience, education level, and salary, the regression analysis results are presented in Table 5. First, AIA was significantly and negatively associated with POS (β = −.550,
Regression Coefficients for Direct and Indirect Effects of AIA on JB with Control Variables.
Table 6 presents the results of the mediation analysis. First, the total effect of AIA on JB is 0.544, with a 95% confidence interval of [0.459, 0.630]. The direct effect is 0.247, with a 95% confidence interval of [0.141, 0.353], indicating that AIA affects JB both directly and indirectly through mediating variables. Standardized indirect effects were interpreted according to Cohen (2013) benchmarks (small ≈ 0.01, medium ≈ 0.09, large ≈ 0.25) to evaluate their practical significance.
Mediation Effects Analysis of Variables in the Mediation Model.
Second, when POS is used as a mediating variable, the indirect effect is 0.115, with a 95% confidence interval of [0.054, 0.183], and the mediation effect accounts for 21.14% of the total effect. This value represents a medium-to-large mediation effect, indicating that POS plays a meaningful and practically important role in the relationship between AIA and JB.
Third, when OC is used as a mediating variable, the indirect effect is 0.112, with a 95% confidence interval of [0.069, 0.167], and the mediation effect accounts for 20.59% of the total effect. This represents a medium effect, suggesting that OC is also an important mediator with practical relevance.
Finally, regarding the chain mediating effect of POS and OC, the indirect effect is 0.070, with a 95% confidence interval of [0.042, 0.108], and the chain mediation effect accounts for 12.87% of the total effect. This corresponds to a small-to-medium effect, indicating that although weaker than the single mediators, the sequential mechanism of POS and OC still contributes meaningfully to the overall mediation process.
Discussion
This study investigates the chain mediating role of POS and OC in the relationship between AIA and employee JB, verifying four hypotheses. Specifically, enhancing POS and OC can effectively alleviate the JB caused by high AIA, providing new theoretical support for addressing employee burnout induced by the introduction of AI.
The finding that AIA was significantly and positively associated with employees’ JB (β = .247, medium effect size) is consistent with the findings of S. Bai et al. (2024), who also identified AI-related job insecurity as a driver of burnout. Our result extends prior work by framing this relationship within COR theory, emphasizing the psychological stress employees experience in response to AI-related uncertainty and its impact on burnout. While S. Bai et al. (2024) primarily emphasized workload and task changes, our findings suggest that the psychological threat posed by AI, particularly the uncertainty over future employment, can be an equally important or even more salient predictor of burnout. This difference underscores the need for organizations to address not only operational changes but also the emotional and cognitive resource loss associated with AI adoption. In practice, this means implementing interventions that preserve employees’ sense of stability and control, thereby reducing the risk of burnout in AI-integrated work environments.
POS mediates the impact of AIA on JB, validating
OC mediates the relationship between AIA and JB, with the indirect pathway yielded an effect of 0.112 (20.59% of the total effect), this represents a medium to large-scale effect. And consistent with the findings of Kong et al. (2021), validating
The results indicate that POS and OC jointly form a sequential pathway through which AIA influences JB, with the chain indirect effect estimated at 0.070, representing 12.87% of the total effect and a small-to-medium effect size. Although the magnitude is smaller than that of the single mediators, the sequential mechanism offers important insight into how organizational resources operate in combination. POS can be seen as an initial resource that fosters OC, which in turn strengthens employees’ willingness and capacity to invest further in their roles, thereby protecting them from burnout. This finding complements earlier studies that examined POS and OC separately, showing that their joint enhancement can produce a cumulative buffering effect against AI-related job insecurity. From a managerial perspective, the evidence suggests that organizations facing AI-driven change should not treat POS and OC as isolated initiatives but should integrate support programs, skill development, and strategies to deepen OC, achieving a synergistic impact on employees’ well-being.
Impact
Theoretical Impact
This study extends burnout research by introducing AIA as a novel psychological job demand within the JD-R model. While traditional burnout literature has emphasized workload, role ambiguity, and emotional labor, technological uncertainty—particularly anxiety about AI replacing human roles—has received less attention. Our findings demonstrate that AIA imposes cognitive and emotional demands on employees, contributing to burnout risk.
The study also enriches the JD-R framework by identifying POS and OC as essential job resources. POS offers external emotional and instrumental support, while OC reflects internal motivation and alignment with organizational values. Both play complementary roles in reducing emotional exhaustion.
Moreover, the chain mediation model reveals that job resources can interact synergistically: POS enhances OC, and together they jointly buffer the negative effects of AIA. This dynamic view highlights how integrated resource pathways can promote employee well-being in AI-integrated workplaces, offering a nuanced extension of the JD-R model.
Practical Impact
This study provides a systematic approach for university administrators to address employee JB in the context of AI technology implementation in higher education. First, the findings indicate that AIA was significantly and positively associated with teachers’ JB. Universities should monitor faculty members’ psychological states and adaptability during the AI integration process in teaching and research. Implementing structured AI transition programs for educators, including phased adoption of AI teaching tools, departmental briefings on potential impacts on teaching loads and academic evaluation, and individualized adaptation plans can help reduce uncertainty and anxiety regarding career development, thereby lowering JB incidence.
Second, the research identifies POS as a crucial intermediary in the link between AIA and JB, offering significant guidance for academic management strategies. Higher education institutions should establish transparent communication channels, such as regular AI pedagogy briefings, faculty consultation forums, and online Q&A platforms, to clarify AI’s scope and its impact on academic roles. They should also organize AI pedagogy workshops to align teaching skills with emerging tools, and adopt participatory curriculum design processes where faculty contribute to AI tool selection and integration into course delivery. Additionally, universities can create peer mentoring programs and discipline-specific AI teaching support groups to enhance faculty members’ sense of control, reducing job insecurity and emotional strain.
Furthermore, this research confirms the important role of OC in mitigating JB. To strengthen OC in higher education, institutions can implement recognition schemes for innovative AI teaching practices, develop academic career advancement pathways incorporating AI-related competencies, and organize interdisciplinary teaching and research collaborations to foster a sense of belonging and professional engagement (S. Y. Kim & Cho, 2022).
Finally, the chain mediation model proposed in this study suggests a multi-level, synergistic intervention strategy. Enhancing POS not only directly improves teachers’ emotional well-being but also fosters AI teaching readiness and psychological safety, strengthening academic community identity. Combining these measures with ongoing faculty well-being assessments, continuous feedback channels, and accessible counseling services can safeguard faculty well-being and teaching performance during AI transitions, achieving both successful AI adoption and sustainable institutional development.
Limitations and Future Research
Although this study reveals the relationships between AIA, POS, OC, and JB, and proposes a chain mediation model, there are several limitations. First, the gender distribution in the sample exhibits a certain imbalance. Among the participants, 128 were male employees, and 306 were female employees, with women accounting for 70.5% of the total sample. This disproportion may be related to the gender distribution characteristics of the industry or job types associated with the study, as female employees might be more concentrated in roles or functions relevant to this research. The gender imbalance may limit the external validity of the results. Future studies should ensure a more balanced gender representation in their samples to improve the generalizability of the findings. Second, as the study is based on a cross-sectional survey, it does not allow for definitive conclusions about cause-and-effect associations in the variables. Future research could utilize longitudinal or experimental approaches to better assess the directionality and causality of the observed effects. Third, the data in this study were mainly collected through self-reports, which may result in biases, including social desirability and memory-recall bias. In particular, the measurement of AIA relied on participants’ self-perceived exposure to AI without independent verification of the actual extent or nature of AI implementation in their institutions. This may have led to discrepancies between perceived and actual AI integration. Future studies could incorporate objective indicators, such as institutional AI adoption records, system usage logs, or third-party evaluations, to validate self-reported data. Fourth, this study did not distinguish participants by academic specialization. Potential differences in AI exposure and attitudes across disciplines (e.g., technical fields involving more automatable tasks and humanistic fields relying more on creativity and emotional interaction) could not be examined, which limits the interpretation and generalizability of the findings. Future research should consider disciplinary differences to enhance the generalizability of the findings. Finally, as the sample in this study was drawn mainly from a single cultural context and consisted of university teachers, the generalizability of the findings is limited. The results are more applicable to work environments characterized by a higher degree of AI adoption and use. Caution is needed when applying these conclusions to other organizational settings or to groups with lower AI involvement. Future research should include samples from different cultural and industry contexts to further test the model’s applicability and enhance the generalizability of the findings.
Conclusion
This study explored how AIA influences employees’ JB and analyzed the chain mediating roles of POS and OC. Based on 434 valid responses, the results confirmed that AIA significantly and positively predicts JB, and that both POS and OC serve as mediators, with a significant chain mediation effect. This study offers new insights into how employees respond to technological uncertainty by identifying organizational support and commitment as key psychological resources that reduce burnout. Practically, organizations can reduce burnout by strengthening POS through transparent communication, targeted training, and inclusive participation, and by enhancing OC through recognition programs, career development, and supportive leadership. However, this study still has limitations, including the gender imbalance in the sample, the focus on higher education employees, and the use of a cross-sectional design that limits causal interpretation. Future research could broaden the sample scope, ensure greater gender and job diversity, and adopt longitudinal or experimental approaches to verify and extend these findings.
