AI Article Synopsis

  • Research in occupational health psychology usually examines individual job characteristics but neglects how these are grouped among employees; this study takes a person-centered approach.
  • Using factor mixture modeling on data from Switzerland and the U.S., two profiles of job experiences were identified: one with low stressors and high resources, and another with high stressors and low resources.
  • Employees in the positive profile (low stressors/high resources) reported better job satisfaction, performance, and health, suggesting that tailored organizational interventions could enhance employee well-being based on these profiles.

Article Abstract

Research in occupational health psychology has tended to focus on the effects of single job characteristics or various job characteristics combined into 1 factor. However, such a variable-centered approach does not account for the clustering of job attributes among groups of employees. We addressed this issue by using a person-centered approach to (a) investigate the occurrence of different empirical constellations of perceived job stressors and resources and (b) validate the meaningfulness of profiles by analyzing their association with employee well-being and performance. We applied factor mixture modeling to identify profiles in 4 large samples consisting of employees in Switzerland (Studies 1 and 2) and the United States (Studies 3 and 4). We identified 2 profiles that spanned the 4 samples, with 1 reflecting a combination of relatively low stressors and high resources (P1) and the other relatively high stressors and low resources (P3). The profiles differed mainly in terms of their organizational and social aspects. Employees in P1 reported significantly higher mean levels of job satisfaction, performance, and general health, and lower means in exhaustion compared with P3. Additional analyses showed differential relationships between job attributes and outcomes depending on profile membership. These findings may benefit organizational interventions as they show that perceived work stressors and resources more strongly influence satisfaction and well-being in particular profiles. (PsycINFO Database Record

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http://dx.doi.org/10.1037/ocp0000038DOI Listing

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