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dataset for the paper "self-compassion as a means to improve job-related well-being in academia..."|心理健康数据集|职业幸福感数据集

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DataCite Commons2025-04-01 更新2024-11-04 收录
心理健康
职业幸福感
下载链接:
https://figshare.com/articles/dataset/dataset_for_the_paper_self-compassion_as_a_means_to_improve_job-related_well-being_in_academia_/21561492/1
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资源简介:
Working in academia entails many challenges including rejections by journals, competition for funding or jobs, and uncertain job outlooks (for non-tenure staff), which can result in poor mental health and well-being. Previous studies have suggested self-compassion as a resource for mental health and well-being, but to date no study has been published that has tested interventions targeting self-compassion in academia. In this weekly diary study, 317 academics from Germany, Switzerland, and the US were asked to recall a negative event and were then randomly assigned to either a self-compassionate writing intervention, a three good things intervention, or an active control intervention, respectively. They also completed two surveys on four consecutive Thursdays measuring state positive and negative affect and job-related well-being (i.e., job satisfaction and work engagement). Using multi-level regression modelling, results showed that participants in the self-compassion condition reported more job satisfaction and work engagement due to experiencing less negative affect. Academics in the three good things condition showed no such effects. Results indicated that self-compassion in academia is a resource that enables emotion-oriented coping during difficult times or in challenging situations that may benefit academics’ job-related well-being. The study highlights both the importance of discussing well-being in academia and ways to strengthen it.
提供机构:
figshare
创建时间:
2022-11-15
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