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幸福的PERMA模型在本科生中的应用。

Application of the PERMA Model of Well-being in Undergraduate Students.

作者信息

Kovich Melissa K, Simpson Vicki L, Foli Karen J, Hass Zachary, Phillips Rhonda G

机构信息

Honors College, Purdue University, 1101 Third Street, West Lafayette, IN 47906 USA.

School of Nursing, Purdue University, 502. N. University Street, West Lafayette, IN 47907 USA.

出版信息

Int J Community Wellbeing. 2023;6(1):1-20. doi: 10.1007/s42413-022-00184-4. Epub 2022 Oct 26.

Abstract

The PERMA model was introduced by Seligman in 2011 to increase and measure well-being. This model defines well-being in terms of Positive Emotion, Engagement, Relationships, Meaning, and Accomplishment (PERMA). Mental health concerns are common in undergraduate students and may prevent them from obtaining optimal well-being. The purpose of this study was to test whether all five PERMA elements of well-being could be constructed from items within the 2018 Purdue University Student Experience at a Research University (SERU) survey. Using confirmatory factor analysis, all five PERMA constructs were supported and demonstrated good model fit statistics. A second order PERMA well-being construct was built and demonstrated adequate model fit with RMSEA = 0.04. All five constructs were significant at < .001. Accomplishment had the highest factor loading (0.76) and Meaning had the lowest factor loading (0.25). Results for this study support use of well-being theory in the context of undergraduate students and provides enhanced understanding of well-being characteristics in this population.

摘要

PERMA模型由塞利格曼于2011年提出,用于增进和衡量幸福感。该模型从积极情绪、投入、人际关系、意义和成就(PERMA)方面对幸福感进行定义。心理健康问题在本科生中很常见,可能会妨碍他们获得最佳幸福感。本研究的目的是检验2018年普渡大学研究型大学学生体验(SERU)调查中的项目能否构建幸福感的所有五个PERMA要素。通过验证性因素分析,所有五个PERMA结构均得到支持,并显示出良好的模型拟合统计量。构建了一个二阶PERMA幸福感结构,显示出足够的模型拟合,RMSEA = 0.04。所有五个结构在p < .001时均具有显著性。成就的因子载荷最高(0.76),意义的因子载荷最低(0.25)。本研究结果支持在本科生背景下使用幸福感理论,并增进了对该人群幸福感特征的理解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/81e4/9607835/66c184c5d403/42413_2022_184_Fig1_HTML.jpg

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