心理学
焦虑
心理健康
情感劳动
萧条(经济学)
2019年冠状病毒病(COVID-19)
工作满意度
在线和离线
情绪衰竭
临床心理学
社会心理学
应用心理学
倦怠
精神科
医学
宏观经济学
病理
经济
传染病(医学专业)
计算机科学
疾病
操作系统
作者
Zhuo Job Chen,Huang Zuo,Zixun Hua,Yuanhuan Feng,Ruixiang Gao
摘要
Abstract Background Despite increasing attention on emotional labor in teacher well‐being research, person‐centered studies are relatively scarce, particularly concerning the emotional labor of online teaching during COVID‐19 and its effects on teachers’ non‐work‐related mental health. Objective This study aims to address these gaps by examining emotional labor profiles and their consequences on job satisfaction, depression, and anxiety among Chinese teachers involved in either online or offline teaching during October–December 2022. Methods Two samples of teachers were analyzed altogether: one engaged in online teaching (N=605) and the other in offline teaching (N=394). Latent profile analysis was used to identify emotional labor profiles based on three strategies: surface acting, deep acting, and expression of naturally felt emotions. Results A total of four subgroups of emotional workers were identified: natural expressors, actors, flexible regulators, and authentic regulators. Significant differences were found between online and offline teaching, with a higher proportion of actors and fewer flexible regulators in the online condition, suggesting that the screen acts as a barrier to authentic emotional display. Among the four classes, actors scored lowest on job satisfaction and highest on depression and anxiety, whereas authentic regulators were the most adaptive, especially in online settings. Conclusions The findings highlight the impact of online teaching on teachers’ emotional labor profiles and mental health, with practical implications for optimizing online teaching environments and supporting teacher well‐being.
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