Song Mengyao, Zhao Nan
CAS Key Laboratory of Behavioral Science, Institute of Psychology, Chinese Academy of Sciences, Beijing, China.
Department of Psychology, University of Chinese Academy of Sciences, Beijing, China.
Front Psychiatry. 2023 Mar 9;14:1121915. doi: 10.3389/fpsyt.2023.1121915. eCollection 2023.
Measuring people's life satisfaction in real time on a large scale is quite valuable for monitoring and promoting public mental health; however, the traditional questionnaire method cannot fully meet this need. This study utilized the emotion words in self-statement texts to train machine learning predictive models to identify an individual's life satisfaction. The SVR model was found to have the best performance, with the correlation between predicted scores and self-reported questionnaire scores achieving 0.42 and the split-half reliability achieving 0.939. This result demonstrates the possibility of identifying life satisfaction through emotional expressions and provides a method to measure the public's life satisfaction online. The word categories selected through the modeling process were happy (PA), sorrow (NB), boredom (NE), reproach (NN), glad (MH), aversion (ME), and N (negation + positive), which reveal the specific emotions in self-expression relevant to life satisfaction.
大规模实时测量人们的生活满意度对于监测和促进公众心理健康具有重要价值;然而,传统的问卷调查方法无法完全满足这一需求。本研究利用自我陈述文本中的情感词汇训练机器学习预测模型,以识别个体的生活满意度。结果发现,支持向量回归(SVR)模型表现最佳,预测分数与自我报告问卷分数之间的相关性达到0.42,分半信度达到0.939。这一结果证明了通过情感表达识别生活满意度的可能性,并提供了一种在线测量公众生活满意度的方法。通过建模过程选择的词类包括高兴(PA)、悲伤(NB)、无聊(NE)、责备(NN)、愉快(MH)、厌恶(ME)和N(否定+肯定),这些词类揭示了自我表达中与生活满意度相关的特定情绪。