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新冠疫情期间微博用户主观幸福感的发展趋势:基于机器学习方法的网络文本分析

Developmental Trend of Subjective Well-Being of Weibo Users During COVID-19: Online Text Analysis Based on Machine Learning Method.

作者信息

Han Yingying, Pan Wenhao, Li Jinjin, Zhang Ting, Zhang Qiang, Zhang Emily

机构信息

School of Public Administration, South China University of Technology, Guangzhou, China.

School of Psychology, Guizhou Normal University, Guiyang, China.

出版信息

Front Psychol. 2022 Jan 6;12:779594. doi: 10.3389/fpsyg.2021.779594. eCollection 2021.

Abstract

Currently, the coronavirus disease 2019 (COVID-19) pandemic experienced by the international community has increased the usage frequency of borderless, highly personalized social media platforms of all age groups. Analyzing and modeling texts sent through social media online can reveal the characteristics of the psychological dynamic state and living conditions of social media users during the pandemic more extensively and comprehensively. This study selects the Sina Weibo platform, which is highly popular in China and analyzes the subjective well-being (SWB) of Weibo users during the COVID-19 pandemic in combination with the machine learning classification algorithm. The study first invokes the SWB classification model to classify the SWB level of original texts released by 1,322 Weibo active users during the COVID-19 pandemic and then combines the latent growth curve model (LGCM) and the latent growth mixture model (LGMM) to investigate the developmental trend and heterogeneity characteristics of the SWB of Weibo users after the COVID-19 outbreak. The results present a downward trend and then an upward trend of the SWB of Weibo users during the pandemic as a whole. There was a significant correlation between the initial state and the development rate of the SWB after the COVID-19 outbreak ( = 0.36, < 0.001). LGMM results show that there were two heterogeneous classes of the SWB after the COVID-19 outbreak, and the development rate of the SWB of the two classes was significantly different. The larger class (normal growth group; = 1,229, 93.7%) showed a slow growth, while the smaller class (high growth group; = 93, 6.3%) showed a rapid growth. Furthermore, the slope means across the two classes were significantly different ( < 0.001). Therefore, the individuals with a higher growth rate of SWB exhibited stronger adaptability to the changes in their living environments. These results could help to formulate effective interventions on the mental health level of the public after the public health emergency outbreak.

摘要

当前,国际社会经历的2019冠状病毒病(COVID-19)大流行提高了所有年龄组对无边界、高度个性化社交媒体平台的使用频率。分析通过在线社交媒体发送的文本并进行建模,可以更广泛、全面地揭示大流行期间社交媒体用户的心理动态状态和生活状况特征。本研究选取在中国广受欢迎的新浪微博平台,结合机器学习分类算法分析COVID-19大流行期间微博用户的主观幸福感(SWB)。研究首先调用SWB分类模型对1322名微博活跃用户在COVID-19大流行期间发布的原始文本的SWB水平进行分类,然后结合潜在增长曲线模型(LGCM)和潜在增长混合模型(LGMM),研究COVID-19疫情爆发后微博用户SWB的发展趋势和异质性特征。结果显示,大流行期间微博用户的SWB整体呈先下降后上升的趋势。COVID-19疫情爆发后,SWB的初始状态与发展速率之间存在显著相关性( = 0.36, < 0.001)。LGMM结果表明,COVID-19疫情爆发后SWB存在两个异质性类别,两类SWB的发展速率存在显著差异。较大的类别(正常增长组; = 1229,93.7%)显示增长缓慢,而较小的类别(高增长组; = 93,6.3%)显示增长迅速。此外,两类的斜率均值存在显著差异( < 0.001)。因此,SWB增长率较高的个体对生活环境变化的适应能力更强。这些结果有助于在突发公共卫生事件爆发后,针对公众心理健康水平制定有效的干预措施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b2dd/8785322/5ee3665695a1/fpsyg-12-779594-g001.jpg

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