We Are in This Together: Quantifying Community Subjective Wellbeing and Resilience

MeiXing Dong, Rui Sun, Laura Biester, Rada Mihalcea
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Abstract

The COVID-19 pandemic disrupted everyone's life across the world. In this work, we characterize the subjective wellbeing patterns of 112 cities across the United States during the pandemic prior to vaccine availability, as exhibited in subreddits corresponding to the cities. We quantify subjective wellbeing using positive and negative affect. We then measure the pandemic's impact by comparing a community's observed wellbeing with its expected wellbeing, as forecasted by time series models derived from prior to the pandemic. We show that general community traits reflected in language can be predictive of community resilience. We predict how the pandemic would impact the wellbeing of each community based on linguistic and interaction features from normal times before the pandemic. We find that communities with interaction characteristics corresponding to more closely connected users and higher engagement were less likely to be significantly impacted. Notably, we find that communities that talked more about social ties normally experienced in-person, such as friends, family, and affiliations, were actually more likely to be impacted. Additionally, we use the same features to also predict how quickly each community would recover after the initial onset of the pandemic. We similarly find that communities that talked more about family, affiliations, and identifying as part of a group had a slower recovery.
我们在一起:量化社区主观幸福感和弹性
新冠肺炎疫情扰乱了全世界每个人的生活。在这项工作中,我们描述了在疫苗可用之前,美国112个城市在大流行期间的主观幸福感模式,如相应城市的子reddit所示。我们用积极和消极影响来量化主观幸福感。然后,我们通过比较一个社区观察到的福祉与其预期的福祉来衡量大流行的影响,这是由大流行之前得出的时间序列模型预测的。我们表明,语言中反映的一般社区特征可以预测社区弹性。我们根据疫情前正常时期的语言和互动特征,预测疫情将如何影响每个社区的福祉。我们发现,与用户联系更紧密、参与度更高的互动特征相对应的社区不太可能受到显著影响。值得注意的是,我们发现那些经常谈论社会关系的社区,比如朋友、家人和附属机构,实际上更有可能受到影响。此外,我们还使用相同的特征来预测每个社区在大流行最初爆发后的恢复速度。我们同样发现,更多地谈论家庭、关系和作为群体的一部分的社区恢复得更慢。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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