论文标题
LGBTQ在线社区在COVID-19大流行期间经历的少数群体压力
Minority Stress Experienced by LGBTQ Online Communities during the COVID-19 Pandemic
论文作者
论文摘要
COVID-19大流行对少数群体的生活产生了不成比例的影响,例如由于既有社会缺点和健康差异,LGBTQ社区(女同性恋,同性恋,双性恋,变性者和Queer)的生活。尽管对199年大流行对普通众生不同方面的影响的影响进行了广泛的研究,但很少有研究集中在LGBTQ人群上。在本文中,我们使用大流行和大流行数据集开发和评估两组机器学习分类器,以识别显示出少数压力的Twitter帖子,这是LGBTQ人群成员由于性别和性别身份而面临的独特压力。我们证明,我们最好的前和大流行模型表现出强劲而稳定的表现,可用于检测包含少数压力的职位。我们研究了跨流行前和流行期间的少数族裔压力柱的语言差异。我们发现愤怒的词与19009年大流行期间的少数派压力密切相关。我们通过采用基于倾向的分数匹配来进行因果分析,探讨了大流行对LGBTQ人群情绪状态的影响。结果表明,与具有相似流行前行为属性的普通人群相比,LGBTQ种群的认知单词使用情况的使用量更大,并且在积极情绪词的使用中使用了可观察到的属性。我们的发现对公共卫生领域和政策制定者有影响,以便在未来的危机期间向LGBTQ人群提供足够的支持,尤其是在心理健康方面。
The COVID-19 pandemic has disproportionately impacted the lives of minorities, such as members of the LGBTQ community (lesbian, gay, bisexual, transgender, and queer) due to pre-existing social disadvantages and health disparities. Although extensive research has been carried out on the impact of the COVID-19 pandemic on different aspects of the general population's lives, few studies are focused on the LGBTQ population. In this paper, we develop and evaluate two sets of machine learning classifiers using a pre-pandemic and a during-pandemic dataset to identify Twitter posts exhibiting minority stress, which is a unique pressure faced by the members of the LGBTQ population due to their sexual and gender identities. We demonstrate that our best pre- and during-pandemic models show strong and stable performance for detecting posts that contain minority stress. We investigate the linguistic differences in minority stress posts across pre- and during-pandemic periods. We find that anger words are strongly associated with minority stress during the COVID-19 pandemic. We explore the impact of the pandemic on the emotional states of the LGBTQ population by adopting propensity score-based matching to perform a causal analysis. The results show that the LGBTQ population have a greater increase in the usage of cognitive words and worsened observable attribute in the usage of positive emotion words than the group of the general population with similar pre-pandemic behavioral attributes. Our findings have implications for the public health domain and policy-makers to provide adequate support, especially with respect to mental health, to the LGBTQ population during future crises.