论文标题

检测澳大利亚共同19引起的社区抑郁症动态

Detecting Community Depression Dynamics Due to COVID-19 Pandemic in Australia

论文作者

Zhou, Jianlong, Zogan, Hamad, Yang, Shuiqiao, Jameel, Shoaib, Xu, Guandong, Chen, Fang

论文摘要

最近的Covid-19-大流行在全球范围内引起了前所未有的影响。我们还目睹了数百万的心理健康问题,例如抑郁,忧虑,恐惧,厌恶,悲伤和焦虑,这已成为这一严重健康危机期间的主要公共卫生问题之一。例如,根据世界卫生组织(WHO)的发现,抑郁症是最常见的心理健康问题之一。抑郁症会引起严重的情绪,行为和身体健康问题,并带来重大后果,包括个人和社会成本。本文通过Twitter上的用户生成的内容研究了由于COVID-19的大流行而引起的社区抑郁动态。提出了一种基于推文和术语频率段文档频率(TF-IDF)的多模式特征的新方法,以构建抑郁分类模型。多模式特征捕获了情感,主题和特定领域的观点的抑郁线索。我们使用最近从澳大利亚新南威尔士州发出的Twitter用户的推文研究了这个问题。我们的新型分类模型能够提取抑郁极性,这些抑郁极性可能会受到COVID-19和相关事件的影响。结果发现,Covid-19爆发后人们变得更加沮丧。政府采取的措施(例如国家锁定)也提高了抑郁水平。地方政府地区(LGA)水平的进一步分析发现,不同LGA的社区抑郁水平有所不同。这种颗粒状抑郁动态分析不仅可以帮助政府部门等当局在必要时更客观地在特定地区采取相应的行动,而且还可以使用户在整个时间内感知抑郁症的动态。

The recent COVID-19 pandemic has caused unprecedented impact across the globe. We have also witnessed millions of people with increased mental health issues, such as depression, stress, worry, fear, disgust, sadness, and anxiety, which have become one of the major public health concerns during this severe health crisis. For instance, depression is one of the most common mental health issues according to the findings made by the World Health Organisation (WHO). Depression can cause serious emotional, behavioural and physical health problems with significant consequences, both personal and social costs included. This paper studies community depression dynamics due to COVID-19 pandemic through user-generated content on Twitter. A new approach based on multi-modal features from tweets and Term Frequency-Inverse Document Frequency (TF-IDF) is proposed to build depression classification models. Multi-modal features capture depression cues from emotion, topic and domain-specific perspectives. We study the problem using recently scraped tweets from Twitter users emanating from the state of New South Wales in Australia. Our novel classification model is capable of extracting depression polarities which may be affected by COVID-19 and related events during the COVID-19 period. The results found that people became more depressed after the outbreak of COVID-19. The measures implemented by the government such as the state lockdown also increased depression levels. Further analysis in the Local Government Area (LGA) level found that the community depression level was different across different LGAs. Such granular level analysis of depression dynamics not only can help authorities such as governmental departments to take corresponding actions more objectively in specific regions if necessary but also allows users to perceive the dynamics of depression over the time.

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