论文标题
我们对Covid-19-19的大流行有何反应?通过Twitter的镜头分析不断变化的印度情绪
How Have We Reacted To The COVID-19 Pandemic? Analyzing Changing Indian Emotions Through The Lens of Twitter
论文作者
论文摘要
自爆发以来,持续的共同19-19大流行造成了世界各地人类生活和经济的前所未有的损失。截至2020年7月18日,世界卫生组织(WHO)报告了超过1300万例确认案件,包括216个国家和地区的近60万人死亡。尽管采取了多项政府措施,但印度还是逐渐提升了等级,成为仅次于美国和巴西的大流行的第三个受打击的国家,从而引起了她的公民的广泛焦虑和恐惧。随着世界大多数人口继续局限于自己的家,越来越多的人开始依靠Twitter等社交媒体平台来表达他们对大流行各个方面的感受和态度。随着对心理健康的关注,必须分析公众影响的动态,以预测任何潜在的威胁并采取预防措施。由于人类心灵的情感状态比微薄的二元情绪更为细微,因此我们在这里提出了一个基于学习的系统,以从他们的推文中识别人们的情绪。我们在两个基准数据集中获得了多标签情感分类的竞争结果。然后,随着大流行不断传播翅膀,我们使用系统来分析印第安人之间情绪反应的演变。我们还研究了显着因素的发展,这些因素会导致态度随着时间的变化。最后,我们讨论了进一步改善我们工作的方向,并希望我们的分析可以帮助更好的公共卫生监测。
Since its outbreak, the ongoing COVID-19 pandemic has caused unprecedented losses to human lives and economies around the world. As of 18th July 2020, the World Health Organization (WHO) has reported more than 13 million confirmed cases including close to 600,000 deaths across 216 countries and territories. Despite several government measures, India has gradually moved up the ranks to become the third worst-hit nation by the pandemic after the US and Brazil, thus causing widespread anxiety and fear among her citizens. As majority of the world's population continues to remain confined to their homes, more and more people have started relying on social media platforms such as Twitter for expressing their feelings and attitudes towards various aspects of the pandemic. With rising concerns of mental well-being, it becomes imperative to analyze the dynamics of public affect in order to anticipate any potential threats and take precautionary measures. Since affective states of human mind are more nuanced than meager binary sentiments, here we propose a deep learning-based system to identify people's emotions from their tweets. We achieve competitive results on two benchmark datasets for multi-label emotion classification. We then use our system to analyze the evolution of emotional responses among Indians as the pandemic continues to spread its wings. We also study the development of salient factors contributing towards the changes in attitudes over time. Finally, we discuss directions to further improve our work and hope that our analysis can aid in better public health monitoring.