Topic modelling with innovative deep learning methods has gained interest for a wide range of applications that includes COVID-19. Topic modelling can provide, psychological, social and cultural insights for understanding human behaviour in extreme events such as the COVID-19 pandemic. In this paper, we use prominent deep learning-based language models for COVID-19 topic modelling taking into account data from emergence (Alpha) to the Omicron variant. We apply topic modeling to review the public behaviour across the first, second and third waves based on Twitter dataset from India. Our results show that the topics extracted for the subsequent waves had certain overlapping themes such as covers governance, vaccination, and pandemic management while novel issues aroused in political, social and economic situation during COVID-19 pandemic. We also found a strong correlation of the major topics qualitatively to news media prevalent at the respective time period. Hence, our framework has the potential to capture major issues arising during different phases of the COVID-19 pandemic which can be extended to other countries and regions.
翻译:采用创新的深层次学习方法进行主题建模,已引起人们对包括COVID-19在内的多种应用的兴趣。主题建模可以提供心理、社会和文化方面的深刻见解,以了解人类在诸如COVID-19大流行等极端事件中的行为。在本文件中,我们利用突出的深层次学习语言模型进行COVID-19专题建模,同时考虑到从出现(阿尔法)到Ocrocron变异的数据。我们根据印度的Twitter数据集,采用主题建模来审查第一、第二和第三波公共行为。我们的结果显示,为随后各波选取的专题有某些重叠的主题,如治理、疫苗接种和大流行病管理,同时在COVID-19大流行期间在政治、社会和经济形势中出现的新问题。我们还发现,主要专题在质量上与各个时期流行的新闻媒体密切相关。因此,我们的框架有可能捕捉到在COVID-19大流行的不同阶段产生的重大问题,这些可以扩展到其他国家和地区。</s>