Social scientists and psychologists take interest in understanding how people express emotions and sentiments when dealing with catastrophic events such as natural disasters, political unrest, and terrorism. The COVID-19 pandemic is a catastrophic event that has raised a number of psychological issues such as depression given abrupt social changes and lack of employment. Advancements of deep learning-based language models have been promising for sentiment analysis with data from social networks such as Twitter. Given the situation with COVID-19 pandemic, different countries had different peaks where the rise and fall of new cases affected lock-downs which directly affected the economy and employment. During the rise of COVID-19 cases with stricter lock-downs, people have been expressing their sentiments in social media. This can provide a deep understanding of human psychology during catastrophic events. In this paper, we present a framework that employs deep learning-based language models via long short-term memory (LSTM) recurrent neural networks for sentiment analysis during the rise of novel COVID-19 cases in India. The framework features LSTM language model with a global vector embedding and state-of-art BERT language model. We review the sentiments expressed for selective months in 2020 which covers the first major peak of novel cases in India. Our framework utilises multi-label sentiment classification where more than one sentiment can be expressed at once. Our results indicate that the majority of the tweets have been positive with high levels of optimism during the rise of the novel COVID-19 cases and the number of tweets significantly lowered towards the peak. The predictions generally indicate that although the majority have been optimistic, a significant group of population has been annoyed towards the way the pandemic was handled by the authorities.
翻译:社会科学家和心理学家对了解人们在应对自然灾害、政治动乱和恐怖主义等灾难性事件时如何表达情绪和情绪感兴趣。COVID-19大流行病是一个灾难性事件,引发了许多心理问题,如社会变化突然和缺乏就业造成的抑郁症。深层次的学习语言模型的进步对用诸如Twitter等社会网络的数据进行情绪分析很有希望。鉴于COVID-19大流行病的情况,不同国家的顶峰不同,新案例的上升和下降影响到锁定,直接影响到经济和就业。在CVID-19案件上升,更严格锁定的情况下,人们一直在社交媒体中表达他们的情绪。这可以提供对灾难性事件期间人类心理学的深刻理解。在本文中,我们提出了一个框架,通过长期记忆(LSTM)反复出现的神经网络进行情绪分析,在印度新的COVID-19案件上升期间,情绪的峰值是LSTM语言模型的峰值,以全球矢量和最先进的BERT语言模型为特征。我们审视了2020年有选择性地表示的情绪,而2020年的多数人则以高压方式表达的情绪,而印度在最初的高峰时期则表明我们的一种高水平。