Dutta Rakesh, Das Nilanjana, Majumder Mukta, Jana Biswapati
Department of Computer Science and Application Hijli College Kharagpur India.
WBSEDCL Midnapore Zone Midnapore West Bengal India.
CAAI Trans Intell Technol. 2022 Oct 19. doi: 10.1049/cit2.12144.
The COVID-19 pandemic has a significant impact on the global economy and health. While the pandemic continues to cause casualties in millions, many countries have gone under lockdown. During this period, people have to stay within walls and become more addicted towards social networks. They express their emotions and sympathy via these online platforms. Thus, popular social media (Twitter and Facebook) have become rich sources of information for Opinion Mining and Sentiment Analysis on COVID-19-related issues. We have used Aspect Based Sentiment Analysis to anticipate the polarity of public opinion underlying different aspects from Twitter during lockdown and stepwise unlock phases. The goal of this study is to find the feelings of Indians about the lockdown initiative taken by the Government of India to stop the spread of Coronavirus. India-specific COVID-19 tweets have been annotated, for analysing the sentiment of common public. To classify the Twitter data set a deep learning model has been proposed which has achieved accuracies of 82.35% for Lockdown and 83.33% for Unlock data set. The suggested method outperforms many of the contemporary approaches (long short-term memory, Bi-directional long short-term memory, Gated Recurrent Unit etc.). This study highlights the public sentiment on lockdown and stepwise unlocks, imposed by the Indian Government on various aspects during the Corona outburst.
新冠疫情对全球经济和健康产生了重大影响。尽管疫情仍在造成数百万人伤亡,但许多国家已实施封锁。在此期间,人们不得不待在室内,对社交网络的依赖也更强。他们通过这些在线平台表达自己的情感和同情。因此,热门社交媒体(推特和脸书)已成为关于新冠疫情相关问题的观点挖掘和情感分析的丰富信息来源。我们使用基于方面的情感分析来预测在封锁和逐步解封阶段推特上不同方面潜在的公众舆论极性。本研究的目的是了解印度民众对印度政府为阻止新冠病毒传播而采取的封锁举措的看法。已对特定于印度的新冠疫情推文进行注释,以分析普通民众的情绪。为了对推特数据集进行分类,提出了一种深度学习模型,该模型在封锁数据集上的准确率达到了82.35%,在解封数据集上的准确率达到了83.33%。所建议的方法优于许多当代方法(长短期记忆网络、双向长短期记忆网络、门控循环单元等)。本研究突出了印度政府在新冠疫情爆发期间在各个方面实施的封锁和逐步解封措施所引发的公众情绪。