Application of bidirectional LSTM deep learning technique for sentiment analysis of COVID-19 tweets: post-COVID vaccination era

Oluwatobi Noah Akande, Morolake Oladayo Lawrence, Peter Ogedebe
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Abstract

Abstract Background Social media platforms, especially Twitter, have turned out to be a major source of data repositories. They have become a platform that citizens can use to voice their concerns about issues that affect them. Most importantly, during the COVID-19 era, the platform was greatly used by governments and health organizations to sensitize people about the safety guidelines that they must adhere to so as to remain safe during the pandemic. As expected, people also used Twitter and other social media platforms to voice their opinions about how governments are handling the COVID-19 pandemic outbreak. Governments and organizations could, therefore, use these social media as a feedback mechanism that can help them know the view of the citizens about their policies. This could help them in making informed decisions about their policies. Aim The aim of this paper is to explore the use of BiLSTM deep learning technique for sentiment analysis of COVID-19 tweets. Methodology The study retrieved 197,327 tweets from the Nigeria Twitter domain using #COVID or #COVID-19 hashtags as keywords. The dataset was retrieved within the 1st month of COVID-19 vaccination in Nigeria, i.e., March 15–June 15, 2021. BiLSTM deep learning technique was trained using 789,306 sentiment annotated tweets obtained from Kaggle Sentiment140 tweet datasets. The preprocessed case study tweets were then used to evaluate the proposed model. Also, a precision of 78.26% and a recall value of 78.27% were also obtained. Results With an accuracy of 78.29%, 98,545 (49.93%) positive sentiments and 98,782 negative sentiments (50.06%) were recorded. Also, a precision of 78.26% and a recall value of 78.27% were also obtained. However, the presence of outliers which are tweets not related to COVID but which used the hashtag was observed. Conclusion This study has revealed the strength of BiLSTM deep learning technique for sentiment analysis. The results obtained revealed an almost balanced sentiments toward the pandemic with 49.93% positive disposition to the pandemic as compared to 50.06% negative disposition. This showed affirmed the impact of COVID vaccine in dousing citizen’s tension when it was made available for public use. However, the presence of outliers in the classified tweets could be a pointer to the reason why aspect-based sentiment analysis could be preferred to sentence-based sentiment analysis.
双向LSTM深度学习技术在COVID-19推文情感分析中的应用:后covid疫苗接种时代
社交媒体平台,尤其是Twitter,已经成为数据存储的主要来源。他们已经成为一个平台,公民可以利用它来表达他们对影响他们的问题的担忧。最重要的是,在COVID-19时代,政府和卫生组织大量使用该平台向人们宣传他们必须遵守的安全准则,以便在大流行期间保持安全。不出所料,人们还利用推特和其他社交媒体平台表达了他们对政府如何应对COVID-19大流行疫情的看法。因此,政府和组织可以利用这些社交媒体作为一种反馈机制,帮助他们了解公民对其政策的看法。这可以帮助他们对自己的政策做出明智的决定。本文的目的是探索使用BiLSTM深度学习技术对COVID-19推文进行情感分析。该研究使用#COVID或#COVID标签作为关键字,从尼日利亚Twitter域名检索了197,327条推文。该数据集是在尼日利亚COVID-19疫苗接种的第一个月内(即2021年3月15日至6月15日)检索的。BiLSTM深度学习技术使用Kaggle Sentiment140推文数据集获得的789,306条带情感注释的推文进行训练。然后使用预处理的案例研究推文来评估所提出的模型。查准率为78.26%,查全率为78.27%。结果共记录正面情绪98,545条(49.93%),负面情绪98,782条(50.06%),正确率为78.29%。查准率为78.26%,查全率为78.27%。然而,观察到与COVID无关但使用该标签的推文存在异常值。结论本研究揭示了BiLSTM深度学习技术在情感分析中的优势。结果显示,对大流行的情绪几乎是平衡的,49.93%的人对大流行持积极态度,而50.06%的人持消极态度。这证实了新冠疫苗在向公众开放使用时对缓解市民紧张情绪的影响。然而,分类推文中异常值的存在可能是一个指针,说明为什么基于方面的情感分析比基于句子的情感分析更受欢迎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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