Ahmad Waseem, Wang Bang, Martin Philecia, Xu Minghua, Xu Han
School of Electronic Information and Communications, Huazhong University of Science and Technology, Wuhan, China.
School of Journalism and Information Communication, Huazhong University of Science and Technology, Wuhan, China.
J Comput Soc Sci. 2023;6(1):19-57. doi: 10.1007/s42001-022-00189-1. Epub 2022 Nov 27.
For a healthy society to exist, it is crucial for the media to focus on disease-related issues so that more people are widely aware of them and reduce health risks. Recently, deep neural networks have become a popular tool for textual sentiment analysis, which can provide valuable insights and real-time monitoring and analysis regarding health issues. In this paper, as part of an effort to develop an effective model that can elicit public sentiment on COVID-19 news, we propose a novel approach Cov-Att-BiLSTM for sentiment analysis of COVID-19 news headlines using deep neural networks. We integrate attention mechanisms, embedding techniques, and semantic level data labeling into the prediction process to enhance the accuracy. To evaluate the proposed approach, we compared it to several deep and machine learning classifiers using various metrics of categorization efficiency and prediction quality, and the experimental results demonstrate its superiority with 0.931 testing accuracy. Furthermore, 73,138 pandemic-related tweets posted on six global channels were analyzed by the proposed approach, which accurately reflects global coverage of COVID-19 news and vaccination.
对于一个健康社会的存在而言,媒体关注与疾病相关的问题至关重要,这样更多人才能广泛了解这些问题并降低健康风险。最近,深度神经网络已成为文本情感分析的常用工具,它可以提供有关健康问题的宝贵见解以及实时监测和分析。在本文中,作为开发一种能够引发公众对新冠疫情新闻情感的有效模型的一部分,我们提出了一种新颖的方法Cov-Att-BiLSTM,用于使用深度神经网络对新冠疫情新闻标题进行情感分析。我们将注意力机制、嵌入技术和语义级数据标注整合到预测过程中,以提高准确性。为了评估所提出的方法,我们使用各种分类效率和预测质量指标将其与几个深度学习和机器学习分类器进行了比较,实验结果表明其具有0.931的测试准确率,表现出优越性。此外,所提出的方法分析了在六个全球渠道上发布的73138条与疫情相关的推文,准确反映了新冠疫情新闻和疫苗接种的全球覆盖面。