Vernikou Sotiria, Lyras Athanasios, Kanavos Andreas
Computer Engineering and Informatics Department, University of Patras, Patras, Greece.
Department of Digital Media and Communication, Ionian University, Kefalonia, Greece.
Neural Comput Appl. 2022;34(22):19615-19627. doi: 10.1007/s00521-022-07650-2. Epub 2022 Aug 6.
COVID-19 is an infectious disease with its first recorded cases identified in late 2019, while in March of 2020 it was declared as a pandemic. The outbreak of the disease has led to a sharp increase in posts and comments from social media users, with a plethora of sentiments being found therein. This paper addresses the subject of sentiment analysis, focusing on the classification of users' sentiment from posts related to COVID-19 that originate from Twitter. The period examined is from March until mid-April of 2020, when the pandemic had thus far affected the whole world. The data is processed and linguistically analyzed with the use of several natural language processing techniques. Sentiment analysis is implemented by utilizing seven different deep learning models based on LSTM neural networks, and a comparison with traditional machine learning classifiers is made. The models are trained in order to distinguish the tweets between three classes, namely negative, neutral and positive.
COVID-19是一种传染病,2019年末首次记录到病例,2020年3月被宣布为大流行病。该疾病的爆发导致社交媒体用户发布的帖子和评论急剧增加,其中发现了大量情绪。本文探讨情绪分析主题,重点是对源自推特的与COVID-19相关帖子中用户情绪进行分类。所考察的时间段是从2020年3月到4月中旬,此时大流行病已影响到全世界。使用多种自然语言处理技术对数据进行处理和语言分析。通过利用基于长短期记忆神经网络的七种不同深度学习模型来实施情绪分析,并与传统机器学习分类器进行比较。对这些模型进行训练,以区分推文的三类情绪,即负面、中性和正面。