Social media sentiment analysis based on COVID-19

IF 2.7 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
L. Nemes, A. Kiss
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引用次数: 141

Abstract

ABSTRACT In today's world, the social media is everywhere, and everybody come in contact with it every day. With social media datas, we are able to do a lot of analysis and statistics nowdays. Within this scope of article, we conclude and analyse the sentiments and manifestations (comments, hastags, posts, tweets) of the users of the Twitter social media platform, based on the main trends (by keyword, which is mostly the ‘covid’ and coronavirus theme in this article) with Natural Language Processing and with Sentiment Classification using Recurrent Neural Network. Where we analyse, compile, visualize statistics, and summarize for further processing. The trained model works much more accurately, with a smaller margin of error, in determining emotional polarity in today's ‘modern’ often with ambiguous tweets. Especially with RNN. We use this fresh scraped data collections (by the keyword's theme) with our RNN model what we have created and trained to determine what emotional manifestations occurred on a given topic in a given time interval.
基于新冠肺炎的社交媒体情绪分析
在当今世界,社交媒体无处不在,每个人每天都在接触它。有了社交媒体数据,我们现在可以做很多分析和统计。在本文范围内,我们根据主要趋势(按关键词,本文主要是“covid”和冠状病毒主题),利用自然语言处理和使用递归神经网络的情感分类,总结和分析Twitter社交媒体平台用户的情绪和表现(评论、标签、帖子、推文)。在这里,我们分析、编译、可视化统计数据,并为进一步处理进行总结。经过训练的模型在确定当今“现代”的情感极性方面工作得更加准确,误差范围更小,而且往往带有模棱两可的推文。尤其是RNN。我们将这些新收集的数据(通过关键词的主题)与我们创建和训练的RNN模型一起使用,以确定在给定时间间隔内给定主题上发生的情感表现。
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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来源期刊
CiteScore
7.50
自引率
0.00%
发文量
18
审稿时长
27 weeks
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