Sentiment Evolution Analysis and Association Rule Mining for COVID-19 Tweets

Y. Drias, H. Drias
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引用次数: 2

Abstract

This article presents a data mining study carried out on social media users in the context of COVID-19 and offers four main contributions. The first one consists in the construction of a COVID-19 dataset composed of tweets posted by users during the first stages of the virus propagation. The second contribution offers a sample of the interactions between users on topics related to the pandemic. The third contribution is a sentiment analysis, which explores the evolution of emotions throughout time, while the fourth one is an association rule mining task. The indicators determined by statistics and the results obtained from sentiment analysis and association rule mining are eloquent. For instance, signs of an upcoming worldwide economic crisis were clearly detected at an early stage in this study. Overall results are promising and can be exploited in the prediction of the aftermath of COVID-19 and similar crisis in the future.
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COVID-19推文的情感演变分析和关联规则挖掘
本文介绍了在COVID-19背景下对社交媒体用户进行的数据挖掘研究,并提供了四个主要贡献。第一个是构建一个由用户在病毒传播的第一阶段发布的推文组成的COVID-19数据集。第二份报告提供了用户之间就与大流行有关的主题进行互动的样本。第三个贡献是情感分析,它探索了情感随时间的演变,而第四个贡献是关联规则挖掘任务。通过统计确定的指标以及情感分析和关联规则挖掘得到的结果是有说服力的。例如,这项研究在早期阶段就清楚地发现了即将到来的全球经济危机的迹象。总体结果令人鼓舞,可用于预测2019冠状病毒病和未来类似危机的后果。
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