Using data mining to track the information spreading on social media about the COVID-19 outbreak

Yunfei Xing, Wu He, Gaohui Cao, Yuhai Li
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引用次数: 7

Abstract

Purpose COVID-19, a causative agent of the potentially fatal disease, has raised great global public health concern. Information spreading on the COVID-19 outbreak can strongly influence people behaviour in social media. This paper aims to question of information spreading on COVID-19 outbreak are addressed with a massive data analysis on Twitter from a multidimensional perspective. Design/methodology/approach The evolutionary trend of user interaction and the network structure is analysed by social network analysis. A differential assessment on the topics evolving is provided by the method of text clustering. Visualization is further used to show different characteristics of user interaction networks and public opinion in different periods. Findings Information spreading in social media emerges from different characteristics during various periods. User interaction demonstrates multidimensional cross relations. The results interpret how people express their thoughts and detect topics people are most discussing in social media. Research limitations/implications This study is mainly limited by the size of the data sets and the unicity of the social media. It is challenging to expand the data sets and choose multiple social media to cross-validate the findings of this study. Originality/value This paper aims to find the evolutionary trend of information spreading on the COVID-19 outbreak in social media, including user interaction and topical issues. The findings are of great importance to help government and related regulatory units to manage the dissemination of information on emergencies, in terms of early detection and prevention.
利用数据挖掘技术跟踪社交媒体上关于COVID-19疫情的传播信息
covid -19是一种可能致命的疾病的病原体,引起了全球公共卫生的极大关注。关于COVID-19疫情的信息传播可以强烈影响人们在社交媒体上的行为。本文旨在从多维角度对Twitter上的大量数据进行分析,解决新冠肺炎疫情的信息传播问题。设计/方法/途径通过社会网络分析,分析用户交互和网络结构的演化趋势。本文采用文本聚类的方法对主题的演变进行了差异性评价。进一步利用可视化的方法来展示不同时期用户交互网络和舆情的不同特征。社交媒体上的信息传播在不同时期呈现出不同的特征。用户交互展示了多维的交叉关系。研究结果解释了人们如何表达自己的想法,并发现了人们在社交媒体上最常讨论的话题。研究局限/启示本研究主要受限于数据集的规模和社交媒体的独特性。扩大数据集并选择多个社交媒体来交叉验证本研究的结果是具有挑战性的。原创性/价值本文旨在发现新冠肺炎疫情在社交媒体上的信息传播演变趋势,包括用户互动和热点问题。研究结果对于帮助政府和相关管理单位在早期发现和预防方面管理突发事件信息的传播具有重要意义。
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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