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Exploring Public Response to COVID-19 on Weibo with LDA Topic Modeling and Sentiment Analysis
Author(s) -
Runbin Xie,
Samuel Kai Wah Chu,
Dickson Kak Wah Chiu,
Yangshu Wang
Publication year - 2020
Publication title -
data and information management
Language(s) - English
Resource type - Journals
ISSN - 2543-9251
DOI - 10.2478/dim-2020-0023
Subject(s) - latent dirichlet allocation , sentiment analysis , popularity , social media , topic model , public opinion , web crawler , covid-19 , data science , computer science , internet privacy , political science , world wide web , information retrieval , artificial intelligence , politics , disease , medicine , pathology , infectious disease (medical specialty) , law
It is necessary and important to understand public responses to crises, including disease outbreaks. Traditionally, surveys have played an essential role in collecting public opinion, while nowadays, with the increasing popularity of social media, mining social media data serves as another popular tool in opinion mining research. To understand the public response to COVID-19 on Weibo, this research collects 719,570 Weibo posts through a web crawler and analyzes the data with text mining techniques, including Latent Dirichlet Allocation (LDA) topic modeling and sentiment analysis. It is found that, in response to the COVID-19 outbreak, people learn about COVID-19, show their support for frontline warriors, encourage each other spiritually, and, in terms of taking preventive measures, express concerns about economic and life restoration, and so on. Analysis of sentiments and semantic networks further reveals that country media, as well as influential individuals and "self-media," together contribute to the information spread of positive sentiment.

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