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Network Public Opinion Detection During the Coronavirus Pandemic: A Short-Text Relational Topic Model

Yuanchun Jiang, Ruicheng Liang, Ji Zhang, Jianshan Sun, Yezheng Liu, Yang Qian

2021ACM Transactions on Knowledge Discovery from Data12 citationsDOI

Abstract

Online social media provides rich and varied information reflecting the significant concerns of the public during the coronavirus pandemic. Analyzing what the public is concerned with from social media information can support policy-makers to maintain the stability of the social economy and life of the society. In this article, we focus on the detection of the network public opinions during the coronavirus pandemic. We propose a novel Relational Topic Model for Short texts (RTMS) to draw opinion topics from social media data. RTMS exploits the feature of texts in online social media and the opinion propagation patterns among individuals. Moreover, a dynamic version of RTMS (DRTMS) is proposed to capture the evolution of public opinions. Our experiment is conducted on a real-world dataset which includes 67,592 comments from 14,992 users. The results demonstrate that, compared with the benchmark methods, the proposed RTMS and DRTMS models can detect meaningful public opinions by leveraging the feature of social media data. It can also effectively capture the evolution of public concerns during different phases of the coronavirus pandemic.

Topics & Concepts

Social mediaPublic opinionPandemicBenchmark (surveying)Computer scienceData scienceFeature (linguistics)CoronavirusExploitFocus (optics)Social network (sociolinguistics)Coronavirus disease 2019 (COVID-19)Internet privacyArtificial intelligenceInformation retrievalPolitical scienceWorld Wide WebComputer securityGeographyMedicineInfectious disease (medical specialty)PhysicsPoliticsLawPathologyOpticsPhilosophyLinguisticsGeodesyDiseaseComplex Network Analysis TechniquesOpinion Dynamics and Social InfluenceSentiment Analysis and Opinion Mining