Publication | Closed Access
Big Social Data Analytics in Journalism and Mass Communication
215
Citations
39
References
2016
Year
Computational AnalysisPolitical PolarizationCommunicationSocial SciencesJournalismText MiningComputational Social ScienceSocial MediaSocial Medium NewsPolitical CommunicationMass Communication ResearchContent AnalysisComputational JournalismMedia InstitutionsEmpirical StudyComputer ScienceComputational CommunicationMedia PoliciesSocial Medium IntelligenceMass CommunicationArtsSocial Medium DataPolitical Science
This article presents an empirical study that investigated and compared two “big data” text analysis methods: dictionary-based analysis, perhaps the most popular automated analysis approach in social science research, and unsupervised topic modeling (i.e., Latent Dirichlet Allocation [LDA] analysis), one of the most widely used algorithms in the field of computer science and engineering. By applying two “big data” methods to make sense of the same dataset—77 million tweets about the 2012 U.S. presidential election—the study provides a starting point for scholars to evaluate the efficacy and validity of different computer-assisted methods for conducting journalism and mass communication research, especially in the area of political communication.
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