Publication | Closed Access
Using sentiment to detect bots on Twitter: Are humans more opinionated than bots?
183
Citations
19
References
2014
Year
EngineeringSocial Medium MonitoringPublic OpinionCommunicationSentiment AnalysisJournalismText MiningRoc CurveNatural Language ProcessingComputational Social ScienceSocial MediaData ScienceData MiningAffective ComputingContent AnalysisSocial Network AnalysisSocial Medium MiningKnowledge DiscoveryComputer ScienceTwitter NetworkSocial ComputingIndian ElectionSocial Medium DataArtsOpinion Aggregation
In many Twitter applications, developers collect only a limited sample of tweets and a local portion of the Twitter network. Given such Twitter applications with limited data, how can we classify Twitter users as either bots or humans? We develop a collection of network-, linguistic-, and application-oriented variables that could be used as possible features, and identify specific features that distinguish well between humans and bots. In particular, by analyzing a large dataset relating to the 2014 Indian election, we show that a number of sentimentrelated factors are key to the identification of bots, significantly increasing the Area under the ROC Curve (AUROC). The same method may be used for other applications as well.
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