Publication | Open Access
Characterizing Linguistic Attributes for Automatic Classification of Intent Based Racist/Radicalized Posts on Tumblr Micro-Blogging Website
48
Citations
6
References
2017
Year
Abuse DetectionEngineeringCommunicationSentiment AnalysisCorpus LinguisticsText MiningApplied LinguisticsNatural Language ProcessingTumblr Micro-blogging WebsiteSocial MediaComputational LinguisticsSocial Media IntelligenceRacist IntentLanguage StudiesPopular Microblogging WebsitesRacismContent AnalysisSocial Medium MiningHate SpeechAutomatic ClassificationLinguistic AttributesAnti-racismSocial Medium IntelligenceSocial Medium DataLinguistics
Research shows that many like-minded people use popular microblogging websites for posting hateful speech against various religions and race. Automatic identification of racist and hate promoting posts is required for building social media intelligence and security informatics based solutions. However, just keyword spotting based techniques cannot be used to accurately identify the intent of a post. In this paper, we address the challenge of the presence of ambiguity in such posts by identifying the intent of author. We conduct our study on Tumblr microblogging website and develop a cascaded ensemble learning classifier for identifying the posts having racist or radicalized intent. We train our model by identifying various semantic, sentiment and linguistic features from free-form text. Our experimental results shows that the proposed approach is effective and the emotion tone, social tendencies, language cues and personality traits of a narrative are discriminatory features for identifying the racist intent behind a post.
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