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arxiv: 1706.01206 · v1 · pith:J72Q2CJ6new · submitted 2017-06-05 · 💻 cs.CL

One-step and Two-step Classification for Abusive Language Detection on Twitter

classification 💻 cs.CL
keywords abusiveapproachclassificationlanguageone-stepdetectionf-measuretwitter
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Automatic abusive language detection is a difficult but important task for online social media. Our research explores a two-step approach of performing classification on abusive language and then classifying into specific types and compares it with one-step approach of doing one multi-class classification for detecting sexist and racist languages. With a public English Twitter corpus of 20 thousand tweets in the type of sexism and racism, our approach shows a promising performance of 0.827 F-measure by using HybridCNN in one-step and 0.824 F-measure by using logistic regression in two-steps.

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