Implicitly Abusive Comparisons – A New Dataset and Linguistic Analysis

Michael Wiegand, Maja Geulig, Josef Ruppenhofer

Computational Social Science and Social Media Long paper Paper

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Abstract: We examine the task of detecting implicitly abusive comparisons (e.g. "Your hair looks like you have been electrocuted"). Implicitly abusive comparisons are abusive comparisons in which abusive words (e.g. "dumbass" or "scum") are absent. We detail the process of creating a novel dataset for this task via crowdsourcing that includes several measures to obtain a sufficiently representative and unbiased set of comparisons. We also present classification experiments that include a range of linguistic features that help us better understand the mechanisms underlying abusive comparisons.
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