2022
DOI: 10.48550/arxiv.2210.02659
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Explainable Abuse Detection as Intent Classification and Slot Filling

Abstract: To proactively offer social media users a safe online experience, there is a need for systems that can detect harmful posts and promptly alert platform moderators. In order to guarantee the enforcement of a consistent policy, moderators are provided with detailed guidelines. In contrast, most stateof-the-art models learn what abuse is from labelled examples and as a result base their predictions on spurious cues, such as the presence of group identifiers, which can be unreliable. In this work we introduce the … Show more

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