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arxiv: 2206.09917 · v1 · pith:W5G47W26 · submitted 2022-06-20 · cs.CL

Multilingual HateCheck: Functional Tests for Multilingual Hate Speech Detection Models

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classification cs.CL
keywords hatespeechdetectionmodelsmultilingualtestsfunctionallanguages
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Hate speech detection models are typically evaluated on held-out test sets. However, this risks painting an incomplete and potentially misleading picture of model performance because of increasingly well-documented systematic gaps and biases in hate speech datasets. To enable more targeted diagnostic insights, recent research has thus introduced functional tests for hate speech detection models. However, these tests currently only exist for English-language content, which means that they cannot support the development of more effective models in other languages spoken by billions across the world. To help address this issue, we introduce Multilingual HateCheck (MHC), a suite of functional tests for multilingual hate speech detection models. MHC covers 34 functionalities across ten languages, which is more languages than any other hate speech dataset. To illustrate MHC's utility, we train and test a high-performing multilingual hate speech detection model, and reveal critical model weaknesses for monolingual and cross-lingual applications.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Aligning Implied Statements for Implicit Hate Speech Generalizability with Context-Bounded Semi-hard Negative Mining

    cs.CL 2026-06 unverdicted novelty 5.0

    ImpSH improves cross-domain generalization in implicit hate speech classification by aligning posts with implied statements and applying context-bounded semi-hard negative mining within a triplet learning setup.