Mitigating Biases in Hate Speech Detection from A Causal Perspective
Zhehao Zhang,
Jiaao Chen,
Diyi Yang
Abstract:Warning: This paper discusses and contains offensive or upsetting content. Nowadays, many hate speech detectors are built to automatically detect hateful content. However, their training sets are sometimes skewed towards certain stereotypes (e.g., race or religion-related). As a result, the detectors are prone to depend on some shortcuts for predictions. Previous works mainly focus on token-level analysis and heavily rely on human experts' annotations to identify spurious correlations, which is not only costly… Show more
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