English

Mitigating Biases in Toxic Language Detection through Invariant Rationalization

Computation and Language 2021-06-15 v1

Abstract

Automatic detection of toxic language plays an essential role in protecting social media users, especially minority groups, from verbal abuse. However, biases toward some attributes, including gender, race, and dialect, exist in most training datasets for toxicity detection. The biases make the learned models unfair and can even exacerbate the marginalization of people. Considering that current debiasing methods for general natural language understanding tasks cannot effectively mitigate the biases in the toxicity detectors, we propose to use invariant rationalization (InvRat), a game-theoretic framework consisting of a rationale generator and a predictor, to rule out the spurious correlation of certain syntactic patterns (e.g., identity mentions, dialect) to toxicity labels. We empirically show that our method yields lower false positive rate in both lexical and dialectal attributes than previous debiasing methods.

Keywords

Cite

@article{arxiv.2106.07240,
  title  = {Mitigating Biases in Toxic Language Detection through Invariant Rationalization},
  author = {Yung-Sung Chuang and Mingye Gao and Hongyin Luo and James Glass and Hung-yi Lee and Yun-Nung Chen and Shang-Wen Li},
  journal= {arXiv preprint arXiv:2106.07240},
  year   = {2021}
}

Comments

The 5th Workshop on Online Abuse and Harms at ACL 2021

R2 v1 2026-06-24T03:09:46.447Z