English

Detoxifying Language Models Risks Marginalizing Minority Voices

Computation and Language 2021-04-14 v1 Machine Learning

Abstract

Language models (LMs) must be both safe and equitable to be responsibly deployed in practice. With safety in mind, numerous detoxification techniques (e.g., Dathathri et al. 2020; Krause et al. 2020) have been proposed to mitigate toxic LM generations. In this work, we show that current detoxification techniques hurt equity: they decrease the utility of LMs on language used by marginalized groups (e.g., African-American English and minority identity mentions). In particular, we perform automatic and human evaluations of text generation quality when LMs are conditioned on inputs with different dialects and group identifiers. We find that detoxification makes LMs more brittle to distribution shift, especially on language used by marginalized groups. We identify that these failures stem from detoxification methods exploiting spurious correlations in toxicity datasets. Overall, our results highlight the tension between the controllability and distributional robustness of LMs.

Keywords

Cite

@article{arxiv.2104.06390,
  title  = {Detoxifying Language Models Risks Marginalizing Minority Voices},
  author = {Albert Xu and Eshaan Pathak and Eric Wallace and Suchin Gururangan and Maarten Sap and Dan Klein},
  journal= {arXiv preprint arXiv:2104.06390},
  year   = {2021}
}

Comments

NAACL 2021

R2 v1 2026-06-24T01:08:01.845Z