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Main Authors: Dong, Ming, Tang, Shiyi, Peng, Ziyan, Chen, Guanyi, He, Tingting
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.10504
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author Dong, Ming
Tang, Shiyi
Peng, Ziyan
Chen, Guanyi
He, Tingting
author_facet Dong, Ming
Tang, Shiyi
Peng, Ziyan
Chen, Guanyi
He, Tingting
contents Knowledge-Editing-based (KE-based) detoxification has emerged as a promising approach for mitigating harmful behaviours in Large Language Models. Existing evaluations, however, largely rely on automatic toxicity classifiers, implicitly assuming that reduced toxicity scores reflect genuine behavioural suppression. In this work, we propose a robustness-oriented evaluation framework for KE-based detoxification that examines its reliability beyond standard classifier-based metrics along three dimensions: optimisation robustness, compositional robustness, and cross-lingual robustness. We identify pseudo-detoxification as a common failure mode, where apparent toxicity reductions arise from degenerate generation behaviours rather than meaningful suppression of unsafe content. We further show that detoxification effectiveness degrades when multiple unsafe behaviours are edited jointly, and that both monolingual and cross-lingual detoxification remain effective only under specific model-method combinations. Overall, our results indicate that KE-based detoxification is robust only for certain models, limited numbers of detoxification objectives, and a subset of languages.
format Preprint
id arxiv_https___arxiv_org_abs_2602_10504
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle On the Robustness of Knowledge Editing for Detoxification
Dong, Ming
Tang, Shiyi
Peng, Ziyan
Chen, Guanyi
He, Tingting
Computation and Language
Knowledge-Editing-based (KE-based) detoxification has emerged as a promising approach for mitigating harmful behaviours in Large Language Models. Existing evaluations, however, largely rely on automatic toxicity classifiers, implicitly assuming that reduced toxicity scores reflect genuine behavioural suppression. In this work, we propose a robustness-oriented evaluation framework for KE-based detoxification that examines its reliability beyond standard classifier-based metrics along three dimensions: optimisation robustness, compositional robustness, and cross-lingual robustness. We identify pseudo-detoxification as a common failure mode, where apparent toxicity reductions arise from degenerate generation behaviours rather than meaningful suppression of unsafe content. We further show that detoxification effectiveness degrades when multiple unsafe behaviours are edited jointly, and that both monolingual and cross-lingual detoxification remain effective only under specific model-method combinations. Overall, our results indicate that KE-based detoxification is robust only for certain models, limited numbers of detoxification objectives, and a subset of languages.
title On the Robustness of Knowledge Editing for Detoxification
topic Computation and Language
url https://arxiv.org/abs/2602.10504