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Detoxifying Text with MaRCo: Controllable Revision with Experts and Anti-Experts

Skyler Hallinan, Alisa Liu, Yejin Choi, Maarten Sap

202318 citationsDOIOpen Access PDF

Abstract

Text detoxification has the potential to mitigate the harms of toxicity by rephrasing text to remove offensive meaning, but subtle toxicity remains challenging to tackle. We introduce MaRCo, a detoxification algorithm that combines controllable generation and text rewriting methods using a Product of Experts with autoencoder language models (LMs). MaRCo uses likelihoods under a non-toxic LM (expert) and a toxic LM (anti-expert) to find candidate words to mask and potentially replace. We evaluate our method on several subtle toxicity and microaggressions datasets, and show that it not only outperforms baselines on automatic metrics, but MaRCo's rewrites are preferred 2.1 times more in human evaluation. Its applicability to instances of subtle toxicity is especially promising, demonstrating a path forward for addressing increasingly elusive online hate.

Topics & Concepts

RewritingComputer scienceAutoencoderOffensiveArtificial intelligenceMachine learningNatural language processingInformation retrievalDeep learningEngineeringOperations researchProgramming languageHate Speech and Cyberbullying DetectionAdversarial Robustness in Machine Learning
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