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Debiasing Pre-Trained Language Models via Efficient Fine-Tuning

Michael Gira, Ruisu Zhang, Kangwook Lee

202231 citationsDOIOpen Access PDF

Abstract

An explosion in the popularity of transformerbased language models (such as GPT-3, BERT, RoBERTa, and ALBERT) has opened the doors to new machine learning applications involving language modeling, text generation, and more. However, recent scrutiny reveals that these language models contain inherent biases towards certain demographics reflected in their training data. While research has tried mitigating this problem, existing approaches either fail to remove the bias completely, degrade performance ("catastrophic forgetting"), or are costly to execute. This work examines how to reduce gender bias in a GPT-2 language model by fine-tuning less than 1% of its parameters. Through quantitative benchmarks, we show that this is a viable way to reduce prejudice in pre-trained language models while remaining cost-effective at scale.

Topics & Concepts

Language modelComputer scienceDebiasingForgettingPopularityScrutinyDoorsMachine learningArtificial intelligenceExtrapolationOverfittingNatural language processingCognitive psychologyPsychologyArtificial neural networkLawCognitive scienceMathematicsPolitical scienceOperating systemSocial psychologyMathematical analysisTopic ModelingNatural Language Processing TechniquesSpeech Recognition and Synthesis