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Gender-preserving Debiasing for Pre-trained Word Embeddings

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arxiv 1906.00742 v1 pith:BB2XQ76J submitted 2019-06-03 cs.CL cs.LG

Gender-preserving Debiasing for Pre-trained Word Embeddings

classification cs.CL cs.LG
keywords embeddingswordbiasesdebiasingemphinformationgendergender-related
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Word embeddings learnt from massive text collections have demonstrated significant levels of discriminative biases such as gender, racial or ethnic biases, which in turn bias the down-stream NLP applications that use those word embeddings. Taking gender-bias as a working example, we propose a debiasing method that preserves non-discriminative gender-related information, while removing stereotypical discriminative gender biases from pre-trained word embeddings. Specifically, we consider four types of information: \emph{feminine}, \emph{masculine}, \emph{gender-neutral} and \emph{stereotypical}, which represent the relationship between gender vs. bias, and propose a debiasing method that (a) preserves the gender-related information in feminine and masculine words, (b) preserves the neutrality in gender-neutral words, and (c) removes the biases from stereotypical words. Experimental results on several previously proposed benchmark datasets show that our proposed method can debias pre-trained word embeddings better than existing SoTA methods proposed for debiasing word embeddings while preserving gender-related but non-discriminative information.

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  1. GKnow: Measuring the Entanglement of Gender Bias and Factual Gender

    cs.CL 2026-05 unverdicted novelty 7.0

    Gender bias and factual gender knowledge are severely entangled in language model circuits and neurons, making neuron ablation an unreliable method for debiasing.