Are We Paying Attention to Her? Investigating Gender Disambiguation and Attention in Machine Translation
- URL: http://arxiv.org/abs/2505.08546v1
- Date: Tue, 13 May 2025 13:17:23 GMT
- Title: Are We Paying Attention to Her? Investigating Gender Disambiguation and Attention in Machine Translation
- Authors: Chiara Manna, Afra Alishahi, Frédéric Blain, Eva Vanmassenhove,
- Abstract summary: We propose a novel evaluation metric called Minimal Pair Accuracy (MPA)<n>MPA focuses on whether models adapt to gender cues in minimal pairs.<n>MPA shows that in anti-stereotypical cases, NMT models tend to more consistently take masculine gender cues into account.
- Score: 4.881426374773398
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: While gender bias in modern Neural Machine Translation (NMT) systems has received much attention, traditional evaluation metrics do not to fully capture the extent to which these systems integrate contextual gender cues. We propose a novel evaluation metric called Minimal Pair Accuracy (MPA), which measures the reliance of models on gender cues for gender disambiguation. MPA is designed to go beyond surface-level gender accuracy metrics by focusing on whether models adapt to gender cues in minimal pairs -- sentence pairs that differ solely in the gendered pronoun, namely the explicit indicator of the target's entity gender in the source language (EN). We evaluate a number of NMT models on the English-Italian (EN--IT) language pair using this metric, we show that they ignore available gender cues in most cases in favor of (statistical) stereotypical gender interpretation. We further show that in anti-stereotypical cases, these models tend to more consistently take masculine gender cues into account while ignoring the feminine cues. Furthermore, we analyze the attention head weights in the encoder component and show that while all models encode gender information to some extent, masculine cues elicit a more diffused response compared to the more concentrated and specialized responses to feminine gender cues.
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