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Gender Bias in Multilingual Neural Machine Translation: The Architecture Matters

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arxiv 2012.13176 v1 pith:5G6PNVDN submitted 2020-12-24 cs.CL

Gender Bias in Multilingual Neural Machine Translation: The Architecture Matters

classification cs.CL
keywords biasgenderarchitectureattentionembeddingslanguage-specificmachinemultilingual
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multilingual Neural Machine Translation architectures mainly differ in the amount of sharing modules and parameters among languages. In this paper, and from an algorithmic perspective, we explore if the chosen architecture, when trained with the same data, influences the gender bias accuracy. Experiments in four language pairs show that Language-Specific encoders-decoders exhibit less bias than the Shared encoder-decoder architecture. Further interpretability analysis of source embeddings and the attention shows that, in the Language-Specific case, the embeddings encode more gender information, and its attention is more diverted. Both behaviors help in mitigating gender bias.

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