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Equalizing Gender Biases in Neural Machine Translation with Word Embeddings Techniques

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arxiv 1901.03116 v2 pith:C5DINAXF submitted 2019-01-10 cs.CL

Equalizing Gender Biases in Neural Machine Translation with Word Embeddings Techniques

classification cs.CL
keywords biasesneuraltranslationembeddingsgendermachinesystemword
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural machine translation has significantly pushed forward the quality of the field. However, there are remaining big issues with the output translations and one of them is fairness. Neural models are trained on large text corpora which contain biases and stereotypes. As a consequence, models inherit these social biases. Recent methods have shown results in reducing gender bias in other natural language processing tools such as word embeddings. We take advantage of the fact that word embeddings are used in neural machine translation to propose a method to equalize gender biases in neural machine translation using these representations. Specifically, we propose, experiment and analyze the integration of two debiasing techniques over GloVe embeddings in the Transformer translation architecture. We evaluate our proposed system on the WMT English-Spanish benchmark task, showing gains up to one BLEU point. As for the gender bias evaluation, we generate a test set of occupations and we show that our proposed system learns to equalize existing biases from the baseline system.

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