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Autori principali: Iluz, Bar, Elazar, Yanai, Yehudai, Asaf, Stanovsky, Gabriel
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2406.00787
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author Iluz, Bar
Elazar, Yanai
Yehudai, Asaf
Stanovsky, Gabriel
author_facet Iluz, Bar
Elazar, Yanai
Yehudai, Asaf
Stanovsky, Gabriel
contents Most works on gender bias focus on intrinsic bias -- removing traces of information about a protected group from the model's internal representation. However, these works are often disconnected from the impact of such debiasing on downstream applications, which is the main motivation for debiasing in the first place. In this work, we systematically test how methods for intrinsic debiasing affect neural machine translation models, by measuring the extrinsic bias of such systems under different design choices. We highlight three challenges and mismatches between the debiasing techniques and their end-goal usage, including the choice of embeddings to debias, the mismatch between words and sub-word tokens debiasing, and the effect on different target languages. We find that these considerations have a significant impact on downstream performance and the success of debiasing.
format Preprint
id arxiv_https___arxiv_org_abs_2406_00787
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Applying Intrinsic Debiasing on Downstream Tasks: Challenges and Considerations for Machine Translation
Iluz, Bar
Elazar, Yanai
Yehudai, Asaf
Stanovsky, Gabriel
Computation and Language
Most works on gender bias focus on intrinsic bias -- removing traces of information about a protected group from the model's internal representation. However, these works are often disconnected from the impact of such debiasing on downstream applications, which is the main motivation for debiasing in the first place. In this work, we systematically test how methods for intrinsic debiasing affect neural machine translation models, by measuring the extrinsic bias of such systems under different design choices. We highlight three challenges and mismatches between the debiasing techniques and their end-goal usage, including the choice of embeddings to debias, the mismatch between words and sub-word tokens debiasing, and the effect on different target languages. We find that these considerations have a significant impact on downstream performance and the success of debiasing.
title Applying Intrinsic Debiasing on Downstream Tasks: Challenges and Considerations for Machine Translation
topic Computation and Language
url https://arxiv.org/abs/2406.00787