Saved in:
Bibliographic Details
Main Authors: Yu, Jeongrok, Kim, Seong Ug, Choi, Jacob, Choi, Jinho D.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.06621
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909165089193984
author Yu, Jeongrok
Kim, Seong Ug
Choi, Jacob
Choi, Jinho D.
author_facet Yu, Jeongrok
Kim, Seong Ug
Choi, Jacob
Choi, Jinho D.
contents Bias is a disproportionate prejudice in favor of one side against another. Due to the success of transformer-based Masked Language Models (MLMs) and their impact on many NLP tasks, a systematic evaluation of bias in these models is needed more than ever. While many studies have evaluated gender bias in English MLMs, only a few works have been conducted for the task in other languages. This paper proposes a multilingual approach to estimate gender bias in MLMs from 5 languages: Chinese, English, German, Portuguese, and Spanish. Unlike previous work, our approach does not depend on parallel corpora coupled with English to detect gender bias in other languages using multilingual lexicons. Moreover, a novel model-based method is presented to generate sentence pairs for a more robust analysis of gender bias, compared to the traditional lexicon-based method. For each language, both the lexicon-based and model-based methods are applied to create two datasets respectively, which are used to evaluate gender bias in an MLM specifically trained for that language using one existing and 3 new scoring metrics. Our results show that the previous approach is data-sensitive and not stable as it does not remove contextual dependencies irrelevant to gender. In fact, the results often flip when different scoring metrics are used on the same dataset, suggesting that gender bias should be studied on a large dataset using multiple evaluation metrics for best practice.
format Preprint
id arxiv_https___arxiv_org_abs_2404_06621
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle What is Your Favorite Gender, MLM? Gender Bias Evaluation in Multilingual Masked Language Models
Yu, Jeongrok
Kim, Seong Ug
Choi, Jacob
Choi, Jinho D.
Computation and Language
Bias is a disproportionate prejudice in favor of one side against another. Due to the success of transformer-based Masked Language Models (MLMs) and their impact on many NLP tasks, a systematic evaluation of bias in these models is needed more than ever. While many studies have evaluated gender bias in English MLMs, only a few works have been conducted for the task in other languages. This paper proposes a multilingual approach to estimate gender bias in MLMs from 5 languages: Chinese, English, German, Portuguese, and Spanish. Unlike previous work, our approach does not depend on parallel corpora coupled with English to detect gender bias in other languages using multilingual lexicons. Moreover, a novel model-based method is presented to generate sentence pairs for a more robust analysis of gender bias, compared to the traditional lexicon-based method. For each language, both the lexicon-based and model-based methods are applied to create two datasets respectively, which are used to evaluate gender bias in an MLM specifically trained for that language using one existing and 3 new scoring metrics. Our results show that the previous approach is data-sensitive and not stable as it does not remove contextual dependencies irrelevant to gender. In fact, the results often flip when different scoring metrics are used on the same dataset, suggesting that gender bias should be studied on a large dataset using multiple evaluation metrics for best practice.
title What is Your Favorite Gender, MLM? Gender Bias Evaluation in Multilingual Masked Language Models
topic Computation and Language
url https://arxiv.org/abs/2404.06621