CLAIJun 18, 2023

Gender Bias in Transformer Models: A comprehensive survey

arXiv:2306.10530v17 citationsh-index: 8
Originality Synthesis-oriented
AI Analysis

This addresses the issue of gender bias in AI for users of language technologies, but it is incremental as it synthesizes existing research without introducing new methods.

The paper tackles the problem of gender bias in Transformer models by conducting a comprehensive survey that critically examines existing methodologies and metrics, identifying limitations such as incomplete metrics and lack of standardization, and highlighting implications for downstream applications like dialogue systems and machine translation.

Gender bias in artificial intelligence (AI) has emerged as a pressing concern with profound implications for individuals' lives. This paper presents a comprehensive survey that explores gender bias in Transformer models from a linguistic perspective. While the existence of gender bias in language models has been acknowledged in previous studies, there remains a lack of consensus on how to effectively measure and evaluate this bias. Our survey critically examines the existing literature on gender bias in Transformers, shedding light on the diverse methodologies and metrics employed to assess bias. Several limitations in current approaches to measuring gender bias in Transformers are identified, encompassing the utilization of incomplete or flawed metrics, inadequate dataset sizes, and a dearth of standardization in evaluation methods. Furthermore, our survey delves into the potential ramifications of gender bias in Transformers for downstream applications, including dialogue systems and machine translation. We underscore the importance of fostering equity and fairness in these systems by emphasizing the need for heightened awareness and accountability in developing and deploying language technologies. This paper serves as a comprehensive overview of gender bias in Transformer models, providing novel insights and offering valuable directions for future research in this critical domain.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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