CLCYDec 28, 2021

A Survey on Gender Bias in Natural Language Processing

arXiv:2112.14168v1161 citations
Originality Synthesis-oriented
AI Analysis

It addresses methodological gaps in gender bias research for NLP practitioners and researchers, though it is incremental as a survey.

This paper surveys 304 papers on gender bias in natural language processing, analyzing definitions, datasets, and mitigation approaches, and identifies four core limitations in current research including binary gender treatment and methodological flaws.

Language can be used as a means of reproducing and enforcing harmful stereotypes and biases and has been analysed as such in numerous research. In this paper, we present a survey of 304 papers on gender bias in natural language processing. We analyse definitions of gender and its categories within social sciences and connect them to formal definitions of gender bias in NLP research. We survey lexica and datasets applied in research on gender bias and then compare and contrast approaches to detecting and mitigating gender bias. We find that research on gender bias suffers from four core limitations. 1) Most research treats gender as a binary variable neglecting its fluidity and continuity. 2) Most of the work has been conducted in monolingual setups for English or other high-resource languages. 3) Despite a myriad of papers on gender bias in NLP methods, we find that most of the newly developed algorithms do not test their models for bias and disregard possible ethical considerations of their work. 4) Finally, methodologies developed in this line of research are fundamentally flawed covering very limited definitions of gender bias and lacking evaluation baselines and pipelines. We suggest recommendations towards overcoming these limitations as a guide for future research.

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