SEAICYLGMar 17, 2023

She Elicits Requirements and He Tests: Software Engineering Gender Bias in Large Language Models

arXiv:2303.10131v131 citationsh-index: 41
Originality Synthesis-oriented
AI Analysis

This addresses gender bias in software engineering, which is an incremental analysis of existing bias in AI models.

The study investigated implicit gender bias in software development tasks using large language models, finding significant disparities such as testing being associated with 'he' in 100% of cases while requirements elicitation had only 6%.

Implicit gender bias in software development is a well-documented issue, such as the association of technical roles with men. To address this bias, it is important to understand it in more detail. This study uses data mining techniques to investigate the extent to which 56 tasks related to software development, such as assigning GitHub issues and testing, are affected by implicit gender bias embedded in large language models. We systematically translated each task from English into a genderless language and back, and investigated the pronouns associated with each task. Based on translating each task 100 times in different permutations, we identify a significant disparity in the gendered pronoun associations with different tasks. Specifically, requirements elicitation was associated with the pronoun "he" in only 6% of cases, while testing was associated with "he" in 100% of cases. Additionally, tasks related to helping others had a 91% association with "he" while the same association for tasks related to asking coworkers was only 52%. These findings reveal a clear pattern of gender bias related to software development tasks and have important implications for addressing this issue both in the training of large language models and in broader society.

Foundations

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

Your Notes