CLAICYLGSIApr 15, 2025

Masculine Defaults via Gendered Discourse in Podcasts and Large Language Models

arXiv:2504.11431v12 citationsh-index: 10Has CodeICWSM
Originality Incremental advance
AI Analysis

This work addresses gender bias in AI systems, specifically in podcasts and LLMs, which is an incremental contribution to understanding and mitigating representational harms.

The study tackled the problem of masculine defaults in gender bias by analyzing gendered discourse words in podcasts and measuring associated biases in large language models (LLMs), finding that masculine discourse words have more stable representations in LLMs, potentially leading to better system performance for men.

Masculine defaults are widely recognized as a significant type of gender bias, but they are often unseen as they are under-researched. Masculine defaults involve three key parts: (i) the cultural context, (ii) the masculine characteristics or behaviors, and (iii) the reward for, or simply acceptance of, those masculine characteristics or behaviors. In this work, we study discourse-based masculine defaults, and propose a twofold framework for (i) the large-scale discovery and analysis of gendered discourse words in spoken content via our Gendered Discourse Correlation Framework (GDCF); and (ii) the measurement of the gender bias associated with these gendered discourse words in LLMs via our Discourse Word-Embedding Association Test (D-WEAT). We focus our study on podcasts, a popular and growing form of social media, analyzing 15,117 podcast episodes. We analyze correlations between gender and discourse words -- discovered via LDA and BERTopic -- to automatically form gendered discourse word lists. We then study the prevalence of these gendered discourse words in domain-specific contexts, and find that gendered discourse-based masculine defaults exist in the domains of business, technology/politics, and video games. Next, we study the representation of these gendered discourse words from a state-of-the-art LLM embedding model from OpenAI, and find that the masculine discourse words have a more stable and robust representation than the feminine discourse words, which may result in better system performance on downstream tasks for men. Hence, men are rewarded for their discourse patterns with better system performance by one of the state-of-the-art language models -- and this embedding disparity is a representational harm and a masculine default.

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