CLJul 22, 2025

How Deep Is Representational Bias in LLMs? The Cases of Caste and Religion

arXiv:2508.03712v112 citationsh-index: 31Has CodeProceedings of the AAAI/ACM Conference on AI, Ethics, and Society
Originality Incremental advance
AI Analysis

This research addresses bias in LLMs for underrepresented groups in India, revealing that current methods are insufficient, making it incremental but important for fairness in AI.

The study systematically audited GPT-4 Turbo to measure representational bias in LLMs for caste and religion in India, finding that it consistently overrepresents dominant groups beyond statistical reality, with limited effectiveness from prompt-based interventions.

Representational bias in large language models (LLMs) has predominantly been measured through single-response interactions and has focused on Global North-centric identities like race and gender. We expand on that research by conducting a systematic audit of GPT-4 Turbo to reveal how deeply encoded representational biases are and how they extend to less-explored dimensions of identity. We prompt GPT-4 Turbo to generate over 7,200 stories about significant life events (such as weddings) in India, using prompts designed to encourage diversity to varying extents. Comparing the diversity of religious and caste representation in the outputs against the actual population distribution in India as recorded in census data, we quantify the presence and "stickiness" of representational bias in the LLM for religion and caste. We find that GPT-4 responses consistently overrepresent culturally dominant groups far beyond their statistical representation, despite prompts intended to encourage representational diversity. Our findings also suggest that representational bias in LLMs has a winner-take-all quality that is more biased than the likely distribution bias in their training data, and repeated prompt-based nudges have limited and inconsistent efficacy in dislodging these biases. These results suggest that diversifying training data alone may not be sufficient to correct LLM bias, highlighting the need for more fundamental changes in model development. Dataset and Codebook: https://github.com/agrimaseth/How-Deep-Is-Representational-Bias-in-LLMs

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