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Autori principali: Hu, Shiyue, Li, Ruizhe, Gao, Yanjun
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.12868
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author Hu, Shiyue
Li, Ruizhe
Gao, Yanjun
author_facet Hu, Shiyue
Li, Ruizhe
Gao, Yanjun
contents Large language models (LLMs) increasingly operate in high-stakes settings including healthcare and medicine, where demographic attributes such as race and ethnicity may be explicitly stated or implicitly inferred from text. However, existing studies primarily document outcome-level disparities, offering limited insight into internal mechanisms underlying these effects. We present a mechanistic study of how race and ethnicity are represented and operationalized within LLMs. Using two publicly available datasets spanning toxicity-related generation and clinical narrative understanding tasks, we analyze three open-source models with a reproducible interpretability pipeline combining probing, neuron-level attribution, and targeted intervention. We find that demographic information is distributed across internal units with substantial cross-model variation. Although some units encode sensitive or stereotype-related associations from pretraining, identical demographic cues can induce qualitatively different behaviors. Interventions suppressing such neurons reduce bias but leave substantial residual effects, suggesting behavioral rather than representational change and motivating more systematic mitigation.
format Preprint
id arxiv_https___arxiv_org_abs_2601_12868
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Race, Ethnicity and Their Implication on Bias in Large Language Models
Hu, Shiyue
Li, Ruizhe
Gao, Yanjun
Computation and Language
Machine Learning
Large language models (LLMs) increasingly operate in high-stakes settings including healthcare and medicine, where demographic attributes such as race and ethnicity may be explicitly stated or implicitly inferred from text. However, existing studies primarily document outcome-level disparities, offering limited insight into internal mechanisms underlying these effects. We present a mechanistic study of how race and ethnicity are represented and operationalized within LLMs. Using two publicly available datasets spanning toxicity-related generation and clinical narrative understanding tasks, we analyze three open-source models with a reproducible interpretability pipeline combining probing, neuron-level attribution, and targeted intervention. We find that demographic information is distributed across internal units with substantial cross-model variation. Although some units encode sensitive or stereotype-related associations from pretraining, identical demographic cues can induce qualitatively different behaviors. Interventions suppressing such neurons reduce bias but leave substantial residual effects, suggesting behavioral rather than representational change and motivating more systematic mitigation.
title Race, Ethnicity and Their Implication on Bias in Large Language Models
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2601.12868