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Main Authors: Berman, Eliza, Chang, Bella, Neill, Daniel B., Black, Emily
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.05224
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author Berman, Eliza
Chang, Bella
Neill, Daniel B.
Black, Emily
author_facet Berman, Eliza
Chang, Bella
Neill, Daniel B.
Black, Emily
contents As Large Language Models (LLMs) are increasingly used to support search and information retrieval, it is critical that they accurately attribute content to its original authors. In this work, we introduce AttriBench, the first fame- and demographically-balanced quote attribution benchmark dataset. Through explicitly balancing author fame and demographics, AttriBench enables controlled investigation of demographic bias in quote attribution. Using this dataset, we evaluate 11 widely used LLMs across different prompt settings and find that quote attribution remains a challenging task even for frontier models. We observe large and systematic disparities in attribution accuracy between race, gender, and intersectional groups. We further introduce and investigate suppression, a distinct failure mode in which models omit attribution entirely, even when the model has access to authorship information. We find that suppression is widespread and unevenly distributed across demographic groups, revealing systematic biases not captured by standard accuracy metrics. Our results position quote attribution as a benchmark for representational fairness in LLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2604_05224
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Attribution Bias in Large Language Models
Berman, Eliza
Chang, Bella
Neill, Daniel B.
Black, Emily
Artificial Intelligence
As Large Language Models (LLMs) are increasingly used to support search and information retrieval, it is critical that they accurately attribute content to its original authors. In this work, we introduce AttriBench, the first fame- and demographically-balanced quote attribution benchmark dataset. Through explicitly balancing author fame and demographics, AttriBench enables controlled investigation of demographic bias in quote attribution. Using this dataset, we evaluate 11 widely used LLMs across different prompt settings and find that quote attribution remains a challenging task even for frontier models. We observe large and systematic disparities in attribution accuracy between race, gender, and intersectional groups. We further introduce and investigate suppression, a distinct failure mode in which models omit attribution entirely, even when the model has access to authorship information. We find that suppression is widespread and unevenly distributed across demographic groups, revealing systematic biases not captured by standard accuracy metrics. Our results position quote attribution as a benchmark for representational fairness in LLMs.
title Attribution Bias in Large Language Models
topic Artificial Intelligence
url https://arxiv.org/abs/2604.05224