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Main Authors: Miandoab, Kaveh Eskandari, Kamruzzaman, Mahammed, Gharooni, Arshia, Kim, Gene Louis, Sarathy, Vasanth, Mehrabi, Ninareh
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.23921
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author Miandoab, Kaveh Eskandari
Kamruzzaman, Mahammed
Gharooni, Arshia
Kim, Gene Louis
Sarathy, Vasanth
Mehrabi, Ninareh
author_facet Miandoab, Kaveh Eskandari
Kamruzzaman, Mahammed
Gharooni, Arshia
Kim, Gene Louis
Sarathy, Vasanth
Mehrabi, Ninareh
contents Large Language Models have been shown to demonstrate stereotypical biases in their representations and behavior due to the discriminative nature of the data that they have been trained on. Despite significant progress in the development of methods and models that refrain from using stereotypical information in their decision-making, recent work has shown that approaches used for bias alignment are brittle. In this work, we introduce a novel and general augmentation framework that involves three plug-and-play steps and is applicable to a number of fairness evaluation benchmarks. Through application of augmentation to a fairness evaluation dataset (Bias Benchmark for Question Answering (BBQ)), we find that Large Language Models (LLMs), including state-of-the-art open and closed weight models, are susceptible to perturbations to their inputs, showcasing a higher likelihood to behave stereotypically. Furthermore, we find that such models are more likely to have biased behavior in cases where the target demographic belongs to a community less studied by the literature, underlining the need to expand the fairness and safety research to include more diverse communities.
format Preprint
id arxiv_https___arxiv_org_abs_2510_23921
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Breaking the Benchmark: Revealing LLM Bias via Minimal Contextual Augmentation
Miandoab, Kaveh Eskandari
Kamruzzaman, Mahammed
Gharooni, Arshia
Kim, Gene Louis
Sarathy, Vasanth
Mehrabi, Ninareh
Computation and Language
Machine Learning
Large Language Models have been shown to demonstrate stereotypical biases in their representations and behavior due to the discriminative nature of the data that they have been trained on. Despite significant progress in the development of methods and models that refrain from using stereotypical information in their decision-making, recent work has shown that approaches used for bias alignment are brittle. In this work, we introduce a novel and general augmentation framework that involves three plug-and-play steps and is applicable to a number of fairness evaluation benchmarks. Through application of augmentation to a fairness evaluation dataset (Bias Benchmark for Question Answering (BBQ)), we find that Large Language Models (LLMs), including state-of-the-art open and closed weight models, are susceptible to perturbations to their inputs, showcasing a higher likelihood to behave stereotypically. Furthermore, we find that such models are more likely to have biased behavior in cases where the target demographic belongs to a community less studied by the literature, underlining the need to expand the fairness and safety research to include more diverse communities.
title Breaking the Benchmark: Revealing LLM Bias via Minimal Contextual Augmentation
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2510.23921