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Main Authors: Kondapally, Kritee, Smerdon, Claire J., Patel, Pooja C., Akoni, Ogheneyoma, Torres, Jevon, Ranjit, Jaspreet, Finlayson, Matthew, Swayamdipta, Swabha
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.24384
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author Kondapally, Kritee
Smerdon, Claire J.
Patel, Pooja C.
Akoni, Ogheneyoma
Torres, Jevon
Ranjit, Jaspreet
Finlayson, Matthew
Swayamdipta, Swabha
author_facet Kondapally, Kritee
Smerdon, Claire J.
Patel, Pooja C.
Akoni, Ogheneyoma
Torres, Jevon
Ranjit, Jaspreet
Finlayson, Matthew
Swayamdipta, Swabha
contents Language models (LMs) can exhibit biases based on variations in their dialects, even in the absence of a dialect label, a behavior known as covert dialect bias. In this work, we quantify covert dialect bias in online discourse by evaluating how LMs associate stereotypical traits (derived from social psychology research on racial bias) with intent-equivalent tweets in Standard American English (SAE) and African-American Vernacular English (AAVE). While prior work shows that LMs associate more negative stereotypes with AAVE when evaluating tweets in isolation, we are surprised to find that this bias is significantly exacerbated when SAE / AAVE tweet pairs are compared side by side, a setting that more closely reflects high-impact decision making contexts in which models are used to rank candidates. The bias only worsens when dialect labels are explicitly specified. This is striking, given the extensive efforts from commercial developers to mitigate bias in their LMs. Encouragingly, we show that counterfactual fairness finetuning can mitigate covert dialect bias for some stereotypical traits, reducing average disparities when evaluating tweets in isolation, however, these improvements do not consistently hold across traits when evaluating SAE / AAVE tweets side by side. Our findings show that existing evaluation settings for covert dialect bias may underestimate its severity, specifically in contrastive settings. Additionally, overt dialect bias remains pronounced even after safety aligned finetuning, indicating that it remains an unresolved problem, and motivates the need for more robust evaluation and mitigation frameworks.
format Preprint
id arxiv_https___arxiv_org_abs_2605_24384
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Side-by-side Comparison Amplifies Dialect Bias in Language Models
Kondapally, Kritee
Smerdon, Claire J.
Patel, Pooja C.
Akoni, Ogheneyoma
Torres, Jevon
Ranjit, Jaspreet
Finlayson, Matthew
Swayamdipta, Swabha
Computation and Language
Artificial Intelligence
Language models (LMs) can exhibit biases based on variations in their dialects, even in the absence of a dialect label, a behavior known as covert dialect bias. In this work, we quantify covert dialect bias in online discourse by evaluating how LMs associate stereotypical traits (derived from social psychology research on racial bias) with intent-equivalent tweets in Standard American English (SAE) and African-American Vernacular English (AAVE). While prior work shows that LMs associate more negative stereotypes with AAVE when evaluating tweets in isolation, we are surprised to find that this bias is significantly exacerbated when SAE / AAVE tweet pairs are compared side by side, a setting that more closely reflects high-impact decision making contexts in which models are used to rank candidates. The bias only worsens when dialect labels are explicitly specified. This is striking, given the extensive efforts from commercial developers to mitigate bias in their LMs. Encouragingly, we show that counterfactual fairness finetuning can mitigate covert dialect bias for some stereotypical traits, reducing average disparities when evaluating tweets in isolation, however, these improvements do not consistently hold across traits when evaluating SAE / AAVE tweets side by side. Our findings show that existing evaluation settings for covert dialect bias may underestimate its severity, specifically in contrastive settings. Additionally, overt dialect bias remains pronounced even after safety aligned finetuning, indicating that it remains an unresolved problem, and motivates the need for more robust evaluation and mitigation frameworks.
title Side-by-side Comparison Amplifies Dialect Bias in Language Models
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2605.24384