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Main Authors: Su, Binxian, Lou, Haoye, Zhu, Shucheng, Wang, Weikang, Liu, Ying, Yu, Dong, Liu, Pengyuan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.14672
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author Su, Binxian
Lou, Haoye
Zhu, Shucheng
Wang, Weikang
Liu, Ying
Yu, Dong
Liu, Pengyuan
author_facet Su, Binxian
Lou, Haoye
Zhu, Shucheng
Wang, Weikang
Liu, Ying
Yu, Dong
Liu, Pengyuan
contents Large language models (LLMs) are being increasingly used in urban planning, but since gendered space theory highlights how gender hierarchies are embedded in spatial organization, there is concern that LLMs may reproduce or amplify such biases. We introduce SPAGBias - the first systematic framework to evaluate spatial gender bias in LLMs. It combines a taxonomy of 62 urban micro-spaces, a prompt library, and three diagnostic layers: explicit (forced-choice resampling), probabilistic (token-level asymmetry), and constructional (semantic and narrative role analysis). Testing six representative models, we identify structured gender-space associations that go beyond the public-private divide, forming nuanced micro-level mappings. Story generation reveals how emotion, wording, and social roles jointly shape "spatial gender narratives". We also examine how prompt design, temperature, and model scale influence bias expression. Tracing experiments indicate that these patterns are embedded and reinforced across the model pipeline (pre-training, instruction tuning, and reward modeling), with model associations found to substantially exceed real-world distributions. Downstream experiments further reveal that such biases produce concrete failures in both normative and descriptive application settings. This work connects sociological theory with computational analysis, extending bias research into the spatial domain and uncovering how LLMs encode social gender cognition through language.
format Preprint
id arxiv_https___arxiv_org_abs_2604_14672
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle SPAGBias: Uncovering and Tracing Structured Spatial Gender Bias in Large Language Models
Su, Binxian
Lou, Haoye
Zhu, Shucheng
Wang, Weikang
Liu, Ying
Yu, Dong
Liu, Pengyuan
Computation and Language
Large language models (LLMs) are being increasingly used in urban planning, but since gendered space theory highlights how gender hierarchies are embedded in spatial organization, there is concern that LLMs may reproduce or amplify such biases. We introduce SPAGBias - the first systematic framework to evaluate spatial gender bias in LLMs. It combines a taxonomy of 62 urban micro-spaces, a prompt library, and three diagnostic layers: explicit (forced-choice resampling), probabilistic (token-level asymmetry), and constructional (semantic and narrative role analysis). Testing six representative models, we identify structured gender-space associations that go beyond the public-private divide, forming nuanced micro-level mappings. Story generation reveals how emotion, wording, and social roles jointly shape "spatial gender narratives". We also examine how prompt design, temperature, and model scale influence bias expression. Tracing experiments indicate that these patterns are embedded and reinforced across the model pipeline (pre-training, instruction tuning, and reward modeling), with model associations found to substantially exceed real-world distributions. Downstream experiments further reveal that such biases produce concrete failures in both normative and descriptive application settings. This work connects sociological theory with computational analysis, extending bias research into the spatial domain and uncovering how LLMs encode social gender cognition through language.
title SPAGBias: Uncovering and Tracing Structured Spatial Gender Bias in Large Language Models
topic Computation and Language
url https://arxiv.org/abs/2604.14672