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首页|Intersectional Bias in Japanese Large Language Models from a Contextualized Perspective

Intersectional Bias in Japanese Large Language Models from a Contextualized Perspective

Intersectional Bias in Japanese Large Language Models from a Contextualized Perspective

来源:Arxiv_logoArxiv
英文摘要

An growing number of studies have examined the social bias of rapidly developed large language models (LLMs). Although most of these studies have focused on bias occurring in a single social attribute, research in social science has shown that social bias often occurs in the form of intersectionality -- the constitutive and contextualized perspective on bias aroused by social attributes. In this study, we construct the Japanese benchmark inter-JBBQ, designed to evaluate the intersectional bias in LLMs on the question-answering setting. Using inter-JBBQ to analyze GPT-4o and Swallow, we find that biased output varies according to its contexts even with the equal combination of social attributes.

Hitomi Yanaka、Xinqi He、Jie Lu、Namgi Han、Sunjin Oh、Ryoma Kumon、Yuma Matsuoka、Katsuhiko Watabe、Yuko Itatsu

语言学常用外国语文化理论

Hitomi Yanaka,Xinqi He,Jie Lu,Namgi Han,Sunjin Oh,Ryoma Kumon,Yuma Matsuoka,Katsuhiko Watabe,Yuko Itatsu.Intersectional Bias in Japanese Large Language Models from a Contextualized Perspective[EB/OL].(2025-06-13)[2025-07-09].https://arxiv.org/abs/2506.12327.点此复制

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