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arxiv: 2506.12327 · v2 · pith:OOWEXKLNnew · submitted 2025-06-14 · 💻 cs.CL · cs.AI

Intersectional Bias in Japanese Large Language Models from a Contextualized Perspective

classification 💻 cs.CL cs.AI
keywords biassocialattributescontextualizedinter-jbbqintersectionaljapaneselanguage
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An increasing 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.

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