cs.AI updates on arXiv.org 10月02日 12:18
LLM旅行推荐中的偏见与对策
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本文基于社会身份理论和社技术系统理论,分析了大型语言模型在旅行推荐中的种族和性别偏见,并提出相应的对策。

arXiv:2410.17333v2 Announce Type: replace Abstract: As large language models (LLMs) become increasingly integral to the hospitality and tourism industry, concerns about their fairness in serving diverse identity groups persist. Grounded in social identity theory and sociotechnical systems theory, this study examines ethnic and gender biases in travel recommendations generated by LLMs. Using fairness probing, we analyze outputs from three leading open-source LLMs. The results show that test accuracy for both ethnicity and gender classifiers exceed random chance. Analysis of the most influential features reveals the presence of stereotype bias in LLM-generated recommendations. We also found hallucinations among these features, occurring more frequently in recommendations for minority groups. These findings indicate that LLMs exhibit ethnic and gender bias when functioning as travel planning assistants. This study underscores the need for bias mitigation strategies to improve the inclusivity and reliability of generative AI-driven travel planning assistance.

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大型语言模型 旅行推荐 偏见 对策 AI
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