Challenging Fairness: A Comprehensive Exploration of Bias in LLM-Based Recommendations

Shahnewaz Karim Sakib, Anindya Bijoy Das
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Abstract

Large Language Model (LLM)-based recommendation systems provide more comprehensive recommendations than traditional systems by deeply analyzing content and user behavior. However, these systems often exhibit biases, favoring mainstream content while marginalizing non-traditional options due to skewed training data. This study investigates the intricate relationship between bias and LLM-based recommendation systems, with a focus on music, song, and book recommendations across diverse demographic and cultural groups. Through a comprehensive analysis conducted over different LLM-models, this paper evaluates the impact of bias on recommendation outcomes. Our findings reveal that bias is so deeply ingrained within these systems that even a simpler intervention like prompt engineering can significantly reduce bias, underscoring the pervasive nature of the issue. Moreover, factors like intersecting identities and contextual information, such as socioeconomic status, further amplify these biases, demonstrating the complexity and depth of the challenges faced in creating fair recommendations across different groups.
挑战公平:全面探讨基于法律硕士的建议中的偏见
基于大型语言模型(LLM)的推荐系统通过深入分析内容和用户行为,提供比传统系统更全面的推荐。然而,由于训练数据有偏差,这些系统往往会表现出偏差,偏向于主流内容,而将非传统选项边缘化。本研究调查了偏见与基于 LLM 的推荐系统之间错综复杂的关系,重点关注不同人口和文化群体的音乐、歌曲和书籍推荐。我们的研究结果表明,偏见在这些系统中根深蒂固,即使是提示工程这样简单的干预措施也能显著减少偏见,这凸显了问题的普遍性。此外,交叉身份和背景信息(如社会经济地位)等因素进一步扩大了这些偏见,这表明在不同群体中创建公平推荐所面临的挑战的复杂性和深度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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