Unveiling and Mitigating Bias in Large Language Model Recommendations: A Path to Fairness

September 17, 2024 Β· Declared Dead Β· + Add venue

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Authors Anindya Bijoy Das, Shahnewaz Karim Sakib arXiv ID 2409.10825 Category cs.IR: Information Retrieval Cross-listed cs.AI, cs.ET, cs.LG Citations 7 Last Checked 4 months ago
Abstract
Large Language Model (LLM)-based recommendation systems excel in delivering comprehensive suggestions by deeply analyzing content and user behavior. However, they often inherit biases from skewed training data, favoring mainstream content while underrepresenting diverse or non-traditional options. This study explores the interplay between bias and LLM-based recommendation systems, focusing on music, song, and book recommendations across diverse demographic and cultural groups. This paper analyzes bias in LLM-based recommendation systems across multiple models (GPT, LLaMA, and Gemini), revealing its deep and pervasive impact on outcomes. Intersecting identities and contextual factors, like socioeconomic status, further amplify biases, complicating fair recommendations across diverse groups. Our findings reveal that bias in these systems is deeply ingrained, yet even simple interventions like prompt engineering can significantly reduce it. We further propose a retrieval-augmented generation strategy to mitigate bias more effectively. Numerical experiments validate these strategies, demonstrating both the pervasive nature of bias and the impact of the proposed solutions.
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