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Automating Personalization: Prompt Optimization for Recommendation Reranking

Published 4 Apr 2025 in cs.IR | (2504.03965v1)

Abstract: Modern recommender systems increasingly leverage LLMs for reranking to improve personalization. However, existing approaches face two key limitations: (1) heavy reliance on manually crafted prompts that are difficult to scale, and (2) inadequate handling of unstructured item metadata that complicates preference inference. We present AGP (Auto-Guided Prompt Refinement), a novel framework that automatically optimizes user profile generation prompts for personalized reranking. AGP introduces two key innovations: (1) position-aware feedback mechanisms for precise ranking correction, and (2) batched training with aggregated feedback to enhance generalization.

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