CoRAL introduces collaborative retrieval-augmented LLMs to enhance long-tail recommendations by incorporating collaborative evidence into prompts. The method improves reasoning alignment and data efficiency in recommendation systems.
The paper addresses challenges in long-tail recommendations due to data sparsity and imbalance. It proposes a sequential decision-making process for optimal interaction set retrieval. CoRAL significantly enhances LLM reasoning abilities on specific recommendation tasks.
By integrating collaborative information, CoRAL enables LLMs to analyze shared preferences among users and items. The method aligns the model's reasoning with user-item interaction patterns, improving prediction accuracy. Experimental results demonstrate the effectiveness of CoRAL in enhancing LLM performance for long-tail recommendations.
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by Junda Wu,Che... о arxiv.org 03-12-2024
https://arxiv.org/pdf/2403.06447.pdfГлибші Запити