Retrieval Augmented Conversational Recommendation with Reinforcement Learning
Zhenrui Yue, Honglei Zhuang, Zhen Qin, Zhankui He, Huimin Zeng, Julian McAuley, Dong Wang

TL;DR
This paper introduces RAR, a retrieval-augmented conversational recommendation framework that combines retrieval, generation, and reinforcement learning to improve recommendation accuracy and factuality in movie recommendations.
Contribution
The paper presents RAR, a novel two-stage retrieval and generation framework with reinforcement learning, and constructs a large-scale movie corpus for enhanced CRS performance.
Findings
RAR outperforms state-of-the-art methods on multiple benchmarks.
The reinforcement learning approach improves retrieval relevance and reduces hallucinations.
Grounding in factual metadata enhances recommendation accuracy.
Abstract
Large language models (LLMs) exhibit enhanced capabilities in language understanding and generation. By utilizing their embedded knowledge, LLMs are increasingly used as conversational recommender systems (CRS), achieving improved performance across diverse scenarios. However, existing LLM-based methods rely on pretrained knowledge without external retrieval mechanisms for novel items. Additionally, the lack of a unified corpus poses challenges for integrating retrieval augmentation into CRS. Motivated by these challenges, we present RAR, a novel two-stage retrieval augmented conversational recommendation framework that aligns retrieval and generation to enhance both performance and factuality. To support this framework and provide a unified corpus, we construct a large-scale movie corpus, comprising over 300k movies with rich metadata, such as titles, casts and plot summaries.…
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