TL;DR
MMP-Refer introduces a multimodal retrieval-augmented LLM framework for explainable recommendation, integrating multimodal data and retrieval paths to improve transparency and personalization.
Contribution
It proposes a novel multimodal retrieval path method combined with LLMs, addressing the limitations of existing explainable recommendation techniques.
Findings
Effective in enhancing recommendation explainability
Improves personalization accuracy with multimodal data
Codes and data are publicly available
Abstract
Explainable recommendations help improve the transparency and credibility of recommendation systems, and play an important role in personalized recommendation scenarios. At present, methods for explainable recommendation based on large language models(LLMs) often consider introducing collaborative information to enhance the personalization and accuracy of the model, but ignore the multimodal information in the recommendation dataset; In addition, collaborative information needs to be aligned with the semantic space of LLM. Introducing collaborative signals through retrieval paths is a good choice, but most of the existing retrieval path collection schemes use the existing Explainable GNN algorithms. Although these methods are effective, they are relatively unexplainable and not be suitable for the recommendation field. To address the above challenges, we propose MMP-Refer, a framework…
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