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Hauptverfasser: Chu, Zhixuan, Wang, Yan, Cui, Qing, Li, Longfei, Chen, Wenqing, Qin, Zhan, Ren, Kui
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2401.08217
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author Chu, Zhixuan
Wang, Yan
Cui, Qing
Li, Longfei
Chen, Wenqing
Qin, Zhan
Ren, Kui
author_facet Chu, Zhixuan
Wang, Yan
Cui, Qing
Li, Longfei
Chen, Wenqing
Qin, Zhan
Ren, Kui
contents As personalized recommendation systems become vital in the age of information overload, traditional methods relying solely on historical user interactions often fail to fully capture the multifaceted nature of human interests. To enable more human-centric modeling of user preferences, this work proposes a novel explainable recommendation framework, i.e., LLMHG, synergizing the reasoning capabilities of large language models (LLMs) and the structural advantages of hypergraph neural networks. By effectively profiling and interpreting the nuances of individual user interests, our framework pioneers enhancements to recommendation systems with increased explainability. We validate that explicitly accounting for the intricacies of human preferences allows our human-centric and explainable LLMHG approach to consistently outperform conventional models across diverse real-world datasets. The proposed plug-and-play enhancement framework delivers immediate gains in recommendation performance while offering a pathway to apply advanced LLMs for better capturing the complexity of human interests across machine learning applications.
format Preprint
id arxiv_https___arxiv_org_abs_2401_08217
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle LLM-Guided Multi-View Hypergraph Learning for Human-Centric Explainable Recommendation
Chu, Zhixuan
Wang, Yan
Cui, Qing
Li, Longfei
Chen, Wenqing
Qin, Zhan
Ren, Kui
Information Retrieval
As personalized recommendation systems become vital in the age of information overload, traditional methods relying solely on historical user interactions often fail to fully capture the multifaceted nature of human interests. To enable more human-centric modeling of user preferences, this work proposes a novel explainable recommendation framework, i.e., LLMHG, synergizing the reasoning capabilities of large language models (LLMs) and the structural advantages of hypergraph neural networks. By effectively profiling and interpreting the nuances of individual user interests, our framework pioneers enhancements to recommendation systems with increased explainability. We validate that explicitly accounting for the intricacies of human preferences allows our human-centric and explainable LLMHG approach to consistently outperform conventional models across diverse real-world datasets. The proposed plug-and-play enhancement framework delivers immediate gains in recommendation performance while offering a pathway to apply advanced LLMs for better capturing the complexity of human interests across machine learning applications.
title LLM-Guided Multi-View Hypergraph Learning for Human-Centric Explainable Recommendation
topic Information Retrieval
url https://arxiv.org/abs/2401.08217