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arXiv 提交日期: 2026-02-05
📄 Abstract - Reasoning-guided Collaborative Filtering with Language Models for Explainable Recommendation

Large Language Models (LLMs) exhibit potential for explainable recommendation systems but overlook collaborative signals, while prevailing methods treat recommendation and explanation as separate tasks, resulting in a memory footprint. We present RGCF-XRec, a hybrid framework that introduces reasoning-guided collaborative filtering (CF) knowledge into a language model to deliver explainable sequential recommendations in a single step. Theoretical grounding and empirical findings reveal that RGCF-XRec offers three key merits over leading CF-aware LLM-based methods: (1) reasoning-guided augmentation of CF knowledge through contextual prompting to discover latent preferences and interpretable reasoning paths; (2) an efficient scoring mechanism based on four dimensions: coherence, completeness, relevance, and consistency to mitigate noisy CF reasoning traces and retain high-quality explanations; (3) a unified representation learning network that encodes collaborative and semantic signals, enabling a structured prompt to condition the LLM for explainable sequential recommendation. RGCF-XRec demonstrates consistent improvements across Amazon datasets, Sports, Toys, and Beauty, comprising 642,503 user-item interactions. It improves HR@10 by 7.38\% in Sports and 4.59\% in Toys, along with ROUGE-L by 8.02\% and 3.49\%, respectively. It reduces the cold warm performance gap, achieving overall gains of 14.5\% in cold-start and 11.9\% in warm start scenarios, and enhances zero-shot HR@5 by 18.54\% in Beauty and 23.16\% in Toys, highlighting effective generalization and robustness. Moreover, RGCF-XRec achieves training efficiency with a lightweight LLaMA 3.2-3B backbone, ensuring scalability for real-world applications.

顶级标签: llm natural language processing model evaluation
详细标签: explainable recommendation collaborative filtering sequential recommendation reasoning cold-start 或 搜索:

基于推理引导协同过滤与语言模型的可解释推荐系统 / Reasoning-guided Collaborative Filtering with Language Models for Explainable Recommendation


1️⃣ 一句话总结

这篇论文提出了一个名为RGCF-XRec的新框架,它巧妙地将传统推荐系统的协同过滤能力与大语言模型的推理解释能力结合起来,一步到位地生成既准确又易于理解的个性化推荐理由,并在多个数据集上显著提升了推荐效果和解释质量。

源自 arXiv: 2602.05544