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Knowledge-aware Collaborative Filtering with Pre-trained Language Model for Personalized Review-based Rating Prediction (2308.02555v1)

Published 2 Aug 2023 in cs.IR and cs.AI

Abstract: Personalized review-based rating prediction aims at leveraging existing reviews to model user interests and item characteristics for rating prediction. Most of the existing studies mainly encounter two issues. First, the rich knowledge contained in the fine-grained aspects of each review and the knowledge graph is rarely considered to complement the pure text for better modeling user-item interactions. Second, the power of pre-trained LLMs is not carefully studied for personalized review-based rating prediction. To address these issues, we propose an approach named Knowledge-aware Collaborative Filtering with Pre-trained LLM (KCF-PLM). For the first issue, to utilize rich knowledge, KCF-PLM develops a transformer network to model the interactions of the extracted aspects w.r.t. a user-item pair. For the second issue, to better represent users and items, KCF-PLM takes all the historical reviews of a user or an item as input to pre-trained LLMs. Moreover, KCF-PLM integrates the transformer network and the pre-trained LLMs through representation propagation on the knowledge graph and user-item guided attention of the aspect representations. Thus KCF-PLM combines review text, aspect, knowledge graph, and pre-trained LLMs together for review-based rating prediction. We conduct comprehensive experiments on several public datasets, demonstrating the effectiveness of KCF-PLM.

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Authors (4)
  1. Quanxiu Wang (4 papers)
  2. Xinlei Cao (1 paper)
  3. Jianyong Wang (38 papers)
  4. Wei Zhang (1489 papers)
Citations (6)

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