The paper introduces Data-level Recommendation Explanation (DRE), a non-intrusive explanation framework for black-box recommendation models.
Key highlights:
The paper first discusses the challenges of existing latent-level alignment methods, which require modifying the recommendation model and can adversely affect its performance. To address this, DRE proposes a data-level alignment approach that uses large language models to reason about the relationships between user data and recommended items.
Additionally, the paper introduces the target-aware user preference distillation method. This method leverages item reviews to extract details about the recommended item that are relevant to the user's past preferences, enriching the explanation.
The experimental results on several Amazon Review datasets show that DRE outperforms state-of-the-art methods in terms of aspect-based and rating-based evaluation metrics. The ablation studies further demonstrate the effectiveness of the key components in DRE.
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by Shen Gao,Yif... klokken arxiv.org 04-10-2024
https://arxiv.org/pdf/2404.06311.pdfDypere Spørsmål