The paper proposes a new diffusion model-based collaborative filtering (CF) method called CF-Diff, which is capable of making full use of collaborative signals along with multi-hop neighbors.
The key highlights are:
CF-Diff naturally involves two distinct processes: the forward-diffusion process that gradually adds random noise to user-item interactions, and the reverse-denoising process that aims to recover the original interactions by infusing high-order connectivities.
The core of CF-Diff is the proposed learning model, called cross-attention-guided multi-hop autoencoder (CAM-AE), which consists of:
Comprehensive experiments on three real-world datasets demonstrate that CF-Diff outperforms benchmark recommendation methods, achieving remarkable gains up to 7.29% in NDCG@10 compared to the best competitor.
Theoretical analyses validate the efficiency of CAM-AE, showing that its embeddings closely approximate those from the original cross-attention and the model's computational complexity scales linearly with the number of users or items.
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arxiv.org
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by Yu Hou,Jin-D... ที่ arxiv.org 04-23-2024
https://arxiv.org/pdf/2404.14240.pdfสอบถามเพิ่มเติม