Collaborative Diffusion Model for Recommender System
- URL: http://arxiv.org/abs/2501.18997v1
- Date: Fri, 31 Jan 2025 10:05:01 GMT
- Title: Collaborative Diffusion Model for Recommender System
- Authors: Gyuseok Lee, Yaochen Zhu, Hwanjo Yu, Yao Zhou, Jundong Li,
- Abstract summary: We present a Collaborative Diffusion model for Recommender System (CDiff4Rec)
CDiff4Rec generates pseudo-users from item features and leverages collaborative signals from both real and pseudo personalized neighbors.
Experimental results on three public datasets show that CDiff4Rec outperforms competitors by effectively mitigating the loss of personalized information.
- Score: 52.56609747408617
- License:
- Abstract: Diffusion-based recommender systems (DR) have gained increasing attention for their advanced generative and denoising capabilities. However, existing DR face two central limitations: (i) a trade-off between enhancing generative capacity via noise injection and retaining the loss of personalized information. (ii) the underutilization of rich item-side information. To address these challenges, we present a Collaborative Diffusion model for Recommender System (CDiff4Rec). Specifically, CDiff4Rec generates pseudo-users from item features and leverages collaborative signals from both real and pseudo personalized neighbors identified through behavioral similarity, thereby effectively reconstructing nuanced user preferences. Experimental results on three public datasets show that CDiff4Rec outperforms competitors by effectively mitigating the loss of personalized information through the integration of item content and collaborative signals.
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