SIAILGDec 20, 2024

Score-based Generative Diffusion Models for Social Recommendations

arXiv:2412.15579v233 citationsh-index: 12IEEE Trans Knowl Data Eng
Originality Highly original
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This work addresses the problem of noisy social networks for social recommendation systems, offering an incremental improvement through a novel generative approach.

The paper tackles the challenge of low social homophily in social recommendations by generating optimal user social representations to align with collaborative signals, resulting in improved recommendation performance as demonstrated on real-world datasets.

With the prevalence of social networks on online platforms, social recommendation has become a vital technique for enhancing personalized recommendations. The effectiveness of social recommendations largely relies on the social homophily assumption, which presumes that individuals with social connections often share similar preferences. However, this foundational premise has been recently challenged due to the inherent complexity and noise present in real-world social networks. In this paper, we tackle the low social homophily challenge from an innovative generative perspective, directly generating optimal user social representations that maximize consistency with collaborative signals. Specifically, we propose the Score-based Generative Model for Social Recommendation (SGSR), which effectively adapts the Stochastic Differential Equation (SDE)-based diffusion models for social recommendations. To better fit the recommendation context, SGSR employs a joint curriculum training strategy to mitigate challenges related to missing supervision signals and leverages self-supervised learning techniques to align knowledge across social and collaborative domains. Extensive experiments on real-world datasets demonstrate the effectiveness of our approach in filtering redundant social information and improving recommendation performance.

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