Community-Aware Social Community Recommendation
Runhao Jiang, Renchi Yang, Wenqing Lin

TL;DR
This paper introduces CASO, a novel model for social community recommendation that leverages social network structures and user preferences to improve community suggestions, outperforming existing methods.
Contribution
CASO uniquely combines social network structure encoders and collaborative filtering with mutual exclusion, incorporating community detection loss for enhanced community recommendation.
Findings
CASO outperforms nine strong baselines on six real-world social networks.
The model effectively captures community structures and user preferences.
Experimental results show significant improvements in recommendation accuracy.
Abstract
Social recommendation, which seeks to leverage social ties among users to alleviate the sparsity issue of user-item interactions, has emerged as a popular technique for elevating personalized services in recommender systems. Despite being effective, existing social recommendation models are mainly devised for recommending regular items such as blogs, images, and products, and largely fail for community recommendations due to overlooking the unique characteristics of communities. Distinctly, communities are constituted by individuals, who present high dynamicity and relate to rich structural patterns in social networks. To our knowledge, limited research has been devoted to comprehensively exploiting this information for recommending communities. To bridge this gap, this paper presents CASO, a novel and effective model specially designed for social community recommendation. Under the…
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