Balancing User Preferences by Social Networks: A Condition-Guided Social Recommendation Model for Mitigating Popularity Bias
Xin He, Wenqi Fan, Ruobing Wang, Yili Wang, Ying Wang, Shirui Pan, Xin Wang

TL;DR
This paper introduces CGSoRec, a social recommendation model that denoises social networks and adjusts social preferences to mitigate popularity bias and improve recommendation diversity.
Contribution
The paper proposes a novel condition-guided model that filters social information and adjusts preferences to reduce popularity bias in social recommendation systems.
Findings
CGSoRec effectively reduces popularity bias in recommendations.
The denoising process improves the relevance of social preferences.
Experiments show improved diversity and personalization in recommendations.
Abstract
Social recommendation models weave social interactions into their design to provide uniquely personalized recommendation results for users. However, social networks not only amplify the popularity bias in recommendation models, resulting in more frequent recommendation of hot items and fewer long-tail items, but also include a substantial amount of redundant information that is essentially meaningless for the model's performance. Existing social recommendation models often integrate the entire social network directly, with little effort to filter or adjust social information to mitigate popularity bias introduced by the social network. In this paper, we propose a Condition-Guided Social Recommendation Model (named CGSoRec) to mitigate the model's popularity bias by denoising the social network and adjusting the weights of user's social preferences. More specifically, CGSoRec first…
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