4.5 Article

Group-based social diffusion in recommendation

Journal

WORLD WIDE WEB-INTERNET AND WEB INFORMATION SYSTEMS
Volume 26, Issue 4, Pages 1775-1792

Publisher

SPRINGER
DOI: 10.1007/s11280-022-01079-2

Keywords

Social diffusion; Social-enhanced recommendation; User-group-user path; Heterogeneous ternary graph neural network

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In social-enhanced recommendation systems, user-group-based social diffusion plays a crucial role in broadcasting information to target user groups. However, most systems overlook the importance of modeling and predicting the social diffusion module. This study proposes a novel Group-based social diffusion (GSD) model that optimizes click, share, and return stages to improve recommendation performance, and achieves significant improvements in experiments.
In social-enhanced recommendation systems such as Twitter and Weibo, users could get information from both personalized recommendation and social diffusion modules. In real-world scenarios, the user-group-user based social diffusion plays an essential role to efficiently broadcast information to groups of target users. Through this diffusion path, users first click items provided by the recommendation module, and then share the clicked items to the target user groups. Other users in the group can click the shared items, and return back to the recommendation module for more contents and related items. However, most social-enhanced recommendation systems merely focus on the recommendation module that they can directly influence, ignoring explicitly modeling and predicting for the social diffusion module. In this work, we propose a novel Group-based social diffusion (GSD) model, which aims to jointly optimize the click, share, and return stages in social-enhanced recommendation. We design a heterogeneous ternary graph neural network to jointly model the complex binary and ternary relations among users, items, and groups. We conduct extensive experiments and achieve significant improvements on all click, share, and return prediction tasks, and also achieve promising results on a new full-chain social impact prediction task.

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