Utility-based Link Recommendation for Online Social Networks
Zhepeng Li, Xiao Fang, Xue Bai, Olivia Sheng

TL;DR
This paper introduces a utility-based link recommendation approach for online social networks that considers both user interest and operator benefit, improving recommendation effectiveness.
Contribution
It formulates the utility-based link recommendation problem and proposes a Bayesian network model that incorporates value, cost, and linkage likelihood for better link suggestions.
Findings
Significant performance improvement over existing methods
Effective modeling of value, cost, and linkage likelihood
Validated on real-world social network data
Abstract
Link recommendation, which suggests links to connect currently unlinked users, is a key functionality offered by major online social networks. Salient examples of link recommendation include "People You May Know" on Facebook and LinkedIn as well as "You May Know" on Google+. The main stakeholders of an online social network include users (e.g., Facebook users) who use the network to socialize with other users and an operator (e.g., Facebook Inc.) that establishes and operates the network for its own benefit (e.g., revenue). Existing link recommendation methods recommend links that are likely to be established by users but overlook the benefit a recommended link could bring to an operator. To address this gap, we define the utility of recommending a link and formulate a new research problem - the utility-based link recommendation problem. We then propose a novel utility-based link…
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Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Graph Neural Networks · Recommender Systems and Techniques
