Utility-Based Link Recommendation for Online Social Networks

Management Science, Forthcoming

51 Pages Posted: 23 Dec 2015 Last revised: 20 Mar 2016

See all articles by Zhepeng (Lionel) Li

Zhepeng (Lionel) Li

HKU Business School, The University of Hong Kong

Xiao Fang

Lerner College of Business and Economics, University of Delaware

Xue Bai

Temple University - Fox School of Business and Management

Olivia R. Liu Sheng

University of Utah - David Eccles School of Business

Date Written: December 21, 2015

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 recommendation method that recommends links based on the value, cost, and linkage likelihood of a link, in contrast to existing link recommendation methods which focus solely on linkage likelihood. Specifically, our method models the dependency relationship between value, cost, linkage likelihood and utility-based link recommendation decision using a Bayesian network, predicts the probability of recommending a link with the Bayesian network, and recommends links with the highest probabilities. Using data obtained from a major U.S. online social network, we demonstrate significant performance improvement achieved by our method compared to prevalent link recommendation methods from representative prior research.

Keywords: utility-based link recommendation, link prediction, Bayesian network learning, continuous latent factor, online social network, machine learning, network formation

Suggested Citation

Li, Zhepeng and Fang, Xiao and Bai, Xue and Sheng, Olivia R. Liu, Utility-Based Link Recommendation for Online Social Networks (December 21, 2015). Management Science, Forthcoming, Available at SSRN: https://ssrn.com/abstract=2706659

Zhepeng Li

HKU Business School, The University of Hong Kong ( email )

Hong Kong
China

Xiao Fang (Contact Author)

Lerner College of Business and Economics, University of Delaware ( email )

Newark, DE 19716
United States

Xue Bai

Temple University - Fox School of Business and Management ( email )

Philadelphia, PA 19122
United States

Olivia R. Liu Sheng

University of Utah - David Eccles School of Business ( email )

1645 E Campus Center Dr
Salt Lake City, UT 84112-9303
United States
801-585-9071 (Phone)

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