4.7 Article

An Ensemble Approach to Link Prediction

Journal

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Volume 29, Issue 11, Pages 2402-2416

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2017.2730207

Keywords

Link prediction; NMF; ensembles; social networks; big data

Funding

  1. NSFC [U1636210, 61322207, 61421003]
  2. 973 program [2014CB340300]
  3. Special Funds of the Beijing Municipal Science & Technology Commission
  4. Beijing Advanced Innovation Center for Big Data and Brain Computing
  5. MSRA Collaborative Research Program

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A network with n nodes contains O(n(2)) possible links. Even for networks of modest size, it is often difficult to evaluate all pairwise possibilities for links in a meaningful way. Further, even though link prediction is closely related to missing value estimation problems, it is often difficult to use sophisticated models such as latent factor methods because of their computational complexity on large networks. Hence, most known link prediction methods are designed for evaluating the link propensity on a specified subset of links, rather than on the entire networks. In practice, however, it is essential to perform an exhaustive search over the entire networks. In this article, we propose an ensemble enabled approach to scaling up link prediction, by decomposing traditional link prediction problems into subproblems of smaller size. These subproblems are each solved with latent factor models, which can be effectively implemented on networks of modest size. By incorporating with the characteristics of link prediction, the ensemble approach further reduces the sizes of subproblems without sacrificing its prediction accuracy. The ensemble enabled approach has several advantages in terms of performance, and our experimental results demonstrate the effectiveness and scalability of our approach.

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