Multivariate Time Series Link Prediction for Evolving Heterogeneous Network

Alper Ozcan*, Sule Gunduz Oguducu

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36 Atıf (Scopus)

Özet

Link prediction is considered as one of the key tasks in various data mining applications for recommendation systems, bioinformatics, security and worldwide web. The majority of previous works in link prediction mainly focus on the homogeneous networks which only consider one type of node and link. However, real-world networks have heterogeneous interactions and complicated dynamic structure, which make link prediction a more challenging task. In this paper, we have studied the problem of link prediction in the dynamic, undirected, weighted/unweighted, heterogeneous social networks which are composed of multiple types of nodes and links that change over time. We propose a novel method, called Multivariate Time Series Link Prediction for evolving heterogeneous networks that incorporate (1) temporal evolution of the network; (2) correlations between link evolution and multi-Typed relationships; (3) local and global similarity measures; and (4) node connectivity information. Our proposed method and the previously proposed time series methods are evaluated experimentally on a real-world bibliographic network (DBLP) and a social bookmarking network (Delicious). Experimental results show that the proposed method outperforms the previous methods in terms of AUC measures in different test cases.

Orijinal dilİngilizce
Sayfa (başlangıç-bitiş)241-286
Sayfa sayısı46
DergiInternational Journal of Information Technology and Decision Making
Hacim18
Basın numarası1
DOI'lar
Yayın durumuYayınlandı - 1 Oca 2019

Bibliyografik not

Publisher Copyright:
© 2019 World Scientific Publishing Company.

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