A new link prediction in multiplex networks using topologically biased random walks

Elahe, Nasiri, , & (2021) A new link prediction in multiplex networks using topologically biased random walks. Chaos, Solitons and Fractals, 151, Article number: 111230.

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Description

Link prediction is a technique to forecast future new or missing relationships between nodes based on the current network information. However, the link prediction in monoplex networks seems to have a long background, the attempts to accomplish the same task on multiplex networks are not abundant, and it was often a challenge to apply conventional similarity methods to multiplex networks. The issue of link prediction in multiplex networks is the way of predicting the links in one layer, taking structural information of other layers into account. One of the most important methods of link prediction in a monoplex network is a local random walk (LRW) that captures the network structure using pure random walking to measure nodes similarity of the graph and find unknown connections. The goal of this paper is to propose an extended version of local random walk based on pure random walking for solving link prediction in the multiplex network, referred to as the Multiplex Local Random Walk (MLRW). We explore approaches for leveraging information mined from inter-layer and intra-layer in a multiplex network to define a biased random walk for finding the probability of the appearance of a new link in one target layer. Experimental studies on seven multiplex networks in the real world demonstrate that a multiplex biased local random walk performs better than the state-of-the-art methods of link prediction and corresponding unbiased case and improves prediction accuracy.

Impact and interest:

67 citations in Scopus
43 citations in Web of Science®
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ID Code: 226048
Item Type: Contribution to Journal (Journal Article)
Refereed: Yes
ORCID iD:
Li, Yuefengorcid.org/0000-0002-3594-8980
Measurements or Duration: 11 pages
DOI: 10.1016/j.chaos.2021.111230
ISSN: 0960-0779
Pure ID: 101393246
Divisions: Current > QUT Faculties and Divisions > Faculty of Science
Current > Schools > School of Computer Science
Copyright Owner: 2021 Elsevier Ltd.
Copyright Statement: This work is covered by copyright. Unless the document is being made available under a Creative Commons Licence, you must assume that re-use is limited to personal use and that permission from the copyright owner must be obtained for all other uses. If the document is available under a Creative Commons License (or other specified license) then refer to the Licence for details of permitted re-use. It is a condition of access that users recognise and abide by the legal requirements associated with these rights. If you believe that this work infringes copyright please provide details by email to qut.copyright@qut.edu.au
Deposited On: 11 Nov 2021 02:49
Last Modified: 21 Jun 2024 12:20