A new knowledge-based link recommendation approach using a non-parametric multilayer model of dynamic complex networks
作者:
Highlights:
•
摘要
Traditionally, research on network theory focused on studying graphs with equivalent entities failing to deliberate the useful supplementary information related to the dynamic properties of the complex network interactions. This paper tries to study the evolution process of dynamic complex networks from a multilayer perspective by analyzing the properties of naturally multilayered web-based directed complex social networks of Google+ and Twitter, and undirected collaborative networks of DBLP and ASTRO-PH, thereby proposing a new non-parametric knowledge-based multilayer link recommendation approach. The paper investigates the layers’ evolution throughout the network evolution, inspects the evolution of each node's membership in different layers by an Infinite Factorial Hidden Markov Model, and finally formulates the intra-layer and inter-layer link generation process. Some Markov Chain Monte Carlo sampling strategies are driven to simulate parameters of the proposed multilayer model, using certain synthetic and real complex network datasets. Experimental results indicate great improvements in the performance of the proposed multilayer link recommendation approach in terms of certain analyzed performance measures.
论文关键词:Dynamic complex networks,Social networks,Collaborative networks,Multilayer networks,Link recommendation
论文评审过程:Received 19 November 2016, Revised 5 December 2017, Accepted 7 December 2017, Available online 11 December 2017, Version of Record 3 February 2018.
论文官网地址:https://doi.org/10.1016/j.knosys.2017.12.005