Temporal information gathering process for node ranking in time-varying networks

Journal Article (2019)
Author(s)

Cunquan Qu (Shandong University - Jinan)

Xiuxiu Zhan (TU Delft - Electrical Engineering, Mathematics and Computer Science)

Guanghui Wang (Shandong University - Jinan)

Jianliang Wu (Shandong University - Jinan)

Zi-ke Zhang (Hangzhou Normal University, Ministry of Education Hangzhou)

Research Group
Multimedia Computing
DOI related publication
https://doi.org/10.1063/1.5086059 Final published version
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Publication Year
2019
Language
English
Research Group
Multimedia Computing
Issue number
3
Volume number
29
Article number
033116
Pages (from-to)
1-16
Downloads counter
422
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Abstract

Many systems are dynamic and time-varying in the real world. Discovering the vital nodes in temporal networks is more challenging than that in static networks. In this study, we proposed a temporal information gathering (TIG) process for temporal networks. The TIG-process, as a node's importance metric, can be used to do the node ranking. As a framework, the TIG-process can be applied to explore the impact of temporal information on the significance of the nodes. The key point of the TIG-process is that nodes' importance relies on the importance of its neighborhood. There are four variables: temporal information gathering depth n, temporal distance matrix D, initial information c, and weighting function f. We observed that the TIG-process can degenerate to classic metrics by a proper combination of these four variables. Furthermore, the fastest arrival distance based TIG-process (fad-tig) is performed optimally in quantifying nodes' efficiency and nodes' spreading influence. Moreover, for the fad-tig process, we can find an optimal gathering depth n that makes the TIG-process perform optimally when n is small.

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