Entropy (Sep 2022)

Node Importance Identification for Temporal Networks Based on Optimized Supra-Adjacency Matrix

  • Rui Liu,
  • Sheng Zhang,
  • Donghui Zhang,
  • Xuefeng Zhang,
  • Xiaoling Bao

DOI
https://doi.org/10.3390/e24101391
Journal volume & issue
Vol. 24, no. 10
p. 1391

Abstract

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The research on node importance identification for temporal networks has attracted much attention. In this work, combined with the multi-layer coupled network analysis method, an optimized supra-adjacency matrix (OSAM) modeling method was proposed. In the process of constructing an optimized super adjacency matrix, the intra-layer relationship matrixes were improved by introducing the edge weight. The inter-layer relationship matrixes were formed by improved similarly and the inter-layer relationship is directional by using the characteristics of directed graphs. The model established by the OSAM method accurately expresses the structure of the temporal network and considers the influence of intra- and inter-layer relationships on the importance of nodes. In addition, an index was calculated by the average of the sum of the eigenvector centrality indices for a node in each layer and the node importance sorted list was obtained from this index to express the global importance of nodes in temporal networks. The experimental results on three real temporal network datasets Enron, Emaildept3, and Workspace showed that compared with the SAM and the SSAM methods, the OSAM method has a faster message propagation rate and larger message coverage and better SIR and NDCG@10 indicators.

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