Scientific Reports (Jul 2023)

Integrating local and global information to identify influential nodes in complex networks

  • Mohd Fariduddin Mukhtar,
  • Zuraida Abal Abas,
  • Azhari Samsu Baharuddin,
  • Mohd Natashah Norizan,
  • Wan Farah Wani Wan Fakhruddin,
  • Wakisaka Minato,
  • Amir Hamzah Abdul Rasib,
  • Zaheera Zainal Abidin,
  • Ahmad Fadzli Nizam Abdul Rahman,
  • Siti Haryanti Hairol Anuar

DOI
https://doi.org/10.1038/s41598-023-37570-7
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 12

Abstract

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Abstract Centrality analysis is a crucial tool for understanding the role of nodes in a network, but it is unclear how different centrality measures provide much unique information. To improve the identification of influential nodes in a network, we propose a new method called Hybrid-GSM (H-GSM) that combines the K-shell decomposition approach and Degree Centrality. H-GSM characterizes the impact of nodes more precisely than the Global Structure Model (GSM), which cannot distinguish the importance of each node. We evaluate the performance of H-GSM using the SIR model to simulate the propagation process of six real-world networks. Our method outperforms other approaches regarding computational complexity, node discrimination, and accuracy. Our findings demonstrate the proposed H-GSM as an effective method for identifying influential nodes in complex networks.