Sensors (Mar 2022)

A Memetic Algorithm for Solving the Robust Influence Maximization Problem on Complex Networks against Structural Failures

  • Delin Huang,
  • Xiaojun Tan,
  • Nanjie Chen,
  • Zhengping Fan

DOI
https://doi.org/10.3390/s22062191
Journal volume & issue
Vol. 22, no. 6
p. 2191

Abstract

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Many transport systems in the real world can be modeled as networked systems. Due to limited resources, only a few nodes can be selected as seeds in the system, whose role is to spread required information or control signals as widely as possible. This problem can be modeled as the influence maximization problem. Most of the existing selection strategies are based on the invariable network structure and have not touched upon the condition that the network is under structural failures. Related studies indicate that such strategies may not completely tackle complicated diffusion tasks in reality, and the robustness of the information diffusion process against perturbances is significant. To give a numerical performance criterion of seeds under structural failure, a measure has been developed to define the robust influence maximization (RIM) problem. Further, a memetic optimization algorithm (MA) which includes several problem-orientated operators to improve the search ability, termed RIMMA, has been presented to deal with the RIM problem. Experimental results on synthetic networks and real-world networks validate the effectiveness of RIMMA, its superiority over existing approaches is also shown.

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