Publication: Quantifying the Robustness of Complex Networks with Heterogeneous Nodes
Type:
Article
Date
2021-01
Journal Title
Journal ISSN
Volume Title
Publisher
Multidisciplinary Digital Publishing Institute
Abstract
The robustness of a complex network measures its ability to withstand random or targeted
attacks. Most network robustness measures operate under the assumption that the nodes in a
network are homogeneous and abstract. However, most real-world networks consist of nodes
that are heterogeneous in nature. In this work, we propose a robustness measure called fitnessincorporated average network efficiency, that attempts to capture the heterogeneity of nodes using
the ‘fitness’ of nodes in measuring the robustness of a network. Further, we adopt the same measure
to compare the robustness of networks with heterogeneous nodes under varying topologies, such
as the scale-free topology or the Erd˝os–Rényi random topology. We apply the proposed robustness
measure using a wireless sensor network simulator to show that it can be effectively used to measure
the robustness of a network using a topological approach. We also apply the proposed robustness
measure to two real-world networks; namely the CO2 exchange network and an air traffic network.
We conclude that with the proposed measure, not only the topological structure, but also the fitness
function and the fitness distribution among nodes, should be considered in evaluating the robustness
of a complex network.
Description
Keywords
complex networks, network robustness, network efficiency, node heterogeneity
Citation
Ratnayake, Prasan, Sugandima Weragoda, Janaka Wansapura, Dharshana Kasthurirathna, and Mahendra Piraveenan. 2021. "Quantifying the Robustness of Complex Networks with Heterogeneous Nodes" Mathematics 9, no. 21: 2769. https://doi.org/10.3390/math9212769
