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The Royal Society, Royal Society Open Science, 4(4), p. 170091, 2017

DOI: 10.1098/rsos.170091

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Optimal Localization of Diffusion Sources in Complex Networks

Journal article published in 2017 by Zhao-Long Hu, Xiao Han, Ying-Cheng Lai, Wen-Xu Wang ORCID
This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Locating sources of diffusion and spreading from minimum data is a significant problem in network science with great applied values to the society. However, a general theoretical framework dealing with optimal source localization is lacking. Combining the controllability theory for complex networks and compressive sensing, we develop a framework with high efficiency and robustness for optimal source localization in arbitrary weighted networks with arbitrary distribution of sources. We offer a minimum output analysis to quantify the source locatability through a minimal number of messenger nodes that produce sufficient measurement for fully locating the sources. When the minimum messenger nodes are discerned, the problem of optimal source localization becomes one of sparse signal reconstruction, which can be solved using compressive sensing. Application of our framework to model and empirical networks demonstrates that sources in homogeneous and denser networks are more readily to be located. A surprising finding is that, for a connected undirected network with random link weights and weak noise, a single messenger node is sufficient for locating any number of sources. The framework deepens our understanding of the network source localization problem and offers efficient tools with broad applications. ; Comment: 6 figures