Please use this identifier to cite or link to this item: http://dspace.iitrpr.ac.in:8080/xmlui/handle/123456789/1540
Title: A revisit to the infection source identification problem under classical graph centrality measures
Authors: Ali, S.S.
Anwar, T.
Rizvi, S.A.M.
Keywords: Infection source identification
Graph centrality
Complex graphs
Susceptible-infected model
Online social networks
Information diffusion
Issue Date: 16-Mar-2020
Abstract: The high connectivity of the modern day world has lead to the easy diffusion of harmful information content like rumors, computer viruses, and contagions like diseases. This is detrimental to human societies in terms of compromised security, monetary loss and life threats. Therefore, to mitigate such damages, identifying and timely quarantining the sources of such diffusion processes is highly critical. Despite the difficulty and challenges of the problem, researchers have extensively studied source identification in complex networks over the past decade. Several approaches have been proposed, but limited attention has been given to the classical graph centrality measures. Moreover, researchers have generally advised against employing these measures for identifying infection sources. Motivated by the same, in this paper, we revisit these measures in context to source identification and raise the question: “Are classical graph centrality measures really not good enough?”, and perform an extensive experimental journey. We pick five such measures, viz., betweenness, closeness, degree, eigenvector and eccentricity, and conduct an indepth analysis of their effectiveness in source detection. Our extensive results show that, contrary to the popular belief, a combination of eccentricity and closeness (EC+CC) generally performs better than several state-of-the-art source identification techniques, with higher accuracy and lower average hop error. We also analyze the impact of infection size on source identification and observe that EC+CC is generally highly scalable and stable as well. We also understand that as the infection size increases, the detection accuracy decreases, irrespective of the technique used. However, when we examine the effect of graph density, we observe that as the graph density increases, the detection accuracy increases as well, with EC+CC again outperforming state-of-the-art.
URI: http://localhost:8080/xmlui/handle/123456789/1540
Appears in Collections:Year-2020

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