Network Topology Inference Using Information Cascades with Limited Statistical Knowledge
Feng Ji, Wenchang Tang, Wee Peng Tay, Edwin K. P. Chong

TL;DR
This paper presents a novel method for inferring network topology from information cascades with limited statistical knowledge, focusing on trees and extending heuristically to general graphs, demonstrating improved accuracy over existing methods.
Contribution
It introduces the concept of a separating vertex set and redundant vertices, providing a new algorithm for network reconstruction with limited distributional information.
Findings
The algorithm accurately reconstructs tree networks from infection times.
Redundant vertices improve distance estimation accuracy.
The method outperforms current state-of-the-art algorithms in simulations.
Abstract
We study the problem of inferring network topology from information cascades, in which the amount of time taken for information to diffuse across an edge in the network follows an unknown distribution. Unlike previous studies, which assume knowledge of these distributions, we only require that diffusion along different edges in the network be independent together with limited moment information (e.g., the means). We introduce the concept of a separating vertex set for a graph, which is a set of vertices in which for any two given distinct vertices of the graph, there exists a vertex whose distance to them are different. We show that a necessary condition for reconstructing a tree perfectly using distance information between pairs of vertices is given by the size of an observed separating vertex set. We then propose an algorithm to recover the tree structure using infection times, whose…
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Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Graph Neural Networks · Network Security and Intrusion Detection
