Span-core Decomposition for Temporal Networks: Algorithms and Applications
Edoardo Galimberti, Martino Ciaperoni, Alain Barrat, Francesco Bonchi,, Ciro Cattuto, Francesco Gullo

TL;DR
This paper introduces efficient algorithms for span-core decomposition in temporal networks, enabling identification of dense, time-bounded structures and facilitating temporal community search with practical speed-ups.
Contribution
It presents novel algorithms for computing all span-cores, efficiently extracting maximal span-cores, and connecting span-cores to temporal community search with polynomial-time solutions.
Findings
Efficient algorithm for span-core computation exploiting containment properties.
Algorithm for directly extracting maximal span-cores without enumerating all.
Polynomial-time method for temporal community search leveraging maximal span-cores.
Abstract
When analyzing temporal networks, a fundamental task is the identification of dense structures (i.e., groups of vertices that exhibit a large number of links), together with their temporal span (i.e., the period of time for which the high density holds). In this paper we tackle this task by introducing a notion of temporal core decomposition where each core is associated with two quantities, its coreness, which quantifies how densely it is connected, and its span, which is a temporal interval: we call such cores \emph{span-cores}. For a temporal network defined on a discrete temporal domain , the total number of time intervals included in is quadratic in , so that the total number of span-cores is potentially quadratic in as well. Our first main contribution is an algorithm that, by exploiting containment properties among span-cores, computes all the span-cores…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Complex Network Analysis Techniques · Topological and Geometric Data Analysis
