Structure-Preserving Sparsification Methods for Social Networks
Michael Hamann, Gerd Lindner, Henning Meyerhenke, Christian L. Staudt,, Dorothea Wagner

TL;DR
This paper systematically compares edge sparsification methods for social networks, introduces a new Local Degree method, and evaluates their effectiveness in preserving various network properties across real and synthetic data.
Contribution
It provides the first comprehensive comparison of sparsification techniques, proposes a novel Local Degree method, and offers practical insights into property preservation in social network sparsification.
Findings
Local filtering improves property preservation
Many properties preserved at 20% of edges
Local Degree best for connectivity and distances
Abstract
Sparsification reduces the size of networks while preserving structural and statistical properties of interest. Various sparsifying algorithms have been proposed in different contexts. We contribute the first systematic conceptual and experimental comparison of \textit{edge sparsification} methods on a diverse set of network properties. It is shown that they can be understood as methods for rating edges by importance and then filtering globally or locally by these scores. We show that applying a local filtering technique improves the preservation of all kinds of properties. In addition, we propose a new sparsification method (\textit{Local Degree}) which preserves edges leading to local hub nodes. All methods are evaluated on a set of social networks from Facebook, Google+, Twitter and LiveJournal with respect to network properties including diameter, connected components, community…
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