Network Reconstruction and Controlling Based on Structural Regularity Analysis
Tao Wu, Shaojie Qiao, Xingping Xian, Xi-Zhao Wang, Wei Wang, Yanbing, Liu

TL;DR
This paper introduces a low-rank pursuit model for reconstructing and controlling complex networks by analyzing their structural regularity, enabling better understanding and utilization of network data.
Contribution
It proposes a novel low-rank self-representation model to reconstruct networks, measure their regulability, and identify key microscopic elements based on structural regularity.
Findings
Network regularity correlates with reconstructability.
Removing irregular links improves reconstruction accuracy.
The model effectively measures node and link importance.
Abstract
From the perspective of network analysis, the ubiquitous networks are comprised of regular and irregular components, which makes uncovering the complexity of network structures to be a fundamental challenge. Exploring the regular information and identifying the roles of microscopic elements in network data can help us recognize the principle of network organization and contribute to network data utilization. However, the intrinsic structural properties of networks remain so far inadequately explored and theorised. With the realistic assumption that there are consistent features across the local structures of networks, we propose a low-rank pursuit based self-representation network model, in which the principle of network organization can be uncovered by a representation matrix. According to this model, original true networks can be reconstructed based on the observed unreliable network…
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Taxonomy
TopicsComplex Network Analysis Techniques · Functional Brain Connectivity Studies · Topological and Geometric Data Analysis
