Structural Adaptivity of Directed Networks
Lulu Pan, Haibin Shao, Mehran Mesbahi, Dewei Li, Yugeng Xi

TL;DR
This paper introduces a distributed, data-driven method for adaptively adjusting the structure of directed multi-agent networks to enhance diffusion performance while maintaining global reachability.
Contribution
It proposes a novel eigenvector-based neighbor selection framework for directed networks, enabling distributed adaptation to improve diffusion performance.
Findings
Eigenvector-based neighbor selection improves diffusion efficiency.
Distributed approach maintains global reachability.
Numerical simulations validate theoretical results.
Abstract
Network structure plays a critical role in functionality and performance of network systems. This paper examines structural adaptivity of diffusively coupled, directed multi-agent networks that are subject to diffusion performance. Inspired by the observation that the link redundancy in a network may degrade its diffusion performance, a distributed data-driven neighbor selection framework is proposed to adaptively adjust the network structure for improving the diffusion performance of exogenous influence over the network. Specifically, each agent is allowed to interact with only a specific subset of neighbors while global reachability from exogenous influence to all agents of the network is maintained. Both continuous-time and discrete-time directed networks are examined. For each of the two cases, we first examine the reachability properties encoded in the eigenvectors of perturbed…
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Taxonomy
TopicsComplex Network Analysis Techniques · Neural Networks Stability and Synchronization · Opinion Dynamics and Social Influence
MethodsDiffusion
