Global Network Prediction from Local Node Dynamics
Neave O'Clery, Ye Yuan, Guy-Bart Stan, Mauricio Barahona

TL;DR
This paper introduces a local node-based method for predicting global network states and metrics, enabling analysis of large or partially known networks through simple, scalable computations at individual nodes.
Contribution
The paper presents a novel localised approach for network dynamics analysis that predicts steady states and computes global metrics without full network knowledge.
Findings
Efficient web-page ranking on large internet networks.
Identification of key nodes and community structures.
Application to neural network role analysis in C. Elegans.
Abstract
The study of dynamical systems on networks, describing complex interactive processes, provides insight into how network structure affects global behaviour. Yet many methods for network dynamics fail to cope with large or partially-known networks, a ubiquitous situation in real-world applications. Here we propose a localised method, applicable to a broad class of dynamical models on networks, whereby individual nodes monitor and store the evolution of their own state and use these values to approximate, via a simple computation, their own steady state solution. Hence the nodes predict their own final state without actually reaching it. Furthermore, the localised formulation enables nodes to compute global network metrics without knowledge of the full network structure. The method can be used to compute global rankings in the network from local information; to detect community detection…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques · Quantum many-body systems
