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Local Tomography of Large Networks under the Low-Observability Regime

23 May 2018
A. Santos
Vincenzo Matta
Ali H. Sayed
ArXiv (abs)PDFHTML
Abstract

This article studies the problem of reconstructing the topology of a network of interacting agents via observations of the state-evolution of the agents. We focus on the large-scale network setting with the additional constraint of partialpartialpartial observations, where only a small fraction of the agents can be feasibly observed. The goal is to infer the underlying subnetwork of interactions and we refer to this problem as locallocallocal tomographytomographytomography. In order to study the large-scale setting, we adopt a proper stochastic formulation where the unobserved part of the network is modeled as an Erd\"{o}s-R\ényi random graph, while the observable subnetwork is left arbitrary. The main result of this work is establishing that, under this setting, local tomography is actually possible with high probability, provided that certain conditions on the network model are met (such as stability and symmetry of the network combination matrix). Remarkably, such conclusion is established under the lowlowlow-observabilityobservabilityobservability regimeregimeregime, where the cardinality of the observable subnetwork is fixed, while the size of the overall network scales to infinity.

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