We study the localization of a cluster of activated vertices in a graph, from adaptively designed compressive measurements. We propose a hierarchical partitioning of the graph that groups the activated vertices into few partitions, so that a top-down sensing procedure can identify these partitions, and hence the activations, using few measurements. By exploiting the cluster structure, we are able to provide localization guarantees at weaker signal to noise ratios than in the unstructured setting. We complement this performance guarantee with an information theoretic lower bound, providing a necessary signal-to-noise ratio for any algorithm to successfully localize the cluster. We verify our analysis with some simulations, demonstrating the ...
The goal of this paper is to propose adaptive strategies for distributed learning of signals defined...
Abstract—Expander graphs have been recently proposed to construct efficient compressed sensing algor...
This paper investigates graph clustering in the planted cluster model in the presence of small clust...
An original graph clustering approach to efficient localization of error covariances is proposed wi...
It is important to establish relations between the network reconstruction and the topological dynami...
A least squares semi-supervised local clustering algorithm based on the idea of compressed sensing i...
The problem of efficiently identifying regions of interest arises in the context of surveillance, mo...
Abstract—The localization of anomalous activity in graphs is a statistical problem that arises in ma...
We consider a graph-structured change point problem in which we observe a random vector with piece-w...
The emerging eld of signal processing on graph plays a more and more impor-tant role in processing s...
International audienceIn this paper, we consider a network of sensors in which a fusion center appli...
With the explosive growth of information and communication, data is being generated at an unpreceden...
<p>A massive amount of data is being generated at an unprecedented level from a diversity of sources...
Abstract—In this paper, motivated by network inference and tomography applications, we study the pro...
Abstract — Sparse recovery can recover sparse signals from a set of underdetermined linear measureme...
The goal of this paper is to propose adaptive strategies for distributed learning of signals defined...
Abstract—Expander graphs have been recently proposed to construct efficient compressed sensing algor...
This paper investigates graph clustering in the planted cluster model in the presence of small clust...
An original graph clustering approach to efficient localization of error covariances is proposed wi...
It is important to establish relations between the network reconstruction and the topological dynami...
A least squares semi-supervised local clustering algorithm based on the idea of compressed sensing i...
The problem of efficiently identifying regions of interest arises in the context of surveillance, mo...
Abstract—The localization of anomalous activity in graphs is a statistical problem that arises in ma...
We consider a graph-structured change point problem in which we observe a random vector with piece-w...
The emerging eld of signal processing on graph plays a more and more impor-tant role in processing s...
International audienceIn this paper, we consider a network of sensors in which a fusion center appli...
With the explosive growth of information and communication, data is being generated at an unpreceden...
<p>A massive amount of data is being generated at an unprecedented level from a diversity of sources...
Abstract—In this paper, motivated by network inference and tomography applications, we study the pro...
Abstract — Sparse recovery can recover sparse signals from a set of underdetermined linear measureme...
The goal of this paper is to propose adaptive strategies for distributed learning of signals defined...
Abstract—Expander graphs have been recently proposed to construct efficient compressed sensing algor...
This paper investigates graph clustering in the planted cluster model in the presence of small clust...