This paper addresses the problem of distributed detection in multi-agent networks. Agents receive private signals about an unknown state of the world. The underlying state is globally identifiable, yet informative signals may be dispersed throughout the network. Using an optimization-based framework, we develop an iterative local strategy for updating individual beliefs. In contrast to the existing literature which focuses on asymptotic learning, we provide a finite-time analysis. Furthermore, we introduce a Kullback-Leibler cost to compare the efficiency of the algorithm to its centralized counterpart. Our bounds on the cost are expressed in terms of network size, spectral gap, centrality of each agent and relative entropy of agents ’ sign...
We study the large deviations performance of consensus+innovations distributed detection over noisy ...
We consider the problem of distributed detection of a common random signal. After evaluating the det...
We study the problem of distributed detection, where a set of nodes are required to decide between t...
Learning, prediction and identification has been a main topic of interest in science and engineering...
Learning, prediction and identification has been a main topic of interest in science and engineering...
A distributed system is composed of independent agents, machines, processing units, etc., where inte...
We consider the problem of classifying among a set of M hypotheses via distributed noisy sensors. Se...
This dissertation deals with the development of effective information processing strategies for dist...
In [1], an important step toward the characterization of distributed detection over adaptive network...
We study a tandem of agents who make decisions about an underlying binary hypothesis, where the dist...
Cataloged from PDF version of article.We study online learning strategies over distributed networks....
Consider the well-studied decentralized Bayesian detection problem with the twist of an undirected n...
This paper examines the close interplay between cooperation and adaptation for distributed detection...
A promising feature of emerging wireless sensor networks is the opportunity for each spatially-distr...
This paper examines the close interplay between cooperation and adaptation for distributed detection...
We study the large deviations performance of consensus+innovations distributed detection over noisy ...
We consider the problem of distributed detection of a common random signal. After evaluating the det...
We study the problem of distributed detection, where a set of nodes are required to decide between t...
Learning, prediction and identification has been a main topic of interest in science and engineering...
Learning, prediction and identification has been a main topic of interest in science and engineering...
A distributed system is composed of independent agents, machines, processing units, etc., where inte...
We consider the problem of classifying among a set of M hypotheses via distributed noisy sensors. Se...
This dissertation deals with the development of effective information processing strategies for dist...
In [1], an important step toward the characterization of distributed detection over adaptive network...
We study a tandem of agents who make decisions about an underlying binary hypothesis, where the dist...
Cataloged from PDF version of article.We study online learning strategies over distributed networks....
Consider the well-studied decentralized Bayesian detection problem with the twist of an undirected n...
This paper examines the close interplay between cooperation and adaptation for distributed detection...
A promising feature of emerging wireless sensor networks is the opportunity for each spatially-distr...
This paper examines the close interplay between cooperation and adaptation for distributed detection...
We study the large deviations performance of consensus+innovations distributed detection over noisy ...
We consider the problem of distributed detection of a common random signal. After evaluating the det...
We study the problem of distributed detection, where a set of nodes are required to decide between t...