We study the large deviations performance of consensus+innovations distributed detection over noisy networks, where agents at a time step cooperate with their immediate neighbors (consensus) and assimilate their new observations (innovation.) We show that, under noisy communication, all agents can still achieve an exponential error rate, even when certain (or most) agents cannot detect the event of interest in isolation. The key to achieving this is the appropriate design of the time-varying weight sequence {αk = b0/(a + k)} by which agents weigh their neighbors' messages. We and a communication payoff threshold on the communication noise power, i.e., the critical noise power below which cooperation among neighbors improves detection perfor...
We consider distributed recursive estimation of consensus+innovations type in the presence of heavy-...
This article evaluates convergence rates of binary majority consensus algorithms in networks with di...
This paper addresses the problem of distributed detection in multi-agent networks. Agents receive pr...
We study, by large deviations analysis, the asymptotic performance of Gaussian running consensus dis...
We study the large deviations performance, i.e., the exponential decay rate of the error probability...
We establish the large deviations asymptotic performance (error exponent) of consensus+innovations d...
This paper examines the close interplay between cooperation and adaptation for distributed detection...
This paper examines the close interplay between cooperation and adaptation for distributed detection...
We consider the problem of classifying among a set of M hypotheses via distributed noisy sensors. Se...
We study the problem of distributed detection, where a set of nodes are required to decide between t...
This paper studies probabilistic rates of convergence for consensus+innovations type of algorithms i...
This paper considers gossip distributed estimation of a (static) distributed random field (a.k.a., l...
In distributed detection based on consensus algorithm, all nodes reach the same decision by locally ...
In distributed detection based on consensus algorithm, all nodes reach the same decision by locally ...
We consider the problem of distributed detection over a multiaccess channel. Assuming a random numbe...
We consider distributed recursive estimation of consensus+innovations type in the presence of heavy-...
This article evaluates convergence rates of binary majority consensus algorithms in networks with di...
This paper addresses the problem of distributed detection in multi-agent networks. Agents receive pr...
We study, by large deviations analysis, the asymptotic performance of Gaussian running consensus dis...
We study the large deviations performance, i.e., the exponential decay rate of the error probability...
We establish the large deviations asymptotic performance (error exponent) of consensus+innovations d...
This paper examines the close interplay between cooperation and adaptation for distributed detection...
This paper examines the close interplay between cooperation and adaptation for distributed detection...
We consider the problem of classifying among a set of M hypotheses via distributed noisy sensors. Se...
We study the problem of distributed detection, where a set of nodes are required to decide between t...
This paper studies probabilistic rates of convergence for consensus+innovations type of algorithms i...
This paper considers gossip distributed estimation of a (static) distributed random field (a.k.a., l...
In distributed detection based on consensus algorithm, all nodes reach the same decision by locally ...
In distributed detection based on consensus algorithm, all nodes reach the same decision by locally ...
We consider the problem of distributed detection over a multiaccess channel. Assuming a random numbe...
We consider distributed recursive estimation of consensus+innovations type in the presence of heavy-...
This article evaluates convergence rates of binary majority consensus algorithms in networks with di...
This paper addresses the problem of distributed detection in multi-agent networks. Agents receive pr...