Abstract—This paper investigates the problem of distributed stochastic approximation in multi-agent systems. The algorithm under study consists of two steps: a local stochastic approxi-mation step and a diffusion step which drives the network to a consensus. The diffusion step uses row-stochastic matrices to weight the network exchanges. As opposed to previous works, exchange matrices are not supposed to be doubly stochastic, and may also depend on the past estimate. We prove that non-doubly stochastic matrices generally in-fluence the limit points of the algorithm. Nevertheless, the limit points are not affected by the choice of the matrices provided that the latter are doubly-stochastic in expectation. This conclusion legitimates the use ...
The first part of this dissertation considers distributed learning problems over networked agents. T...
Abstract—We find the exact rate for convergence in probability of products of independent, identical...
Doubly-stochastic matrices are usually required by consensus-based distributed algorithms. We propos...
In this paper, a distributed stochastic approximation algorithm is studied. Applications of such alg...
This work develops a distributed optimization algorithm with guaranteed exact convergence for a broa...
This paper presents a linear and nonlinear stochastic distribution for the interactions in multi-age...
Stochastic consensus algorithms are considered for multi-agent systems over noisy unbalanced directe...
In this dissertation, we study optimization, adaptation, and learning problems over connected networ...
We study distributed stochastic nonconvex optimization in multi-agent networks. We introduce a novel...
This paper studies the learning ability of consensus and diffusion distributed learners from continu...
Networked systems comprised of multiple nodes with sensing, processing, and communication capabiliti...
Various randomized consensus algorithms have been proposed in the literature. In some case randomnes...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
Abstract—We introduce a new framework for the convergence analysis of a class of distributed constra...
This paper considers consensus problems with delayed noisy measurements, and stochastic approximatio...
The first part of this dissertation considers distributed learning problems over networked agents. T...
Abstract—We find the exact rate for convergence in probability of products of independent, identical...
Doubly-stochastic matrices are usually required by consensus-based distributed algorithms. We propos...
In this paper, a distributed stochastic approximation algorithm is studied. Applications of such alg...
This work develops a distributed optimization algorithm with guaranteed exact convergence for a broa...
This paper presents a linear and nonlinear stochastic distribution for the interactions in multi-age...
Stochastic consensus algorithms are considered for multi-agent systems over noisy unbalanced directe...
In this dissertation, we study optimization, adaptation, and learning problems over connected networ...
We study distributed stochastic nonconvex optimization in multi-agent networks. We introduce a novel...
This paper studies the learning ability of consensus and diffusion distributed learners from continu...
Networked systems comprised of multiple nodes with sensing, processing, and communication capabiliti...
Various randomized consensus algorithms have been proposed in the literature. In some case randomnes...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
Abstract—We introduce a new framework for the convergence analysis of a class of distributed constra...
This paper considers consensus problems with delayed noisy measurements, and stochastic approximatio...
The first part of this dissertation considers distributed learning problems over networked agents. T...
Abstract—We find the exact rate for convergence in probability of products of independent, identical...
Doubly-stochastic matrices are usually required by consensus-based distributed algorithms. We propos...