This paper develops a distributed optimization strategy with guaranteed exact convergence for a broad class of left-stochastic combination policies. The resulting exact diffusion strategy is shown in Part II of this paper to have a wider stability range and superior convergence performance than the EXTRA strategy. The exact diffusion method is applicable to locally balanced left-stochastic combination matrices which, compared to the conventional doubly stochastic matrix, are more general and able to endow the algorithm with faster convergence rates, more flexible step-size choices, and improved privacy-preserving properties. The derivation of the exact diffusion strategy relies on reformulating the aggregate optimization problem as a penali...
This work develops an exact converging algorithm for the solution of a distributed optimization prob...
This paper presents an adaptive combination strategy for distributed learning over diffusion network...
We develop an iterative diffusion mechanism to optimize a global cost function in a distributed mann...
Part I of this paper developed the exact diffusion algorithm to remove the bias that is characterist...
This work develops a distributed optimization algorithm with guaranteed exact convergence for a broa...
In this dissertation, we study optimization, adaptation, and learning problems over connected networ...
Various bias-correction methods such as EXTRA, gradient tracking methods, and exact diffusion have b...
Various bias-correction methods such as EXTRA, DIGing, and exact diffusion have been proposed recent...
Abstract—This paper investigates the problem of distributed stochastic approximation in multi-agent ...
Driven by the need to solve increasingly complex optimization problems in signal processing and mach...
This paper studies the learning ability of consensus and diffusion distributed learners from continu...
We consider solving multi-objective optimization problems in a distributed manner by a network of co...
We consider solving multi-objective optimization problems in a distributed manner by a network of co...
We develop an effective distributed strategy for seeking the Pareto solution of an aggregate cost co...
We present a novel Newton-type method for distributed optimization, which is particularly well suite...
This work develops an exact converging algorithm for the solution of a distributed optimization prob...
This paper presents an adaptive combination strategy for distributed learning over diffusion network...
We develop an iterative diffusion mechanism to optimize a global cost function in a distributed mann...
Part I of this paper developed the exact diffusion algorithm to remove the bias that is characterist...
This work develops a distributed optimization algorithm with guaranteed exact convergence for a broa...
In this dissertation, we study optimization, adaptation, and learning problems over connected networ...
Various bias-correction methods such as EXTRA, gradient tracking methods, and exact diffusion have b...
Various bias-correction methods such as EXTRA, DIGing, and exact diffusion have been proposed recent...
Abstract—This paper investigates the problem of distributed stochastic approximation in multi-agent ...
Driven by the need to solve increasingly complex optimization problems in signal processing and mach...
This paper studies the learning ability of consensus and diffusion distributed learners from continu...
We consider solving multi-objective optimization problems in a distributed manner by a network of co...
We consider solving multi-objective optimization problems in a distributed manner by a network of co...
We develop an effective distributed strategy for seeking the Pareto solution of an aggregate cost co...
We present a novel Newton-type method for distributed optimization, which is particularly well suite...
This work develops an exact converging algorithm for the solution of a distributed optimization prob...
This paper presents an adaptive combination strategy for distributed learning over diffusion network...
We develop an iterative diffusion mechanism to optimize a global cost function in a distributed mann...