The paper develops two variants of a distributed inexact SCA-ADMM algorithm and proves first-order convergence rate guarantees under mild assumptions for non-convex problems with robustness to errors and delays.
Convergence of Stochastic Proximal Gradient Algorithm
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
We prove novel convergence results for a stochastic proximal gradient algorithm suitable for solving a large class of convex optimization problems, where a convex objective function is given by the sum of a smooth and a possibly non-smooth component. We consider the iterates convergence and derive $O(1/n)$ non asymptotic bounds in expectation in the strongly convex case, as well as almost sure convergence results under weaker assumptions. Our approach allows to avoid averaging and weaken boundedness assumptions which are often considered in theoretical studies and might not be satisfied in practice.
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math.OC 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Distributed Inexact Successive Convex Approximation ADMM: Analysis-Part I
The paper develops two variants of a distributed inexact SCA-ADMM algorithm and proves first-order convergence rate guarantees under mild assumptions for non-convex problems with robustness to errors and delays.