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.
Asynchronous Stochastic Gradient Descent with Variance Reduction for Non-Convex Optimization
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abstract
We provide the first theoretical analysis on the convergence rate of the asynchronous stochastic variance reduced gradient (SVRG) descent algorithm on non-convex optimization. Recent studies have shown that the asynchronous stochastic gradient descent (SGD) based algorithms with variance reduction converge with a linear convergent rate on convex problems. However, there is no work to analyze asynchronous SGD with variance reduction technique on non-convex problem. In this paper, we study two asynchronous parallel implementations of SVRG: one is on a distributed memory system and the other is on a shared memory system. We provide the theoretical analysis that both algorithms can obtain a convergence rate of $O(1/T)$, and linear speed up is achievable if the number of workers is upper bounded. V1,v2,v3 have been withdrawn due to reference issue, please refer the newest version v4.
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2019 1verdicts
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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.