A Decentralized Variance-Reduced Method For Stochastic Optimization Over Directed Graphs
Muhammad Qureshi, Ran Xin, Soummya Kar, Usman Khan
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 00:12:40
In this paper, we propose a decentralized first-order stochastic optimization method PushSAGA for finite-sum minimization over a strongly connected directed graph. This method features local variance reduction to remove the uncertainty caused by random sampling of the local gradients, global gradient tracking to address the distributed nature of the data, and push-sum consensus to handle the imbalance caused by the directed nature of the underlying graph. We show that, for a sufficiently small step-size, PushSAGA linearly converges to the optimal solution for smooth and strongly convex problems, making it the first linearly-convergent stochastic algorithm over arbitrary strongly-connected directed graphs. We illustrate the behavior and convergence properties of PushSAGA with the help of numerical experiments for strongly convex and nonconvex problems.
Chairs:
Marcelo Bruno