Randomized Block-Coordinate Optimistic Gradient Algorithms for Root-Finding Problems
Abstract
In this paper, we develop two new randomized block-coordinate optimistic gradient algorithms to approximate a solution of nonlinear equations in large-scale settings, which are called root-finding problems. Our first algorithm is non-accelerated with constant stepsizes, and achieves O(1/k) best-iterate convergence rate on E[ Gxk2] when the underlying operator G is Lipschitz continuous and satisfies a weak Minty solution condition, where E[·] is the expectation and k is the iteration counter. Our second method is a new accelerated randomized block-coordinate optimistic gradient algorithm. We establish both O(1/k2) and o(1/k2) last-iterate convergence rates on both E[ Gxk2] and E[ xk+1 - xk2] for this algorithm under the co-coerciveness of G. In addition, we prove that the iterate sequence \xk\ converges to a solution almost surely, and k Gxk attains a o(1/k) almost sure convergence rate. Then, we apply our methods to a class of large-scale finite-sum inclusions, which covers prominent applications in machine learning, statistical learning, and network optimization, especially in federated learning. We obtain two new federated learning-type algorithms and their convergence rate guarantees for solving this problem class.
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