Mini-Batch Semi-Stochastic Gradient Descent in the Proximal Setting

April 16, 2015 ยท Declared Dead ยท ๐Ÿ› IEEE Journal on Selected Topics in Signal Processing

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Authors Jakub Koneฤnรฝ, Jie Liu, Peter Richtรกrik, Martin Takรกฤ arXiv ID 1504.04407 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 277 Venue IEEE Journal on Selected Topics in Signal Processing Last Checked 3 months ago
Abstract
We propose mS2GD: a method incorporating a mini-batching scheme for improving the theoretical complexity and practical performance of semi-stochastic gradient descent (S2GD). We consider the problem of minimizing a strongly convex function represented as the sum of an average of a large number of smooth convex functions, and a simple nonsmooth convex regularizer. Our method first performs a deterministic step (computation of the gradient of the objective function at the starting point), followed by a large number of stochastic steps. The process is repeated a few times with the last iterate becoming the new starting point. The novelty of our method is in introduction of mini-batching into the computation of stochastic steps. In each step, instead of choosing a single function, we sample $b$ functions, compute their gradients, and compute the direction based on this. We analyze the complexity of the method and show that it benefits from two speedup effects. First, we prove that as long as $b$ is below a certain threshold, we can reach any predefined accuracy with less overall work than without mini-batching. Second, our mini-batching scheme admits a simple parallel implementation, and hence is suitable for further acceleration by parallelization.
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