An Even More Optimal Stochastic Optimization Algorithm: Minibatching and Interpolation Learning
–Neural Information Processing Systems
We present and analyze an algorithm for optimizing smooth and convex or strongly convex objectives using minibatch stochastic gradient estimates. The algorithm is optimal with respect to its dependence on both the minibatch size and minimum expected loss simultaneously. This improves over the optimal method of Lan, which is insensitive to the minimum expected loss; over the optimistic acceleration of Cotter et al., which has suboptimal dependence on the minibatch size; and over the algorithm of Liu and Belkin, which is limited to least squares problems and is also similarly suboptimal.
minibatching and interpolation learning, name change, optimal stochastic optimization algorithm, (6 more...)
Neural Information Processing Systems
Dec-24-2025, 00:28:10 GMT
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