Nonlinear Acceleration of Stochastic Algorithms
–Neural Information Processing Systems
Extrapolation methods use the last few iterates of an optimization algorithm to produce a better estimate of the optimum. They were shown to achieve optimal convergence rates in a deterministic setting using simple gradient iterates. Here, we study extrapolation methods in a stochastic setting, where the iterates are produced by either a simple or an accelerated stochastic gradient algorithm.
Neural Information Processing Systems
Nov-21-2025, 14:02:54 GMT
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