Stochastic first-order methods: non-asymptotic and computer-aided analyses via potential functions

3 Feb 2019 Adrien Taylor Francis Bach

We provide a novel computer-assisted technique for systematically analyzing first-order methods for optimization. In contrast with previous works, the approach is particularly suited for handling sublinear convergence rates and stochastic oracles... (read more)

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