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arxiv: 2207.11833 · v1 · pith:QFKV7PYY · submitted 2022-07-24 · math.OC

Accelerated Convex Optimization with Stochastic Gradients: Generalizing the Strong-Growth Condition

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classification math.OC
keywords conditionacceleratedoraclesstochasticgradientsmethodnesterovproblems
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This paper presents a sufficient condition for stochastic gradients not to slow down the convergence of Nesterov's accelerated gradient method. The new condition has the strong-growth condition by Schmidt \& Roux as a special case, and it also allows us to (i) model problems with constraints and (ii) design new types of oracles (e.g., oracles for finite-sum problems such as SAGA). Our results are obtained by revisiting Nesterov's accelerated algorithm and are useful for designing stochastic oracles without changing the underlying first-order method.

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