Finite Sample and Large Deviations Analysis of Stochastic Gradient
Algorithm with Correlated Noise
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Bibliography:1 Pages
Abstract
We analyze the finite sample regret of a decreasing step size stochastic gradient algorithm. We assume correlated noise and use a perturbed Lyapunov function as a systematic approach for the analysis. Finally we analyze the escape time of the iterates using large deviations theory.
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