High Probability Bounds for a Class of Nonconvex Algorithms with AdaGrad Stepsize
Abstract
In this paper, we propose a new, simplified high probability analysis of AdaGrad for smooth, non-convex problems. More specifically, we focus on a particular accelerated gradient (AGD) template (Lan, 2020), through which we recover the original AdaGrad and its variant with averaging, and prove a convergence rate of O (1/ T) with high probability without the knowledge of smoothness and variance. We use a particular version of Freedman's concentration bound for martingale difference sequences (Kakade & Tewari, 2008) which enables us to achieve the best-known dependence of (1 / δ ) on the probability margin δ. We present our analysis in a modular way and obtain a complementary O (1 / T) convergence rate in the deterministic setting. To the best of our knowledge, this is the first high probability result for AdaGrad with a truly adaptive scheme, i.e., completely oblivious to the knowledge of smoothness and uniform variance bound, which simultaneously has best-known dependence of ( 1/ δ). We further prove noise adaptation property of AdaGrad under additional noise assumptions.
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