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arxiv: 2401.15890 · v1 · pith:XL7R6DSW · submitted 2024-01-29 · stat.ML · cs.LG· math.OC· math.ST· stat.TH

Probabilistic Guarantees of Stochastic Recursive Gradient in Non-Convex Finite Sum Problems

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classification stat.ML cs.LGmath.OCmath.STstat.TH
keywords algorithmgradientprob-sarahboundscomplexityfinitenormprobabilistic
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This paper develops a new dimension-free Azuma-Hoeffding type bound on summation norm of a martingale difference sequence with random individual bounds. With this novel result, we provide high-probability bounds for the gradient norm estimator in the proposed algorithm Prob-SARAH, which is a modified version of the StochAstic Recursive grAdient algoritHm (SARAH), a state-of-art variance reduced algorithm that achieves optimal computational complexity in expectation for the finite sum problem. The in-probability complexity by Prob-SARAH matches the best in-expectation result up to logarithmic factors. Empirical experiments demonstrate the superior probabilistic performance of Prob-SARAH on real datasets compared to other popular algorithms.

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