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Last-Iterate Complexity of SGD for Convex and Smooth Stochastic Problems (2507.14122v1)

Published 18 Jul 2025 in math.OC

Abstract: Most results on Stochastic Gradient Descent (SGD) in the convex and smooth setting are presented under the form of bounds on the ergodic function value gap. It is an open question whether bounds can be derived directly on the last iterate of SGD in this context. Recent advances suggest that it should be possible. For instance, it can be achieved by making the additional, yet unverifiable, assumption that the variance of the stochastic gradients is uniformly bounded. In this paper, we show that there is no need of such an assumption, and that SGD enjoys a $\tilde O \left( T{-1/2} \right)$ last-iterate complexity rate for convex smooth stochastic problems.

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