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Stability and Sharper Risk Bounds with Convergence Rate $O(1/n^2)$

Authors :
Zhu, Bowei
Li, Shaojie
Liu, Yong
Publication Year :
2024

Abstract

The sharpest known high probability excess risk bounds are up to $O\left( 1/n \right)$ for empirical risk minimization and projected gradient descent via algorithmic stability (Klochkov \& Zhivotovskiy, 2021). In this paper, we show that high probability excess risk bounds of order up to $O\left( 1/n^2 \right)$ are possible. We discuss how high probability excess risk bounds reach $O\left( 1/n^2 \right)$ under strongly convexity, smoothness and Lipschitz continuity assumptions for empirical risk minimization, projected gradient descent and stochastic gradient descent. Besides, to the best of our knowledge, our high probability results on the generalization gap measured by gradients for nonconvex problems are also the sharpest.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.09766
Document Type :
Working Paper