Fine-Grained Analysis of Stability and Generalization for Stochastic Gradient Descent

Part of Proceedings of the International Conference on Machine Learning 1 pre-proceedings (ICML 2020)

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Authors

Yunwen Lei, Yiming Ying

Abstract

<p>Recently there are a considerable amount of work devoted to the study of the algorithm stability and generalization for stochastic gradient descent (SGD). However, the existing stability analysis requires to impose restrictive assumptions on the boundedness of gradients, strong smoothness and convexity of loss functions. In this paper, we provide a fine-grained analysis of stability and generalization for SGD by substantially relaxing these assumptions. Firstly, we establish stability and generalization for SGD by removing the existing bounded gradient assumptions. The key idea is the introduction of a new stability measure called on-average model stability, for which we develop novel bounds controlled by the risks of SGD iterates. This yields generalization bounds depending on the behavior of the best model, and leads to the first-ever-known fast bounds in the low-noise setting using stability approach. Secondly, the smoothness assumption is relaxed by considering loss functions with Holder continuous gradients for which we show that optimal bounds are still achieved by balancing computation and stability. Finally, we study learning problems with (strongly) convex objectives but non-convex loss functions, and provide applications where the existing stability bounds fail.</p>