Uniform Convergence of Gradients for Non-Convex Learning and Optimization

October 25, 2018 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Dylan J. Foster, Ayush Sekhari, Karthik Sridharan arXiv ID 1810.11059 Category cs.LG: Machine Learning Cross-listed math.OC, stat.ML Citations 78 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
We investigate 1) the rate at which refined properties of the empirical risk---in particular, gradients---converge to their population counterparts in standard non-convex learning tasks, and 2) the consequences of this convergence for optimization. Our analysis follows the tradition of norm-based capacity control. We propose vector-valued Rademacher complexities as a simple, composable, and user-friendly tool to derive dimension-free uniform convergence bounds for gradients in non-convex learning problems. As an application of our techniques, we give a new analysis of batch gradient descent methods for non-convex generalized linear models and non-convex robust regression, showing how to use any algorithm that finds approximate stationary points to obtain optimal sample complexity, even when dimension is high or possibly infinite and multiple passes over the dataset are allowed. Moving to non-smooth models we show----in contrast to the smooth case---that even for a single ReLU it is not possible to obtain dimension-independent convergence rates for gradients in the worst case. On the positive side, it is still possible to obtain dimension-independent rates under a new type of distributional assumption.
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