Feb. 6, 2024, 5:47 a.m. | Mark Sellke

cs.LG updates on arXiv.org arxiv.org

We study the sample complexity of learning ReLU neural networks from the point of view of generalization. Given norm constraints on the weight matrices, a common approach is to estimate the Rademacher complexity of the associated function class. Previously Golowich-Rakhlin-Shamir (2020) obtained a bound independent of the network size (scaling with a product of Frobenius norms) except for a factor of the square-root depth. We give a refinement which often has no explicit depth-dependence at all.

class complexity constraints cs.lg function independent network networks neural networks norm product relu sample scaling stat.ml study view

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