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arxiv: 2504.08489 · v1 · pith:2H2EFHDZ · submitted 2025-04-11 · math.ST · cs.LG· stat.ML· stat.TH

Statistically guided deep learning

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classification math.ST cs.LGstat.MLstat.TH
keywords deeplearningdatadescentestimatefinitegradientnetworks
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We present a theoretically well-founded deep learning algorithm for nonparametric regression. It uses over-parametrized deep neural networks with logistic activation function, which are fitted to the given data via gradient descent. We propose a special topology of these networks, a special random initialization of the weights, and a data-dependent choice of the learning rate and the number of gradient descent steps. We prove a theoretical bound on the expected $L_2$ error of this estimate, and illustrate its finite sample size performance by applying it to simulated data. Our results show that a theoretical analysis of deep learning which takes into account simultaneously optimization, generalization and approximation can result in a new deep learning estimate which has an improved finite sample performance.

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