articleAug 1, 2020GOLD OA
Nonparametric regression using deep neural networks with ReLU activation function
SASchmidt-Hieber, Anselm Johannes
Abstract
Consider the multivariate nonparametric regression model. It is shown that estimators based on sparsely connected deep neural networks with ReLU activation function and properly chosen network architecture achieve the minimax rates of convergence (up to $\log n$-factors) under a general composition assumption on the regression function. The framework includes many well-studied structural constraints such as (generalized) additive models. While there is a lot of flexibility in the network architecture, the tuning parameter is the sparsity of the network. Specifically, we consider large networks with number of potential network parameters exceeding the sample size. The analysis gives some insights into why…
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Authors
1- SASchmidt-Hieber, Anselm JohannesCorresponding
University of Twente
Topics & keywords
Topics
Keywords
- Nonparametric regression
- Estimator
- Nonparametric statistics
- Artificial neural network
- Mathematics
- Minimax
- Feedforward neural network
- Regression
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