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Deep Residual Learning for Nonlinear Regression
by
Hu, Fei
, Nian, Guokui
, Yang, Tiantian
, Chen, Dongwei
in
deep residual learning
/ neural network
/ nonlinear approximation
/ nonlinear regression
2020
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Deep Residual Learning for Nonlinear Regression
by
Hu, Fei
, Nian, Guokui
, Yang, Tiantian
, Chen, Dongwei
in
deep residual learning
/ neural network
/ nonlinear approximation
/ nonlinear regression
2020
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Journal Article
Deep Residual Learning for Nonlinear Regression
2020
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Overview
Deep learning plays a key role in the recent developments of machine learning. This paper develops a deep residual neural network (ResNet) for the regression of nonlinear functions. Convolutional layers and pooling layers are replaced by fully connected layers in the residual block. To evaluate the new regression model, we train and test neural networks with different depths and widths on simulated data, and we find the optimal parameters. We perform multiple numerical tests of the optimal regression model on multiple simulated data, and the results show that the new regression model behaves well on simulated data. Comparisons are also made between the optimal residual regression and other linear as well as nonlinear approximation techniques, such as lasso regression, decision tree, and support vector machine. The optimal residual regression model has better approximation capacity compared to the other models. Finally, the residual regression is applied into the prediction of a relative humidity series in the real world. Our study indicates that the residual regression model is stable and applicable in practice.
Publisher
MDPI,MDPI AG
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