Chen Dongwei, Hu Fei, Nian Guokui, Yang Tiantian
School of Mathematical and Statistical Sciences, Clemson University, Clemson, SC 29641, USA.
State Key Laboratory of Atmospheric Boundary Layer Physics and Atmospheric Chemistry, Institute of Atmospheric Physics, Chinese Academy of Sciences, Beijing 100029, China.
Entropy (Basel). 2020 Feb 7;22(2):193. doi: 10.3390/e22020193.
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.
深度学习在机器学习的近期发展中起着关键作用。本文开发了一种用于非线性函数回归的深度残差神经网络(ResNet)。在残差块中,卷积层和池化层被全连接层所取代。为了评估新的回归模型,我们在模拟数据上训练和测试了不同深度和宽度的神经网络,并找到了最优参数。我们在多个模拟数据上对最优回归模型进行了多次数值测试,结果表明新的回归模型在模拟数据上表现良好。我们还将最优残差回归与其他线性和非线性逼近技术(如套索回归、决策树和支持向量机)进行了比较。与其他模型相比,最优残差回归模型具有更好的逼近能力。最后,将残差回归应用于实际中相对湿度序列的预测。我们的研究表明,残差回归模型在实践中是稳定且适用的。