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Damped Newton Stochastic Gradient Descent Method for Neural Networks Training

Author

Listed:
  • Jingcheng Zhou

    (School of Mathematical Sciences, Beihang University, Beijing 100191, China
    Key Laboratory of Mathematics, Informatics and Behavioral Semantics, Ministry of Education, Beijing 100191, China)

  • Wei Wei

    (School of Mathematical Sciences, Beihang University, Beijing 100191, China
    Key Laboratory of Mathematics, Informatics and Behavioral Semantics, Ministry of Education, Beijing 100191, China
    Peng Cheng Laboratory, Shenzhen 518055, China
    Beijing Advanced Innovation Center for Big Data and Brain Computing, Beihang University, Beijing 100191, China)

  • Ruizhi Zhang

    (School of Mathematical Sciences, Beihang University, Beijing 100191, China
    Key Laboratory of Mathematics, Informatics and Behavioral Semantics, Ministry of Education, Beijing 100191, China)

  • Zhiming Zheng

    (School of Mathematical Sciences, Beihang University, Beijing 100191, China
    Key Laboratory of Mathematics, Informatics and Behavioral Semantics, Ministry of Education, Beijing 100191, China
    Peng Cheng Laboratory, Shenzhen 518055, China
    Beijing Advanced Innovation Center for Big Data and Brain Computing, Beihang University, Beijing 100191, China)

Abstract

First-order methods such as stochastic gradient descent (SGD) have recently become popular optimization methods to train deep neural networks (DNNs) for good generalization; however, they need a long training time. Second-order methods which can lower the training time are scarcely used on account of their overpriced computing cost to obtain the second-order information. Thus, many works have approximated the Hessian matrix to cut the cost of computing while the approximate Hessian matrix has large deviation. In this paper, we explore the convexity of the Hessian matrix of partial parameters and propose the damped Newton stochastic gradient descent (DN-SGD) method and stochastic gradient descent damped Newton (SGD-DN) method to train DNNs for regression problems with mean square error (MSE) and classification problems with cross-entropy loss (CEL). In contrast to other second-order methods for estimating the Hessian matrix of all parameters, our methods only accurately compute a small part of the parameters, which greatly reduces the computational cost and makes the convergence of the learning process much faster and more accurate than SGD and Adagrad. Several numerical experiments on real datasets were performed to verify the effectiveness of our methods for regression and classification problems.

Suggested Citation

  • Jingcheng Zhou & Wei Wei & Ruizhi Zhang & Zhiming Zheng, 2021. "Damped Newton Stochastic Gradient Descent Method for Neural Networks Training," Mathematics, MDPI, vol. 9(13), pages 1-12, June.
  • Handle: RePEc:gam:jmathe:v:9:y:2021:i:13:p:1533-:d:585237
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    Cited by:

    1. Asier Zulueta & Decebal Aitor Ispas-Gil & Ekaitz Zulueta & Joseba Garcia-Ortega & Unai Fernandez-Gamiz, 2022. "Battery Sizing Optimization in Power Smoothing Applications," Energies, MDPI, vol. 15(3), pages 1-20, January.
    2. Harold Doran, 2023. "A Collection of Numerical Recipes Useful for Building Scalable Psychometric Applications," Journal of Educational and Behavioral Statistics, , vol. 48(1), pages 37-69, February.
    3. Gang Mu & Yibo Zhou & Mao Yang & Jiahao Chen, 2023. "A Diagnosis Method of Power Flow Convergence Failure for Bulk Power Systems Based on Intermediate Iteration Data," Energies, MDPI, vol. 16(8), pages 1-16, April.

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