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Main Authors: zhou, Xiaojun, Zhao, Chunna, Huang, Yaqun, Zhou, Chengli, Ye, Junjie, Xiang, Kemeng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.07408
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author zhou, Xiaojun
Zhao, Chunna
Huang, Yaqun
Zhou, Chengli
Ye, Junjie
Xiang, Kemeng
author_facet zhou, Xiaojun
Zhao, Chunna
Huang, Yaqun
Zhou, Chengli
Ye, Junjie
Xiang, Kemeng
contents Fractional-order differentiation has many characteristics different from integer-order differentiation. These characteristics can be applied to the optimization algorithms of artificial neural networks to obtain better results. However, due to insufficient theoretical research, at present, there is no fractional-order matrix differentiation method that is perfectly compatible with automatic differentiation (Autograd) technology. Therefore, we propose a fractional-order matrix differentiation calculation method. This method is introduced by the definition of the integer-order Jacobian matrix. We denote it as fractional-order Jacobian matrix differentiation (${\bf{J}^α}$). Through ${\bf{J}^α}$, we can carry out the matrix-based fractional-order chain rule. Based on the Linear module and the fractional-order differentiation, we design the fractional-order Autograd technology to enable the use of fractional-order differentiation in hidden layers, thereby enhancing the practicality of fractional-order differentiation in deep learning. In the experiment, according to the PyTorch framework, we design fractional-order Linear (FLinear) and replace nn.Linear in the multilayer perceptron with FLinear. Through the qualitative analysis of the training set and validation set $Loss$, the quantitative analysis of the test set indicators, and the analysis of time consumption and GPU memory usage during model training, we verify the superior performance of ${\bf{J}^α}$ and prove that it is an excellent fractional-order gradient descent method in the field of deep learning.
format Preprint
id arxiv_https___arxiv_org_abs_2506_07408
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Fractional-order Jacobian Matrix Differentiation and Its Application in Artificial Neural Networks
zhou, Xiaojun
Zhao, Chunna
Huang, Yaqun
Zhou, Chengli
Ye, Junjie
Xiang, Kemeng
Machine Learning
Artificial Intelligence
Fractional-order differentiation has many characteristics different from integer-order differentiation. These characteristics can be applied to the optimization algorithms of artificial neural networks to obtain better results. However, due to insufficient theoretical research, at present, there is no fractional-order matrix differentiation method that is perfectly compatible with automatic differentiation (Autograd) technology. Therefore, we propose a fractional-order matrix differentiation calculation method. This method is introduced by the definition of the integer-order Jacobian matrix. We denote it as fractional-order Jacobian matrix differentiation (${\bf{J}^α}$). Through ${\bf{J}^α}$, we can carry out the matrix-based fractional-order chain rule. Based on the Linear module and the fractional-order differentiation, we design the fractional-order Autograd technology to enable the use of fractional-order differentiation in hidden layers, thereby enhancing the practicality of fractional-order differentiation in deep learning. In the experiment, according to the PyTorch framework, we design fractional-order Linear (FLinear) and replace nn.Linear in the multilayer perceptron with FLinear. Through the qualitative analysis of the training set and validation set $Loss$, the quantitative analysis of the test set indicators, and the analysis of time consumption and GPU memory usage during model training, we verify the superior performance of ${\bf{J}^α}$ and prove that it is an excellent fractional-order gradient descent method in the field of deep learning.
title Fractional-order Jacobian Matrix Differentiation and Its Application in Artificial Neural Networks
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2506.07408