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A Caputo-Type Fractional-Order Gradient Descent Learning of Deep BP Neural Networks

机译:深度BP神经网络的Caputo型分数阶梯度下降学习

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摘要

In recent years, There is a promising area about the Artificial neural networks by using fractional calculus. In this paper, we combine the Caputo operator of the fractional calculas and the conventional gradient descent method to optimize the deep backpropagation neural network and have proved the monotonicity and weak convergence for the presented network in detail. We do some simulations to compare the differences of the performance between presented fractional-order deep BP neural networks and Integer-order BP neural networks by using a large dataset.
机译:近年来,关于使用分数演算的人工神经网络的领域充满希望。在本文中,我们结合了分数计算的Caputo算符和常规的梯度下降法来优化深度反向传播神经网络,并详细证明了所提出网络的单调性和弱收敛性。我们使用大型数据集进行了一些仿真,以比较所提出的分数阶深度BP神经网络和整数阶BP神经网络之间的性能差异。

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