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Convolutional neural networks with fractional order gradient method

机译:具有分数级梯度法的卷积神经网络

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This paper proposes a fractional order gradient method for the backward propagation of convolutional neural networks. To overcome the problem that fractional order gradient method cannot converge to real extreme point, a simplified fractional order gradient method is designed based on Caputo's definition. The parameters within layers are updated by the designed gradient method, but the propagations between layers still use integer order gradients, and thus the complicated derivatives of composite functions are avoided and the chain rule will be kept. By connecting every layers in series and adding loss functions, the proposed convolutional neural networks can be trained smoothly according to various tasks. Some practical experiments are carried out in order to demonstrate fast convergence, high accuracy and ability to escape local optimal point at last. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文提出了一种用于卷积神经网络的后向传播的分数阶梯度方法。为了克服分数阶梯度方法不能收敛到真实极值的问题,基于Caputo的定义设计了一种简化的分数阶梯度方法。层内的参数由设计的渐变方法更新,但层之间的传播仍然使用整数阶梯梯度,因此避免了复合功能的复杂导数,并且将保持链规则。通过串联和添加损耗功能连接每个层,所提出的卷积神经网络可以根据各种任务平滑地培训。进行了一些实际实验,以证明快速收敛,高精度和终止归因于当地最佳点的能力。 (c)2019 Elsevier B.v.保留所有权利。

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