Fractional Stochastic Gradient Descent Based Learning Algorithm For Multi-layer Perceptron Neural Networks

A. Sadiq, N. Yahya
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Abstract

Neural Networks are indispensable tools in adaptive signal processing. Multi-layer perceptron (MLP) neural network is one of the most widely used neural network architecture. The performance is highly subjective to the optimization of learning parameters. In this study, we propose a learning algorithm for the training of MLP models. Conventionally back-propagation learning algorithm also termed as (BP-MLP) is used. It is a type of stochastic gradient descent algorithm where performance is governed by eigen spread of the input signal correlation matrix. In order to accelerate the performance, we design a combination of integral and fractional gradient terms. The proposed fractional back-propagation multi-layer perceptron (FBP-MLP) method is based on fractional calculus and it utilizes the concept of fractional power gradient which provides complementary information about the cost function that helps in rapid convergence. For the validation of our claim, we implemented leukemia cancer classification task and compared our method with standard BPMLP method. The proposed FBP-MLP method outperformed the conventional BP-MLP algorithm both in terms of convergence rate and test accuracy.
基于分数阶随机梯度下降的多层感知器神经网络学习算法
神经网络是自适应信号处理中不可缺少的工具。多层感知器(MLP)神经网络是应用最广泛的神经网络结构之一。性能对学习参数的优化具有高度的主观性。在本研究中,我们提出了一种用于MLP模型训练的学习算法。传统上使用的是反向传播学习算法(BP-MLP)。它是一种随机梯度下降算法,其性能由输入信号相关矩阵的特征扩展决定。为了提高性能,我们设计了积分梯度项和分数梯度项的组合。所提出的分数阶反向传播多层感知器(FBP-MLP)方法基于分数阶微积分,并利用分数阶幂梯度的概念,该概念提供了关于代价函数的补充信息,有助于快速收敛。为了验证我们的说法,我们实施了白血病癌症分类任务,并将我们的方法与标准BPMLP方法进行了比较。本文提出的FBP-MLP方法在收敛速度和测试精度方面都优于传统的BP-MLP算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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