A Novel VSS-EBP Algorithm Based on Adaptive Variable Learning Rate

Nasim Latifi, A. Amiri
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引用次数: 2

Abstract

One of the most significant parameter in increasing the efficiency of MLP NN that utilizes the EBP algorithm for training network is convergence speed which different methods have been proposed for improving it. In this paper, we use a variable learning rate method for increasing the convergence speed of EBP algorithm, which its idea have come from a one way presented to improve the efficiency of Standard LMS. The result of comparison of standard EBP and proposed VSSEBP algorithm over various datasets demonstrate that VSSEBP have high convergence speed. All experiments have performed on noisy data with various SNR values.
一种基于自适应变学习率的VSS-EBP算法
在利用EBP算法训练网络的MLP神经网络中,提高效率最重要的参数之一是收敛速度,人们提出了不同的方法来提高收敛速度。本文采用一种可变学习率的方法来提高EBP算法的收敛速度,其思想来源于一种提高标准LMS效率的方法。在不同数据集上对标准EBP算法和本文提出的VSSEBP算法进行了比较,结果表明VSSEBP算法具有较高的收敛速度。所有实验都在具有不同信噪比值的噪声数据上进行。
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