Fine tuning the parameters of back propagation algorithm for optimum learning performance

Viral Nagori
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引用次数: 7

Abstract

The back propagation algorithm has wide range of applications for training of feed forward neural networks. Over the years, many researchers have used back propagation algorithm to train their neural network based systems without emphasizing on how to fine tune the parameters of the algorithm. The paper throws the light on how researchers can manipulate and experiment with the parameters of the back propagation algorithm to achieve the optimum learning performance. The paper presents the results of the laboratory experiments of fine tuning the parameters of the back propagation algorithm. The process of fine tuning the parameters was applied on the neural network based expert system prototype. The prototype aims to analyze and design customized motivational strategies based on employees' perspective. The laboratory experiments were conducted on the following parameters of back propagation algorithm: learning rate, momentum rate and activation functions. Learning performance are measured and recorded. At the same time, the impact of activation function on the final output is also measured. Based on the results, the values of the above parameters which provide the optimum learning performance is chosen for the full scale system implementation.
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对反向传播算法的参数进行微调以获得最佳的学习性能
反向传播算法在前馈神经网络的训练中有着广泛的应用。多年来,许多研究人员使用反向传播算法来训练基于神经网络的系统,而没有强调如何微调算法的参数。本文揭示了研究人员如何对反向传播算法的参数进行操作和实验,以达到最佳的学习性能。本文给出了对反向传播算法参数进行微调的实验室实验结果。将参数微调过程应用于基于神经网络的专家系统原型。原型旨在分析和设计基于员工视角的定制化激励策略。对反向传播算法的学习速率、动量速率和激活函数等参数进行了实验室实验。学习表现被测量和记录。同时,还测量了激活函数对最终输出的影响。在此基础上,选择能提供最佳学习性能的上述参数值进行全尺寸系统实施。
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