Genetically optimized extreme learning machine

Tiago Matias, R. Araújo, C. H. Antunes, D. Gabriel
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引用次数: 13

Abstract

This paper proposes a learning algorithm for single-hidden layer feedforward neural networks (SLFN) called genetically optimized extreme learning machine (GO-ELM). In the GO-ELM, the structure and the parameters of the SLFN are optimized by a genetic algorithm (GA). The output weights, like in the batch ELM, are obtained by a least squares algorithm, but using Tikhonov's regularization in order to improve the SLFN performance in the presence of noisy data. The GA is used to tune the set of input variables, the hidden-layer configuration and bias, the input weights and the Tikhonov's regularization factor. The proposed method was applied and compared with four other methods over five benchmark problems available in a public repository. Besides it was applied in the estimation of the temperature at the burning zone of a real cement kiln plant.
基因优化的极限学习机
本文提出了一种用于单隐层前馈神经网络(SLFN)的学习算法,称为遗传优化极限学习机(GO-ELM)。在GO-ELM中,采用遗传算法对SLFN的结构和参数进行了优化。与批处理ELM中一样,输出权值由最小二乘算法获得,但为了提高SLFN在存在噪声数据时的性能,使用了Tikhonov正则化算法。遗传算法用于调整输入变量集、隐藏层配置和偏置、输入权重和Tikhonov正则化因子。将该方法应用于公共存储库中的五个基准问题,并与其他四种方法进行了比较。并将其应用于实际水泥窑厂燃烧区温度的估算。
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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