Volterra Kernel Constructive Extreme Learning Machine Based on Genetic Algorithms for Time Series Prediction

Wenjuan Mei, Zhen Liu, Yuhua Cheng
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Abstract

Time series prediction has become a heavily researched topic in the past several decades because of its broad application scenarios. Although many prediction algorithms have been proposed, few methods are available to generate an optimal prediction model. In this paper, we proposed a novel algorithm based on the Volterra series model and Constructive Selection for Extreme Learning Machine (CS-ELM) to build an effective model for time series prediction. More specifically, we employ genetic algorithms (GAs) to optimize the hidden layer formed by CS-ELM for greater accuracy. The experimental results for several real-world applications show that the proposed algorithm produces better accuracy and generates more effective prediction models than CS-ELM and other classic neural networks (NNs) methods.
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基于遗传算法的Volterra核构造极值学习机用于时间序列预测
时间序列预测由于其广泛的应用场景,在过去的几十年里成为一个被大量研究的课题。虽然已经提出了许多预测算法,但很少有方法可以生成最优的预测模型。在本文中,我们提出了一种基于Volterra序列模型和极限学习机建设性选择(CS-ELM)的新算法来构建有效的时间序列预测模型。更具体地说,我们使用遗传算法(GAs)来优化CS-ELM形成的隐藏层,以获得更高的精度。实际应用的实验结果表明,与CS-ELM和其他经典神经网络方法相比,该算法具有更好的预测精度和更有效的预测模型。
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