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Time-series forecasting using GA-tuned radial basis functions

机译:使用GA调整的径向基函数进行时间序列预测

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In this paper we provide a nonlinear auto-regressive (NAR) time-series model for forecasting applications. The nonlinearity is introduced by using radial basis functions. RBF networks are widely used in time-series analysis. Three main parameter sets are involved in RBF learning process. They are the centers and widths of the radial functions, and their weights. Although the selection of the RBF centers and widths is important, most reported research has dealt only with the problem of weight optimization by making assumptions about the centers and widths. Therefore, there is no guarantee for finding the global optimum with respect to all sets of parameters. In this paper we use genetic algorithms (GAs) to simultaneously optimize all of the RBF parameters so that an effective time-series is designed and used for forecasting. An example is presented with promising results. (C) 2001 Published by Elsevier Science Inc. [References: 10]
机译:在本文中,我们为预测应用提供了非线性自回归(NAR)时间序列模型。通过使用径向基函数来引入非线性。 RBF网络广泛用于时间序列分析。 RBF学习过程涉及三个主要参数集。它们是径向函数的中心和宽度及其权重。尽管选择RBF中心和宽度很重要,但是大多数报告的研究仅通过对中心和宽度进行假设来解决权重优化问题。因此,不能保证找到关于所有参数集的全局最优值。在本文中,我们使用遗传算法(GA)同时优化所有RBF参数,以便设计有效的时间序列并将其用于预测。给出了一个有希望的结果的例子。 (C)2001年由Elsevier Science Inc.出版。[参考:10]

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