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Prediction of chaotic systems with multidimensional recurrent least squares support vector machines

机译:多维递归最小二乘支持向量机的混沌系统预测

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摘要

In this paper, we propose a multidimensional version of recurrent least squares support vector machines (MDRLS-SVM) to solve the problem about the prediction of chaotic system. To acquire better prediction performance, the high-dimensional space, which provides more information on the system than the scalar time series, is first reconstructed utilizing Takens's embedding theorem. Then the MDRLS-SVM instead of traditional RLS-SVM is used in the high-dimensional space, and the prediction performance can be improved from the point of view of reconstructed embedding phase space. In addition, the MDRLS-SVM algorithm is analysed in the context of noise, and we also find that the MDRLS-SVM has lower sensitivity to noise than the RLS-SVM.
机译:在本文中,我们提出了多维最小二乘支持向量机(MDRLS-SVM),以解决有关混沌系统预测的问题。为了获得更好的预测性能,首先利用Takens的嵌入定理来重构高维空间,该高维空间提供了比标量时间序列更多的系统信息。然后在高维空间中使用MDRLS-SVM代替传统的RLS-SVM,从重构的嵌入相空间的角度出发,可以提高预测性能。此外,在噪声的背景下分析了MDRLS-SVM算法,并且我们还发现MDRLS-SVM对噪声的敏感性低于RLS-SVM。

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