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Polynomial kernel function and its application in locally polynomial neurofuzzy models

机译:多项式核函数及其在局部多项式神经模糊模型中的应用

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Polynomials are one of the most powerful functions that have been used in many fields of mathematics such as curve fitting and regression. Low order polynomials are desired for their smoothness, good local approximation and interpolation. Being smooth, they can be used to locally approximate almost any derivable function. This means that when linear functions fail in approximation (e.g. where the first order Taylor expansion equals zero) polynomial functions can be used in local approximation, such that one can achieve better estimations at extremums. In this paper, application of polynomial kernel functions in locally linear neurofuzzy models is shown. Using polynomial kernels in local models, better local approximations in prediction of chaotic time series such as Mackey-Glass is achieved, and the capability of the neurofuzzy network is enhanced.
机译:多项式是许多数学领域(例如曲线拟合和回归)中使用的最强大的函数之一。低阶多项式因其平滑性,良好的局部逼近和内插而很理想。由于平滑,它们可用于局部近似几乎所有可导函数。这意味着当线性函数无法逼近时(例如一阶泰勒展开等于零),多项式函数可用于局部逼近,这样一个人就可以在极值处获得更好的估计。本文展示了多项式核函数在局部线性神经模糊模型中的应用。在局部模型中使用多项式内核,可以更好地预测诸如Mackey-Glass之类的混沌时间序列,并增强了神经模糊网络的功能。

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