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Robust estimation for radial basis functions

机译:径向基函数的稳健估计

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This paper presents a new learning algorithm for radial basis functions (RBF) neural network, based on robust statistics. The extention of the learning vector quantizer for second order statistics is one of the classical approaches in estimating the parameters of a RBF model. The paper provides a comparative study for these two algorithms regarding their application in probability density function estimation. The theoretical bias in estimating one-dimensional Gaussian functions are derived. The efficiency of the algorithm is shown in modelling two-dimensional functions.
机译:本文介绍了一种新的径向基函数(RBF)神经网络的新学习算法,基于鲁棒统计。用于二阶统计的学习矢量量化器的扩展是估计RBF模型参数的经典方法之一。本文为这两种算法提供了关于它们在概率密度函数估计中的应用的比较研究。衍生一维高斯函数的理论偏差是估计的估计。算法的效率显示在模型二维功能中。

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