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Dynamics of On-Line Learning in Radial Basis Function Neural Networks

机译:径向基函数神经网络的在线学习动力学

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We present a method for analyzing the behavior of RBFs in an on-line scenario which provides a description of the learning dynamics without involing the thermodynamic limit. Our analysis is based on a master equation that describes the dynamics of the weight space probability density for any value of the input space dimension. Because the transition probability appearing in the master equation cannot be written in closed form, some approximate form of the dynamics is developed. We assume a arbitrary small learning rate (small noise) and we derive in this limit the dynamic evolution of the means and the variances of the net weights. The analytic results are then confirmed by simulations.
机译:我们提出了一种在在线情况下分析RBF行为的方法,该方法在不涉及热力学极限的情况下提供了学习动力学的描述。我们的分析基于一个主方程,该主方程描述了输入空间维度的任何值的权空间概率密度的动态。由于主方程式中出现的跃迁概率不能用封闭形式表示,因此可以得出动力学的某种近似形式。我们假设任意小的学习率(小噪声),并且在此限制中得出均值的动态演变和净权重的方差。然后通过仿真确认分析结果。

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