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به نام خدا هوالعليم

Radial Basis Function Neural Networks شبکه های عصبی RBF E. Rashedi KGUT, Kerman, Iran

RBF Network

RBF Network RBF network consist of 3 layer feed forward structure consisting of an input layer, single hidden layer with locally tuned hidden units and an output layer as a linear combiner.

RBF neural networks RBF = radial basis function Example: Gaussian RBF yout

شبکه RBF دو نوع دارد PNN يا Probabilitic NN GRNN يا Generalized Regression NN برای تقريب است.

RBF NN is More Suitable for Probabilistic Pattern Classification Hyperplane Kernel function MLP RBF The probability density function (also called conditional density function or likelihood) of the k-th class is defined as