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Artificial neurons Basis functions

The solution of the exact interpolating RBF mapping passes through every data point (x , y ). In the presence of noise, the exact solution of the interpolation problem is typically a function oscillating between the given data points. An additional problem with the exact interpolation procedure is that the number of basis functions is equal to the number of data points, so calculating the inverse of the N x N matrix becomes intractable in practice. The interpretation of the RBF method as an artificial neural network consists of three layers a layer of input neurons feeding the feature vectors into the network a hidden layer of RBF... [Pg.425]

The ANNs were developed in an attempt to imitate, mathematically, the characteristics of the biological neurons. They are composed by intercoimected artificial neurons responsible for the processing of input-output relationships, these relationships are learned by training the ANN with a set of irqmt-output patterns. The ANNs can be used for different proposes approximation of functions and classification are examples of such applications. The most common types of ANNs used for classification are the feedforward neural networks (FNNs) and the radial basis function (RBF) networks. Probabilistic neural networks (PNNs) are a kind of RBFs that uses a Bayesian decision strategy (Dehghani et al., 2006). [Pg.166]


See other pages where Artificial neurons Basis functions is mentioned: [Pg.325]    [Pg.47]    [Pg.218]    [Pg.343]    [Pg.84]    [Pg.123]    [Pg.119]    [Pg.98]    [Pg.1281]   
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