Weights direct determination of a spline neural network

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School of Information Science and Technology, Sun Yat-Sen Univ., Guangzhou 510275, China [1 ]
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Interpolation - Iterative methods - Backpropagation - Splines;
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Based on spline approximation theory and neural networks, a spline neural network is constructed, where the hidden-layer neurons are activated by a group of spline functions. Based on the standard error back-propagation (BP) method, the neural-weights updating formula is derived. More importantly, a pseudo-inverse based method is then proposed, which could directly determine the network weights without iterative training. Computer simulation results show that the one-step weights-determination method could be more effective than the standard BP iterative-training method.
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