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Wavelet neural network based on sampling theory for non uniform noisy data

机译:基于采样理论的非统一噪声数据的小波神经网络

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Training wavelet neural network based on sampling theory has been shown to have global convergence and avoid overfitting. In this paper we improve this approach for constructing and training the wavelet network using non uniform and noisy data. We first propose a method to find the appropriate feedback matrix for training the wavelet network. Then we use early stopping and wavelet thresholding to optimize the wavelet network structure and overcome the overfitting problem. Performance of the proposed method has been tested on one and two-dimensional functions. The presented results demonstrate the effectiveness of the proposed methods to decrease the generalization error in training non uniform and noisy data and also the reduction of the complexity of the wavelet network.
机译:基于采样理论的培训小波神经网络已经显示出全球收敛,避免过度装备。在本文中,我们使用非统一和嘈杂的数据改进了构造和训练小波网络的方法。我们首先提出了一种方法来找到用于训练小波网络的适当反馈矩阵。然后,我们使用早期停止和小波阈值,以优化小波网络结构并克服过度拟合问题。在一个和二维功能上测试了所提出的方法的性能。所提出的结果证明了所提出的方法减少训练非统一和嘈杂数据中的泛化误差的有效性以及小波网络的复杂性的降低。

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