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Pruning algorithm in wavelet neural network for ECG signal classification

机译:小波神经网络的修剪算法进行ECG信号分类

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Wavelet neural networks have been widely studied in recent years, because they combine the adaptability of neural networks with the strong feature extracting ability of wavelet transforms. Because of the inevitable oscillatory behavior in wavelet functions, wavelet neural networks are susceptible to trap into local minima when using gradient descent training algorithms. In this paper, a pruning algorithm is introduced into wavelet neural networks for combating the problem of the gradient-descent algorithm, and its merits are analyzed. Good performance is obtained in experiments on ECG signal classification using the pruning algorithm.
机译:近年来小波神经网络已被广泛研究,因为它们将神经网络的适应性与小波变换的强特征提取能力结合起来。由于小波函数中不可避免的振荡行为,当使用梯度下降训练算法时,小波神经网络易于陷入局部最小值。在本文中,将修剪算法引入小波神经网络中,用于打击梯度 - 下降算法的问题,分析其优点。使用修剪算法在ECG信号分类的实验中获得了良好的性能。

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