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Successive-least-squares error algorithm on minimum description length neural networks for time series prediction

机译:基于最小描述长度神经网络的连续最小二乘误差算法进行时间序列预测

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A successive least-squares approach is proposed to find an optimal model of a flat neural network in a short period of time. It is based on a minimum description length (MDL) neural network that uses the MDL principle as the stopping criterion. Different from conventional algorithms on flat neural networks that apply least-squares technique on weights between hidden layer and output layer only, it extends the least-squares technique to weights between the input layer and the hidden layer. We apply this algorithm to the chaotic Mackey-Glass time series and chaotic laser time series. The results show that it provides satisfactory prediction within a small amount of time.
机译:提出了一种连续最小二乘法来在短时间内找到平面神经网络的最优模型。它基于最小描述长度(MDL)神经网络,该神经网络使用MDL原理作为停止标准。与传统的平面神经网络算法不同,它仅对隐藏层和输出层之间的权重应用了最小二乘技术,而是将最小二乘技术扩展到了输入层和隐藏层之间的权重。我们将该算法应用于混沌Mackey-Glass时间序列和混沌激光时间序列。结果表明,它可以在短时间内提供令人满意的预测。

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