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Training Deep Fourier Neural Networks to Fit Time-Series Data

机译:培训深度傅立叶神经网络,以适应时间序列数据

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We present a method for training a deep neural network containing sinusoidal activation functions to fit to time-series data. Weights are initialized using a fast Fourier transform, then trained with regularization to improve generalization. A simple dynamic parameter tuning method is employed to adjust both the learning rate and regularization term, such that stability and efficient training are both achieved. We show how deeper layers can be utilized to model the observed sequence using a sparser set of sinusoid units, and how nonuniform regularization can improve generalization by promoting the shifting of weight toward simpler units. The method is demonstrated with time-series problems to show that it leads to effective extrapolation of nonlinear trends.
机译:我们提出了一种培训包含正弦激活功能的深神经网络的方法,以适应时间序列数据。使用快速傅里叶变换初始化权重,然后用正则化培训以提高泛化。采用简单的动态参数调谐方法来调整学习率和正则化术语,使得稳定性和有效的培训都取得了实现。我们展示了更深层面可以使用稀疏形状单元模拟观察到的序列,以及如何通过促进重量朝向更简单的单元的换档来改善泛化。该方法用时间序列问题进行了说明,表明它导致非线性趋势的有效推断。

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