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Gradient methods for the optimization of dynamical systems containing neural networks

机译:包含神经网络的动力学系统优化的梯度方法

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摘要

An extension of the backpropagation method, termed dynamic backpropagation, which can be applied in a straightforward manner for the optimization of the weights (parameters) of multilayer neural networks is discussed. The method is based on the fact that gradient methods used in linear dynamical systems can be combined with backpropagation methods for neural networks to obtain the gradient of a performance index of nonlinear dynamical systems. The method can be applied to any complex system which can be expressed as the interconnection of linear dynamical systems and multilayer neural networks. To facilitate the practical implementation of the proposed method, emphasis is placed on the diagrammatic representation of the system which generates the gradient of the performance function.
机译:讨论了反向传播方法的扩展,称为动态反向传播,该方法可以以直接方式应用于多层神经网络的权重(参数)的优化。该方法基于以下事实:线性动力学系统中使用的梯度方法可以与神经网络的反向传播方法结合使用,以获得非线性动力学系统性能指标的梯度。该方法可以应用于可以表示为线性动力学系统和多层神经网络的互连的任何复杂系统。为了促进所提出方法的实际实施,重点放在生成性能函数梯度的系统的图形表示上。

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