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dynoNet: A neural network architecture for learning dynamical systems

机译:Dynonet:用于学习动态系统的神经网络架构

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This article introduces a network architecture, called dynoNet, utilizing linear dynamical operators as elementary building blocks. Owing to the dynamical nature of these blocks, dynoNet networks are tailored for sequence modeling and system identification purposes. The back-propagation behavior of the linear dynamical operator with respect to both its parameters and its input sequence is defined. This enables end-to-end training of structured networks containing linear dynamical operators and other differentiable units, exploiting existing deep learning software. Examples show the effectiveness of the proposed approach on well-known system identification benchmarks.
机译:本文介绍了一个被称为Dynonet的网络架构,利用线性动态运算符作为基本构建块。 由于这些块的动态性,DynOnet网络被定制为序列建模和系统识别目的。 线性动态算子关于其参数和其输入序列的反向传播行为是定义的。 这使得具有线性动态运算符和其他可分辨率单元的结构化网络的端到端培训,利用现有的深度学习软件。 示例显示了所提出的方法在众所周知的系统识别基准上的有效性。

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