dynoNet: a neural network architecture for learning dynamical systems

3 Jun 2020Marco ForgioneDario Piga

This paper 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... (read more)

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