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Deep Representation Learning for Dynamical Systems Modeling

2020-02-10Unverified0· sign in to hype

Anna Shalova, Ivan Oseledets

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Abstract

Proper states' representations are the key to the successful dynamics modeling of chaotic systems. Inspired by recent advances of deep representations in various areas such as natural language processing and computer vision, we propose the adaptation of the state-of-art Transformer model in application to the dynamical systems modeling. The model demonstrates promising results in trajectories generation as well as in the general attractors' characteristics approximation, including states' distribution and Lyapunov exponent.

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