2022
DOI: 10.48550/arxiv.2210.05955
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Identifiability and Asymptotics in Learning Homogeneous Linear ODE Systems from Discrete Observations

Abstract: Ordinary Differential Equations (ODEs) have recently gained a lot of attention in machine learning. However, the theoretical aspects, e.g., identifiability and asymptotic properties of statistical estimation are still obscure. This paper derives a sufficient condition for the identifiability of homogeneous linear ODE systems from a sequence of equally-spaced error-free observations sampled from a single trajectory. When observations are disturbed by measurement noise, we prove that under mild conditions, the p… Show more

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