Geometric constraints improve inference of sparsely observed stochastic
dynamics
- URL: http://arxiv.org/abs/2304.00423v2
- Date: Tue, 4 Apr 2023 13:40:33 GMT
- Title: Geometric constraints improve inference of sparsely observed stochastic
dynamics
- Authors: Dimitra Maoutsa
- Abstract summary: We introduce a novel approach to accurately inferring systems from sparse-in-time observations.
We propose a path augmentation scheme that employs data-driven control to account for the geometry of the invariant system's density.
Non-parametric inference on the augmented paths, enables efficient identification of the underlying deterministic forces of systems observed at low sampling rates.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The dynamics of systems of many degrees of freedom evolving on multiple
scales are often modeled in terms of stochastic differential equations. Usually
the structural form of these equations is unknown and the only manifestation of
the system's dynamics are observations at discrete points in time. Despite
their widespread use, accurately inferring these systems from sparse-in-time
observations remains challenging. Conventional inference methods either focus
on the temporal structure of observations, neglecting the geometry of the
system's invariant density, or use geometric approximations of the invariant
density, which are limited to conservative driving forces. To address these
limitations, here, we introduce a novel approach that reconciles these two
perspectives. We propose a path augmentation scheme that employs data-driven
control to account for the geometry of the invariant system's density.
Non-parametric inference on the augmented paths, enables efficient
identification of the underlying deterministic forces of systems observed at
low sampling rates.
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