Bayesian Filtering for ODEs with Bounded Derivatives
Recently there has been increasing interest in probabilistic solvers for ordinary differential equations (ODEs) that return full probability measures, instead of point estimates, over the solution and can incorporate uncertainty over the ODE at hand, e.g. if the vector field or the initial value is...
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Zusammenfassung: | Recently there has been increasing interest in probabilistic solvers for
ordinary differential equations (ODEs) that return full probability measures,
instead of point estimates, over the solution and can incorporate uncertainty
over the ODE at hand, e.g. if the vector field or the initial value is only
approximately known or evaluable. The ODE filter proposed in recent work models
the solution of the ODE by a Gauss-Markov process which serves as a prior in
the sense of Bayesian statistics. While previous work employed a Wiener process
prior on the (possibly multiple times) differentiated solution of the ODE and
established equivalence of the corresponding solver with classical numerical
methods, this paper raises the question whether other priors also yield
practically useful solvers. To this end, we discuss a range of possible priors
which enable fast filtering and propose a new prior--the Integrated Ornstein
Uhlenbeck Process (IOUP)--that complements the existing Integrated Wiener
process (IWP) filter by encoding the property that a derivative in time of the
solution is bounded in the sense that it tends to drift back to zero. We
provide experiments comparing IWP and IOUP filters which support the belief
that IWP approximates better divergent ODE's solutions whereas IOUP is a better
prior for trajectories with bounded derivatives. |
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DOI: | 10.48550/arxiv.1709.08471 |