Exact Inference for Continuous-Time Gaussian Process Dynamics
Katharina Ensinger, Nicholas Tagliapietra, Sebastian Ziesche,, Sebastian Trimpe

TL;DR
This paper develops an exact Gaussian process inference method for continuous-time dynamical systems, enabling more accurate modeling from discrete measurements without resorting to approximations.
Contribution
It introduces a novel inference scheme leveraging multistep and Taylor integrators for exact Gaussian process inference in continuous-time dynamics.
Findings
Accurately models continuous-time systems from discrete data.
Provides a flexible inference framework for higher-order integrators.
Demonstrates improved accuracy over approximate methods.
Abstract
Physical systems can often be described via a continuous-time dynamical system. In practice, the true system is often unknown and has to be learned from measurement data. Since data is typically collected in discrete time, e.g. by sensors, most methods in Gaussian process (GP) dynamics model learning are trained on one-step ahead predictions. This can become problematic in several scenarios, e.g. if measurements are provided at irregularly-sampled time steps or physical system properties have to be conserved. Thus, we aim for a GP model of the true continuous-time dynamics. Higher-order numerical integrators provide the necessary tools to address this problem by discretizing the dynamics function with arbitrary accuracy. Many higher-order integrators require dynamics evaluations at intermediate time steps making exact GP inference intractable. In previous work, this problem is often…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Advanced Control Systems Optimization · Fault Detection and Control Systems
MethodsGaussian Process
