Kernel Operator-Theoretic Bayesian Filter for Nonlinear Dynamical Systems
Kan Li, Jos\'e C. Pr\'incipe

TL;DR
This paper introduces a kernel operator-theoretic Bayesian filter leveraging RKHS to model nonlinear dynamical systems, enabling real-time, adaptive tracking with high accuracy and efficiency.
Contribution
It proposes a novel functional Bayesian filtering approach in RKHS for nonlinear systems, combining kernel methods with Bayesian filtering for improved real-time modeling.
Findings
Accurate approximation with small-dimensional kernels.
Outperforms finite-dimensional Koopman decomposition.
Effective for real-time streaming data applications.
Abstract
Motivated by the surge of interest in Koopman operator theory, we propose a machine-learning alternative based on a functional Bayesian perspective for operator-theoretic modeling of unknown, data-driven, nonlinear dynamical systems. This formulation is directly done in an infinite-dimensional space of linear operators or Hilbert space with universal approximation property. The theory of reproducing kernel Hilbert space (RKHS) allows the lifting of nonlinear dynamics to a potentially infinite-dimensional space via linear embeddings, where a general nonlinear function is represented as a set of linear functions or operators in the functional space. This allows us to apply classical linear Bayesian methods such as the Kalman filter directly in the Hilbert space, yielding nonlinear solutions in the original input space. This kernel perspective on the Koopman operator offers two compelling…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks
MethodsSparse Evolutionary Training
