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An exact kernel framework for spatio-temporal dynamics

Statistics Theory 2020-11-16 v1 Machine Learning Statistics Theory

Abstract

A kernel-based framework for spatio-temporal data analysis is introduced that applies in situations when the underlying system dynamics are governed by a dynamic equation. The key ingredient is a representer theorem that involves time-dependent kernels. Such kernels occur commonly in the expansion of solutions of partial differential equations. The representer theorem is applied to find among all solutions of a dynamic equation the one that minimizes the error with given spatio-temporal samples. This is motivated by the fact that very often a differential equation is given a priori (e.g.~by the laws of physics) and a practitioner seeks the best solution that is compatible with her noisy measurements. Our guiding example is the Fokker-Planck equation, which describes the evolution of density in stochastic diffusion processes. A regression and density estimation framework is introduced for spatio-temporal modeling under Fokker-Planck dynamics with initial and boundary conditions.

Keywords

Cite

@article{arxiv.2011.06848,
  title  = {An exact kernel framework for spatio-temporal dynamics},
  author = {Oleg Szehr and Dario Azzimonti and Laura Azzimonti},
  journal= {arXiv preprint arXiv:2011.06848},
  year   = {2020}
}