Decomposition of Gaussian processes, and factorization of positive definite kernels

We establish a duality for two factorization questions, one for general positive definite (p.d.) kernels \(K\), and the other for Gaussian processes, say \(V\). The latter notion, for Gaussian processes is stated via Ito-integration. Our approach to factorization for p.d. kernels is intuitively moti...

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Main Authors: Palle Jorgensen, Feng Tian
Format: Article
Language:English
Published: AGH Univeristy of Science and Technology Press 2019-01-01
Series:Opuscula Mathematica
Subjects:
Online Access:https://www.opuscula.agh.edu.pl/vol39/4/art/opuscula_math_3930.pdf
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spelling doaj-8bbfeaaf90844aeda2bf168447983adc2020-11-25T00:33:31ZengAGH Univeristy of Science and Technology PressOpuscula Mathematica1232-92742019-01-01394497541https://doi.org/10.7494/OpMath.2019.39.4.4973930Decomposition of Gaussian processes, and factorization of positive definite kernelsPalle Jorgensen0https://orcid.org/0000-0003-2681-5753Feng Tian1https://orcid.org/0000-0003-4996-1227The University of Iowa, Department of Mathematics, Iowa City, IA 52242-1419, USAHampton University, Department of Mathematics, Hampton, VA 23668, USAWe establish a duality for two factorization questions, one for general positive definite (p.d.) kernels \(K\), and the other for Gaussian processes, say \(V\). The latter notion, for Gaussian processes is stated via Ito-integration. Our approach to factorization for p.d. kernels is intuitively motivated by matrix factorizations, but in infinite dimensions, subtle measure theoretic issues must be addressed. Consider a given p.d. kernel \(K\), presented as a covariance kernel for a Gaussian process \(V\). We then give an explicit duality for these two seemingly different notions of factorization, for p.d. kernel \(K\), vs for Gaussian process \(V\). Our result is in the form of an explicit correspondence. It states that the analytic data which determine the variety of factorizations for \(K\) is the exact same as that which yield factorizations for \(V\). Examples and applications are included: point-processes, sampling schemes, constructive discretization, graph-Laplacians, and boundary-value problems.https://www.opuscula.agh.edu.pl/vol39/4/art/opuscula_math_3930.pdfreproducing kernel hilbert spaceframesgeneralized ito-integrationthe measurable categoryanalysis/synthesisinterpolationgaussian free fieldsnon-uniform samplingoptimizationtransformcovariancefeature space
collection DOAJ
language English
format Article
sources DOAJ
author Palle Jorgensen
Feng Tian
spellingShingle Palle Jorgensen
Feng Tian
Decomposition of Gaussian processes, and factorization of positive definite kernels
Opuscula Mathematica
reproducing kernel hilbert space
frames
generalized ito-integration
the measurable category
analysis/synthesis
interpolation
gaussian free fields
non-uniform sampling
optimization
transform
covariance
feature space
author_facet Palle Jorgensen
Feng Tian
author_sort Palle Jorgensen
title Decomposition of Gaussian processes, and factorization of positive definite kernels
title_short Decomposition of Gaussian processes, and factorization of positive definite kernels
title_full Decomposition of Gaussian processes, and factorization of positive definite kernels
title_fullStr Decomposition of Gaussian processes, and factorization of positive definite kernels
title_full_unstemmed Decomposition of Gaussian processes, and factorization of positive definite kernels
title_sort decomposition of gaussian processes, and factorization of positive definite kernels
publisher AGH Univeristy of Science and Technology Press
series Opuscula Mathematica
issn 1232-9274
publishDate 2019-01-01
description We establish a duality for two factorization questions, one for general positive definite (p.d.) kernels \(K\), and the other for Gaussian processes, say \(V\). The latter notion, for Gaussian processes is stated via Ito-integration. Our approach to factorization for p.d. kernels is intuitively motivated by matrix factorizations, but in infinite dimensions, subtle measure theoretic issues must be addressed. Consider a given p.d. kernel \(K\), presented as a covariance kernel for a Gaussian process \(V\). We then give an explicit duality for these two seemingly different notions of factorization, for p.d. kernel \(K\), vs for Gaussian process \(V\). Our result is in the form of an explicit correspondence. It states that the analytic data which determine the variety of factorizations for \(K\) is the exact same as that which yield factorizations for \(V\). Examples and applications are included: point-processes, sampling schemes, constructive discretization, graph-Laplacians, and boundary-value problems.
topic reproducing kernel hilbert space
frames
generalized ito-integration
the measurable category
analysis/synthesis
interpolation
gaussian free fields
non-uniform sampling
optimization
transform
covariance
feature space
url https://www.opuscula.agh.edu.pl/vol39/4/art/opuscula_math_3930.pdf
work_keys_str_mv AT pallejorgensen decompositionofgaussianprocessesandfactorizationofpositivedefinitekernels
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