Heat kernel and intrinsic Gaussian processes on manifolds

06/25/2020
by   Ke Ye, et al.
0

There is an increasing interest in the problem of nonparametric regression like Gaussian processes with predictors locating on manifold. Some recent researches developed intrinsic Gaussian processes by using the transition density of the Brownian motion on submanifolds of ℝ^2 and ℝ^3 to approximate the heat kernels. However, when the dimension of a manifold is bigger than two, the existing method struggled to get good estimation of the heat kernel. In this work, we propose an intrinsic approach of constructing the Gaussian process on more general manifolds red in the matrix Lie groups such as orthogonal groups, unitary groups, Stiefel manifolds and Grassmannian manifolds. The heat kernel is estimated by simulating Brownian motion sample paths via the exponential map, which does not depend on the embedding of the manifold. To be more precise, this intrinsic method has the following features: (i) it is effective for high dimensional manifolds; (ii) it is applicable to arbitrary manifolds; (iii) it does not require the global parametrisation or embedding which may introduce redundant parameters; (iv) results obtained by this method do not depend on the ambient space of the manifold. Based on this method, we propose the ball algorithm for arbitrary manifolds and the strip algorithm for manifolds with extra symmetries, which is both theoretically proven and numerically tested to be much more efficient than the ball algorithm. A regression example on the projective space of dimension eight is given in this work, which demonstrates that our intrinsic method for Gaussian process is practically effective in great generality.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/16/2023

Intrinsic Gaussian Process on Unknown Manifolds with Probabilistic Metrics

This article presents a novel approach to construct Intrinsic Gaussian P...
research
03/13/2023

Gaussian Process on the Product of Directional Manifolds

We present a principled study on establishing Gaussian processes over va...
research
01/03/2018

Intrinsic Gaussian processes on complex constrained domains

We propose a class of intrinsic Gaussian processes (in-GPs) for interpol...
research
01/29/2023

Intrinsic Bayesian Optimisation on Complex Constrained Domain

Motivated by the success of Bayesian optimisation algorithms in the Eucl...
research
12/11/2019

Diffusion based Gaussian process regression via heat kernel reconstruction

We propose an algorithm for Gaussian Process regression on an unknown em...
research
10/30/2021

Geometry-Aware Hierarchical Bayesian Learning on Manifolds

Bayesian learning with Gaussian processes demonstrates encouraging regre...
research
09/19/2023

Posterior Contraction Rates for Matérn Gaussian Processes on Riemannian Manifolds

Gaussian processes are used in many machine learning applications that r...

Please sign up or login with your details

Forgot password? Click here to reset