Kernel Packet: An Exact and Scalable Algorithm for Gaussian Process Regression with Matérn Correlations

03/07/2022
by   Haoyuan Chen, et al.
0

We develop an exact and scalable algorithm for one-dimensional Gaussian process regression with Matérn correlations whose smoothness parameter ν is a half-integer. The proposed algorithm only requires 𝒪(ν^3 n) operations and 𝒪(ν n) storage. This leads to a linear-cost solver since ν is chosen to be fixed and usually very small in most applications. The proposed method can be applied to multi-dimensional problems if a full grid or a sparse grid design is used. The proposed method is based on a novel theory for Matérn correlation functions. We find that a suitable rearrangement of these correlation functions can produce a compactly supported function, called a "kernel packet". Using a set of kernel packets as basis functions leads to a sparse representation of the covariance matrix that results in the proposed algorithm. Simulation studies show that the proposed algorithm, when applicable, is significantly superior to the existing alternatives in both the computational time and predictive accuracy.

READ FULL TEXT
research
06/15/2020

Sparse Gaussian Process Based On Hat Basis Functions

Gaussian process is one of the most popular non-parametric Bayesian meth...
research
04/01/2020

Projection Pursuit Gaussian Process Regression

A primary goal of computer experiments is to reconstruct the function gi...
research
11/30/2021

On the optimization of hyperparameters in Gaussian process regression with the help of low-order high-dimensional model representation

When the data are sparse, optimization of hyperparameters of the kernel ...
research
02/25/2022

Convergence of sparse grid Gaussian convolution approximation for multi-dimensional periodic function

We consider the problem of approximating [0,1]^d-periodic functions by c...
research
03/09/2018

Standing Wave Decomposition Gaussian Process

We propose a Standing Wave Decomposition (SWD) approximation to Gaussian...

Please sign up or login with your details

Forgot password? Click here to reset