Hierarchical Inducing Point Gaussian Process for Inter-domain Observations

02/28/2021
by   Luhuan Wu, et al.
2

We examine the general problem of inter-domain Gaussian Processes (GPs): problems where the GP realization and the noisy observations of that realization lie on different domains. When the mapping between those domains is linear, such as integration or differentiation, inference is still closed form. However, many of the scaling and approximation techniques that our community has developed do not apply to this setting. In this work, we introduce the hierarchical inducing point GP (HIP-GP), a scalable inter-domain GP inference method that enables us to improve the approximation accuracy by increasing the number of inducing points to the millions. HIP-GP, which relies on inducing points with grid structure and a stationary kernel assumption, is suitable for low-dimensional problems. In developing HIP-GP, we introduce (1) a fast whitening strategy, and (2) a novel preconditioner for conjugate gradients which can be helpful in general GP settings.

READ FULL TEXT

page 8

page 15

page 16

research
03/03/2015

Kernel Interpolation for Scalable Structured Gaussian Processes (KISS-GP)

We introduce a new structured kernel interpolation (SKI) framework, whic...
research
07/05/2018

Scalable Gaussian Processes with Grid-Structured Eigenfunctions (GP-GRIEF)

We introduce a kernel approximation strategy that enables computation of...
research
11/05/2015

Thoughts on Massively Scalable Gaussian Processes

We introduce a framework and early results for massively scalable Gaussi...
research
01/28/2021

Faster Kernel Interpolation for Gaussian Processes

A key challenge in scaling Gaussian Process (GP) regression to massive d...
research
03/05/2020

SLEIPNIR: Deterministic and Provably Accurate Feature Expansion for Gaussian Process Regression with Derivatives

Gaussian processes are an important regression tool with excellent analy...
research
05/02/2018

Toward a diagnostic toolkit for linear models with Gaussian-process distributed random effects

Gaussian processes (GPs) are widely used as distributions of random effe...
research
02/18/2018

Efficient Gaussian Process Classification Using Polya-Gamma Data Augmentation

We propose an efficient stochastic variational approach to GP classifica...

Please sign up or login with your details

Forgot password? Click here to reset