Optimal recovery and uncertainty quantification for distributed Gaussian process regression

05/06/2022
by   Amine Hadji, et al.
0

Gaussian Processes (GP) are widely used for probabilistic modeling and inference for nonparametric regression. However, their computational complexity scales cubicly with the sample size rendering them unfeasible for large data sets. To speed up the computations various distributed methods were proposed in the literature. These methods have, however, limited theoretical underpinning. In our work we derive frequentist theoretical guarantees and limitations for a range of distributed methods for general GP priors in context of the nonparametric regression model, both for recovery and uncertainty quantification. As specific examples we consider covariance kernels both with polynomially and exponentially decaying eigenvalues. We demonstrate the practical performance of the investigated approaches in a numerical study using synthetic data sets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/27/2022

Uncertainty Quantification for nonparametric regression using Empirical Bayesian neural networks

We propose a new, two-step empirical Bayes-type of approach for neural n...
research
02/01/2023

Hierarchical shrinkage Gaussian processes: applications to computer code emulation and dynamical system recovery

In many areas of science and engineering, computer simulations are widel...
research
03/29/2021

Gaussian Process for Tomography

Tomographic reconstruction, despite its revolutionary impact on a wide r...
research
11/05/2019

Scalable Variational Gaussian Processes for Crowdsourcing: Glitch Detection in LIGO

In the last years, crowdsourcing is transforming the way classification ...
research
11/08/2017

An asymptotic analysis of distributed nonparametric methods

We investigate and compare the fundamental performance of several distri...
research
05/26/2020

GP-ETAS: Semiparametric Bayesian inference for the spatio-temporal Epidemic Type Aftershock Sequence model

The spatio-temporal Epidemic Type Aftershock Sequence (ETAS) model is wi...
research
04/02/2019

Can we trust Bayesian uncertainty quantification from Gaussian process priors with squared exponential covariance kernel?

We investigate the frequentist coverage properties of credible sets resu...

Please sign up or login with your details

Forgot password? Click here to reset