Contraction rates for sparse variational approximations in Gaussian process regression

09/22/2021
by   Dennis Nieman, et al.
0

We study the theoretical properties of a variational Bayes method in the Gaussian Process regression model. We consider the inducing variables method introduced by Titsias (2009a) and derive sufficient conditions for obtaining contraction rates for the corresponding variational Bayes (VB) posterior. As examples we show that for three particular covariance kernels (Matérn, squared exponential, random series prior) the VB approach can achieve optimal, minimax contraction rates for a sufficiently large number of appropriately chosen inducing variables. The theoretical findings are demonstrated by numerical experiments.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/21/2022

Uncertainty quantification for sparse spectral variational approximations in Gaussian process regression

We investigate the frequentist properties of the variational sparse Gaus...
research
12/15/2017

A Theoretical Framework for Bayesian Nonparametric Regression: Orthonormal Random Series and Rates of Contraction

We develop a unifying framework for Bayesian nonparametric regression to...
research
03/15/2021

Adaptive posterior convergence in sparse high dimensional clipped generalized linear models

We develop a framework to study posterior contraction rates in sparse hi...
research
09/07/2021

Adaptive variational Bayes: Optimality, computation and applications

In this paper, we explore adaptive inference based on variational Bayes....
research
03/08/2019

Rates of Convergence for Sparse Variational Gaussian Process Regression

Excellent variational approximations to Gaussian process posteriors have...
research
03/11/2018

Posterior Contraction and Credible Sets for Filaments of Regression Functions

A filament consists of local maximizers of a smooth function f when movi...
research
06/20/2019

Posterior Contraction Rates for Gaussian Cox Processes with Non-identically Distributed Data

This paper considers the posterior contraction of non-parametric Bayesia...

Please sign up or login with your details

Forgot password? Click here to reset