Rates of Convergence for Sparse Variational Gaussian Process Regression

03/08/2019
by   David R. Burt, et al.
0

Excellent variational approximations to Gaussian process posteriors have been developed which avoid the O(N^3) scaling with dataset size N. They reduce the computational cost to O(NM^2), with M≪ N being the number of inducing variables, which summarise the process. While the computational cost seems to be linear in N, the true complexity of the algorithm depends on how M must increase to ensure a certain quality of approximation. We address this by characterising the behavior of an upper bound on the KL divergence to the posterior. We show that with high probability the KL divergence can be made arbitrarily small by growing M more slowly than N. A particular case of interest is that for regression with normally distributed inputs in D-dimensions with the popular Squared Exponential kernel, M=O(^D N) is sufficient. Our results show that as datasets grow, Gaussian process posteriors can truly be approximated cheaply, and provide a concrete rule for how to increase M in continual learning scenarios.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/01/2020

Convergence of Sparse Variational Inference in Gaussian Processes Regression

Gaussian processes are distributions over functions that are versatile a...
research
10/15/2019

The Rényi Gaussian Process

In this article we introduce an alternative closed form lower bound on t...
research
09/22/2021

Contraction rates for sparse variational approximations in Gaussian process regression

We study the theoretical properties of a variational Bayes method in the...
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
04/16/2021

On the Robustness to Misspecification of α-Posteriors and Their Variational Approximations

α-posteriors and their variational approximations distort standard poste...
research
06/23/2020

Variational Orthogonal Features

Sparse stochastic variational inference allows Gaussian process models t...
research
06/15/2016

Understanding Probabilistic Sparse Gaussian Process Approximations

Good sparse approximations are essential for practical inference in Gaus...

Please sign up or login with your details

Forgot password? Click here to reset