Structured Variational Inference for Coupled Gaussian Processes

11/03/2017
by   Vincent Adam, et al.
0

Sparse variational approximations allow for principled and scalable inference in Gaussian Process (GP) models. In settings where several GPs are part of the generative model, theses GPs are a posteriori coupled. For many applications such as regression where predictive accuracy is the quantity of interest, this coupling is not crucial. Howewer if one is interested in posterior uncertainty, it cannot be ignored. A key element of variational inference schemes is the choice of the approximate posterior parameterization. When the number of latent variables is large, mean field (MF) methods provide fast and accurate posterior means while more structured posterior lead to inference algorithm of greater computational complexity. Here, we extend previous sparse GP approximations and propose a novel parameterization of variational posteriors in the multi-GP setting allowing for fast and scalable inference capturing posterior dependencies.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/26/2018

Scalable Gaussian Process Inference with Finite-data Mean and Variance Guarantees

Gaussian processes (GPs) offer a flexible class of priors for nonparamet...
research
12/27/2020

A Tutorial on Sparse Gaussian Processes and Variational Inference

Gaussian processes (GPs) provide a framework for Bayesian inference that...
research
06/07/2019

Structured Variational Inference in Continuous Cox Process Models

We propose a scalable framework for inference in an inhomogeneous Poisso...
research
03/25/2020

Scalable Variational Gaussian Process Regression Networks

Gaussian process regression networks (GPRN) are powerful Bayesian models...
research
03/08/2022

Inferring Parsimonious Coupling Statistics in Nonlinear Dynamics with Variational Gaussian Processes

Nonparametetric methods of uncovering coupling provides a flexible frame...
research
07/04/2021

Deep Gaussian Process Emulation using Stochastic Imputation

We propose a novel deep Gaussian process (DGP) inference method for comp...
research
05/14/2019

Deep Gaussian Processes with Importance-Weighted Variational Inference

Deep Gaussian processes (DGPs) can model complex marginal densities as w...

Please sign up or login with your details

Forgot password? Click here to reset