English

MCMC for Variationally Sparse Gaussian Processes

Machine Learning 2015-06-15 v1

Abstract

Gaussian process (GP) models form a core part of probabilistic machine learning. Considerable research effort has been made into attacking three issues with GP models: how to compute efficiently when the number of data is large; how to approximate the posterior when the likelihood is not Gaussian and how to estimate covariance function parameter posteriors. This paper simultaneously addresses these, using a variational approximation to the posterior which is sparse in support of the function but otherwise free-form. The result is a Hybrid Monte-Carlo sampling scheme which allows for a non-Gaussian approximation over the function values and covariance parameters simultaneously, with efficient computations based on inducing-point sparse GPs. Code to replicate each experiment in this paper will be available shortly.

Keywords

Cite

@article{arxiv.1506.04000,
  title  = {MCMC for Variationally Sparse Gaussian Processes},
  author = {James Hensman and Alexander G. de G. Matthews and Maurizio Filippone and Zoubin Ghahramani},
  journal= {arXiv preprint arXiv:1506.04000},
  year   = {2015}
}

Comments

16 pages

R2 v1 2026-06-22T09:52:33.167Z