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Neural Likelihoods for Multi-Output Gaussian Processes

Machine Learning 2019-06-03 v1 Machine Learning

Abstract

We construct flexible likelihoods for multi-output Gaussian process models that leverage neural networks as components. We make use of sparse variational inference methods to enable scalable approximate inference for the resulting class of models. An attractive feature of these models is that they can admit analytic predictive means even when the likelihood is non-linear and the predictive distributions are non-Gaussian. We validate the modeling potential of these models in a variety of experiments in both the supervised and unsupervised setting. We demonstrate that the flexibility of these `neural' likelihoods can improve prediction quality as compared to simpler Gaussian process models and that neural likelihoods can be readily combined with a variety of underlying Gaussian process models, including deep Gaussian processes.

Keywords

Cite

@article{arxiv.1905.13697,
  title  = {Neural Likelihoods for Multi-Output Gaussian Processes},
  author = {Martin Jankowiak and Jacob Gardner},
  journal= {arXiv preprint arXiv:1905.13697},
  year   = {2019}
}

Comments

16 pages

R2 v1 2026-06-23T09:35:38.610Z