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A Unifying Framework for Gaussian Process Pseudo-Point Approximations using Power Expectation Propagation

Machine Learning 2017-10-06 v3 Machine Learning

Abstract

Gaussian processes (GPs) are flexible distributions over functions that enable high-level assumptions about unknown functions to be encoded in a parsimonious, flexible and general way. Although elegant, the application of GPs is limited by computational and analytical intractabilities that arise when data are sufficiently numerous or when employing non-Gaussian models. Consequently, a wealth of GP approximation schemes have been developed over the last 15 years to address these key limitations. Many of these schemes employ a small set of pseudo data points to summarise the actual data. In this paper, we develop a new pseudo-point approximation framework using Power Expectation Propagation (Power EP) that unifies a large number of these pseudo-point approximations. Unlike much of the previous venerable work in this area, the new framework is built on standard methods for approximate inference (variational free-energy, EP and Power EP methods) rather than employing approximations to the probabilistic generative model itself. In this way, all of approximation is performed at `inference time' rather than at `modelling time' resolving awkward philosophical and empirical questions that trouble previous approaches. Crucially, we demonstrate that the new framework includes new pseudo-point approximation methods that outperform current approaches on regression and classification tasks.

Keywords

Cite

@article{arxiv.1605.07066,
  title  = {A Unifying Framework for Gaussian Process Pseudo-Point Approximations using Power Expectation Propagation},
  author = {Thang D. Bui and Josiah Yan and Richard E. Turner},
  journal= {arXiv preprint arXiv:1605.07066},
  year   = {2017}
}
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