Scalable Variational Gaussian Process Classification

James Hensman(University of Sheffield), Alexander Matthews(University of Cambridge), Zoubin Ghahramani(University of Cambridge)
arXiv (Cornell University)
November 7, 2014
Cited by 348Open Access
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Abstract

Gaussian process classification is a popular method with a number of appealing properties. We show how to scale the model within a variational inducing point framework, outperforming the state of the art on benchmark datasets. Importantly, the variational formulation can be exploited to allow classification in problems with millions of data points, as we demonstrate in experiments.


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