A comparative evaluation of stochastic-based inference methods for Gaussian process models

Filippone, M., Zhong, M. and Girolami, M. (2013) A comparative evaluation of stochastic-based inference methods for Gaussian process models. Machine Learning, 93(1), pp. 93-114. (doi: 10.1007/s10994-013-5388-x)

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Abstract

Gaussian Process (GP) models are extensively used in data analysis given their flexible modeling capabilities and interpretability. The fully Bayesian treatment of GP models is analytically intractable, and therefore it is necessary to resort to either deterministic or stochastic approximations. This paper focuses on stochastic-based inference techniques. After discussing the challenges associated with the fully Bayesian treatment of GP models, a number of inference strategies based on Markov chain Monte Carlo methods are presented and rigorously assessed. In particular, strategies based on efficient parameterizations and efficient proposal mechanisms are extensively compared on simulated and real data on the basis of convergence speed, sampling efficiency, and computational cost.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Zhong, Dr Mingjun and Filippone, Dr Maurizio and Girolami, Prof Mark
Authors: Filippone, M., Zhong, M., and Girolami, M.
College/School:College of Science and Engineering > School of Computing Science
Journal Name:Machine Learning
Publisher:Springer
ISSN:0885-6125
ISSN (Online):1573-0565

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