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

被引:0
|
作者
M. Filippone
M. Zhong
M. Girolami
机构
[1] University of Glasgow,School of Computing Science
[2] Dalian University of Technology,Department of Biomedical Engineering
[3] University College London,Department of Statistical Science
来源
Machine Learning | 2013年 / 93卷
关键词
Bayesian inference; Gaussian processes; Markov chain Monte Carlo; Hierarchical models; Latent variable models;
D O I
暂无
中图分类号
学科分类号
摘要
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.
引用
收藏
页码:93 / 114
页数:21
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