Marginalizing Gaussian Process Hyperparameters using Sequential Monte Carlo

2015 IEEE 6th International Workshop on Computational Advances in Multi-Sensor Adaptive Processing (CAMSAP)(2015)

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摘要
Gaussian process regression is a popular method for non-parametric probabilistic modeling of functions. The Gaussian process prior is characterized by so-called hyperparameters, which often have a large influence on the posterior model and can be difficult to tune. This work provides a method for numerical marginalization of the hyperparameters, relying on the rigorous framework of sequential Monte Carlo. Our method is well suited for online problems, and we demonstrate its ability to handle real-world problems with several dimensions and compare it to other marginalization methods. We also conclude that our proposed method is a competitive alternative to the commonly used point estimates maximizing the likelihood, both in terms of computational load and its ability to handle multimodal posteriors.
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关键词
Gaussian process hyperparameters,Gaussian process regression,nonparametric probabilistic modeling,Gaussian process prior,posterior model,numerical marginalization methods,sequential Monte Carlo,online problems,point estimates,computational load,multimodal posteriors
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