DocumentCode :
1305388
Title :
Nonparametric Mixtures of Gaussian Processes With Power-Law Behavior
Author :
Chatzis, Sotirios P. ; Demiris, Yiannis
Author_Institution :
Dept. of Electr. Eng., Comput. Eng., & Inf., Cyprus Univ. of Technol., Limassol, Cyprus
Volume :
23
Issue :
12
fYear :
2012
Firstpage :
1862
Lastpage :
1871
Abstract :
Gaussian processes (GPs) constitute one of the most important Bayesian machine learning approaches, based on a particularly effective method for placing a prior distribution over the space of regression functions. Several researchers have considered postulating mixtures of GPs as a means of dealing with nonstationary covariance functions, discontinuities, multimodality, and overlapping output signals. In existing works, mixtures of GPs are based on the introduction of a gating function defined over the space of model input variables. This way, each postulated mixture component GP is effectively restricted in a limited subset of the input space. In this paper, we follow a different approach. We consider a fully generative nonparametric Bayesian model with power-law behavior, generating GPs over the whole input space of the learned task. We provide an efficient algorithm for model inference, based on the variational Bayesian framework, and prove its efficacy using benchmark and real-world datasets.
Keywords :
Bayes methods; Gaussian processes; inference mechanisms; learning (artificial intelligence); regression analysis; Bayesian machine learning approaches; Gaussian processes; discontinuities output signals; fully generative nonparametric Bayesian model; gating function; model inference; multimodality output signals; nonparametric mixtures; nonstationary covariance functions; overlapping output signals; postulated mixture component; power-law behavior; prior distribution placing; regression functions; variational Bayesian framework; Bayesian methods; Gaussian processes; Inference algorithms; Random variables; Training; Gaussian process; Pitman–Yor process; mixture model;
fLanguage :
English
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2162-237X
Type :
jour
DOI :
10.1109/TNNLS.2012.2217986
Filename :
6320657
Link To Document :
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