DocumentCode :
2371503
Title :
Kalman filtering and smoothing solutions to temporal Gaussian process regression models
Author :
Hartikainen, Jouni ; Sarkka, Simo
Author_Institution :
Dept. of Biomed. Eng. & Comput. Sci., Aalto Univ., Espoo, Finland
fYear :
2010
fDate :
Aug. 29 2010-Sept. 1 2010
Firstpage :
379
Lastpage :
384
Abstract :
In this paper, we show how temporal (i.e., time-series) Gaussian process regression models in machine learning can be reformulated as linear-Gaussian state space models, which can be solved exactly with classical Kalman filtering theory. The result is an efficient non-parametric learning algorithm, whose computational complexity grows linearly with respect to number of observations. We show how the reformulation can be done for Matérn family of covariance functions analytically and for squared exponential covariance function by applying spectral Taylor series approximation. Advantages of the proposed approach are illustrated with two numerical experiments.
Keywords :
Gaussian processes; Kalman filters; approximation theory; computational complexity; covariance analysis; learning (artificial intelligence); regression analysis; spectral analysis; state-space methods; time series; Kalman filtering; Matern family; computational complexity; covariance function; machine learning; nonparametric learning algorithm; regression model; spectral Taylor series approximation; squared exponential function; state space model; temporal Gaussian process; time series; Approximation methods; Computational modeling; Equations; Gaussian processes; Kalman filters; Markov processes; Mathematical model;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Machine Learning for Signal Processing (MLSP), 2010 IEEE International Workshop on
Conference_Location :
Kittila
ISSN :
1551-2541
Print_ISBN :
978-1-4244-7875-0
Electronic_ISBN :
1551-2541
Type :
conf
DOI :
10.1109/MLSP.2010.5589113
Filename :
5589113
Link To Document :
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