Title :
Spatiotemporal Learning via Infinite-Dimensional Bayesian Filtering and Smoothing: A Look at Gaussian Process Regression Through Kalman Filtering
Author :
Sarkka, Simo ; Solin, Arno ; Hartikainen, Jouni
Author_Institution :
Dept. of Biomed. Eng. & Comput. Sci., Aalto Univ., Espoo, Finland
Abstract :
Gaussian process-based machine learning is a powerful Bayesian paradigm for nonparametric nonlinear regression and classification. In this article, we discuss connections of Gaussian process regression with Kalman filtering and present methods for converting spatiotemporal Gaussian process regression problems into infinite-dimensional state-space models. This formulation allows for use of computationally efficient infinite-dimensional Kalman filtering and smoothing methods, or more general Bayesian filtering and smoothing methods, which reduces the problematic cubic complexity of Gaussian process regression in the number of time steps into linear time complexity. The implication of this is that the use of machine-learning models in signal processing becomes computationally feasible, and it opens the possibility to combine machine-learning techniques with signal processing methods.
Keywords :
Bayes methods; Gaussian processes; Kalman filters; learning (artificial intelligence); regression analysis; signal classification; Gaussian process regression problems; Gaussian process-based machine learning; infinite-dimensional Bayesian filtering; infinite-dimensional Kalman filtering; infinite-dimensional smoothing methods; infinite-dimensional state-space models; linear time complexity; nonparametric nonlinear classification; nonparametric nonlinear regression; problematic cubic complexity; signal processing methods; spatiotemporal learning; Bayes methods; Gaussian processes; Kalman filters; Kernel; Learning systems; Linear regression analysis; Machine learning; Parametric statistics; Smoothing methods; Spatiotemporal phenomena;
Journal_Title :
Signal Processing Magazine, IEEE
DOI :
10.1109/MSP.2013.2246292