Kernel-based non-parametric models have been applied widely over recent years. However, the associated computational complexity imposes limitations on the applicability of those methods to problems with large data-sets. In this paper we develop a filtering approach based on a Gaussian process regression model. The idea is to generate a smalldimensional set of filtered data that keeps a high proportion of the information contained in the original large data-set. Model learning and prediction are based on the filtered data, thereby decreasing the computational burden dramatically
Gaussian process (GP) is a stochastic process that has been studied for a long time and gained wide ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
Gaussian Process (GP) has become a common Bayesian inference framework and has been applied in many ...
Kernel-based non-parametric models have been applied widely over recent years. However, the associa...
Kernel-based non-parametric models have been applied widely over recent years. However, the associat...
Abstract: Kernel-based non-parametric models have been applied widely over recent years. However, th...
Gaussian process (GP) models are widely used to perform Bayesian nonlinear regression and classifica...
Gaussian processes have proved to be useful and powerful constructs for the purposes of regression. ...
A comprehensive and self-contained introduction to Gaussian processes, which provide a principled, p...
We generalise the Gaussian process (GP) framework for regression by learning a nonlinear transformat...
Many real classification tasks are oriented to sequence (neighbor) la-beling, that is, assigning a l...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
Abstract—Gaussian process based machine learning is a power-ful Bayesian paradigm for non-parametric...
While there is strong motivation for using Gaussian Processes (GPs) due to their excellent performan...
Off-the-shelf Gaussian Process (GP) covariance functions encode smoothness assumptions on the struct...
Gaussian process (GP) is a stochastic process that has been studied for a long time and gained wide ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
Gaussian Process (GP) has become a common Bayesian inference framework and has been applied in many ...
Kernel-based non-parametric models have been applied widely over recent years. However, the associa...
Kernel-based non-parametric models have been applied widely over recent years. However, the associat...
Abstract: Kernel-based non-parametric models have been applied widely over recent years. However, th...
Gaussian process (GP) models are widely used to perform Bayesian nonlinear regression and classifica...
Gaussian processes have proved to be useful and powerful constructs for the purposes of regression. ...
A comprehensive and self-contained introduction to Gaussian processes, which provide a principled, p...
We generalise the Gaussian process (GP) framework for regression by learning a nonlinear transformat...
Many real classification tasks are oriented to sequence (neighbor) la-beling, that is, assigning a l...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
Abstract—Gaussian process based machine learning is a power-ful Bayesian paradigm for non-parametric...
While there is strong motivation for using Gaussian Processes (GPs) due to their excellent performan...
Off-the-shelf Gaussian Process (GP) covariance functions encode smoothness assumptions on the struct...
Gaussian process (GP) is a stochastic process that has been studied for a long time and gained wide ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
Gaussian Process (GP) has become a common Bayesian inference framework and has been applied in many ...