peer reviewedGaussian process is a popular non-parametric Bayesian methodology for modeling the regression problem, which is completely determined by its mean and covariance function. Nevertheless, this method still has two major disadvantages: it is difficult to handle large datasets and may not meet inequality constraints in specific problems. These two issues have been addressed by the so-called sparse Gaussian process and constrained Gaussian process in recent years. In this paper, to reduce the overall computational complexity in the exact Gaussian process, we propose a new sparse Gaussian process method to solve the unconstrained regression problem. The idea is inspired by the constrained Gaussian process method. The critical point of...
A wealth of computationally efficient approximation methods for Gaussian process regression have bee...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
We propose an efficient optimization algorithm for selecting a subset of train-ing data to induce sp...
We present a new sparse Gaussian Process (GP) model for regression. The key novel idea is to sparsif...
We present a new Gaussian process (GP) regression model whose co-variance is parameterized by the th...
Most existing sparse Gaussian process (g.p.) models seek computational advantages by basing their co...
Most existing sparse Gaussian process (g.p.) models seek computational advantages by basing their co...
We present a new Gaussian process (GP) regression model whose covariance is parameterized by the th...
In recent years there has been an increased interest in applying non-parametric methods to real-worl...
Gaussian process (GP) models are widely used to perform Bayesian nonlinear regression and classifica...
While there is strong motivation for using Gaussian Processes (GPs) due to their excellent performan...
We provide a new unifying view, including all existing proper probabilistic sparse approximations fo...
We provide a new unifying view, including all existing proper probabilistic sparse approximations fo...
We propose an efficient optimization algorithm for selecting a subset of training data to induce spa...
While much research effort has been dedicated to scaling up sparse Gaussian process (GP) models base...
A wealth of computationally efficient approximation methods for Gaussian process regression have bee...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
We propose an efficient optimization algorithm for selecting a subset of train-ing data to induce sp...
We present a new sparse Gaussian Process (GP) model for regression. The key novel idea is to sparsif...
We present a new Gaussian process (GP) regression model whose co-variance is parameterized by the th...
Most existing sparse Gaussian process (g.p.) models seek computational advantages by basing their co...
Most existing sparse Gaussian process (g.p.) models seek computational advantages by basing their co...
We present a new Gaussian process (GP) regression model whose covariance is parameterized by the th...
In recent years there has been an increased interest in applying non-parametric methods to real-worl...
Gaussian process (GP) models are widely used to perform Bayesian nonlinear regression and classifica...
While there is strong motivation for using Gaussian Processes (GPs) due to their excellent performan...
We provide a new unifying view, including all existing proper probabilistic sparse approximations fo...
We provide a new unifying view, including all existing proper probabilistic sparse approximations fo...
We propose an efficient optimization algorithm for selecting a subset of training data to induce spa...
While much research effort has been dedicated to scaling up sparse Gaussian process (GP) models base...
A wealth of computationally efficient approximation methods for Gaussian process regression have bee...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
We propose an efficient optimization algorithm for selecting a subset of train-ing data to induce sp...