This paper proposes an approach for online training of a sparse multi-output Gaussian process (GP) model using sequentially obtained data. The considered model combines linearly multiple latent sparse GPs to produce correlated output variables. Each latent GP has its own set of inducing points to achieve sparsity. We show that given the model hyperparameters, the posterior over the inducing points is Gaussian under Gaussian noise since they are linearly related to the model outputs. However, the inducing points from different latent GPs would become correlated, leading to a full covariance matrix cumbersome to handle. Variational inference is thus applied and an approximate regression technique is obtained, with which the posteriors over di...
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...
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 co-variance is parameterized by the th...
Gaussian processes; Non-parametric regression; System identification. Abstract: We provide a method ...
We present a new Gaussian process (GP) regression model whose covariance is parameterized by the th...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
This is the implementation of the approaches developed in this work. L. Yang, K. Wang and L. S. Miha...
We develop an approach for a sparse representation for Gaussian Process (GP) models in order to over...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
International audienceIn this paper a sparse approximation of inference for multi-output Gaussian Pr...
International audienceIn this paper a sparse approximation of inference for multi-output Gaussian Pr...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
Gaussian process (GP) models are widely used to perform Bayesian nonlinear regression and classifica...
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...
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 co-variance is parameterized by the th...
Gaussian processes; Non-parametric regression; System identification. Abstract: We provide a method ...
We present a new Gaussian process (GP) regression model whose covariance is parameterized by the th...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
This is the implementation of the approaches developed in this work. L. Yang, K. Wang and L. S. Miha...
We develop an approach for a sparse representation for Gaussian Process (GP) models in order to over...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
International audienceIn this paper a sparse approximation of inference for multi-output Gaussian Pr...
International audienceIn this paper a sparse approximation of inference for multi-output Gaussian Pr...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
Gaussian process (GP) models are widely used to perform Bayesian nonlinear regression and classifica...
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...
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...