Gaussian process model for vector-valued function has been shown to be useful for multi-output prediction. The existing method for this model is to reformulate the matrix-variate Gaussian distribution as a multivariate normal distribution. Although it is effective in many cases, reformulation is not always workable and is difficult to apply to other distributions because not all matrix-variate distributions can be transformed to respective multivariate distributions, such as the case for matrix-variate Student-t distribution. In this paper, we propose a unified framework which is used not only to introduce a novel multivariate Student-t process regression model (MV-TPR) for multi-output prediction, but also to reformulate the multivariate G...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
In this paper we investigate multi-task learning in the context of Gaussian Pro-cesses (GP). We prop...
Gaussian process regression (GPR) has been shown to be a powerful and effective non- parametric meth...
Gaussian process regression (GPR) is a kernel-based nonparametric method that has been proved to be ...
We present a novel extension of multi-output Gaussian processes for handling heterogeneous outputs. ...
Multi-output regression problems have extensively arisen in modern engineering community. This artic...
We investigate the Student-t process as an alternative to the Gaussian process as a non-parametric p...
Gaussian processes are usually parameterised in terms of their covariance functions. However, this m...
We investigate the Student-t process as an alternative to the Gaussian process as a non-parametric p...
This study presents an extension of the Gaussian process regression model for multiple-input multipl...
This study presents an extension of the Gaussian process regression model for multiple-input multipl...
We propose a family of multivariate Gaussian process models for correlated out-puts, based on assumi...
International audienceIn Gaussian Processes a multi-output kernel is a covariance function over corr...
To model multivariate, possibly heavy-tailed data, we compare the multivariate normal model (N) with...
Regression using Gaussian process models is applied to time-series data analysis. To extract from th...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
In this paper we investigate multi-task learning in the context of Gaussian Pro-cesses (GP). We prop...
Gaussian process regression (GPR) has been shown to be a powerful and effective non- parametric meth...
Gaussian process regression (GPR) is a kernel-based nonparametric method that has been proved to be ...
We present a novel extension of multi-output Gaussian processes for handling heterogeneous outputs. ...
Multi-output regression problems have extensively arisen in modern engineering community. This artic...
We investigate the Student-t process as an alternative to the Gaussian process as a non-parametric p...
Gaussian processes are usually parameterised in terms of their covariance functions. However, this m...
We investigate the Student-t process as an alternative to the Gaussian process as a non-parametric p...
This study presents an extension of the Gaussian process regression model for multiple-input multipl...
This study presents an extension of the Gaussian process regression model for multiple-input multipl...
We propose a family of multivariate Gaussian process models for correlated out-puts, based on assumi...
International audienceIn Gaussian Processes a multi-output kernel is a covariance function over corr...
To model multivariate, possibly heavy-tailed data, we compare the multivariate normal model (N) with...
Regression using Gaussian process models is applied to time-series data analysis. To extract from th...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
In this paper we investigate multi-task learning in the context of Gaussian Pro-cesses (GP). We prop...
Gaussian process regression (GPR) has been shown to be a powerful and effective non- parametric meth...