In this thesis we address the problem of modeling correlated outputs using Gaussian process priors. Applications of modeling correlated outputs include the joint prediction of pollutant metals in geostatistics and multitask learning in machine learning. Defining a Gaussian process prior for correlated outputs translates into specifying a suitable covariance function that captures dependencies between the different output variables. Classical models for obtaining such a covariance function include the linear model of coregionalization and process convolutions. We propose a general framework for developing multiple output covariance functions by performing convolutions between smoothing kernels particular to each output and covariance functio...
A comprehensive and self-contained introduction to Gaussian processes, which provide a principled, p...
Recently there has been an increasing interest in methods that deal with multiple outputs. This has ...
With the Gaussian Process model, the predictive distribution of the output corresponding to a new gi...
PhD ThesisMultivariate regression analysis has been developed rapidly in the last decade for depende...
The main topic of this thesis are Gaussian processes for machine learning, more precisely the select...
This paper presents a dependent multi-output Gaussian process (GP) for modeling complex dynamical sy...
We present a novel extension of multi-output Gaussian processes for handling heterogeneous outputs. ...
During the recent decades Gaussian processes (GPs) have become increasingly popular tools for non-pa...
Gaussian processes are usually parameterised in terms of their covariance functions. However, this m...
Gaussian processes have proved to be useful and powerful constructs for the purposes of regression. ...
This report tends to provide details on how to perform predictions using Gaussian process regression...
We introduced the Gaussian Process Convolution Model (GPCM) in [1], a time-series model for stationa...
In this thesis we address the problems associated to non-conjugate likelihood Gaussian process model...
This paper attempts to bridge the gap between standard engineering practice and machine learning whe...
Gaussian processes that can be decomposed into a smooth mean function and a stationary autocorrelate...
A comprehensive and self-contained introduction to Gaussian processes, which provide a principled, p...
Recently there has been an increasing interest in methods that deal with multiple outputs. This has ...
With the Gaussian Process model, the predictive distribution of the output corresponding to a new gi...
PhD ThesisMultivariate regression analysis has been developed rapidly in the last decade for depende...
The main topic of this thesis are Gaussian processes for machine learning, more precisely the select...
This paper presents a dependent multi-output Gaussian process (GP) for modeling complex dynamical sy...
We present a novel extension of multi-output Gaussian processes for handling heterogeneous outputs. ...
During the recent decades Gaussian processes (GPs) have become increasingly popular tools for non-pa...
Gaussian processes are usually parameterised in terms of their covariance functions. However, this m...
Gaussian processes have proved to be useful and powerful constructs for the purposes of regression. ...
This report tends to provide details on how to perform predictions using Gaussian process regression...
We introduced the Gaussian Process Convolution Model (GPCM) in [1], a time-series model for stationa...
In this thesis we address the problems associated to non-conjugate likelihood Gaussian process model...
This paper attempts to bridge the gap between standard engineering practice and machine learning whe...
Gaussian processes that can be decomposed into a smooth mean function and a stationary autocorrelate...
A comprehensive and self-contained introduction to Gaussian processes, which provide a principled, p...
Recently there has been an increasing interest in methods that deal with multiple outputs. This has ...
With the Gaussian Process model, the predictive distribution of the output corresponding to a new gi...