Recently there has been an increasing interest in the multivariate Gaussian process (MGP) which extends the Gaussian process (GP) to deal with multiple outputs. One approach to construct the MGP and account for non-trivial commonalities amongst outputs employs a convolution process (CP). The CP is based on the idea of sharing latent functions across several convolutions. Despite the elegance of the CP construction, it provides new challenges that need yet to be tackled. First, even with a moderate number of outputs, model building is extremely prohibitive due to the huge increase in computational demands and number of parameters to be estimated. Second, the negative transfer of knowledge may occur when some outputs do not share commonalitie...
Triggered by a market relevant application that involves making joint predictions of pedestrian and ...
Gaussian processes are usually parameterised in terms of their covari-ance functions. However, this ...
Multi-task prediction methods are widely used to couple regressors or classification models by shari...
The multi-output Gaussian process ($\mathcal{MGP}$) is based on the assumption that outputs share co...
Recently there has been an increasing interest in methods that deal with multiple outputs. This has ...
Recently there has been an increasing interest in methods that deal with multiple out-puts. This has...
<div><p></p><p>The Gaussian process (GP) model is a popular method for emulating deterministic compu...
Transfer Learning is an emerging framework for learning from data that aims at intelligently transf...
Often in machine learning, data are collected as a combination of multiple conditions, e.g., the voi...
We introduce the collaborative multi-output Gaussian process (GP) model for learning dependent tasks...
Multi-output regression problems have extensively arisen in modern engineering community. This artic...
Gaussian processes are usually parameterised in terms of their covariance functions. However, this m...
Two principal problems are pursued in this thesis: that of scaling inference for Gaussian process re...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
We present a novel extension of multi-output Gaussian processes for handling heterogeneous outputs. ...
Triggered by a market relevant application that involves making joint predictions of pedestrian and ...
Gaussian processes are usually parameterised in terms of their covari-ance functions. However, this ...
Multi-task prediction methods are widely used to couple regressors or classification models by shari...
The multi-output Gaussian process ($\mathcal{MGP}$) is based on the assumption that outputs share co...
Recently there has been an increasing interest in methods that deal with multiple outputs. This has ...
Recently there has been an increasing interest in methods that deal with multiple out-puts. This has...
<div><p></p><p>The Gaussian process (GP) model is a popular method for emulating deterministic compu...
Transfer Learning is an emerging framework for learning from data that aims at intelligently transf...
Often in machine learning, data are collected as a combination of multiple conditions, e.g., the voi...
We introduce the collaborative multi-output Gaussian process (GP) model for learning dependent tasks...
Multi-output regression problems have extensively arisen in modern engineering community. This artic...
Gaussian processes are usually parameterised in terms of their covariance functions. However, this m...
Two principal problems are pursued in this thesis: that of scaling inference for Gaussian process re...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
We present a novel extension of multi-output Gaussian processes for handling heterogeneous outputs. ...
Triggered by a market relevant application that involves making joint predictions of pedestrian and ...
Gaussian processes are usually parameterised in terms of their covari-ance functions. However, this ...
Multi-task prediction methods are widely used to couple regressors or classification models by shari...