We present a practical way of introducing convolutional structure into Gaussian processes, making them more suited to high-dimensional inputs like images. The main contribution of our work is the construction of an inter-domain inducing point approximation that is well-tailored to the convolutional kernel. This allows us to gain the generalisation benefit of a convolutional kernel, together with fast but accurate posterior inference. We investigate several variations of the convolutional kernel, and apply it to MNIST and CIFAR-10, which have both been known to be challenging for Gaussian processes. We also show how the marginal likelihood can be used to find an optimal weighting between convolutional and RBF kernels to further improve perfo...
Gaussian processes have proved to be useful and powerful constructs for the purposes of regression. ...
We introduce the convolutional spectral kernel (CSK), a novel family of non-stationary, nonparametri...
This work brings together two powerful concepts in Gaussian processes: the variational approach to s...
We present a practical way of introducing convolutional structure into Gaussian processes, making th...
Interest in multioutput kernel methods is increasing, whether under the guise of multitask learning,...
84 pagesGaussian processes are powerful Bayesian non-parametric models used for their closed-form po...
Recently there has been an increasing interest in methods that deal with multiple outputs. This has ...
This thesis formulates the Generalised Gaussian Process Convolution Model (GGPCM), which is a genera...
In this thesis we address the problems associated to non-conjugate likelihood Gaussian process model...
We show that the output of a (residual) convolutional neural network (CNN) with an appropriate prior...
We show that the output of a (residual) convolutional neural network (CNN) with an appropriate prior...
Gaussian processes (GPs) provide a principled, practical, probabilistic approach to learning in kern...
Deep Gaussian processes (DGPs) provide a Bayesian non-parametric alternative to standard parametric...
I propose two new kernel-based models that enable an exact generative procedure: the Gaussian proces...
Recently there has been an increasing interest in methods that deal with multiple out-puts. This has...
Gaussian processes have proved to be useful and powerful constructs for the purposes of regression. ...
We introduce the convolutional spectral kernel (CSK), a novel family of non-stationary, nonparametri...
This work brings together two powerful concepts in Gaussian processes: the variational approach to s...
We present a practical way of introducing convolutional structure into Gaussian processes, making th...
Interest in multioutput kernel methods is increasing, whether under the guise of multitask learning,...
84 pagesGaussian processes are powerful Bayesian non-parametric models used for their closed-form po...
Recently there has been an increasing interest in methods that deal with multiple outputs. This has ...
This thesis formulates the Generalised Gaussian Process Convolution Model (GGPCM), which is a genera...
In this thesis we address the problems associated to non-conjugate likelihood Gaussian process model...
We show that the output of a (residual) convolutional neural network (CNN) with an appropriate prior...
We show that the output of a (residual) convolutional neural network (CNN) with an appropriate prior...
Gaussian processes (GPs) provide a principled, practical, probabilistic approach to learning in kern...
Deep Gaussian processes (DGPs) provide a Bayesian non-parametric alternative to standard parametric...
I propose two new kernel-based models that enable an exact generative procedure: the Gaussian proces...
Recently there has been an increasing interest in methods that deal with multiple out-puts. This has...
Gaussian processes have proved to be useful and powerful constructs for the purposes of regression. ...
We introduce the convolutional spectral kernel (CSK), a novel family of non-stationary, nonparametri...
This work brings together two powerful concepts in Gaussian processes: the variational approach to s...