A Bayesian inference framework for supervised Gaussian process latent variable models is introduced. The framework overcomes the high correlations between latent variables and hyperparameters by collapsing the statistical model through approximate integration of the latent variables. Using an unbiased pseudo estimate for the marginal likelihood, the exact hyperparameter posterior can then be explored using collapsed Gibbs sampling and, conditional on these samples, the exact latent posterior can be explored through elliptical slice sampling. The framework is tested on both simulated and real examples. When compared with the standard approach based on variational inference, this approach leads to significant improvements in the predictive ac...
With modern high-dimensional data, complex statistical models are necessary, requiring computational...
The results in this thesis are based on applications of the expectation propagation algorithm to app...
Scope of this work Gaussian Process models (GPMs) are extensively used in data analysis given their ...
The main challenges that arise when adopting Gaussian process priors in probabilistic modeling are h...
The main challenges that arise when adopting Gaussian Process priors in probabilistic modeling are h...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
Gaussian processes are powerful nonparametric distributions over continuous functions that have beco...
Abstract—Kernel methods have revolutionized the fields of pattern recognition and machine learning. ...
We introduce a variational inference framework for training the Gaussian process latent variable mod...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
The Gaussian process (GP) is a popular way to specify dependencies be-tween random variables in a pr...
Gaussian process priors can be used to define flexible, probabilistic classification models. Unfortu...
Latent variable models give the conditional distribution of (α, y) given θ, where θ is a vector of p...
Abstract. Gaussian processes are a natural way of dening prior distributions over func-tions of one ...
Real engineering and scientific applications often involve one or more qualitative inputs. Standard ...
With modern high-dimensional data, complex statistical models are necessary, requiring computational...
The results in this thesis are based on applications of the expectation propagation algorithm to app...
Scope of this work Gaussian Process models (GPMs) are extensively used in data analysis given their ...
The main challenges that arise when adopting Gaussian process priors in probabilistic modeling are h...
The main challenges that arise when adopting Gaussian Process priors in probabilistic modeling are h...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
Gaussian processes are powerful nonparametric distributions over continuous functions that have beco...
Abstract—Kernel methods have revolutionized the fields of pattern recognition and machine learning. ...
We introduce a variational inference framework for training the Gaussian process latent variable mod...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
The Gaussian process (GP) is a popular way to specify dependencies be-tween random variables in a pr...
Gaussian process priors can be used to define flexible, probabilistic classification models. Unfortu...
Latent variable models give the conditional distribution of (α, y) given θ, where θ is a vector of p...
Abstract. Gaussian processes are a natural way of dening prior distributions over func-tions of one ...
Real engineering and scientific applications often involve one or more qualitative inputs. Standard ...
With modern high-dimensional data, complex statistical models are necessary, requiring computational...
The results in this thesis are based on applications of the expectation propagation algorithm to app...
Scope of this work Gaussian Process models (GPMs) are extensively used in data analysis given their ...