Variable selection for Gaussian process models is often done using automatic relevance determination, which uses the inverse lengthscale parameter of each input variable as a proxy for variable relevance. This implicitly determined relevance has several drawbacks that prevent the selection of optimal input variables in terms of predictive performance. To improve on this, we propose two novel variable selection methods for Gaussian process models that utilize the predictions of a full model in the vicinity of the training points and thereby rank the variables based on their predictive relevance. Our empirical results on synthetic and real world data sets demonstrate improved variable selection compared to automatic relevance determination in...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Gaussian processes are powerful regression models specified by parameterized mean and covariance fun...
Variable selection for Gaussian process models is often done using automatic relevance determination...
At present, there is no consensus on the most effective way to establish feature relevance for Gauss...
This thesis develops techniques for adjusting for selection bias using Gaussian process models. Sele...
International audienceA general methodology for selecting predictors for Gaussian generative classif...
This article revisits the fundamental problem of parameter selection for Gaussian process interpolat...
AbstractA general methodology for selecting predictors for Gaussian generative classification models...
This research proposes a unified Gaussian process modeling approach that extends to data from the ex...
Abstract — Gaussian process models provide a probabilistic non-parametric modelling approach for bla...
A simple and widely adopted approach to extend Gaussian processes (GPs) to multiple outputs is to mo...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Gaussian processes have proved to be useful and powerful constructs for the purposes of regression. ...
This report non-linear models that map an input D-dimensional column vector x into a single dimensio...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Gaussian processes are powerful regression models specified by parameterized mean and covariance fun...
Variable selection for Gaussian process models is often done using automatic relevance determination...
At present, there is no consensus on the most effective way to establish feature relevance for Gauss...
This thesis develops techniques for adjusting for selection bias using Gaussian process models. Sele...
International audienceA general methodology for selecting predictors for Gaussian generative classif...
This article revisits the fundamental problem of parameter selection for Gaussian process interpolat...
AbstractA general methodology for selecting predictors for Gaussian generative classification models...
This research proposes a unified Gaussian process modeling approach that extends to data from the ex...
Abstract — Gaussian process models provide a probabilistic non-parametric modelling approach for bla...
A simple and widely adopted approach to extend Gaussian processes (GPs) to multiple outputs is to mo...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Gaussian processes have proved to be useful and powerful constructs for the purposes of regression. ...
This report non-linear models that map an input D-dimensional column vector x into a single dimensio...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Gaussian processes are powerful regression models specified by parameterized mean and covariance fun...