We model a regression density flexibly so that at each value of the covariates the density is a mixture of normals with the means, variances and mixture probabilities of the components changing smoothly as a function of the covariates. The model extends existing models in two important ways. First, the components are allowed to be heteroscedastic regressions as the standard model with homoscedastic regressions can give a poor fit to heteroscedastic data, especially when the number of covariates is large. Furthermore, we typically need fewer components, which makes it easier to interpret the model and speeds up the computation. The second main extension is to introduce a novel variable selection prior into all the components of the model. Th...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
Problems of regression smoothing and curve fitting are addressed via predictive infer-ence in a flex...
We consider the problem of Bayesian density estimation on the positive semiline for possibly unbound...
We model a regression density nonparametrically so that at each value of the covariates the density ...
We model a regression density flexibly so that at each value of the covariates the density is a mixt...
Abstract. We model a regression density nonparametrically so that at each value of the covariates th...
Regression density estimation is the problem of flexibly estimating a response distribution as a fun...
This thesis proposes Gaussian Mixtures as a flexible semiparametric tool for density estimation and ...
This thesis proposes Gaussian Mixtures as a flexible semiparametric tool for density estimation and ...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
In the statistical approach for self-organizing maps (SOMs), learning is regarded as an estimation a...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
Abstract This thesis develops models and associated Bayesian inference methods for flexible univaria...
Abstract. A proposal of van der Vaart (1996) for an adaptive estimator of a location parameter from ...
Abstract. A proposal of Van der Vaart (1996) for an adaptive estimator of a location parameter from ...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
Problems of regression smoothing and curve fitting are addressed via predictive infer-ence in a flex...
We consider the problem of Bayesian density estimation on the positive semiline for possibly unbound...
We model a regression density nonparametrically so that at each value of the covariates the density ...
We model a regression density flexibly so that at each value of the covariates the density is a mixt...
Abstract. We model a regression density nonparametrically so that at each value of the covariates th...
Regression density estimation is the problem of flexibly estimating a response distribution as a fun...
This thesis proposes Gaussian Mixtures as a flexible semiparametric tool for density estimation and ...
This thesis proposes Gaussian Mixtures as a flexible semiparametric tool for density estimation and ...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
In the statistical approach for self-organizing maps (SOMs), learning is regarded as an estimation a...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
Abstract This thesis develops models and associated Bayesian inference methods for flexible univaria...
Abstract. A proposal of van der Vaart (1996) for an adaptive estimator of a location parameter from ...
Abstract. A proposal of Van der Vaart (1996) for an adaptive estimator of a location parameter from ...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
Problems of regression smoothing and curve fitting are addressed via predictive infer-ence in a flex...
We consider the problem of Bayesian density estimation on the positive semiline for possibly unbound...