A key problem in statistical modeling is model selection, that is, how to choose a model at an appropriate level of complexity. This problem appears in many settings, most prominently in choosing the number of clusters in mixture models or the number of factors in factor analysis. In this tutorial, we describe Bayesian nonparametric methods, a class of methods that side-steps this issue by allowing the data to determine the complexity of the model. This tutorial is a high-level introduction to Bayesian nonparametric methods and contains several examples of their application
Bayesian methods for statistical analysis is a book on statistical methods for analysing a wide vari...
This is a revised version of a chapter written for the Handbook of Computational Statistics, edited ...
This is a revised version of a chapter written for the Handbook of Computational Statistics, edited ...
A key problem in statistical modeling is model selection, how to choose a model at an appropriate le...
One desirable property of machine learning algorithms is the ability to balance the number of p...
One desirable property of machine learning algorithms is the ability to balance the number of p...
Modelling is fundamental to many fields of science and engineering. A model can be thought of as a r...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
This thesis introduces novel nonparametric Bayesian regression methods and utilises modern Markov ch...
Bayesian nonparametrics are Bayesian models where the underlying finite-dimensional random variable ...
In this chapter, we will first present the most standard computational challenges met in Bayesian St...
This paper considers parametric statistical decision problems conducted within a Bayesian nonparamet...
Research on Bayesian nonparametric methods has received a growing interest for the past twenty years...
Research on Bayesian nonparametric methods has received a growing interest for the past twenty years...
Approaches for statistical inference Introduction Motivating Vignettes Defining the Approaches ...
Bayesian methods for statistical analysis is a book on statistical methods for analysing a wide vari...
This is a revised version of a chapter written for the Handbook of Computational Statistics, edited ...
This is a revised version of a chapter written for the Handbook of Computational Statistics, edited ...
A key problem in statistical modeling is model selection, how to choose a model at an appropriate le...
One desirable property of machine learning algorithms is the ability to balance the number of p...
One desirable property of machine learning algorithms is the ability to balance the number of p...
Modelling is fundamental to many fields of science and engineering. A model can be thought of as a r...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
This thesis introduces novel nonparametric Bayesian regression methods and utilises modern Markov ch...
Bayesian nonparametrics are Bayesian models where the underlying finite-dimensional random variable ...
In this chapter, we will first present the most standard computational challenges met in Bayesian St...
This paper considers parametric statistical decision problems conducted within a Bayesian nonparamet...
Research on Bayesian nonparametric methods has received a growing interest for the past twenty years...
Research on Bayesian nonparametric methods has received a growing interest for the past twenty years...
Approaches for statistical inference Introduction Motivating Vignettes Defining the Approaches ...
Bayesian methods for statistical analysis is a book on statistical methods for analysing a wide vari...
This is a revised version of a chapter written for the Handbook of Computational Statistics, edited ...
This is a revised version of a chapter written for the Handbook of Computational Statistics, edited ...