A Bayesian approach to the classification problem is proposed in which random partitions play a central role. It is argued that the partitioning approach has the capacity to take advantage of a variety of large-scale spatial structures, if they are present in the unknown regression function $f_0$. An idealized one-dimensional problem is considered in detail. The proposed nonparametric prior uses random split points to partition the unit interval into a random number of pieces. This prior is found to provide a consistent estimate of the regression function in the $\L^p$ topology, for any $1 \leq p < \infty$, and for arbitrary measurable $f_0:[0,1] \rightarrow [0,1]$. A Markov chain Monte Carlo (MCMC) implementation is outlined and analyzed. ...
This paper reviews recent ideas in Bayesian classification modelling via partitioning. These methods...
<p>We propose nonparametric Bayesian models for supervised dimension</p><p>reduction and regression ...
International audienceOne of the central issues in statistics and machine learning is how to select...
In this paper we propose a new Bayesian approach to data modelling. The Bayesian partition model con...
Bayesian Statistics has been increasingly popular in the last five decades. Besides having decision ...
This article proposes a new Bayesian approach to prediction on continuous covariates. The Bayesian p...
In recent years, there has been increasing interest in Bayesian nonparametric methods for high-dimen...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
We consider Bayesian inference in the linear regression problem with an unknown error distribution t...
This paper focuses on the problem of choosing a prior for an unknown random effects dis-tribution wi...
<p>The dissertation focuses on solving some important theoretical and methodological problems associ...
This paper reviews recent ideas in Bayesian classification modelling via partitioning. These methods...
This paper reviews recent ideas in Bayesian classification modelling via partitioning. These methods...
<p>We propose nonparametric Bayesian models for supervised dimension</p><p>reduction and regression ...
International audienceOne of the central issues in statistics and machine learning is how to select...
In this paper we propose a new Bayesian approach to data modelling. The Bayesian partition model con...
Bayesian Statistics has been increasingly popular in the last five decades. Besides having decision ...
This article proposes a new Bayesian approach to prediction on continuous covariates. The Bayesian p...
In recent years, there has been increasing interest in Bayesian nonparametric methods for high-dimen...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
We consider Bayesian inference in the linear regression problem with an unknown error distribution t...
This paper focuses on the problem of choosing a prior for an unknown random effects dis-tribution wi...
<p>The dissertation focuses on solving some important theoretical and methodological problems associ...
This paper reviews recent ideas in Bayesian classification modelling via partitioning. These methods...
This paper reviews recent ideas in Bayesian classification modelling via partitioning. These methods...
<p>We propose nonparametric Bayesian models for supervised dimension</p><p>reduction and regression ...
International audienceOne of the central issues in statistics and machine learning is how to select...