Data analysis sometimes requires the relaxation of parametric assumptions in order to gain modeling flexibility and robustness against mis-specification of the probability model. In the Bayesian context, this is accomplished by placing a prior distribution on a function space, such as the space of all probability distributions or the space of all regression functions. Unfortunately, posterior distributions ranging over function spaces are highly complex and hence sampling methods play a key role. This paper provides an introduction to a simple, yet comprehensive, set of programs for the implementation of some Bayesian nonparametric and semiparametric models in R, DPpackage. Currently, DPpackage includes models for marginal and conditional d...
Prior specification for non-parametric Bayesian inference involves the difficult task of quantifying...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
The definition of vectors of dependent random probability measures is a topic of interest in Bayesi...
Data analysis sometimes requires the relaxation of parametric assumptions in order to gain modeling ...
International audienceRobust statistical data modelling under potential model mis-specification ofte...
We introduce an R package, bspmma, which implements a Dirichlet-based random effects model specific ...
The Bayesian spectral analysis model (BSAM) is a powerful tool to deal with semiparametric methods i...
BNPmix is an R package for Bayesian nonparametric multivariate density estima-tion, clustering, and ...
We introduce MCMCpack, an R package that contains functions to perform Bayesian inference using post...
There has been dramatic growth in the development and application of Bayesian inference in statistic...
We introduce MCMCpack, an R package that contains functions to perform Bayesian inference using pos...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
Bayesian nonparametric inference is a relatively young area of research and it has recently undergon...
A common assumption in statistics is that a random sample from a target distribution is available. B...
Prior specification for non-parametric Bayesian inference involves the difficult task of quantifying...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
The definition of vectors of dependent random probability measures is a topic of interest in Bayesi...
Data analysis sometimes requires the relaxation of parametric assumptions in order to gain modeling ...
International audienceRobust statistical data modelling under potential model mis-specification ofte...
We introduce an R package, bspmma, which implements a Dirichlet-based random effects model specific ...
The Bayesian spectral analysis model (BSAM) is a powerful tool to deal with semiparametric methods i...
BNPmix is an R package for Bayesian nonparametric multivariate density estima-tion, clustering, and ...
We introduce MCMCpack, an R package that contains functions to perform Bayesian inference using post...
There has been dramatic growth in the development and application of Bayesian inference in statistic...
We introduce MCMCpack, an R package that contains functions to perform Bayesian inference using pos...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
Bayesian nonparametric inference is a relatively young area of research and it has recently undergon...
A common assumption in statistics is that a random sample from a target distribution is available. B...
Prior specification for non-parametric Bayesian inference involves the difficult task of quantifying...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
The definition of vectors of dependent random probability measures is a topic of interest in Bayesi...