Sampling from a truncated multivariate normal distribution (TMVND) constitutes the core computational module in fitting many statistical and econometric models. We propose two efficient methods, an iterative data augmentation (DA) algorithm and a non-iterative inverse Bayes formulae (IBF) sampler, to simulate TMVND and generalize them to multivariate normal distributions with linear inequality constraints. By creating a Bayesian incomplete-data structure, the posterior step of the DA algorithm directly generates random vector draws as opposed to single element draws, resulting obvious computational advantage and easy coding with common statistical software packages such as S-PLUS, MATLAB and GAUSS. Furthermore, the DA provides a ready struc...
We provide an efficient algorithm for the classical problem, going back to Galton, Pearson,and Fishe...
International audienceThis paper derives two new optimization-driven Monte Carlo algorithms inspired...
The inverse distribution function method for drawing randomly from normal and truncated normal distr...
Sampling from a truncated multivariate distribution subject to multiple linear inequal-ity constrain...
In this paper we propose an efficient Gibbs sampler for simulation of a multivariate normal random v...
International audienceGenerating multivariate normal distributions is widely used in various fields,...
This 1992 paper appeared in 1995 in Statistics and Computing and the gist of it is contained in Mont...
AbstractThis note critiques a procedure suggested by Ahmad and Abd-El-Hakim for drawing random sampl...
International audienceStatistical researchers have shown increasing interest in generating truncated...
In longitudinal studies with small samples and incomplete data, multivariate normal-based models con...
International audienceStatistical researchers have shown increased interest in generating of truncat...
Truncated observations for some applications and parameters with a certain kind of constraints may p...
Many practical simulation tasks demand procedures to draw samples efficiently from multivariate trun...
The inverse distribution function method for drawing randomly from normal andtruncated normal distri...
We provide an efficient algorithm for the classical problem, going back to Galton, Pearson,and Fishe...
International audienceThis paper derives two new optimization-driven Monte Carlo algorithms inspired...
The inverse distribution function method for drawing randomly from normal and truncated normal distr...
Sampling from a truncated multivariate distribution subject to multiple linear inequal-ity constrain...
In this paper we propose an efficient Gibbs sampler for simulation of a multivariate normal random v...
International audienceGenerating multivariate normal distributions is widely used in various fields,...
This 1992 paper appeared in 1995 in Statistics and Computing and the gist of it is contained in Mont...
AbstractThis note critiques a procedure suggested by Ahmad and Abd-El-Hakim for drawing random sampl...
International audienceStatistical researchers have shown increasing interest in generating truncated...
In longitudinal studies with small samples and incomplete data, multivariate normal-based models con...
International audienceStatistical researchers have shown increased interest in generating of truncat...
Truncated observations for some applications and parameters with a certain kind of constraints may p...
Many practical simulation tasks demand procedures to draw samples efficiently from multivariate trun...
The inverse distribution function method for drawing randomly from normal andtruncated normal distri...
We provide an efficient algorithm for the classical problem, going back to Galton, Pearson,and Fishe...
International audienceThis paper derives two new optimization-driven Monte Carlo algorithms inspired...
The inverse distribution function method for drawing randomly from normal and truncated normal distr...