The availability of datasets with large numbers of variables is rapidly increasing. The effective application of Bayesian variable selection methods for regression with these datasets has proved difficult since available Markov chain Monte Carlo methods do not perform well in typical problem sizes of interest. We propose new adaptive Markov chain Monte Carlo algorithms to address this shortcoming. The adaptive design of these algorithms exploits the observation that in large-p, small-n settings, the majority of the p variables will be approximately uncorrelated a posteriori. The algorithms adaptively build suitable nonlocal proposals that result in moves with squared jumping distance significantly larger than standard methods. Their perfor...
Bayesian variable selection is an important method for discovering variables which are most useful f...
One flexible technique for model search in probit regression is Markov chain Monte Carlo methodolog...
This paper reviews global-local prior distributions for Bayesian inference in high-dimensional regre...
We introduce a framework for efficient Markov chain Monte Carlo algorithms targeting discrete-valued...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
This article describes a method for efficient posterior simulation for Bayesian variable selection i...
We describe adaptive Markov chain Monte Carlo (MCMC) methods for sampling posterior distributions ar...
Developing an efficient computational scheme for high-dimensional Bayesian variable selection in gen...
A new class of Markov chain Monte Carlo (MCMC) algorithms, based on simulating piecewise determinist...
Traditional algorithms for Bayesian posterior inference require processing the entire dataset in eac...
International audienceThis paper introduces a new Markov Chain Monte Carlo method for Bayesian varia...
[[abstract]]In Bayesian variable selection methods, MCMC algorithms are used to obtained the posteri...
Yang et al. (2016) proved that the symmetric random walk Metropolis--Hastings algorithm for Bayesian...
A simple and efficient adaptive Markov Chain Monte Carlo (MCMC) method, called the Metropolized Adap...
We propose a Monte Carlo algorithm to sample from high-dimensional probability distributions that co...
Bayesian variable selection is an important method for discovering variables which are most useful f...
One flexible technique for model search in probit regression is Markov chain Monte Carlo methodolog...
This paper reviews global-local prior distributions for Bayesian inference in high-dimensional regre...
We introduce a framework for efficient Markov chain Monte Carlo algorithms targeting discrete-valued...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
This article describes a method for efficient posterior simulation for Bayesian variable selection i...
We describe adaptive Markov chain Monte Carlo (MCMC) methods for sampling posterior distributions ar...
Developing an efficient computational scheme for high-dimensional Bayesian variable selection in gen...
A new class of Markov chain Monte Carlo (MCMC) algorithms, based on simulating piecewise determinist...
Traditional algorithms for Bayesian posterior inference require processing the entire dataset in eac...
International audienceThis paper introduces a new Markov Chain Monte Carlo method for Bayesian varia...
[[abstract]]In Bayesian variable selection methods, MCMC algorithms are used to obtained the posteri...
Yang et al. (2016) proved that the symmetric random walk Metropolis--Hastings algorithm for Bayesian...
A simple and efficient adaptive Markov Chain Monte Carlo (MCMC) method, called the Metropolized Adap...
We propose a Monte Carlo algorithm to sample from high-dimensional probability distributions that co...
Bayesian variable selection is an important method for discovering variables which are most useful f...
One flexible technique for model search in probit regression is Markov chain Monte Carlo methodolog...
This paper reviews global-local prior distributions for Bayesian inference in high-dimensional regre...