This paper is based on the application of a Bayesian model to a clinical trial study to determine a more effective treatment to lower mortality rates and consequently to increase survival times among patients with lung cancer. In this study, Qian et al. [13] strived to determine if a Weibull survival model can be used to decide whether to stop a clinical trial. The traditional Gibbs sampler was used to estimate the model parameters. This paper proposes to use the independent steady-state Gibbs sampling (ISSGS) approach, introduced by Dunbar et al. [3], to improve the original Gibbs sampler in multidimensional problems. It is demonstrated that ISSGS provides accuracy with unbiased estimation and improves the performance and convergence of th...
Many real-world Bayesian inference problems such as preference learning or trader valuation modeling...
In this paper we obtain a closed form expression for the convergence rate of the Gibbs sampler appli...
In the investigation of disease dynamics, the effect of covariates on the hazard function is a major...
Markov Chain Monte Carlo (MCMC) methods, in particular, the Gibbs sampler, are widely used algorithm...
Markov chain Monte Carlo methods, in particular, the Gibbs sampler, are widely used algorithms both ...
Gibbs sampler as a computer-intensive algorithm is an important statistical tool both in application...
Gibbs sampler as a computer-intensive algorithm is an important statistical tool both in application...
A general Gibbs sampling algorithm for analyzing a broad class of linear models under a Bayesian fra...
The article briefly reviews the history, literature, and form of the Gibbs sampler. An importance sa...
We consider Bayesian estimation of a sample selection model and propose a highly efficient Gibbs sam...
INTRODUCTION Markov chain Monte Carlo methods have enjoyed a surge of interest since Gelfand and Sm...
Bayesian reasoning, survival analysis and multi-state models are used to assess survival times for S...
(Statistics) A BAYESIAN WEIBULL SURVIVAL MODEL by Jiang Qian Institute of Statistics and Decision...
<p>We consider the computational and statistical issues for high-dimensional Bayesian model selectio...
textabstractWe present a road map for effective application of Bayesian analysis of a class of well-...
Many real-world Bayesian inference problems such as preference learning or trader valuation modeling...
In this paper we obtain a closed form expression for the convergence rate of the Gibbs sampler appli...
In the investigation of disease dynamics, the effect of covariates on the hazard function is a major...
Markov Chain Monte Carlo (MCMC) methods, in particular, the Gibbs sampler, are widely used algorithm...
Markov chain Monte Carlo methods, in particular, the Gibbs sampler, are widely used algorithms both ...
Gibbs sampler as a computer-intensive algorithm is an important statistical tool both in application...
Gibbs sampler as a computer-intensive algorithm is an important statistical tool both in application...
A general Gibbs sampling algorithm for analyzing a broad class of linear models under a Bayesian fra...
The article briefly reviews the history, literature, and form of the Gibbs sampler. An importance sa...
We consider Bayesian estimation of a sample selection model and propose a highly efficient Gibbs sam...
INTRODUCTION Markov chain Monte Carlo methods have enjoyed a surge of interest since Gelfand and Sm...
Bayesian reasoning, survival analysis and multi-state models are used to assess survival times for S...
(Statistics) A BAYESIAN WEIBULL SURVIVAL MODEL by Jiang Qian Institute of Statistics and Decision...
<p>We consider the computational and statistical issues for high-dimensional Bayesian model selectio...
textabstractWe present a road map for effective application of Bayesian analysis of a class of well-...
Many real-world Bayesian inference problems such as preference learning or trader valuation modeling...
In this paper we obtain a closed form expression for the convergence rate of the Gibbs sampler appli...
In the investigation of disease dynamics, the effect of covariates on the hazard function is a major...