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Original Articles

Note on the Sampling Distribution for the Metropolis-Hastings Algorithm

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Pages 775-789 | Published online: 02 Sep 2006
 

Abstract

The Metropolis-Hastings algorithm has been important in the recent development of Bayes methods. This algorithm generates random draws from a target distribution utilizing a sampling (or proposal) distribution. This article compares the properties of three sampling distributions—the independence chain, the random walk chain, and the Taylored chain suggested by Geweke and Tanizaki (Geweke, J., Tanizaki, H. (Citation1999). On Markov Chain Monte-Carlo methods for nonlinear and non-Gaussian state-space models. Communications in Statistics, Simulation and Computation 28(4):867–894, Geweke, J., Tanizaki, H. (Citation2001). Bayesian estimation of state-space model using the Metropolis-Hastings algorithm within Gibbs sampling. Computational Statistics and Data Analysis 37(2):151–170).

Acknowledgment

We would like to acknowledge the constructive comments of the Editor N. Balakrishnan.

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