This book provides a unified introduction to a variety of computational algorithms for likelihood and Bayesian inference. In this second edition, I have attempted to expand the treatment of many of the techniques dis- cussed, as well as include important topics such as the Metropolis algorithm and methods for assessing the convergence of a Markov chain algorithm. Prerequisites for this book include an understanding of mathematical statistics at the level of Bickel and Doksum (1977), some understanding of the Bayesian approach as in Box and Tiao (1973), experience with condi- tional inference at the level of Cox and Snell (1989) and exposure to statistical models as found in Mc Cullagh and Neider (1989). I have chosen not to present the proofs of convergence or rates of convergence since these proofs may require substantial background in Markov chain theory which is beyond the scope ofthis book. However, references to these proofs are given. There has been an explosion of papers in the area of Markov chain Monte Carlo in the last five years. I have attempted to identify key references – though due to the volatility of the field some work may have been missed.
Martin A. Tanner
Tools for Statistical Inference [PDF ebook]
Methods for the Exploration of Posterior Distributions and Likelihood Functions
Tools for Statistical Inference [PDF ebook]
Methods for the Exploration of Posterior Distributions and Likelihood Functions
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Língua Inglês ● Formato PDF ● ISBN 9781468401929 ● Editora Springer New York ● Publicado 2012 ● Carregável 3 vezes ● Moeda EUR ● ID 4713078 ● Proteção contra cópia Adobe DRM
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