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Applied Bayesian statistics : with R and OpenBUGS examples / Mary Kathryn Cowles.

By: Material type: TextTextSeries: Springer texts in statisticsPublication details: New York : Springer, �2013.Description: xiv, 232 pages : illustrations (some color) ; 24 cmContent type:
  • text
Media type:
  • unmediated
Carrier type:
  • volume
ISBN:
  • 9781489997043
Subject(s): DDC classification:
  • 300.1 22 COA
Online resources:
Contents:
1. What is Bayesian statistics? -- 2. Review of probability -- 3. Introduction to one-parameter models : estimating a population proportion -- 4. Inference for a population proportion -- 5. Special considerations in Bayesian inference -- 6. Other one-parameter models and their conjugate priors -- 7. More realism please : introduction to multiparameter models -- 8. Fitting more complex Bayesian models : Markov chain Monte Carlo -- 9. Hierarchical models and more on convergence assessment -- 10. Regression on hierarchical regression models -- 11. Model comparison, model checking, and hypothesis testing.
Abstract: This book is based on over a dozen years teaching a Bayesian Statistics course. The material presented here has been used by students of different levels and disciplines, including advanced undergraduates studying Mathematics and Statistics and students in graduate programs in Statistics, Biostatistics, Engineering, Economics, Marketing, Pharmacy, and Psychology. The goal of the book is to impart the basics of designing and carrying out Bayesian analyses, and interpreting and communicating the results. In addition, readers will learn to use the predominant software for Bayesian model-fitting, R and OpenBUGS. The practical approach this book takes will help students of all levels to build understanding of the concepts and procedures required to answer real questions by performing Bayesian analysis of real data. Topics covered include comparing and contrasting Bayesian and classical methods, specifying hierarchical models, and assessing Markov chain Monte Carlo output. -- P.4 of cover.
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Holdings
Item type Current library Call number Copy number Status Date due Barcode
Books Books Central Library, SUST General Stacks 300.1 COA (Browse shelf(Opens below)) 1 Available 0078782
Books Books Central Library, SUST General Stacks 300.1 COA (Browse shelf(Opens below)) 2 Available 0078783
Books Books Central Library, SUST General Stacks 300.1 COA (Browse shelf(Opens below)) 3 Available 0078982
Books Books Central Library, SUST General Stacks 300.1 COA (Browse shelf(Opens below)) 4 Available 0078983

Includes bibliographical references (pages 227-229) and index.

1. What is Bayesian statistics? -- 2. Review of probability -- 3. Introduction to one-parameter models : estimating a population proportion -- 4. Inference for a population proportion -- 5. Special considerations in Bayesian inference -- 6. Other one-parameter models and their conjugate priors -- 7. More realism please : introduction to multiparameter models -- 8. Fitting more complex Bayesian models : Markov chain Monte Carlo -- 9. Hierarchical models and more on convergence assessment -- 10. Regression on hierarchical regression models -- 11. Model comparison, model checking, and hypothesis testing.

This book is based on over a dozen years teaching a Bayesian Statistics course. The material presented here has been used by students of different levels and disciplines, including advanced undergraduates studying Mathematics and Statistics and students in graduate programs in Statistics, Biostatistics, Engineering, Economics, Marketing, Pharmacy, and Psychology. The goal of the book is to impart the basics of designing and carrying out Bayesian analyses, and interpreting and communicating the results. In addition, readers will learn to use the predominant software for Bayesian model-fitting, R and OpenBUGS. The practical approach this book takes will help students of all levels to build understanding of the concepts and procedures required to answer real questions by performing Bayesian analysis of real data. Topics covered include comparing and contrasting Bayesian and classical methods, specifying hierarchical models, and assessing Markov chain Monte Carlo output. -- P.4 of cover.

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