The BUGS Book : A Practical Introduction to Bayesian Analysis

Title: The BUGS Book : A Practical Introduction to Bayesian Analysis
Author: Andrew Thomas, Chris Jackson, David Lunn, David Spiegelhalter, Nicky Best
ISBN: 1584888490 / 9781584888499
Format: Soft Cover
Pages: 399
Publisher: CHAPMAN & HALL
Year: 2013
Availability: 2 to 3 weeks

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Bayesian statistical methods have become widely used for data analysis and modelling in recent years, and the BUGS software has become the most popular software for Bayesian analysis worldwide. Authored by the team that originally developed this software, The BUGS Book provides a practical introduction to this program and its use. The text presents complete coverage of all the functionalities of BUGS, including prediction, missing data, model criticism, and prior sensitivity. It also features a large number of worked examples and a wide range of applications from various disciplines.

The book introduces regression models, techniques for criticism and comparison, and a wide range of modelling issues before going into the vital area of hierarchical models, one of the most common applications of Bayesian methods. It deals with essentials of modelling without getting bogged down in complexity. The book emphasises model criticism, model comparison, sensitivity analysis to alternative priors, and thoughtful choice of prior distributions—all those aspects of the "art" of modelling that are easily overlooked in more theoretical expositions.

More pragmatic than ideological, the authors systematically work through the large range of "tricks" that reveal the real power of the BUGS software, for example, dealing with missing data, censoring, grouped data, prediction, ranking, parameter constraints, and so on. Many of the examples are biostatistical, but they do not require domain knowledge and are generalisable to a wide range of other application areas.

Full code and data for examples, exercises, and some solutions can be found on the book’s website.

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Preface

Chapter 1 :
Introduction : Probability and Parameters
Chapter 2 : Monte Carlo Simulations Using BUGS
Chapter 3 : Introduction to Bayesian Inference
Chapter 4 : Introduction to Markov Chain Monte Carlo Methods
Chapter 5 : Prior Distributions
Chapter 6 : Regression Models
Chapter 7 : Categorical Data
Chapter 8 : Model Checking and Comparison
Chapter 9 : Issues in Modelling
Chapter 10 : Hierarchical Models
Chapter 11 : Specialised Models
Chapter 12 : Different Implementations of BUGS

Appendix A : BUGS Language Syntax
Appendix B : Functions in BUGS
Appendix C : Distributions in BUGS
Bibliography
Index