Cover Page

Contents

Cover

Title Page

Copyright

Dedication

Preface

Preface to the First Edition

Chapter 1: Preliminaries

1.1 Probability and Bayes’ Theorem

1.2 Examples on Bayes’ Theorem

1.3 Random variables

1.4 Several random variables

1.5 Means and variances

1.6 Exercises on Chapter 1

Chapter 2: Bayesian inference for the normal distribution

2.1 Nature of Bayesian inference

2.2 Normal prior and likelihood

2.3 Several normal observations with a normal prior

2.4 Dominant likelihoods

2.5 Locally uniform priors

2.6 Highest density regions

2.7 Normal variance

2.8 HDRs for the normal variance

2.9 The role of sufficiency

2.10 Conjugate prior distributions

2.11 The exponential family

2.12 Normal mean and variance both unknown

2.13 Conjugate joint prior for the normal distribution

2.14 Exercises on Chapter 2

Chapter 3: Some other common distributions

3.1 The binomial distribution

3.2 Reference prior for the binomial likelihood

3.3 Jeffreys’ rule

3.4 The Poisson distribution

3.5 The uniform distribution

3.6 Reference prior for the uniform distribution

3.7 The tramcar problem

3.8 The first digit problem; invariant priors

3.9 The circular normal distribution

3.10 Approximations based on the likelihood

3.11 Reference posterior distributions

3.12 Exercises on Chapter 3

Chapter 4: Hypothesis testing

4.1 Hypothesis testing

4.2 One-sided hypothesis tests

4.3 Lindley’s method

4.4 Point (or sharp) null hypotheses with prior information

4.5 Point null hypotheses for the normal distribution

4.6 The Doogian philosophy

4.7 Exercises on Chapter 4

Chapter 5: Two-sample problems

5.1 Two-sample problems – both variances unknown

5.2 Variances unknown but equal

5.3 Variances unknown and unequal (Behrens–Fisher problem)

5.4 The Behrens–Fisher controversy

5.5 Inferences concerning a variance ratio

5.6 Comparison of two proportions; the $2 imes 2$ table

5.7 Exercises on Chapter 5

Chapter 6: Correlation, regression and the analysis of variance

6.1 Theory of the correlation coefficient

6.2 Examples on the use of the correlation coefficient

6.3 Regression and the bivariate normal model

6.4 Conjugate prior for the bivariate regression model

6.5 Comparison of several means – the one way model

6.6 The two way layout

6.7 The general linear model

6.8 Exercises on Chapter 6

Chapter 7: Other topics

7.1 The likelihood principle

7.2 The stopping rule principle

7.3 Informative stopping rules

7.4 The likelihood principle and reference priors

7.5 Bayesian decision theory

7.6 Bayes linear methods

7.7 Decision theory and hypothesis testing

7.8 Empirical Bayes methods

7.9 Exercises on Chapter 7

Chapter 8: Hierarchical models

8.1 The idea of a hierarchical model

8.2 The hierarchical normal model

8.3 The baseball example

8.4 The Stein estimator

8.5 Bayesian analysis for an unknown overall mean

8.6 The general linear model revisited

8.7 Exercises on Chapter 8

Chapter 9: The Gibbs sampler and other numerical methods

9.1 Introduction to numerical methods

9.2 The EM algorithm

9.3 Data augmentation by Monte Carlo

9.4 The Gibbs sampler

9.5 Rejection sampling

9.6 The Metropolis–Hastings algorithm

9.7 Introduction to WinBUGS and OpenBUGS

9.8 Generalized linear models

9.9 Exercises on Chapter 9

Chapter 10: Some approximate methods

10.1 Bayesian importance sampling

10.2 Variational Bayesian methods: simple case

10.3 Variational Bayesian methods: general case

10.4 ABC: Approximate Bayesian Computation

10.5 Reversible jump Markov chain Monte Carlo

10.6 Exercises on Chapter 10

Appendix A: Common statistical distributions

A.1 Normal distribution

A.2 Chi-squared distribution

A.3 Normal approximation to chi-squared

A.4 Gamma distribution

A.5 Inverse chi-squared distribution

A.6 Inverse chi distribution

A.7 Log chi-squared distribution

A.8 Student’s t distribution

A.9 Normal/chi-squared distribution

A.10 Beta distribution

A.11 Binomial distribution

A.12 Poisson distribution

A.13 Negative binomial distribution

A.14 Hypergeometric distribution

A.15 Uniform distribution

A.16 Pareto distribution

A.17 Circular normal distribution

A.18 Behrens’ distribution

A.19 Snedecor’s F distribution

A.20 Fisher’s z distribution

A.21 Cauchy distribution

A.22 The probability that one beta variable is greater than another

A.23 Bivariate normal distribution

A.24 Multivariate normal distribution

A.25 Distribution of the correlation coefficient

Appendix B: Tables

Appendix C: R programs

Appendix D: Further reading

D.1 Robustness

D.2 Nonparametric methods

D.3 Multivariate estimation

D.4 Time series and forecasting

D.5 Sequential methods

D.6 Numerical methods

D.7 Bayesian networks

D.8 General reading

References

Index

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