Description

Book Synopsis
A hands-on introduction to computational statistics from a Bayesian point of view Providing a solid grounding in statistics while uniquely covering the topics from a Bayesian perspective, Understanding Computational Bayesian Statistics successfully guides readers through this new, cutting-edge approach.

Trade Review
"Understanding computational Bayesian statistics is an excellent book for courses on computational statistics at the advanced undergraduate and graduate levels. It is also a valuable reference for researchers and practitioners who use computer programs to conduct statistical analyses of data and solve problems in their everyday work." (Mathematical Reviews, 2011)

Table of Contents

Preface xi

1 Introduction to Bayesian Statistics I

1.1 The Frequentist Approach to Statistics 1

1.2 The Bayesian Approach to Statistics 3

1.3 Comparing Likelihood and Bayesian Approaches to Statistics 6

1.4 Computational Bayesian Statistics 19

1.5 Purpose and Organization of This Book 20

2 Monte Carlo Sampling from the Posterior 25

2.1 Acceptance-Rejection-Sampling 27

2.2 Sampling-Importance-Resampling 33

2.3 Adaptive-Rejection-Sampling from a Log-Concave Distribution 35

2.4 Why Direct Methods Are Inefficient for High-Dimension Parameter Space 42

3. Bayesian Inference 47

3.1 Bayesian Inference from the Numerical Posterior 47

3.2 Bayesian Inference from Posterior Random Sample 54

4. Bayesian Statistics Using Conjugate Priors 61

4.1 One-Dimensional Exponential Family of Densities 61

4.2 Distributions for Count Data 62

4.3 Distributions for Waiting Times 69

4.4 Normally Distributed Observations with Known Variance 75

4.5 Normally Distributed Observations with Known Mean 78

4.6 Normally Distributed Observations with Unknown Mean and Variance 80

4.7 Multivariate Normal Observations with Known Covariance Matrix 85

4.8 Observations from Normal Linear Regression Model 87

Appendix: Proof of Poisson Process Theorem 97

5. Markov Chains 101

5.1 Stochastic Processes 102

5.2 Markov Chains 103

5.3 Time-Invariant Markov Chains with Finite State Space 104

5.4 Classification of States of a Markov Chain 109

5.5 Sampling from a Markov Chain 114

5.6 Time-Reversible Markov Chains and Detailed Balance 117

5.7 Markov Chains with Continuous State Space 120

6. Markov Chain Monte Carlo Sampling from Posterior 127

6.1 Metropolis-Hastings Algorithm for a Single Parameter 130

6.2 Metropolis-Hastings Algorithm for Multiple Parameters 137

6.3 Blockwise Metropolis-Hastings Algorithm 144

6.4 Gibbs Sampling 149

6.5 Summary 150

7 Statistical Inference from a Markov Chain Monte Carlo Sample 159

7.1 Mixing Properties of the Chain 160

7.2 Finding a Heavy-Tailed Matched Curvature Candidate Density 162

7.3 Obtaining An Approximate Random Sample For Inference 168

Appendix: Procedure for Finding the Matched

Curvature Candidate Density for a Multivariate Parameter 176

8 Logistic Regression 179

8.1 Logistic Regression Model 180

8.2 Computational Bayesian Approach to the Logistic Regression Model 184

8.3 Modelling with the Multiple Logistic Regression Model 192

9 Poisson Regression and Proportional Hazards Model 203

9.1 Poisson Regression Model 204

9.2 Computational Approach to Poisson Regression Model 207

9.3 The Proportional Hazards Model 214

9.4 Computational Bayesian Approach to Proportional Hazards Model 218

10 Gibbs Sampling and Hierarchical Models 235

10.1 Gibbs Sampling Procedure 236

10.2 The Gibbs Sampler for the Normal Distribution 237

10.3 Hierarchical Models and Gibbs Sampling 242

10.4 Modelling Related Populations with Hierarchical Models 244

Appendix: Proof That Improper Jeffrey's Prior Distribution for the Hypervariance Can Lead to an
Improper Postenor 261

11 Going Forward with Markov Chain Monte Carlo 265

A Using the Included Minitab Macros 271

B Using the Included R Functions 289

References 307

Topic Index 313

Understanding Computational Bayesian Statistics

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    A Hardback by William M. Bolstad


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      Publisher: Wiley
      Publication Date: 15/01/2010
      ISBN13: 9780470046098, 978-0470046098
      ISBN10:

      Description

      Book Synopsis
      A hands-on introduction to computational statistics from a Bayesian point of view Providing a solid grounding in statistics while uniquely covering the topics from a Bayesian perspective, Understanding Computational Bayesian Statistics successfully guides readers through this new, cutting-edge approach.

      Trade Review
      "Understanding computational Bayesian statistics is an excellent book for courses on computational statistics at the advanced undergraduate and graduate levels. It is also a valuable reference for researchers and practitioners who use computer programs to conduct statistical analyses of data and solve problems in their everyday work." (Mathematical Reviews, 2011)

      Table of Contents

      Preface xi

      1 Introduction to Bayesian Statistics I

      1.1 The Frequentist Approach to Statistics 1

      1.2 The Bayesian Approach to Statistics 3

      1.3 Comparing Likelihood and Bayesian Approaches to Statistics 6

      1.4 Computational Bayesian Statistics 19

      1.5 Purpose and Organization of This Book 20

      2 Monte Carlo Sampling from the Posterior 25

      2.1 Acceptance-Rejection-Sampling 27

      2.2 Sampling-Importance-Resampling 33

      2.3 Adaptive-Rejection-Sampling from a Log-Concave Distribution 35

      2.4 Why Direct Methods Are Inefficient for High-Dimension Parameter Space 42

      3. Bayesian Inference 47

      3.1 Bayesian Inference from the Numerical Posterior 47

      3.2 Bayesian Inference from Posterior Random Sample 54

      4. Bayesian Statistics Using Conjugate Priors 61

      4.1 One-Dimensional Exponential Family of Densities 61

      4.2 Distributions for Count Data 62

      4.3 Distributions for Waiting Times 69

      4.4 Normally Distributed Observations with Known Variance 75

      4.5 Normally Distributed Observations with Known Mean 78

      4.6 Normally Distributed Observations with Unknown Mean and Variance 80

      4.7 Multivariate Normal Observations with Known Covariance Matrix 85

      4.8 Observations from Normal Linear Regression Model 87

      Appendix: Proof of Poisson Process Theorem 97

      5. Markov Chains 101

      5.1 Stochastic Processes 102

      5.2 Markov Chains 103

      5.3 Time-Invariant Markov Chains with Finite State Space 104

      5.4 Classification of States of a Markov Chain 109

      5.5 Sampling from a Markov Chain 114

      5.6 Time-Reversible Markov Chains and Detailed Balance 117

      5.7 Markov Chains with Continuous State Space 120

      6. Markov Chain Monte Carlo Sampling from Posterior 127

      6.1 Metropolis-Hastings Algorithm for a Single Parameter 130

      6.2 Metropolis-Hastings Algorithm for Multiple Parameters 137

      6.3 Blockwise Metropolis-Hastings Algorithm 144

      6.4 Gibbs Sampling 149

      6.5 Summary 150

      7 Statistical Inference from a Markov Chain Monte Carlo Sample 159

      7.1 Mixing Properties of the Chain 160

      7.2 Finding a Heavy-Tailed Matched Curvature Candidate Density 162

      7.3 Obtaining An Approximate Random Sample For Inference 168

      Appendix: Procedure for Finding the Matched

      Curvature Candidate Density for a Multivariate Parameter 176

      8 Logistic Regression 179

      8.1 Logistic Regression Model 180

      8.2 Computational Bayesian Approach to the Logistic Regression Model 184

      8.3 Modelling with the Multiple Logistic Regression Model 192

      9 Poisson Regression and Proportional Hazards Model 203

      9.1 Poisson Regression Model 204

      9.2 Computational Approach to Poisson Regression Model 207

      9.3 The Proportional Hazards Model 214

      9.4 Computational Bayesian Approach to Proportional Hazards Model 218

      10 Gibbs Sampling and Hierarchical Models 235

      10.1 Gibbs Sampling Procedure 236

      10.2 The Gibbs Sampler for the Normal Distribution 237

      10.3 Hierarchical Models and Gibbs Sampling 242

      10.4 Modelling Related Populations with Hierarchical Models 244

      Appendix: Proof That Improper Jeffrey's Prior Distribution for the Hypervariance Can Lead to an
      Improper Postenor 261

      11 Going Forward with Markov Chain Monte Carlo 265

      A Using the Included Minitab Macros 271

      B Using the Included R Functions 289

      References 307

      Topic Index 313

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