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7. Markov Chain Monte Carlo
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Chapters in this book
- Frontmatter i
- Contents v
- Preface ix
-
I. Fundamentals
- 1. Preview 1
- 2. Deterministic Models 17
- 3. Principles of Probability 29
- 4. Likelihood 71
- 5. Simple Bayesian Models 79
- 6. Hierarchical Bayesian Models 107
-
II. Implementation
- Introduction 143
- 7. Markov Chain Monte Carlo 145
- 8. Inference from a Single Model 181
- 9. Inference from Multiple Models 209
-
III. Practice in Model Building
- Introduction 231
- 10. Writing Bayesian Models 233
- 11. Problems 243
- 12. Solutions 251
- Afterword 273
- Acknowledgments 277
- Appendix A. 279
- Bibliography 283
- Index 293
Chapters in this book
- Frontmatter i
- Contents v
- Preface ix
-
I. Fundamentals
- 1. Preview 1
- 2. Deterministic Models 17
- 3. Principles of Probability 29
- 4. Likelihood 71
- 5. Simple Bayesian Models 79
- 6. Hierarchical Bayesian Models 107
-
II. Implementation
- Introduction 143
- 7. Markov Chain Monte Carlo 145
- 8. Inference from a Single Model 181
- 9. Inference from Multiple Models 209
-
III. Practice in Model Building
- Introduction 231
- 10. Writing Bayesian Models 233
- 11. Problems 243
- 12. Solutions 251
- Afterword 273
- Acknowledgments 277
- Appendix A. 279
- Bibliography 283
- Index 293