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Index
Cover Image Table of Contents Front Matter Copyright Dedication Chapter 1. This Book's Organization 1.1. Real People can Read This Book 1.2. Prerequisites 1.3. The Organization of This Book 1.4. Gimme Feedback (Be Polite) 1.5. Acknowledgments Chapter 2. Introduction 2.1. Models of Observations and Models of Beliefs 2.2. Three Goals for Inference from Data 2.3. The R Programming Language 2.4. Exercises Chapter 3. What Is This Stuff Called Probability? 3.1. The Set of All Possible Events 3.2. Probability: Outside or Inside the Head 3.3. Probability Distributions 3.4. Two-Way Distributions 3.5. R Code 3.6. Exercises Chapter 4. Bayes' Rule 4.1. Bayes' Rule 4.2. Applied to Models and Data 4.3. The Three Goals of Inference 4.4. R Code 4.5. Exercises Chapter 5. Inferring a Binomial Proportion via Exact Mathematical Analysis 5.1. The Likelihood Function: Bernoulli Distribution 5.2. A Description of Beliefs: The Beta Distribution 5.3. Three Inferential Goals 5.4. Summary: How to do Bayesian Inference 5.5. R Code 5.6. Exercises Chapter 6. Inferring a Binomial Proportion via Grid Approximation 6.1. Bayes' Rule for Discrete Values of θ 6.2. Discretizing a Continuous Prior Density 6.3. Estimation 6.4. Prediction of Subsequent Data 6.5. Model Comparison 6.6. Summary 6.7. R Code 6.8. Exercises Chapter 7. Inferring a Binomial Proportion via the Metropolis Algorithm 7.1. A Simple Case of the Metropolis Algorithm 7.2. The Metropolis Algorithm More Generally 7.3. From the Sampled Posterior to the Three Goals 7.4. MCMC in BUGS 7.5. Conclusion 7.6. R Code 7.7. Exercises Chapter 8. Inferring Two Binomial Proportions via Gibbs Sampling 8.1. Prior, Likelihood, and Posterior for Two Proportions 8.2. The Posterior via Exact Formal Analysis 8.3. The Posterior via Grid Approximation 8.4. The Posterior via Markov Chain Monte Carlo 8.5. Doing it with BUGS 8.6. How Different are the Underlying Biases? 8.7. Summary 8.8. R Code 8.9. Exercises Chapter 9. Bernoulli Likelihood with Hierarchical Prior 9.1. A Single Coin from a Single Mint 9.2. Multiple Coins from a Single Mint 9.3. Multiple Coins from Multiple Mints 9.4. Summary 9.5. R Code 9.6. Exercises Chapter 10. Hierarchical Modeling and Model Comparison 10.1. Model Comparison as Hierarchical Modeling 10.2. Model Comparison in BUGS 10.3. Model Comparison and Nested Models 10.4. Review of Hierarchical Framework for Model Comparison 10.5. Exercises Chapter 11. Null Hypothesis Significance Testing 11.1. NHST for the Bias of a Coin 11.2. Prior Knowledge about the Coin 11.3. Confidence Interval and Highest Density Interval 11.4. Multiple Comparisons 11.5. What a Sampling Distribution is Good for 11.6. Exercises Chapter 12. Bayesian Approaches to Testing a Point (“Null”)Hypothesis 12.1. The Estimation (Single Prior) Approach 12.2. The Model-Comparison (Two-Prior) Approach 12.3. Estimation or Model Comparison? 12.4. R Code 12.5. Exercises Chapter 13. Goals, Power, and Sample Size 13.1. The Will to Power 13.2. Sample Size for a Single Coin 13.3. Sample Size for Multiple Mints 13.4. Power: Prospective, Retrospective, and Replication 13.5. The Importance of Planning 13.6. R Code 13.7. Exercises Chapter 14. Overview of the Generalized Linear Model 14.1. The Generalized Linear Model (GLM) 14.2. Cases of the GLM 14.3. Exercises Chapter 15. Metric Predicted Variable on a Single Group 15.1. Estimating the Mean and Precision of a Normal Likelihood 15.2. Repeated Measures and Individual Differences 15.3. Summary 15.4. R Code 15.5. Exercises Chapter 16. Metric Predicted Variable with One Metric Predictor 16.1. Simple Linear Regression 16.2. Outliers and Robust Regression 16.3. Simple Linear Regression with Repeated Measures 16.4. Summary 16.5. R Code 16.6. Exercises Chapter 17. Metric Predicted Variable with Multiple Metric Predictors 17.1. Multiple Linear Regression 17.2. Hyperpriors and Shrinkage of Regression Coefficients 17.3. Multiplicative Interaction of Metric Predictors 17.4. Which Predictors should be Included? 17.5. R Code 17.6. Exercises Chapter 18. Metric Predicted Variable with One Nominal Predictor 18.1. Bayesian Oneway ANOVA 18.2. Multiple Comparisons 18.3. Two-Group Bayesian ANOVA and the NHST t Test 18.4. R Code 18.5. Exercises Chapter 19. Metric Predicted Variable with Multiple Nominal Predictors 19.1. Bayesian Multifactor ANOVA 19.2. Repeated Measures, a.k.a. Within-Subject Designs 19.3. R Code 19.4. Exercises Chapter 20. Dichotomous Predicted Variable 20.1. Logistic Regression 20.2. Interaction of Predictors in Logistic Regression 20.3. Logistic ANOVA 20.4. Summary 20.5. R Code 20.6. Exercises Chapter 21. Ordinal Predicted Variable 21.1. Ordinal Probit Regression 21.2. Some Examples 21.3. Interaction 21.4. Relation to Linear and Logistic Regression 21.5. R Code 21.6. Exercises Chapter 22. Contingency Table Analysis 22.1. Poisson Exponential ANOVA 22.2. Examples 22.3. Log Linear Models for Contingency Tables 22.4. R Code for the Poisson Exponential Model 22.5. Exercises Chapter 23. Tools in the Trunk 23.1. Reporting a Bayesian Analysis 23.2. MCMC Burn-in and Thinning 23.3. Functions for Approximating Highest Density Intervals 23.4. Reparameterization of Probability Distributions References Index
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