Table of Contents
Preface.
1. Introduction.
1.1 Two Examples.
1.1.1
Public School
Class Sizes.
1.1.2 Value at Risk.
1.2 Observables, Unobservables, and Objects of Interest.
1.3 Conditioning and Updating.
1.4 Simulators.
1.5 Modeling.
1.6 Decisionmaking.
2. Elements of Bayesian Inference.
2.1 Basics.
2.2 Sufficiency, Ancillarity, and Nuisance Parameters.
2.2.1 Sufficiency.
2.2.2 Ancillarity.
2.2.3 Nuisance Parameters.
2.3 Conjugate Prior Distributions.
2.4 Bayesian Decision Theory and Point Estimation.
2.5 Credible Sets.
2.6 Model Comparison.
2.6.1 Marginal Likelihoods.
2.6.2 Predictive Densities.
3. Topics in Bayesian Inference.
3.1 Hierarchical Priors and Latent Variables.
3.2 Improper Prior Distributions.
3.3 Prior Robustness and the Density Ratio Class.
3.4 Asymptotic Analysis.
3.5 The Likelihood Principle.
4. Posterior Simulation.
4.1 Direct Sampling,.
4.2 Acceptance and Importance Sampling.
4.2.1 Acceptance Sampling.
4.2.2 Importance Sampling.
4.3 Markov Chain
Monte Carlo
.
4.3.1 The Gibbs Sampler.
4.3.2 The MetropolisHastings Algorithm.
4.4 Variance Reduction.
4.4.1 Concentrated Expectations.
4.4.2 Antithetic Sampling.
4.5 Some Continuous State Space Markov Chain Theory.
4.5.1 Convergence of the Gibbs Sampler.
4.5.2 Convergence of the MetropolisHastings Algorithm.
4.6 Hybrid Markov Chain Monte Carlo Methods.
4.6.1 Transition Mixtures.
4.6.2 Metropolis within Gibbs.
4.7 Numerical Accuracy and Convergence in Markov Chain
Monte Carlo
.
5. Linear Models.
5.1 BACC and the
Normal
Linear Regression Model.
5.2 Seemingly Unrelated Regressions Models.
5.3 Linear Constraints in the Linear Model.
5.3.1 Linear Inequality Constraints.
5.3.2 Conjectured Linear Restrictions, Linear Inequality Constraints, and Covariate Selection.
5.4 Nonlinear Regression.
5.4.1 Nonlinear Regression with Smoothness Priors.
5.4.2 Nonlinear Regression with Basis Functions.
6. Modeling with Latent Variables.
6.1 Censored
Normal
Linear Models.
6.2 Probit Linear Models.
6.3 The
Independent
Finite
State
Model.
6.4 Modeling with Mixtures of Normal Distributions.
6.4.1 The Independent Student-t Linear Model.
6.4.2 Normal Mixture Linear Models.
6.4.3 Generalizing the Observable Outcomes.
7. Modeling for Time Series.
7.1 Linear Models with Serial Correlation.
7.2 The
First-Order
Markov
Finite
State
Model.
7.2.1 Inference in the Nonstationary Model.
7.2.2 Inference in the Stationary Model.
7.3 Markov Normal Mixture Linear Model.
8. Bayesian Investigation.
8.1 Implementing Simulation Methods.
8.1.1 Density Ratio Tests.
8.1.2 Joint Distribution Tests.
8.2 Formal Model Comparison.
8.2.1 Bayes Factors for Modeling with Common Likelihoods.
8.2.2 Marginal Likelihood Approximation Using Importance Sampling.
8.2.3 Marginal Likelihood Approximation Using Gibbs Sampling.
8.2.4 Density Ratio Marginal Likelihood Approximation.
8.3 Model Specification.
8.3.1 Prior Predictive Analysis.
8.3.2 Posterior Predictive Analysis.
8.4 Bayesian Communication.
8.5 Density Ratio Robustness Bounds.
Bibliography.
Author Index.
Subject Index
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