1.2 Exploring a Student Dataset
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3.4 An Illustration of Bayesian Robustness: Learning About a
Normal Mean with Known Variance
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5.6 The Example
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6.9 Modeling Data with Cauchy Errors
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7.9 Bayesian Sensitivity Analysis
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9.3 Model Selection using Zellner’s g Prior
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1.3 Exploring the Robustness of the t Statistic
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3.5 Mixtures of Conjugate Priors
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5.7 Monte Carlo Method for Computing Integrals
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6.10 Analysis of the Stanford Heart Transplant Data
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7.10 Posterior Predictive Model Checking
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9.4 Survival Modeling
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2.3 Using a Discrete Prior
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3.6 A Bayesian Test of the Fairness of a Coin
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5.8 Rejection Sampling
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7.2 Introduction to Hierarchical Modeling
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8.3 A One-Sided Test of a Normal Mean
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10.2 Robust Modeling
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2.4 Using a Beta Prior
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4.2 Normal Data with Both Parameters Unknown
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5.9 Importance Sampling
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7.3 Individual and Combined Estimates
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8.4 A Two-Sided Test of a Normal Mean
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10.3 Binary Response Regression with a Probit Link
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2.5 Using a Histogram Prior
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4.3 A Multinomial Model
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5.10 Sampling Importance Resampling
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7.4 Equal Mortality Rates?
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8.6 Models for Soccer Goals
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10.4 Estimating a Table of Means
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2.6 Prediction
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4.4 A Bioassay Experiment
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6.2 Introduction to Discrete Markov Chains
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7.5 Modeling a Prior Belief of Exchangeability
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8.7 Is a Baseball Hitter Really Streaky?
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11.4 A Change-Point Model
Bugs model description
file
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3.2 Normal Distribution with Known Mean but Unknown Variance
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4.5 Comparing Two Proportions
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6.7 Learning About a Normal Population from Grouped Data
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7.7 Simulating from the Posterior
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8.8 A Test of Independence in a Two-Way Contingency Table
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11.5 A Robust Regression Model
Bugs model description
file
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3.3 Estimating a Heart Transplant Mortality Rate
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5.4 A Beta-Binomial Model for Overdispersion
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6.8 Example of Output Analysis
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7.8 Posterior Inferences
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9.2 A Regression Example
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11.6 Estimating Career Trajectories
Bugs model description
file
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