Bayesian Statistics using Python

  • Introduction
  • Index
  • Chapter 1: Bayes’ Theorem & Probability Foundations
  • Chapter 2: The Great Debate: Frequentist vs. Bayesian Statistics
  • Chapter 3: Conjugate Priors & Posterior Distributions
  • Chapter 4: Bayesian Estimators and Credible Intervals
  • Chapter 5: Loss Functions and Decision Theory
  • Chapter 6: Bayesian Hypothesis Testing & Model Comparison
  • Chapter 7: Markov Chain Monte Carlo (MCMC) – Part I
  • Chapter 8: MCMC – Part II (Advanced Topics)
  • Chapter 9: Variational Inference
  • Chapter 10: Bayesian Linear and Logistic Regression
  • Chapter 11: Hierarchical (Multilevel) Bayesian Models
  • Chapter 12: Model Diagnostics and Posterior Predictive Checks
  • Chapter 13: Bayesian Model Averaging
  • Chapter 14: Prior Elicitation and Sensitivity Analysis
  • Chapter 15: Applications – Econometrics, Finance, and Machine Learning