Course description
This course is a basic introduction to Bayesian techniques, in the framework of the Physics PhD course of the Physics Department of the University of Trieste.Course program
(grayed text means preliminary program)Date |
Lesson
topics |
links |
|
24/02/2025 |
Bayes theorem. MAP
estimates. Elementary examples of inference with Bayes
theorem. Meaning of Bayesian inference. The approach of
R.T. Cox to the logic of approximate reasoning. |
||
25/03/2025 | The approach of R.T. Cox
to the logic of approximate reasoning (ctd.) Example of Bayesian inference: parameter of a binomial model (and Beta pdf posterior). Cromwell's rule (Lindley). Bayesian credible intervals. Conjugate priors. Connection with frequentist statistics. |
||
26/03/2025 | Multinomial distributions
and the Dirichlet pdf. The multivariate Gaussian
distribution. "Completing the square", conditional
Gaussian distributions and marginalized Gaussian
distributions. Determination of a scale factor for experimental uncertainties with Bayes theorem and Jeffreys' priors. |
||
27/03/2025 | Introduction
to objective priors. Bartlett identities. Cramér-Rao
Bound. Information-theoretic concepts in statistics. The
Kullback-Leibler divergence. Jeffreys' priors. |
||
07/04/2025 | Bernardo's reference
priors. Edwin Jaynes and the Maximum Entropy (MaxEnt) principle. The kangaroo problem as an example of ill-posed problem and its regularization by entropy maximization. Objective priors with the maximum entropy method in both the discrete and the continuous case. Introduction to model selection. |
|
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08/04/2025 | Model selection (ctd.) Monte Carlo methods in the Bayesian approach, part 1: 1. Review of acceptance-rejection sampling; 2. importance sampling; 3. statistical bootstrap. 4. Bayesian methods in a sampling-resampling perspective. |
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09/04/2025 | Monte Carlo methods in the Bayesian approach, part 2: 4. Bayesian methods in a sampling-resampling perspective. 5. introduction to Markov chains. 6. Detailed balance and Boltzmann's H-theorem. 7. The Gibbs sampler. | ||
10/04/2025 | 8. More on Gibbs
sampling. 9. Simulated annealing and the Traveling
Salesman Problem (TSP). 10. The Metropolis algorithm.
11. Image restoration and Markov Random Fields (MRF) |
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05/05/2025 | |||
06/05/2025 | |||
07/05/2025 |
|
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08/05/2025 |
Freely available study books
- Gelman & al., "Bayesian Data Analysis, 3rd ed." (link)
- Downey: "Think Bayes", an introduction to Bayesian statistics with Python code (link)
- Martin: "Bayesian analysis with Python" (link)
- Pasha & Agostino: "Python for Astronomers. An
Introduction to Scientific Computing" (link)