Course description
This course is an advanced introduction to Bayesian techniques, in the framework of the Physics PhD course of the Physics Department of the University of Trieste.Course program (42nd PhD cycle)
(grayed
text means preliminary program) | Date |
Lesson
topics |
links |
| 13/04/2026 |
Bayes theorem. MAP
estimates. Elementary examples of inference with Bayes
theorem. Meaning of Bayesian inference. Example of Bayesian inference: parameter of a binomial model (and Beta pdf posterior). Cromwell's rule (Lindley). Bayesian credible intervals. Conjugate priors. |
|
| 14/04/2026 | Connection with frequentist statistics. Multinomial distributions and the Dirichlet pdf. The multivariate Gaussian distribution. Determination of a scale factor for experimental uncertainties with Bayes theorem and Jeffreys' priors. General approach to "Completing the square". | |
| 15/04/2026 | General approach to
"Completing the square" (ctd.). Conditional Gaussian
distributions and marginalized Gaussian distributions. A
modern approach to polynomial fits. Bayesian formulation
of the polynomial fit problem. Linear prediction.
Introduction to model selection. |
|
| 16/04/2026 | General
discussion on model selection: AIC, BIC, Bayes and all
that, with an interlude on Wilk's theorem. Back to the basics of Bayesian inference: Cox's proof of the logical consistency of the Bayesian method. |
|
| 27/04/2026 | Naive Bayesian classification. Extremely quick introduction to neural networks. Introduction to objective priors. Bartlett identities. Cramér-Rao Bound. Information-theoretic concepts in statistics. | |
| 28/04/2026 | Information-theoretic
concepts in statistics. (ctd.) Kullback-Leibler
divergence. Jeffreys' priors. 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. |
|
| 29/04/2026 | Objective priors with the
maximum entropy method in both the discrete and the
continuous case. (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. 4. Bayesian methods in a sampling-resampling perspective. |
|
| 30/04/2026 | Monte Carlo methods in
the Bayesian approach, part 2: 5. introduction to Markov
chains. 6. Detailed balance and Boltzmann's H-theorem. |
|
| 11/05/2026 | Monte Carlo methods in the Bayesian approach, part 3: 7. The Gibbs sampler. 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) 12. Introduction to the Markov Chain Monte Carlo method with an application to medical physics. | |
| 12/05/2026 | Monte Carlo
methods in the Bayesian approach, part 4: 13.
The efficiency of MCMC methods. 14. Affine-invariant
MCMC algorithms (emcee). Corner plots. Detailed coding example on cell survival curves (LQ model). |
|
| 13/05/2026 | Multiprocessing
with emcee. Radiocarbon dating. Radiocarbon activity
and half-life from the data reported in the 1949 paper
by Willard Libby, using an emcee-based Python code |
|
| 14/05/2026 | The temperature
record from ice core data. Estimate of the
Milankovitch cycles from the ice core data with an
emcee-based program. Issues with MCMC codes and list
of existing codes. The role of parallel tempering in
the estimate of the periods of exoplanets in the 47
UMa system. |
|
April
13 9am-11am Phys. Dept., meeting room
14 9am-11am Building B, meeting room
15 9am-11am Phys. Dept., meeting room
16 11am-1pm Phys. Dept., meeting room
27 9am-11am Phys. Dept., meeting room
28 9am-11am Phys. Dept., meeting room
29 9am-11am Phys. Dept., meeting room
30 11am-1pm Phys. Dept., meeting room
May
11 9am-11am Building B, meeting room
12 9am-11am Building B, meeting room
13 9am-11am Building B, meeting room
14 11am-1pm Building G, room V
Freely available study books
- Bishop: "Pattern Recognition and Machine Learning" (link)
- 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)