Advanced Course
Lecturers: Alessandra Rosalba Brazzale, Andrea Sottosanti (University of Padova)
Board Contact: Michela Battauz, Valentina Mameli
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SSD: SECS-S/01
CFU: 3+2
Period: June/July 2023
Lessons / Hours: 4 lectures of 3 hours each
Program:
Each lacture consists of an introductory theoretical part followed by practical exercises in R
1. Bayes’ theorem T: Introduction, likelihood principle, posterior summaries E: Conjugacy, Laplace approximation, numerical integration 2. Bayesian computation via Markov chain Monte Carlo T: Importance sampling, Gibbs sampler, Metropolis-Hastings algorithm) E: Data augmentation 3. Output analysis T: Multiple chains, convergence diagnostics (autocorrelation, potential scale reduction, effective sample size) E: How to set an MCMC sampler 4. Approximate Bayesian computation T: Distance functions, summary functions, pitfalls and remedies E: Model comparison and model choice
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Verification: Final assignment
Prerequisites: Knowledge of R; basic notions of statistical inference based on the likelihood function