STA602
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Bayesian statistical modeling and data analysis

Spring 2026

Schedule

Week Date Topic Reading Notes Assignment
1 Wed Jan 07 lab: welcome 💻 hello R
Thu Jan 08 intro, history, notation Ch. 2 hw 0
2 Mon Jan 12 lab: MLE review 💻
Tue Jan 13 probability, exchangeability Ch. 2 🗒 📝 hw 1
Thu Jan 15 beta-binomial model Ch. 3 🗒 📝
3 Mon Jan 19 NO CLASS
Tue Jan 20 Poisson-gamma model, exp families Ch. 3 🗒 📝 hw 2
Thu Jan 22 reliability (conf. intervals, hpd, Laplace approx.) Ch. 3 🗒 📝
4 Mon Jan 26 lab: exp families and transformations 💻
Tue Jan 27 intro to Monte Carlo 📖 🗒 hw 3
Thu Jan 29 predictive checks and MC error Ch. 4 🗒 📝
5 Mon Feb 02 lab: mixture densities 💻
Tue Feb 03 the normal model Ch. 5 🗒 📝 hw 4
Thu Feb 05 normal part II, risk and loss Ch. 5 📝
6 Mon Feb 09 lab: normal data and estimators 💻
Tue Feb 10 estimators Ch. 5 🗒📝
Thu Feb 12 priors 📖 🗒📝
7 Mon Feb 16 lab: Jeffreys prior; exam review 💻
Tue Feb 17 review
Thu Feb 19 exam I
8 Mon Feb 23 lab: recap 💻
Tue Feb 24 Metropolis algorithm 📖 🗒 hw 5
Thu Feb 26 MCMC diagnostics Ch. 6, 10 🗒 📝
9 Mon Mar 02 lab: Metropolis-Hastings 💻💻
Tue Mar 03 Gibbs sampling Ch. 6 🗒 📝
Thu Mar 05 multivariate normal Ch. 7 🗒 hw 6
10 Mon Mar 09 NO CLASS
Tue Mar 10 NO CLASS
Thu Mar 12 NO CLASS
11 Mon Mar 16 lab: office hours & regression review
Tue Mar 17 Bayesian regression Ch. 9, background 🗒 📝 hw 7
Thu Mar 19 hierarchical modeling Ch. 8 🗒📝
12 Mon Mar 23 lab: rstanarm 💻
Tue Mar 24 model averaging Ch. 9 sec. 3 🗒
Thu Mar 26 mixed effects models Ch. 11 📝.R
13 Mon Mar 30 lab: probit regression 💻
Tue Mar 31 Hamiltonian Monte Carlo 📖 🗒
Thu Apr 02 exam II
14 Mon Apr 06 lab: exam review 💻
Tue Apr 07 Bayesian inverse problems 📖 🗒 hw 8
Thu Apr 09 missing data Ch. 7 📝.R
15 Mon Apr 13 lab: inverse problem 💻
Tue Apr 14 practice for final