STA360
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Bayesian methods and modern statistics

Fall 2023

Schedule

Week Date Topic Reading Notes Assignment
1 Mon Aug 28 lab: welcome 💻 hello R
Tue Aug 29 intro, history, notation Ch. 2 hw 0
Thu Aug 31 probability, exchangeability Ch. 2 💻 hw 1
2 Mon Sep 04 NO LAB
Tue Sep 05 single parameter estimation Ch. 3 💻
Thu Sep 07 Poisson model and conjugacy Ch. 3 hw 2
3 Mon Sep 11 lab: MLE and MAP estimator 💻
Tue Sep 12 reliability, exp. families Ch. 3 💻, 📝
Thu Sep 14 prediction, Monte Carlo intro Ch. 4 💻, 📝 hw 3
4 Mon Sep 18 lab: prior sensitivity and change of variables 💻
Tue Sep 19 Monte Carlo integration Ch. 4 💻
Thu Sep 21 the normal model Ch. 5 💻
5 Mon Sep 25 practice and review 💻
Tue Sep 26 catch up / review
Thu Sep 28 Exam I
6 Mon Oct 02 NO LAB
Tue Oct 03 the normal model II Ch. 5 hw 4
Thu Oct 05 estimators Ch. 5 💻, 📝
7 Mon Oct 09 lab: predictive checks and bias 💻
Tue Oct 10 Gibbs sampling Ch. 6 💻 ec
Thu Oct 12 MCMC diagnostics Ch. 6 💻 hw 5
8 Mon Oct 16 NO LAB
Tue Oct 17 NO CLASS
Thu Oct 19 multivariate normal (mvn) Ch. 7 💻
9 Mon Oct 23 full conditional review
Tue Oct 24 mvn parameter estimation Ch. 7 💻, 📝 hw 6
Thu Oct 26 hierarchical modeling intro Ch. 8 💻
10 Mon Oct 30 traceplots and MCMC diagnostics 💻
Tue Oct 31 intro to Bayesian regression Ch. 9 💻 hw 7
Thu Nov 02 Bayesian regression II Ch. 9 💻
11 Mon Nov 06 Hierarchical modeling and Gibbs sampling practice
Tue Nov 07 Bayesian regression III
Guest lecture: Prof. Peter Hoff
Ch. 9 hw 8
Thu Nov 09 NO CLASS: read chapter summaries
12 Mon Nov 13 exam practice 💻
Tue Nov 14 review
Thu Nov 16 Exam II
13 Mon Nov 20 NO LAB
Tue Nov 21 Bayesian regression example + stan intro
Thu Nov 23 NO CLASS
14 Mon Nov 27 rstanarm 💻
Tue Nov 28 intro to Metropolis algorithm Ch. 10 📝 hw 9
Thu Nov 30 Metropolis-Hastings Ch. 10 💻
15 Mon Dec 04 MCMC practice 💻
Tue Dec 05 MCMC and HMC Ch. 10 💻
Thu Dec 07 final review