WEEK | DATES | TOPIC | NOTES |
WEEK 1 | 04/01 -- 04/05 | Introduction. Description of the syllabus. Background material | slides1.pdf |
slides2.pdf | |||
WEEK 2 | 04/08 -- 04/12 | Large sample inference Chp. 4, Chp. 10, 13.3 |
slides3.pdf |
The multinomial and the multivariate normal models. 3.5,3.6 |
slides4.pdf | ||
WEEK 3 | 04/15 -- 04/19 | Hierarchical models and meta-analysis. 5.1-5.6 |
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Model Checking. 6.1-6.5 |
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WEEK 4 | 04/22 -- 04/26 | Model comparison. 7.1-7.4 Test 1 (30%, 04/24) |
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Accounting for data collection schemes. 8.1-8.5 |
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WEEK 5 | 04/29 -- 05/03 | Observational studies. Censoring and truncation. 8.6-8.8 |
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Auxiliary variables for Monte Carlo methods. 12.1 |
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WEEK 6 | 05/06 -- 05/10 | Regression models. 14.1-14.8 |
slides10.pdf |
Regression models. 14.1-14.8 |
slides11.pdf | ||
WEEK 7 | 05/13 -- 05/17 |
Test 2 (30%, 05/15) |
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G-priors. Regularization. Robust Inference. 17.1-17.5 |
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WEEK 8 | 05/20 -- 05/24 | Mixture models. 22.1-22.5 |
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Mixture models. 22.1-22.5 |
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WEEK 9 | 05/29 -- 05/31 | Posterior Modes. EM algorithm. 13.1-13.4 |
slides13.pdf |
Memorial Day | Efficient Gibbs and Metropolis samplers. 12.1-12.3 |
slides14.pdf | |
WEEK 10 | 06/03 - 06/07 |
Approximations |
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Gaussian process models |