Week | Date | Content | Exercise |
---|---|---|---|
1 | 9/10 | Overview of the course | |
2 | 9/17 | 1. Probabilistic learning 2. Probability (joint distribution, marginal distribution, conditional distribution) 3. Factorization 4. Bayesian network |
Exercise 1 (due: 10/14 23:59:59) |
3 | 9/24 | Holiday | |
4 | 10/1 | 1. Bayesian network 2. D-separation 3. TA session: Introduction to Python and popular scientific libraries in Python |
|
5 | 10/8 | 1. Naive Bayesian 2. Markov random field |
|
6 | 10/15 | 1. Markov random field 2. Variable elimination |
|
7 | 10/22 | 1. Variable elimination 2. Message passing 3. Clique trees |
|
8 | 10/29 | 1. Message passing 2. Midterm review |
Exercise 2 (due: 11/11 23:59:59) |
9 | 11/5 | Midterm exam | |
10 | 11/12 | Learning in Fully Observed Bayesian Networks and exponential family | |
11 | 11/19 | The First Symposium on Artificial Intelligence Interactive Systems | |
12 | 11/26 | Exponential family and conjugate prior | Exercise 3 (due: 12/9 23:59:59) |
13 | 12/3 | Learning in Partially Observed Network by EM | |
14 | 12/10 | Markov Chain Monte Carlo (MCMC) and Latent Dirichlet Allocation (LDA) | |
15 | 12/17 | Variational inference | Exercise 4 (due: 12/30 23:59:59) |
16 | 12/24 | 1. Variational inference on LDA 2. Final wrap-up |
|
17 | 12/31 | Holiday | |
18 | 1/7 | Final exam |