1 | Introduction | |
2 | Foundations of Inductive Learning | |
3 | Knowledge Representation: Spaces, Trees, Features | Problem set 1 out |
4 | Knowledge Representation: Language and Logic 1 | |
5 | Knowledge Representation: Language and Logic 2 | |
6 | Knowledge Representation: Great Debates 1 | Problem set 1 due |
7 | Knowledge Representation: Great Debates 2 | |
8 | Basic Bayesian Inference | Problem set 2 out |
9 | Graphical Models and Bayes Nets | |
10 | Simple Bayesian Learning 1 | |
11 | Simple Bayesian Learning 2 | Problem set 2 due |
12 | Probabilistic Models for Concept Learning and Categorization 1 | Problem set 3 out |
13 | Probabilistic Models for Concept Learning and Categorization 2 | Pre-proposal due |
14 | Unsupervised and Semi-supervised Learning | |
15 | Non-parametric Classification: Exemplar Models and Neural Networks 1 | Problem set 3 due |
16 | Non-parametric Classification: Exemplar Models and Neural Networks 2 | |
17 | Controlling Complexity and Occam's Razor 1 | Proposal due |
18 | Controlling Complexity and Occam's Razor 2 | Problem set 4 out |
19 | Intuitive Biology and the Role of Theories | |
20 | Learning Domain Structures 1 | |
21 | Learning Domain Structures 2 | Problem set 4 due |
22 | Causal Learning | |
23 | Causal Theories 1 | |
24 | Causal Theories 2 | |
25 | Project Presentations | Project due |