Semester page for IN-STK5000 - Autumn 2019
Teachers
-
Christos Dimitrakakis University of Oslo
-
Dirk Hesse University of Oslo
Assignments
Lecture videos
- Lecture 1, Part 1
- Lecture 1, Part 2
- Lecture 1, Part 3
- Lecture 1, Part 4
- Lecture 2, Part 1: Bayesian Inference
- Lecture 2, Part 2: Bayesian Inference Exercise
- Lecture 3: Decision Problems
- Lecture 4.1: Databases, Anonymity, Privacy, Randomised Response
- Lecture 4.2: Randomised Response, Differential Privacy
- Lecture 4.3: Example for Local and Central Differential Privacy, Laplace Mechanism
- Lecture 4.4: Laplace Mechanism, Central and Local differential privacy. Exponential mechanism. Reusable Holdout.
- Lecture 5.1: Fairness, graphical models
- Lecture 5.2: Inference, prediction, hierarchical models
- Lecture 5.3: Bayesian model inference, confidence intervals, testing independence
- Lecture 5.4: Testing conditional independence
- Lecture 5, Explainer: Code for conditional Independence
- Project 1 QA
- Lecture 6.1: Recommendation systems
- Lecture 6.2: Latent variable models
- Lecture 7.1: Causality
- Lecture 7.2: Causality
- Lecture 7.3: Causality
- Lecture 7.4: Causality
- Lecture 8.1: Experiment design
- Lecture 8.2: Experiment design and MDPs
- Lecture 8.3: One-shot experiment design in bandits
- Lecture 8.4: Reinforcement learning