- Bayes Decision Theory
- Parameter Estimation
- Principal Component Analysis
- Fisher Discriminant
- Model Selection
- Neural Networks 1
- Learning Theory & Kernels
- Support Vector Machines
- Kernel Ridge Regression
- Boosting
- Decision Trees and Random Forests
- Neural Networks 2
- Latent Variable Models / Clustering
- Explainable AI
Exercise solutions are based on my own work, the work of my homework group, or the class sample solutions.