- Introduction to course.
- Face classification problem (P1).
- Nearest neighbor as example of supervised learning.
- PCA, SVD and space dictionary learning as unsupervised learning.
- What's inside numpy?
- Linear regression
- Binary linear classification
- Stohastic gradient descent
- House pricing problem (P2)
- Multiclass linear classification
- Linear models demo
- SVM (support vector machine)
- Multiclass Bayesian classification
- Kernel density estimation
- Parametric density estimation
- Gaussian mixture model
- Location problem (P3)
- Classification and regression trees
- Entropy criterion and Gini criterion
- Random forest