In this module, a number of foundational concepts and methods related with Pattern Classification will be reviewed. Typically, probability and statistics, linear algebra, optimization are the math foundations for many modern PR methods. It is essential that you work through all information here in order to fully enjoy the later sessions of this unit.
- Lecture A: Probability and Statistics γοΈ
- Lecture B: Bayesian Methods in Machine Learning π β
- Lecture C: Probability Theory and Inequalities γοΈ
- Lecture D: Statistical Inference γοΈ
- Lecture E: Linear Model and Matrix γοΈ
- Lecture F: Matrix Factorization (1) γοΈ
- Lecture G: Matrix Factorization (2) γοΈ
Not all topics will be gone through in the lecture classes, and the unit chair will decide which one(s) to cover, based on the cohort's background and interests. Those topics marked by β will be covered in the lecture classes.