Machine Learning School

M17-GP-HYPEROPT: Gaussian Processes and Hyperparameter Optimization

11h 0min
Machine learning and hyperparameters; hyperparameter optimization; Gaussian processes, MLE, MAPE vs. the full Bayesian approach; Bayesian optimization; optimization of hyperparameters: examples

Main Content
Acquisition
1 Lecture content
Content: – Machine learning and hyperparameters; – Hyperparameter optimization; – Gaussian processes; – MLE, MAPE vs. the full Bayesian approach; – Bayesian optimization;

2h 0min
Practice
2 Colab Notebooks
A set of colab notebooks, regarding especially these topics: – Gaussian processes; – Gaussian process regression; – Bayes optimization: an illustrational notebook; – Bayesian hyperparameter optimization; – Grid search; – ...

3h 0min
0
Investigation
3 Independent study time + review
The estimated additional time required for studying the material independently, using the lecture videos/slides and also referencing other literature and material, as necessary. Facilitates correct understanding of the material. This activity also includes the time required for review before exams.

5h 30min
Assessment
4 Quiz activities
Quiz activities meant to provide quick, unassessed feedback to students regarding their grasp of the material.

30 min