No.
|
Date
|
Lecture
|
Lab
|
1.
|
Feb 15
|
Introduction to ML
|
Entry test on practical probability calculations
Random processes – simulations in R
|
2.
|
Feb 22
|
Data analysis (pp. 1-38)
|
Annotation experiment – Demo
Inter-annotator agreement – Cohen's kappa
Working with R – Tutorial on annotation data analysis
|
3.
|
Mar 1
|
On evaluation and overfitting
Decision Trees (basic structure)
Entropy
|
Programming questions
– ml-lab.2023-03.01.R
|
4.
|
Mar 8
|
Clustering (pp. 39-73)
Linear Regression
|
Exercises on IAA, Cohen's kappa, and error analysis
– Presentation (by Iván)
Exercises on entropy and conditional entropy
– Tutorial on distributions (exercises) + data set xy.100
|
5.
|
Mar 15
|
Decision Trees and Random Forests
|
Programming questions
– ml-lab.2023-03.15.R
– tf-idf.pdf
|
6.
|
Mar 22
|
Logistic regression (pp. 1-29)
|
Tutorial on Decision Trees
– forbes.data-preparation.R
– cp-and-pruning.forbes.R
– forbes.DT-RF.R
|
7.
|
Mar 29
|
Evaluation of Binary Classification (pp. 29-43)
Naive Bayes algorithm
|
Programming questions
– ml-lab.2023-03-29.R
HW1 assignment
|
8.
|
Apr 5
|
More on practical evaluation
Bayes classifier and Bayes error
Statistical tests in ML
|
Test #1
ROC and AUC
– ml-lab2023-04.04.R
|
9.
|
Apr 12
|
Support Vector Machines
|
HW1 submission deadline
|
10.
|
Apr 19
|
Bias and Variance, Regularization, IBL
|
SVM+Multi-Class Task Evaluation
– ml-lab.SVM.2023-04.19.R
|
11.
|
Apr 26
|
Ensemble learning methods:
Part II — Boosting
|
Regularization
– ml-lab.2023-04.26.R
|
12.
|
May 3
|
Foundations of Neural Networks
|
Exercises on statistical tests
— t-test Example code
— t-test Exercise
Chi-square tests
— Theory
— Exercise on Goodness-of-fit test
Discussion on the homework term project
— Presentation (by Sára)
|
|
May 10
|
No classes
|
|
13.
|
May 17
|
|
|