Institute of Computer Science
  1. Courses
  2. 2017/18 spring
  3. Machine Learning (MTAT.03.227)
ET
Log in

Machine Learning 2017/18 spring

  • Main
  • Lectures
  • Practice sessions
  • Homeworks
  • Links

Practice Sessions

Practice 01 - Feb 15 - Naive Bayes

Slides (PDF)

Practice 02 - Feb 22 - Basic linear classifier & Perceptron

Practice 03 - March 1 - F1 measure & ROC & Feature engineering

ROC explanation

Feature engineering example

Practice 04 - March 8 - Linear regression

Practice 05 - March 15 - Perceptron in dual form & SVM

Exercises (PDF)

Practice 06 - March 29 - Kernel methods

Practice 07 - April 05 - Decision trees

Exercises (PDF)

Practice 08 - April 12 - Logistic regression

Exercises (PDF)

Practice 09 - April 19 - Backpropagation & Softmax

Exercises (PDF)

Practice 10 - May 10 - Ensemble methods

Exercises (PDF)

Practice 11 - May 17 - Probabilistic graphical models

Exercises (PDF) Slides (PDF)

Practice 12 - May 24 - HMM & Gaussian Processes (discussing HW6)

Sampling example code (not commented)

  • Institute of Computer Science
  • Faculty of Science and Technology
  • University of Tartu
In case of technical problems or questions write to:

Contact the course organizers with the organizational and course content questions.
The proprietary copyrights of educational materials belong to the University of Tartu. The use of educational materials is permitted for the purposes and under the conditions provided for in the copyright law for the free use of a work. When using educational materials, the user is obligated to give credit to the author of the educational materials.
The use of educational materials for other purposes is allowed only with the prior written consent of the University of Tartu.
Terms of use for the Courses environment