Institute of Computer Science
  1. Courses
  2. 2022/23 spring
  3. Machine Learning II (LTAT.02.004)
ET
Log in

Machine Learning II 2022/23 spring

Previous years: 2019 » 2017 » 2016 » 2014 » 2013 » 2012 » 2008

  • Main
  • Roadmap
  • Github
  • Videos
  • Homework
  • Exam
  • Grading
  • Supporting Materials
  • Upload

Homework points

  • Please follow requirements to home exercises!
  • The nominal score for each homework is 5 points.
  • You can score up to 7.5 points from each homework.
  • There are no restrictions how you choose exercises.

Homeworks

  • I. Performance measures
    • Deadline: 24th of February
1. . Performance measures
Solutions for this task can no longer be submitted.
  • II. Basics of probabilistic modelling
    • Deadline: 17th of March
2. Basics of probabilistic modelling
Solutions for this task can no longer be submitted.
  • III. Sequence models and belief propagation
    • Deadline: 31 of March
3. Sequence models and belief propagation
Solutions for this task can no longer be submitted.
  • IV. Direct applications of normal distributions
    • Deadline: 26 of April
    • Maximal score: 10 points
4. Direct applications of normal distributions
Solutions for this task can no longer be submitted.
  • V. Normal distributions and affine projections
    • Deadline: 9 of May
5. Normal distributions and affine projections
Solutions for this task can no longer be submitted.
  • VI. Model-based clustering
    • Deadline: ???
6. Model-based clustering
Solutions for this task can no longer be submitted.
  • VII. Expectation-Maximisation algorithm
    • Deadline: ???
7. Expectation-Maximisation algorithm
Solutions for this task can no longer be submitted.
  • VIII. Expectation-Maximisation algorithm and sequential data
    • Deadline: ???
8. Expectation-Maximisation algorithm and sequential data
Solutions for this task can no longer be submitted.
  • 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