Machine Learning

This web page gives information on the lecture 'Machine Learning' which is held during winter term 2015/2016 by Andreas Nürnberger. It will be constantly updated during the course.

The course provides an introduction to the principles, techniques, and applications of Machine Learning. Topics covered include among others:

  • value functions
  • concept spaces and concept learning
  • instance based learning
  • clustering
  • decision trees
  • neural networks
  • Bayesian learning
  • reinforcement learning
  • association rule learning
  • genetic algorithms

Course Schedule and Room Assignments

  Time Start Room
Lecture Thursday 3:15 - 4:45pm 15.10.2015 G02-210 G02-111!
Exercises Wednesday 07:15 - 08:45am 21.10.2015 G29-K058 G22A-120!

Course Staff

If you have any questions concerning the lectures or assignments please contact (if possible by email):

Requirements for the Oral Exam and the 'Schein'

All students are required to participate in the exercise classes. Every week, there will be an assignment sheet that will be handed out one week in advance. This sheet has to be prepared by every student and will be discussed in class. There are two different types of assignments: questions of understanding and programming assignments. The programming assignments can be solved in small groups of up to three students and must be sent in before the respective class. Prerequisites for an oral exam and a 'Schein' is fulfillment of the following criteria:

  • Gaining at least 1/2 of all programming points
  • Solving at least 2/3 of all questions of understanding
  • Presenting at least 2 solutions in class.

The exam will be oral. For the 'Schein', there will be also an oral colloquium of about 10 minutes.

Materials

Lecture Slides
Assignment Sheets
Other Resources

Literature

Last Modification: 25.01.2016 - Contact Person: