Inhalt

[ 921PECOMLPV20 ] VL Machine Learning and Pattern Classification

Versionsauswahl
Workload Education level Study areas Responsible person Hours per week Coordinating university
3 ECTS M1 - Master's programme 1. year Computer Science Gerhard Widmer 2 hpw Johannes Kepler University Linz
Detailed information
Original study plan Master's programme Computer Science 2025W
Learning Outcomes
Competences
Students understand the basic concepts and methods in the field of supervised machine learning (mainly: classification). They understand what is involved when applying these methods to complex classification and recognition problems, and can design and critically evaluate machine learning solutions to real-world problems.
Skills Knowledge
Students

  • know and understand the most important classes of machine learning models and algorithms for classification problems (k2);
  • know how to select, configure, and run appropriate machine learning algorithms for a given problem (k3);
  • know how to set up systematic learning experiments (k3);
  • an how to evaluate and interpret the results (k5).
  • Fundamental concepts of supervised learning;
  • Important classes of classification models and learning algorithms: Bayes classification and Bayes error; density estimation; nearest-neighbour classification; standard classifiers in machine learning (decision trees, Naive Bayes, feedforward neural networks, support vector machines, ensemble methods);
  • empirical evaluation of classifiers;
  • clustering and mixture models;
  • Markov processes and Hidden Markov Models.
Criteria for evaluation Written exam at the end of the semester.
Methods Standard lecture series, with class materials (lecture slides) regularly provided in electronic form.
Language English
Study material Lecture slides will regularly provided in electronic form. No further materials required.
Changing subject? No
Further information This course (VO) and the corresponding exercise course (UE) form a didactic unit. The study results described here are achieved through the combination of these two courses.
Corresponding lecture in collaboration with 921PECOMLPU20: UE Machine Learning and Pattern Classification (1.5 ECTS) equivalent to
921PECOMLPK13: KV Machine Learning and Pattern Classification (4.5 ECTS)
On-site course
Maximum number of participants -
Assignment procedure Direct assignment