Inhalt

[ INMPPKVMLPC ] KV (*)Machine Learning and Pattern Classification

Versionsauswahl
(*) Unfortunately this information is not available in english.
Workload Education level Study areas Responsible person Hours per week Coordinating university
4,5 ECTS M1 - Master's programme 1. year Computer Science Gerhard Widmer 3 hpw Johannes Kepler University Linz
Detailed information
Original study plan Master's programme Pervasive Computing (discontinuing) 2012W
Objectives (*)To provide an overview of standard methods in the field of pattern classification, machine learning, and statistical data modelling. To explain the basic concepts and methods in the field, and demonstrate the application of these methods in a variety of complex tasks.
Subject (*)Bayes classification and Bayes error; density estimation; nearest-neighbour classification; standard classifiers in machine learning (decision trees, rules, Naive Bayes, feedforward neural networks, support vector machines); empirical evaluation of classifiers; clustering and (Gaussian) mixture models; dimensionality reduction and data projection methods; Markov processes and Hidden Markov Models.

Practical Track: Students will carry out a pattern classification project of real-world complexity in several stages, from feature definition and extraction to the training of various classifiers and systematic experimentation.

Criteria for evaluation (*)Schriftliche Prüfung am Ende des Semesters; Durchführung eines praktischen Projekts (in Gruppen) während des Semesters.
Language English
Changing subject? No
On-site course
Maximum number of participants 35
Assignment procedure Direct assignment