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[ 536MLPEMSTV19 ] VL (*)Machine Learning: Supervised Techniques

Versionsauswahl
Es ist eine neuere Version 2024W dieser LV im Curriculum Masterstudium Wirtschaftsinformatik 2024W vorhanden.
(*) Leider ist diese Information in Deutsch nicht verfügbar.
Workload Ausbildungslevel Studienfachbereich VerantwortlicheR Semesterstunden Anbietende Uni
3 ECTS B2 - Bachelor 2. Jahr Artificial Intelligence Johannes Kofler 2 SSt Johannes Kepler Universität Linz
Detailinformationen
Quellcurriculum Bachelorstudium Artificial Intelligence 2023W
Ziele (*)Machine learning is concerned inferring models/relationships by learning from data. Machine learning methods are gaining importance in various fields, such as, process modeling, speech and image processing, and so forth. In recent years, bioinformatics has become one of the most prominent application areas of machine learning methods: The massive data amounts produced by recent and currently emerging high-throughput biotechnologies provide unprecedented potentials, but also pose yet unseen computational challenges in the analysis of biological data.

This course focuses on so-called supervised machine learning techniques, that is, methods aiming at models that classify data (classification) or predict continuous targets from inputs (regression). The students should acquire skills to choose, use, and adapt methods for classification, regression, and feature selection for tasks in science and engineering. The students should particularly understand the underlying mathematical objectives and principles of supervised machine learning methods. Furthermore, the students should be able to evaluate the results of supervised machine learning techniques.

Lehrinhalte (*)
  • Basics of classification and regression
  • Evaluation of machine learning results (confusion matrices, ROC)
  • Under- and overfitting / bias and variance
  • Cross-validation and hyperparameter selection
  • Logistic regression
  • Support vector machines and kernels
  • Neural networks and deep networks
  • Time series (sequence) analysis
  • Bagging and boosting
  • Feature selection and feature construction
Beurteilungskriterien (*)Exam (written or oral)
Lehrmethoden (*)Slide presentations complemented by examples presented on the blackboard
Abhaltungssprache Englisch
Literatur (*)Electronic course material is made available for download
Lehrinhalte wechselnd? Nein
Frühere Varianten Decken ebenfalls die Anforderungen des Curriculums ab (von - bis)
875BIMLMSTV16: VL Machine Learning: Supervised Techniques (2016W-2019S)
675MLDAMSTV13: VL Machine Learning: Supervised Techniques (2013W-2016S)
Präsenzlehrveranstaltung
Teilungsziffer -
Zuteilungsverfahren Direktzuteilung