Add to watchlist
Back

 

17165-01 - Lecture: Machine Learning 8 CP

Semester spring semester 2020
Course frequency Every spring sem.
Lecturers Volker Roth (volker.roth@unibas.ch, Assessor)
Content Introduction: What is Machine Learning? Math refresher. Supervised Learning: theoretical foundations. Regression estimation: standard methods + algorithms. Classification: standard methods + algorithms. Neural Networks and Deep Learning. Learning Theory: risk minimization, regularization, elements of statistical learning theory. Kernel Methods. Mixture models. Conditional mixtures (mixtures of experts). Clustering. Bayesian model comparison.
Learning objectives Understand the theoretical foundations of Machine Learning

Understand and apply practical learning algorithms: linear and generalized linear models for regression and classification, neural networks, Support Vector machines & kernel methods, mixture models & clustering.

Program in Matlab, Python and Tensorflow
Bibliography tba
Comments Target group: Master students
Weblink Course website

 

Admission requirements Knowledge and skills regarding pattern recognition, numerical analysis, and statistics
Course application Übung: https://courses.cs.unibas.ch
Language of instruction English
Use of digital media Online, mandatory
Course auditors welcome

 

Interval Weekday Time Room

No dates available. Please contact the lecturer.

Modules Doctorate Computer Science: Recommendations (PhD subject: Computer Science)
Kernfächer und Seminar (Master's Studies: Computational Biology and Bioinformatics)
Modul: Concepts of Machine Intelligence (Master's degree subject: Computer Science)
Module: Applications of Distributed Systems (Master's Studies: Computer Science)
Module: Concepts of Machine Intelligence (Master's Studies: Computer Science)
Module: Interdisciplinary and Transfer of Knowledge (Master's Studies: Actuarial Science)
Assessment format continuous assessment
Assessment details Oral exam
Date: 24/25/26 June 2020, online
Assessment registration/deregistration Reg.: course registration, dereg: cancel course registration
Repeat examination no repeat examination
Scale 1-6 0,5
Repeated registration as often as necessary
Responsible faculty Faculty of Science, studiendekanat-philnat@unibas.ch
Offered by Fachbereich Informatik

Back