Machine Learning Group: Seminar Learning Theory

Loading...

Institute of Software Engineering and Theoretical Computer Science

Machine Learning

Seminar Lerning Theory The seminar "Learning Theory" is an optional compulsory course (3 LP) in the module "Machine Learning II". Teaching coordination and course inscription are done via the ISIS site of the seminar. Detailed information on course formalities and accreditability are also summarized there. A description for external participants (Nebenhörer and Gasthörer) can be found below in the section on the online part of the course. Preliminary discussion and topic assignment

Friday, 12.04.2013, 14:00 am room: MAR 4.033

Seminar

the time schedule will be fixed in the discussion room: MAR 4.033

Responsible

Prof. Dr. Klaus-Robert Müller office hours: by appointment

Person of contact

Dr. Franz Király office hours: by appointment

Topics In the seminar, introductory topics in learning theory will be presented by the participants. Talks can be given in any of the following subject areas: Subject areas Vapnik-Chervonenkis Theory Statistical Learning Theory Learning with Neural Networks Compressed Sensing Learning with Algebraic Structure For single talk topics, the organizatorial schedule and supervisor assignments please consult the ISIS webpage of the seminar.

Prerequisites The following are optional prerequisites which are helpful but not necessary for participating in the seminar: Basic knowledge in machine learning, as presented in the respective modules (machine learning I or machine intelligence I) Basic knowledge in linear algebra and calculus, as presented in the respective modules (German: Lineare Algebra, Analysis) Basic knowledge in probability theory, as presentid in the module stochastics (German: Elementare Stochastik)

Accreditation The seminar "Learning Theory" can be accredited as an optional compulsory course for the module "Machine Learning II" and can be used to obtain part of the admission criteria for the exam. A successful participation in the seminar includes independently acquiring knowledge on the assigned topic, and preparing a 35 to 45 minute talk with slides on the topic (usually the slides are digital). For obtaining a certificate of participation, enrolment at the TU is neccessary in the form of a full enrolment, a Nebenhörerschaft or a Gasthörerschaft. For obtaining full accreditation, enrolment at the TU is neccessary in the form of a full enrolment or a Nebenhörerschaft. More details on registration, exam modalities and accreditation can be found on the online part of the course.

Online course / ISIS Course organization and participation in the online course are carried out over the ISIS system of the TU. For registration, a tubIT account is necessary. External participants who are enrolled at the TU (Nebenhörer and Gasthörer) can obtain an ISIS account at the tubIT office. For this, it is necessary to apply for an account at the tubIT-Laden with the Nebenhörer/Gasthörer enrolment certificate. The discussion forums which are visible to all participants and the anonymous feedback possibilities can be used by all participants of the online part for asking questions and providing comments.

Kontakt, Index und weiterer Service Last Update: 06.05.13

Kontakt, Inhaltsverzeichnis und weitere Service-Links

Loading...

Machine Learning Group: Seminar Learning Theory

Institute of Software Engineering and Theoretical Computer Science Machine Learning Seminar Lerning Theory The seminar "Learning Theory" is an optio...

29KB Sizes 4 Downloads 33 Views

Recommend Documents

Seminar Machine Learning
Jan 25, 2013 - Seminar Machine Learning in the winter term 2012/2013.

Machine Learning Seminar | Caltech
Nov 22, 2010 - Machine Learning Seminar. Learning Compact Representation of Data with Statistical Independence Measures.

CS 59000-MLT: Machine Learning Theory Seminar - CS @ Purdue
CS 59000-MLT: Machine Learning Theory Seminar ... Imagine you run your favorite machine learning algorithm and obtain im

Hashing Representations - Machine Learning (Theory)
Kilian Weinberger, Anirban Dasgupta, John Langford, Alex Smola, Josh Attenberg, Feature Hashing for Large Scale Multitas

Deep learning machine learning
Learn machine learning online and become a machine learning engineer. Although they're similar, there's a big difference

Seminar: Advanced Topics in Machine Learning | Learning & Adaptive
In this seminar, recent papers of the pattern recognition and machine learning literature are presented and discussed. P

Introduction to Emerging Technologies: Machine Learning Seminar
Nov 15, 2017 - Eventbrite - Machine Learning Academy presents Introduction to Emerging Technologies: Machine Learning Se

Environmental Economics Seminar: Machine Learning for Causal
Nov 16, 2017 - Details. Contact: Carl Pasurka, 202-566-2275. Presenter: Jennifer Ho (Economic Analysis Group, Antitrust

Machine Learning Seminar Series - Department of Information
Oct 2, 2017 - Machine Learning Seminar Series. October 2017. Speaker: Phillip Henning (Max Planck Institute for Intellig

Carnegie Mellon Machine Learning Lunch seminar
Machine Learning Lunch seminar at Carnegie Mellon. Carnegie Mellon University homepage. Machine Learning Department home