= Maschinelles Lernen - Theorie und Anwendung = === General Information === Maschinelles Lernen - Theorie und Anwendung is a 9 LP (9 ECTS) credits module. ||'''Lecture period'''|| from 20.04.2017 to 20.07.2017 || ||'''Lecture'''|| Thursday 10:15-12:00 in MAR 0.011 || ||'''Exercise session'''|| Thursday 12:15-14:00 in MAR 0.011 || ||<(^|2>'''Trainers'''||Prof. Dr. Klaus-Robert Müller (Responsible)|| ||Gregoire Montavon || ||'''Contact''' || gregoire.montavon@tu-berlin.de || || '''ISIS''' || https://isis.tu-berlin.de/course/view.php?id=9700 || === Frequently asked questions (FAQ): === '''How many credits for this course?''' 6 ECTS if taken as a standalone course. 9 ECTS if taking the whole module (i.e. including an optional course, see below for a list). '''Is it possible to take this course without having taken ML1?''' Yes, ML1 is not a formal prerequisite. However, methods learned in ML1 will be assumed to be known, and extra work might therefore be needed during the first few weeks. '''I am from a different university, can I take this course?''' If you are not a student at TU and want to earn credit, you have to solicit [[http://www.tu-berlin.de/?id=76326|''Nebenhörerschaft'']]: (1) Print out the forms concerning Nebenhörerschaft you find on that page. (2) Pass by at my office (see above) to have them signed, or bring your forms during the first lecture. (3) In addition, the dean of faculty IV has to sign. (4) Register at the the Campus Center. You will receive a TUBIT account (see below). === Topics === * Embeddings * Stationary Subspace Analysis * Independent Component Analysis * Canonical Correlation Analysis * Kernel methods for structured data * Neural networks for structured data * Unsupervised neural networks * Structured output learning * One-class SVMs * Bioinformatics === List of optional courses === * [[Main/SS17_MatlabKurs|Kurs Matlab Programmierung für Maschinelles Lernen und Datenanalyse]] * [[Main/SS17_PythonKurs|Kurs Python Programming for Machine Learning]] * [[Main/SS17_NN|Seminar Neural Networks]] * [[Main/SS17_HotTopics|Seminar Hot Topics]] * [[Main/SS17_MLDM|Seminar Machine Learning and Data Management]]