Sie sind nicht angemeldet

Machine Learning for mere mortals: Workflow, key models, & coding


Dozent/in Dr. Markus Meierer; Dr. oec. Margot Löwenberg
Veranstaltungsart Vorlesung
Code HS211155
Semester Herbstsemester 2021
Durchführender Fachbereich Wirtschaftswissenschaften
Studienstufe Bachelor
Termin/e Mo, 13.09.2021, 09:15 - 14:00 Uhr, HS 8
Di, 14.09.2021, 09:15 - 14:00 Uhr, HS 8
Mi, 15.09.2021, 09:15 - 14:00 Uhr, HS 8
Do, 16.09.2021, 09:15 - 14:00 Uhr, HS 8
Fr, 17.09.2021, 09:15 - 14:00 Uhr, HS 4
Umfang Blockveranstaltung
Turnus Block course
Inhalt Machine learning has become one of the core pillars of business analytics. Since the amount of available data is steadily increasing, applying smart data analysis techniques will become more and more important in the future. This course introduces (supervised) machine learning techniques in a hands-on way with integrated exercises.             
The distinction between supervised/unsupervised/reinforcement learning, sampling and cross-validation, performance evaluation, logistic regression, decision trees, random forest, support vector, machines, deep learning, and ensemble methods are among the topics to be discussed in this course. An integral part of this lecture are integrated exercises during which the students will become familiar with setting up machine learning models in the programming language R.
Lernziele - Get familiar with the concept of (supervised) machine learning.
- Understand the basic theory behind various machine learning techniques.
- Apply different machine learning techniques and interpret the results.
Voraussetzungen - Bring a laptop (with the latest operating system version installed).
- Updated installation of R (https://cran.r-project.org/).
- Updated installation of Rstudio (https://www.rstudio.com/).
Sprache Englisch
Anmeldung

To attend the lecture, registration via e-learning platform OLAT is required. Registration is possible from September, 13 to September 17, 2021. The students themselves are responsible for checking the creditability of the course to their course of study.

Direct link to OLAT course:

https://lms.uzh.ch/url/RepositoryEntry/17049190586

The UniPortal registration at the beginning of the semester is mandatory for this lecture so that the credits can be credited. It is no longer possible to cancel your registration after September 13, 2021.

Prüfung ***IMPORTANT*** In order to acquire credits, resp. to take the examinationIn, registration via the Uni Portal within 30.08. - 13.09.2021 is REQUIRED. Further information on registration: www.unilu.ch/wf/pruefungen
Abschlussform / Credits multiple-choice exams on programming exercises and theory, online exercises, machine learning competition / 3 Credits
Hinweise - Daily exams (1-2 questions; focus on programming skills)
- Final exam (20 multiple-choice questions; focus on knowledge questions)
- Online exercises (The online exercises have to be finished within three weeks after the last lecture.)
Hörer-/innen Nein
Kontakt markus.meierer@business.uzh.ch