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Supervised Machine Learning


Dozent/in Dr. rer. publ. Massimo Mannino
Veranstaltungsart Vorlesung
Code HS231262
Semester Herbstsemester 2023
Durchführender Fachbereich Wirtschaftswissenschaften
Studienstufe Master
Termin/e Fr, 13.10.2023, 08:15 - 14:00 Uhr, 3.A05
Fr, 20.10.2023, 08:15 - 14:00 Uhr, 4.B47
Fr, 10.11.2023, 08:15 - 14:00 Uhr, 4.B47
Fr, 01.12.2023, 08:15 - 14:00 Uhr, 4.B47
Umfang Blockveranstaltung
Turnus Block course
Inhalt The lecture familiarizes students with a wide range of models in the field of Supervised Machine Learning. The course will focus on practical machine learning applications and teach data science techniques that enable students to solve real-world problems from the business world. By means of R, students will learn to estimate and visualize model results and communicate results efficiently. The integrated exercises discuss application examples from business administration and economics.
Lernziele 1) Students can independently prepare and analyze data with R.
2) Students can apply methods in the field of Supervised Machine Learning.
3) Students are able to visualize model results with R.
4) Students can communicate model results effectively.
Voraussetzungen Solid knowledge in econometrics, statistics and R.
Sprache Englisch
Begrenzung 24 Students
Anmeldung To attend the course / exercise, registration via e-learning platform OLAT is required. Registration is possible from 4 – 29 September 2023. 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/auth/repositoryentry/17413472685/coursenode/70448659388630
Prüfung ***IMPORTANT*** In order to acquire credits, resp. to take the examination, registration via the Uni Portal within 7 - 10 October 2023 is ESSENTIALLY REQUIRED. Further information on registration: www.unilu.ch/wf/pruefungen
Abschlussform / Credits individual/group presentation, written paper / 3 Credits
Hörer-/innen Nach Vereinbarung
Kontakt massimo.mannino@novalytica.com
Anzahl Anmeldungen 12 von maximal 24
Literatur An Introduction to Statistical Learning with Applications in R (Gareth James, Daniela Witten, Trevor Hastie, Robert Tibshirani).
Freely available at: http://faculty.marshall.usc.edu/gareth-james/