Inhalt
[ 921INSYLUDK13 ] KV Learning from User-generated Data
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(*) Leider ist diese Information in Deutsch nicht verfügbar. |
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Workload |
Ausbildungslevel |
Studienfachbereich |
VerantwortlicheR |
Semesterstunden |
Anbietende Uni |
4,5 ECTS |
M1 - Master 1. Jahr |
Informatik |
Markus Schedl |
3 SSt |
Johannes Kepler Universität Linz |
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Detailinformationen |
Quellcurriculum |
Masterstudium Computer Science 2021S |
Ziele |
(*)This course enables students to understand and apply basic methods for acquiring and mining user-generated data, in particular through machine learning technology. Students further obtain a solid knowledge of algorithms to build recommender systems that work with different kinds of user-generated data sources (e.g., multimedia content descriptors and user-item interactions).
At the end of the course, students will be capable of
- applying and devising methods to leverage data on explicit and implicit user-item interactions/feedback
- applying and devising methods to extract content descriptors from user-generated items
- creating a collaborative filtering recommender system
- creating a content-based recommender systems
- deciding on suited hybridization approaches to combine different recommender system algorithms
- making informed decisions about evaluation strategies for recommender systems
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Lehrinhalte |
(*)The subject matters covered in this course include sources of user-generated data, methods to acquire and analyze web and social media data, and methods to mine user behavior and feedback data (explicit and implicit). Strong emphasis is further given to the use of this kind of data to build recommender systems (user preference learning), adopting the techniques of collaborative filtering, content-based filtering, and hybridization.
The lecture is accompanied by practical exercises in which students carry out several tasks to mine and analyze user-generated data, and to implement various recommender system algorithms.
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Beurteilungskriterien |
(*)written exam, practical exercises
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Lehrmethoden |
(*)lectures, practical exercises
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Abhaltungssprache |
Englisch |
Literatur |
(*)slides, scientific papers
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Lehrinhalte wechselnd? |
Nein |
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Präsenzlehrveranstaltung |
Teilungsziffer |
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Zuteilungsverfahren |
Direktzuteilung |
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