Recommender Systems: Methods and Applications
You can review your exams on 22.03.18 at 15:30 in the room G29-128.
Timetable
Day | Time | Frequency | Period | Room | Lecturer | Remarks | Max. participants |
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Vorlesung(V) - Lecture - Dates/Times/Location: | |||||||
Mon. | 13:00 bis 15:00 | weekly | G29-307 (Verwaltung durch FIN) | Spiliopoulou | 60 | ||
Übung (Ü) - Exercise - Dates/Times/Location: | |||||||
Tue. | 13:00 bis 15:00 | weekly | G22A-208 (40 Pl.) | Matuszyk | 40 |
Overview (from LSF)
Learning Content | In this course we elaborate on the role of recommenders as a primary means of improving a user's or customer's experience, while increasing company revenue. The course covers learning methods for the recommender core, approaches for the design and evaluation of recommenders, and specific application areas of recommenders. |
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Description | in English |
Literature | Literature:
Recommender design and evaluation
|
Prerequisites | Background in data mining is of advantage. This course is also appropriate for students who have heard the CRM/RecSys bachelor course. |
Description | Recommender Systems: Methods and Applications |
Lecture:
- 1 Setting the Scene
- 2a Basics (updated on 01.11.2017)
- 2b Evaluation
- 3a Dealing with time and with Big Issues
- 3b Evaluation in Stream Recommenders
- 3c Opinion Mining (updated on 22.01.2018)
- 4 Stream-based Recommender Systems
Exercise:
- Exercise sheet 1
- Exercise sheet 2
- Exercise sheet 3
- Exercise sheet 4
- Exercise sheet 5
- Exercise sheet 6
- Exercise slides - matrix factorization
- Exercise slides - Environment models