Modul
Intelligent Systems and Services [M-WIWI-101456]
Credits
9Recurrence
Jedes SemesterDuration
1 SemesterLanguage
German/EnglishLevel
4Version
8Responsible
Organisation
- KIT-Fakultät für Wirtschaftswissenschaften
Bricks
Identifier | Name | LP |
---|---|---|
T-WIWI-102666 | Knowledge Discovery | 4.5 |
T-WIWI-112243 | Machine Learning on Graphs | 4.5 |
T-WIWI-106423 | Information Service Engineering | 4.5 |
T-WIWI-110548 | Advanced Lab Informatics (Master) | 4.5 |
T-WIWI-110848 | Semantic Web Technologies | 4.5 |
T-WIWI-112685 | Modeling and Simulation | 4.5 |
T-WIWI-102661 | Database Systems and XML | 4.5 |
Competence Certificate
The assessment mix of each course of this module is defined for each course separately. The final mark for the module is the average of the marks for each course weighted by the credits and truncated after the first decimal.
Algorithms for Internet Applications [T-WIWI-102658]: The examination will be offered latest until summer term 2017 (repeaters only).
Competence Goal
Students
- know the different machine learning procedures for the supervised as well as the unsupervised learning,
- identify the pros and cons of the different learning methods,
- apply the discussed network learning methods in specific scenarios,
- compare the practicality of methods and algorithms with alternative approaches.
Prerequisites
None
Content
In the broader sense learning systems are understood as biological organisms and artificial systems which are able to change their behavior by processing outside influences. Network leaning methods based on symbolic, statistic and neuronal approaches are the focus of Computer Sciences.
In this module the most important network learning methods are introduced and their applicability is discussed with regard to different information sources such as data texts and images considering especially procedures for knowledge acquirement via data and text mining, natural analogue procedures as well as the application of organic learning procedures within the finance sector.