64-233 Lecture Data-driven Intelligent Systems

Course offering details

Instructors: Dr. Cornelius Andreas Stefan Weber

Event type: Lecture

Displayed in timetable as: DAIS-VL

Hours per week: 4

Language of instruction: English

Min. | Max. participants: - | 100

Comments/contents:
We are surrounded by a huge amount of data on a daily basis but only by extracting and analzying information from the data it is possible to discover knowledge. Therefore data-driven intelligent systems have a tremendous implication for many interdisciplinary fields including human computer interaction, assistance systems, cognitive neuroscience and healthcare, and are becoming increasingly relevant for industry. This lecture covers methods, concepts and algorithms of data-driven intelligent systems for knowledge discovery and decision making. The focus is on methods from machine learning, statistics and neural networks, by which a data scientist retrieves interpretable representations from text, speech, images or other data. Topics include:
•    Pre-processing and visualization methods
•    Knowledge management and associations rules
•    Decision trees, decision rules
•    Supervised classification and unsupervised clustering
•    Neural networks, deep learning and self-organizing neural networks
•    Intelligent agents: reinforcement learning and planning
•    Ensemble learning and hybrid systems
•    Bayes networks and hidden Markov models
•    Text mining, sensor mining and other applications

Learning objectives:
The area of Data-driven Intelligent Systems includes concepts of information and knowledge. The students learn on an algorithmic basis how to process and analyse huge amounts of data and how to visualise and interpret data for knowledge discovery and decision making. The students learn how to model complex problems, apply various approaches practically, and work scientifically with systematic methods.

Didactic concept:
Complementary to the lectures is the practical course Data-driven Intelligent Systems, in which lecture topics will be tested and examples will be implemented.

Current Situation:
Due to the coronavirus, the course will likely NOT be held on campus, but course material will be provided online. If the situation allows, there may be additional presence offers, such as Q&A sessions. Please check STiNE for further announcements from the date of the first lecture onwards.

Language:
We will offer the lecture in English to provide an opportunity to become acquainted with the standard language of science and engineering. We will offer the complementing practical courses in English as well as in German to adapt to your preferences. Also we will support you, both for the topic and the language, as good as we can. German discussions are also welcome at any time.

Literature:
- Kantardzic, M. Data Mining. Wiley, 2011.
- Han J. & Kamber, M. Data Mining: Concepts and Techniques. Elsevier/Morgan Kaufmann, Amsterdam, 2006.
- Marsland, S. Machine Learning - An Algorithmic Perspective. CRC Press, 2009.

Additional examination information:
There will be a written examination (Klausur). Dates for the exam will be offered in the beginning and in the end of the non-lecture period.

Appointments
Date From To Room Instructors
1 Mon, 4. Apr. 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
2 Wed, 6. Apr. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
3 Mon, 11. Apr. 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
4 Wed, 13. Apr. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
5 Wed, 20. Apr. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
6 Mon, 25. Apr. 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
7 Wed, 27. Apr. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
8 Mon, 2. May 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
9 Wed, 4. May 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
10 Mon, 9. May 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
11 Wed, 11. May 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
12 Mon, 16. May 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
13 Wed, 18. May 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
14 Mon, 30. May 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
15 Wed, 1. Jun. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
16 Wed, 8. Jun. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
17 Mon, 13. Jun. 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
18 Wed, 15. Jun. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
19 Mon, 20. Jun. 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
20 Wed, 22. Jun. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
21 Mon, 27. Jun. 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
22 Wed, 29. Jun. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
23 Mon, 4. Jul. 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
24 Wed, 6. Jul. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
25 Mon, 11. Jul. 2022 14:15 15:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
26 Wed, 13. Jul. 2022 10:15 11:45 D-125/129 Dr. Cornelius Andreas Stefan Weber
Exams in context of modules
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Instructors
Dr. Cornelius Andreas Stefan Weber