64-416 Lecture Neural Networks

Course offering details

Instructors: Prof. Dr. Stefan Wermter

Event type: Lecture

Displayed in timetable as: NN - VL

Hours per week: 2

Credits: 3,0

Language of instruction: English

Min. | Max. participants: - | 60

Comments/contents:
Neural networks in the brain are the important basis for all behavior and knowledge processing in humans. They produce not only an impressive range of neurocognitive behavior but also  an impressive system performance based on computational neural networks. How is this possible and what can we learn from the brain for the development of neural learning and robust computer science systems? This lecture addresses this current and exciting question and provides a comprehensive overview of different computational neural networks and their use and integration into hybrid neural symbolic knowledge-processing systems.

Indicative topics include:


  • Neural architectures
  • Deep Learning
  • Midbrain / cortical architectures
  • Neuroscience-inspired robotics
  • Neural multimodal integration
  • Integration of symbolic, neural or statistical approaches

For details or updates see http://www.informatik.uni-hamburg.de/WTM/teaching/

Learning objectives:
A deeper understanding of artificial neural networks and their integration into computer science system architectures.

Didactic concept:
Lecture with discussions complemented with the associated seminar. As an additional option we can offer access to a neural simulator or a new sophisticated robot simulator.

Current Situation:
The course will be largely held online due to the current pandemic circumstances - the complete course material will be made available online. If possible, additional meetings in presence will be offered, as well as examinations in presence. Please check the messages in STiNE regularly after the official start of the course.

Literature:


  • Goodfellow I., Bengio Y., Courville A. Deep Learning. MIT Press, 2016.
  • Haykin S. Neural networks and learning machines. Prentice Hall, 2008.
  • Wermter S., Sun R. Hybrid Neural Systems. Springer Verlag, Heidelberg, 2000.

Additional examination information:
Binding requirement: Lecture and seminar Knowledge Processing with Neural Networks’ can be selected exclusively either as module InfM-NN or as part of the module Integrated Application Subject Neuro-Informatics (IAF NI).

Appointments
Date From To Room Instructors
1 Th, 7. Apr. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
2 Th, 14. Apr. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
3 Th, 21. Apr. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
4 Th, 28. Apr. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
5 Th, 5. May 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
6 Th, 12. May 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
7 Th, 19. May 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
8 Th, 2. Jun. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
9 Th, 9. Jun. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
10 Th, 16. Jun. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
11 Th, 23. Jun. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
12 Th, 30. Jun. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
13 Th, 7. Jul. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
14 Th, 14. Jul. 2022 10:15 11:45 D-220 Prof. Dr. Stefan Wermter
Exams in context of modules
Module (start semester)/ Course Exam Date Instructors Compulsory pass
Class session overview
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Instructors
Prof. Dr. Stefan Wermter