Artificial Neural Networks
Unfortunately, the course had to be cancelled for this semester.
This lecture presents standard algorithms and new developments of feedforward Artificial Neural Networks, their functioning, application domains, and connections to more conventional mathematical methods. Examples show the potential and limitations of the methods. Supervised as well as unsupervised learning methods are introduced.
In detail:
1) Introduction, some biological facts
2) Mathematical foundations: probability theory and partial derivatives
3) One layer networks and linear discriminants
4) Multilayer networks and error backpropagation
5) Universality of two-layer networks
6) Radial basis function networks
7) Neuronal maps: Kohonen network, Growing Neural Gas
8) Optimization methods
The course will be given in English upon request.
Grades and credits are given according to the percentage of solved problems in exercise 310012 and presentation of a solution during the exercise.
Lecturers
PD Dr. Rolf WürtzLecturer |
(+49) 234-32-27994 rolf.wuertz@ini.rub.de NB 3/66 |
Daniel Vonk, M.Sc.Teaching Assistant |
daniel.vonk@ini.rub.de |
Details
- Course type
- Lectures
- Credits
- 5 CP
- Term
- Winter Term 2018/2019
Dates
- Lecture
-
Takes place
every week on Friday from 12:15 to 14:00 in room HZO 100.
First appointment is on 12.10.2018
Last appointment is on 01.02.2019 - Exercise
-
Takes place
every week on Wednesday from 14:00 to 15:00 in room NA 5/99.
First appointment is on 17.10.2018
Last appointment is on 30.01.2019 - Exercise
-
Takes place
every week on Wednesday from 15:00 to 16:00 in room NA 5/99.
First appointment is on 17.10.2018
Last appointment is on 30.01.2019 - Exercise
-
Takes place
every week on Wednesday from 16:00 to 17:00 in room NA 5/99.
First appointment is on 17.10.2018
Last appointment is on 30.01.2019 - Exercise
-
Takes place
every week on Wednesday from 17:00 to 18:00 in room NA 5/99.
First appointment is on 17.10.2018
Last appointment is on 30.01.2019
Certificate: Upon successful completion of the exercises (1 HPW)
Literature:
- C. M. Bishop, Neural Networks for Pattern Recognition, 1995 Clarendon Press, Oxford.
- S. Haykin, Neural Networks and Learning Machines, 3rd edition, 2003, Pearson, New Jersey
The Institut für Neuroinformatik (INI) is a central research unit of the Ruhr-Universität Bochum. We aim to understand the fundamental principles through which organisms generate behavior and cognition while linked to their environments through sensory systems and while acting in those environments through effector systems. Inspired by our insights into such natural cognitive systems, we seek new solutions to problems of information processing in artificial cognitive systems. We draw from a variety of disciplines that include experimental approaches from psychology and neurophysiology as well as theoretical approaches from physics, mathematics, electrical engineering and applied computer science, in particular machine learning, artificial intelligence, and computer vision.
Universitätsstr. 150, Building NB, Room 3/32
D-44801 Bochum, Germany
Tel: (+49) 234 32-28967
Fax: (+49) 234 32-14210