392173 Vertiefung Neuronale Netze (V) (WiSe 2022/2023)

Contents, comment

This lecture will consider various unsupervised and instance-based learning approaches before turning back to deep neural networks. In the exercises will replicate various classical applications of neural network methods to interesting real-world problems.

  • Topological Maps: Self-Organizing Maps, Growing Neural Gas, Hyperbolic SOM, Local Linear Maps
  • Mixture Models: Gaussian Mixture Models, Gaussian Mixture Regression, Gaussian Processes
  • Recurrent Neural Nets: Dynamics, Stability, applications: Hopfield net, CLM, ...
  • Graph Networks: Processing Structural Information
  • Generative Models: Generative Adversarial Networks (GAN), Actor-Critic, Variational Autoencoders
  • Deep Reinforcement Learning

The lecture will be given in English language if desired by the audience.
Slides will be in English in any case.

Requirements for participation, required level

recommended prerequisites:
- Machine Learning basics
- Neural Networks basics

External comments page

http://ni.www.techfak.uni-bielefeld.de/teaching/vertiefung-neuronale-netze

Teaching staff

Dates ( Calendar view )

Frequency Weekday Time Format / Place Period  
weekly Mi 8-10 ON SITE & ONLINE CITEC 10.10.2022-03.02.2023
not on: 10/12/22 / 12/28/22 / 1/4/23
Hybridform
one-time Mi 08-10 ON SITE & ONLINE X-E0-209 12.10.2022 Hybridform

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Subject assignments

Module Course Requirements  
39-M-Inf-VNN Vertiefung Neuronale Netze Vertiefung Neuronale Netze Ungraded examination
Graded examination
Student information

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WS2022_392173@ekvv.uni-bielefeld.de
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Last update basic details/teaching staff:
Sunday, June 26, 2022 
Last update times:
Thursday, September 1, 2022 
Last update rooms:
Thursday, September 1, 2022 
Type(s) / SWS (hours per week per semester)
lecture (V) / 2
Department
Faculty of Technology
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363275087