Course detail
Fuzzy Systems and Neural Networks
FSI-RNFAcad. year: 2013/2014
The course provides students with the introduction to the most commonly used paradigms of neural networks. Further, it shows technically oriented applications of neural networks and their practical use. The theory part is focused on neural dynamics - mainly it's activation, signals and activation models, synapse dynamics - both supervised and unsupervised learning (competitive learning, back-propagation); network architectures. Furthermore, the neural and fuzzy representation of structured knowledge is compared and used for controllers design.
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Learning outcomes of the course unit
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Planned learning activities and teaching methods
Assesment methods and criteria linked to learning outcomes
Course curriculum
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Aims
Specification of controlled education, way of implementation and compensation for absences
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Prerequisites and corequisites
Basic literature
Rojas, R.: Neural Networks, 1996
Recommended reading
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Lecture
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Syllabus
2. Additive bivalent models, common neural activations, learning as coding.
3. Basic rules of unsupervised learning, stochastic unsupervised learning and stochastic equilibrium.
4. Supervised learning, learning as stochastic learning of patterns with known class membership.
5. Backpropagation algorithm.
6. Neural nets as stochastic gradient systems, synaptic convergence to centroids.
7. Global equilibrium: convergence and stability, global stability of recurrent neural nets, structural stability of unsupervised learning.
8. Fuzzy sets and systems, uncertainty in probabilistic environment, randomness versus ambiguity.
9. Fuzzy and neural approximation of functions, neural representation and fuzzy representation of structured knowledge.
10. Controllers based on mathematical model and on approximator.
11. Fuzzy controllers.
12. Controllers based on Kalman filter.
13. Conclusions.