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Artificial Neural Network (Spring 2006)

Course code : EANN-U01
ECTS Credits : 7,5 Status : Optional
Placement : 5-7 semester Hours per week : 4
Length : 1 semester Teaching Language : Danish if no English students are present

Principal Content : Introduction to the principles of the human brain, neurons, dendrites, axom,….
Artificial Neural Network components:
- Adaline, perceptron, multiplayer perceptrons
- Linear models, estimation, regression, least square, LMS algorithm
- Patterns recognition, classifiers, training parameters’
- Training algoritms, backpropagation,adaptive systems
- Nonlinear models, perceptron, MLP, training, classification, error and stopcriterias
- Function approximation with MLP, Radial Basis funcionc, vector support machines
- Hebbian learning, Oja´s rule, anti-hebbian learning, Associate memory, winner-take-all network, adaptive resonance theory
- Digital signal processing, time series, frequency domain, adaptive filters
- Static versus Dynamic systems, time-delay neural network, gamma memory
- Training and using recurrent network, feedback parameters, hopfield network, Grossbergs additive model
- Introduction to pulsed neural network and related electronics
Teaching method : The curriculum is based on an interactive book – overview lessons will allow (groups of) the student to study the interactive sessions and perform the related simulation exercises.
Required prequisites : Documented knowledge of math corresponding to DSM3/DSM4
Analogue or digital design equivalent to 4th semester level.
Responsible teacher : Kurt Jeritslev , kuj@ihk.dk