10EE753 Artificial Neural Network syllabus for EE


Part A
Unit-1 Introduction 7 hours

Introduction, history, structure and function of single neuron, neural net architectures, neural learning, use of neural networks.

Unit-2 Supervised learning 6 hours

Supervised learning, single layer networks, perceptrons, linear separability, perceptron training algorithm,guarantees of success, modifications.

Unit-3 Multiclass networks-I 6 hours

Multiclass networks-I, multilevel discrimination, back propagation, setting parameter values, theoretical results.

Unit-4 Accelerating learning process 7 hours

Accelerating learning process, application, Madaline adaptive multilayer networks.

Part B
Unit-5 Prediction networks 7 hours

Prediction networks, radial basis functions, polynomial networks, regularization, unsupervised learning, winner-take-all networks.

Unit-6 Learning vector quantizing 6 hours

Learning vector quantizing, counter propagation networks, adaptive resonance theorem, toplogically organized networks, distance based learning, recognition.

Unit-7 Associative models 7 hours

Associative models, Hop Field networks, brain state networks, Boltzmann machines, hetero associations.

Unit-8 Optimization using Hopfiled networks 6 hours

Optimization using Hopfiled networks, simulated annealing, random search, evolutionary computation.

Last Updated: Tuesday, January 24, 2023