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Fundamentals of Neural Networks : Soft Comp uting Course Lecture 7 – 14, notes, slides
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Fundamentals of Neural Networks
Soft Computing
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Neural network, topics : Introduc tion, biological neuron model,
artificial neuron model, neuron equation. Artificial neuron : basic
elements, activation and threshold function, piecewise linear and
sigmoidal function. Neural network architectures : single layer feed-
forward network, multi layer fe ed-forward network, recurrent
networks. Learning methods in neural networks : unsupervised
Learning - Hebbian learning, competitive learning; Supervised
learning - stochastic learning, gradient descent learning; Reinforced
learning. Taxonomy of neural ne twork systems : popular neural
network systems, classification of neural network systems as per
learning methods and architecture. Single-layer NN system : single
layer perceptron, learning algo rithm for training perceptron,
linearly separable task, XOR problem, ADAptive LINear Element
(ADALINE) - architecture, and trai ning. Applications of neural
networks: clustering, classification, pattern recognition, function
approximation, prediction systems.