08 Neural Networks - myreaders.info(08年神经网络myreaders.info).pdf
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Fundamentals of Neural Networks : AI Course lecture 37 – 38, notes, slides
/ , RC Chakraborty, e-mail rcchak@ , June 01, 2010
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Fundamentals of Neural Networks
Artificial Intelligence
Neural network, topics : Introduction, biological neuron model,
artificial neuron model, notations, functions; Model of artificial
neuron - McCulloch-Pitts neuron equation; Artificial neuron – basic
elements, activation functions, threshold function, piecewise linear
function, sigmoidal function; Neural network architectures - single
layer feed-forward network, multi layer feed-forward network,
recurrent networks; Learning Methods in Neural Networks -
classification of learning algorithms, supervised learning,
unsupervised learning, reinforced learning, Hebbian learning,
gradient descent learning, competitive learning, stochastic
learning. Single-Layer NN System - single layer perceptron ,
learning algorithm for training, linearly separable task, XOR
Problem, learning algorithm, ADAptive LINear Element (ADALINE)
architecture and training mechanism; Applications of neural
networks - clustering, classification, pattern recognition, function
approximation, prediction systems.
Fundamentals of Neural Networks
Artificial Intelligence
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