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CS 667 Neural Network Computing
Description:
An introduction to neural network models and their applications. Discussion of organization and learning in neural network models including perceptrons, adalines, backpropagation networks, recurrent networks, adaptive resonance theory and the neocognitron. Implementations in general and special purpose hardware, both analog and digital. Application in various areas with comparisons to nonneural approaches. Decision systems, nonlinear control, speech processing and vision.
Credits: 3:0:0:3
Pre-Requisite: CS 5403. Some familiarity with matrix notation and partial derivatives is recommended
Co-Requisite: none
Notes: none
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