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ENEE 711 - Neural Networks in Signal Processing Credits: [3] Description: Fundamentals and characteristics of artificial neural network paradigms and their properties in association, learning, generalization and self-organization; introduction and survey of various neural network models and paradigms, multi-layer perceptron and the radial basis function networks; sum of squares and information-theoretic cost functions; different learning procedures (gradient optimization, conjugate gradients, Newton, etc.); learning and generalization properties; applications in communications and biomedical signal processing; and comparisons with linear adaptive signal processing theory and techniques. Course ID: 053979 Prerequisite: Prerequisite: ENEE 620 or consent of instructor. Components: Lecture Grading Method: A-F, Audit
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