ECE 2372 - PATTERN RECOGNITION Minimum Credits: 3 Maximum Credits: 3 Emphasis on machine pattern recognition and learning; Bayes decision theory, parameter estimation, Bayesian belief networks, discriminant functions, supervised learning, nonparametric techniques, feature extraction, principal component analysis, hidden Markov models, expectation-maximization, support vector machines, artificial neural networks, unsupervised learning, clustering, and syntactic pattern recognition. Academic Career: Graduate Course Component: Lecture Grade Component: Grad Letter Grade Course Requirements: PROG: Swanson School of Engineering Click here for class schedule information.
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