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CSE6328E Speech and Language Processing
Description
The course introduces some basic and important modeling methods in pattern recognition and machine learning and their applications to speech and language processing applications. The covered topics include:
- Unordered List Item
* Bayesian Decision theory * Generative Models - multivariate Gaussian, Gaussian mixture model (GMM), hidden Markov model (HMM), Markov chain model, n-gram, graphical models * Discriminative Models - linear discriminant, logistic regression, support vector machines(SVM), neural networks, sparse kernel machines * Statistical Modeling Methods - maximum likelihood estimation (MLE), Expectation-Maximization (EM), discriminative training (DT) * Some Selected applications - speech recognition, text categorization, machine translation, spoken language processing).
The methods are equally applicable to other research areas, such as data mining, information retrieval, computer vision, computational linguistics.
Lecture Times
- Section A: Mondays and Fridays, 11:00am - 12:00pm, CSE 111