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| Pattern Recognition [PR]Summary 
						This lecture gives an introduction into the basic and commonly used 
classification concepts. First the necessary statistical concepts are 
revised and the Bayes classifier introduced. Further concepts include 
generative and discriminative models like logistic regression, the 
Gaussian classifier, Linear Discriminant Analysis, the Perceptron and 
Support Vector Machines (SVMs). Finally more complex methods like the 
Expectation Maximization Algorithm and Hidden Markov Models are discussed.
In addition to the mentioned classifiers, methods necessary for 
practical application like dimensionality reduction, optimization 
methods and the use of kernel functions are explained.
In the tutorials the methods and procedures which are presented in this 
lecture are illustrated using theoretical and practical exercises. Dates & Rooms: Wednesday, 13:30 - 14:30; Room: H10 Monday, 12:00 - 14:00; Room: H10 Lecturer Hahn, Dieter | ||