Transcription of Part IV Generative Learning algorithms
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CS229 Lecture notesAndrew NgPart IVGenerative Learning algorithmsSo far, we ve mainly been talking about Learning algorithms that modelp(y|x; ), the conditional distribution ofygivenx. For instance, logisticregression modeledp(y|x; ) ash (x) =g( Tx) wheregis the sigmoid func-tion. In these notes, we ll talk about a different type of Learning a classification problem in which we want to learn to distinguishbetween elephants (y= 1) and dogs (y= 0), based on some features ofan animal. Given a training set, an algorithm like logistic regression orthe perceptron algorithm (basically) tries to find a straight line that is, adecision boundary that separates the elephants and dogs. Then, to classifya new animal as either an elephant or a dog, it checks on which side of thedecision boundary it falls, and makes its prediction s a different approach.
5 1.2 The Gaussian Discriminant Analysis model When we have a classification problem in which the input features x are continuous-valued random variables, we can then use the Gaussian Discrim-
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MATLAB TUTORIAL FOR MULTIVARIATE ANALYSIS, Multivariate statistics, More on Multivariate Gaussians, Multivariate, Image processing and data analysis The multiscale, Image processing and data analysis The multiscale approach, Survey on Multivariate Data Visualization, Multivariate Regression Modeling for Home, Evaluation using Maximum Information Coefficient