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Introduction
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415.706FC Datamining and Machine
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Summary
Bayesian Learning
Introduction
Bayes Theorem
A General Example
Bayes Theorem & Concept Learning
MAP Hypotheses and Consistent Learners
Maximum Likelihood & Least-Squared Error
Maximum Likelihood for Predicting Probabilities
Gradient Search to Maximize Likelihood in ANN
Minimum Description Length
Bayes Optimal Classifier
Gibbs Algorithm
Naive Bayes Classifier
An Example
Estimating Probabilities
Learning to Classify Text
Learn Naive Bayes Text Algorithm
Experimental Results
Bayesian Belief Networks
A Bayesian Belief Network
Representation
Inference
Learning BBNs
Gradient Ascent Training of BBN
Learning BBN Structure
EM Algorithm
Estimating Means of
Gaussians
-means Problem Visualization
Practical Implementation for
-means EM
Summary
Patricia Riddle
Fri May 15 13:00:36 NZST 1998