Revision as of 07:54, 9 March 2010 by Mboutin (Talk | contribs)


Course Outline, ECE662 Spring 2010 Prof. Mimi

Note: This is an approximate outline that is subject to change throughout the semester.


Lecture Topic
1 1. Introduction
1 2. What is pattern Recognition
2-3 3. Finite vs Infinite feature spaces
4-5 4. Bayes Rule
6-10

5. Discriminate functions

- Definition;

- Application to normally distributed features;

- Error analysis.

11-12

6. Parametric Density Estimation

-Maximum likelihood estimation

-Bayesian parameter estimation

7. Non-parametric Density Estimation

-Parzen Windows

-K-nearest neighbors

-The nearest neighbor classification rule.

8. Linear Discriminants
9. SVM
10. ANN
11. Decision Trees
12. Clustering



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