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Lecture Notes:
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[[Category:ECE662]]
This was the first day of class. These notes are from the class lecture.
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[[Category:decision theory]]
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[[Category:lecture notes]]
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[[Category:pattern recognition]]
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[[Category:slecture]]
  
== Links to Course Webpages ==
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<center><font size= 4>
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'''[[ECE662]]: Statistical Pattern Recognition and Decision Making Processes'''
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</font size>
  
* [http://cobweb.ecn.purdue.edu/~mboutin/ECE662/ECE662.html Main Course webpage]
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Spring 2008, [[user:mboutin|Prof. Boutin]]
  
* [https://engineering.purdue.edu/people/mireille.boutin.1/ECE301kiwi Old Kiwi webpage]
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[[Slectures|Slecture]]
  
* [http://balthier.ecn.purdue.edu/index.php/Main_Page New Kiwi webpage]
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<font size= 3> Collectively created by the students in [[ECE662:BoutinSpring08_OldKiwi|the class]]</font size>
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</center>
  
'''Login''': Use your Purdue Career Account username and password.
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----
  
'''Note''': You must change your password once a month.
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=Lecture 1 Lecture notes=
 
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Jump to: [[ECE662_Pattern_Recognition_Decision_Making_Processes_Spring2008_sLecture_collective|Outline]]|
== Kiwi Week ==
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[[Lecture 1 - Introduction_OldKiwi|1]]|
Monday at noon until Monday at noon.
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[[Lecture 2 - Decision Hypersurfaces_OldKiwi|2]]|
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[[Lecture 3 - Bayes classification_OldKiwi|3]]|
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[[Lecture 4 - Bayes Classification_OldKiwi|4]]|
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[[Lecture 5 - Discriminant Functions_OldKiwi|5]]|
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[[Lecture 6 - Discriminant Functions_OldKiwi|6]]|
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[[Lecture 7 - MLE and BPE_OldKiwi|7]]|
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[[Lecture 8 - MLE, BPE and Linear Discriminant Functions_OldKiwi|8]]|
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[[Lecture 9 - Linear Discriminant Functions_OldKiwi|9]]|
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[[Lecture 10 - Batch Perceptron and Fisher Linear Discriminant_OldKiwi|10]]|
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[[Lecture 11 - Fischer's Linear Discriminant again_OldKiwi|11]]|
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[[Lecture 12 - Support Vector Machine and Quadratic Optimization Problem_OldKiwi|12]]|
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[[Lecture 13 - Kernel function for SVMs and ANNs introduction_OldKiwi|13]]| 
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[[Lecture 14 - ANNs, Non-parametric Density Estimation (Parzen Window)_OldKiwi|14]]|
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[[Lecture 15 - Parzen Window Method_OldKiwi|15]]|
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[[Lecture 16 - Parzen Window Method and K-nearest Neighbor Density Estimate_OldKiwi|16]]|
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[[Lecture 17 - Nearest Neighbors Clarification Rule and Metrics_OldKiwi|17]]|
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[[Lecture 18 - Nearest Neighbors Clarification Rule and Metrics(Continued)_OldKiwi|18]]|
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[[Lecture 19 - Nearest Neighbor Error Rates_OldKiwi|19]]|
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[[Lecture 20 - Density Estimation using Series Expansion and Decision Trees_OldKiwi|20]]|
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[[Lecture 21 - Decision Trees(Continued)_OldKiwi|21]]|
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[[Lecture 22 - Decision Trees and Clustering_OldKiwi|22]]|
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[[Lecture 23 - Spanning Trees_OldKiwi|23]]|
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[[Lecture 24 - Clustering and Hierarchical Clustering_OldKiwi|24]]|
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[[Lecture 25 - Clustering Algorithms_OldKiwi|25]]|
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[[Lecture 26 - Statistical Clustering Methods_OldKiwi|26]]|
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[[Lecture 27 - Clustering by finding valleys of densities_OldKiwi|27]]|
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[[Lecture 28 - Final lecture_OldKiwi|28]]
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----
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----
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This was the first day of class. These notes are from the class lecture.
  
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==Course Info==
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[[Course_info_ECE662_Boutin_Spring2010|Continue reading...]]
  
 
== Textbook Information ==
 
== Textbook Information ==
Main article: [[Textbooks_OldKiwi]]
 
 
 
There is not a single book that covers all the things that will be discussed in ECE 662. The class will reference [[Textbooks_OldKiwi|four books]] during the course of the semester as we cover various topics. All four of them are available through the reserves at the engineering library.
 
There is not a single book that covers all the things that will be discussed in ECE 662. The class will reference [[Textbooks_OldKiwi|four books]] during the course of the semester as we cover various topics. All four of them are available through the reserves at the engineering library.
  
 
== Definition and Examples of Pattern Recognition ==
 
== Definition and Examples of Pattern Recognition ==
Main article: [[What is Pattern Recognition_OldKiwi]].
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Pattern Recognition is the art of assigning classes or categories to data. [[What is Pattern Recognition_OldKiwi|Continue reading...]].
  
Pattern Recognition is the art of assigning classes or categories to data.
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== Decision Surfaces and Algebraic Geometry==
 
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Decision surfaces are the boundaries in the feature space that distinguish classes. [[Decision Surfaces_OldKiwi|Continue reading...]]
== Decision Surfaces ==
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Main Article: [[Decision Surfaces_OldKiwi]]
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Decision surfaces are the boundaries in the feature space that distinguish classes.
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== Algebraic Geometry ==
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Main Article: [[Decision Surfaces_OldKiwi]] (This is not a typo)
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== Varieties ==
 
== Varieties ==
Main Article: [[Varieties_OldKiwi]]
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A Variety is a mathematical construct used to define a decision surface. [[Varieties_OldKiwi|Continue reading...]]
 
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A Variety is a mathematical construct used to define a decision surface.
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Next: [[Lecture_2_-_Decision_Hypersurfaces_OldKiwi|Lecture 2]]
 
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[[Category:Lecture Notes]]
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Latest revision as of 11:17, 10 June 2013


ECE662: Statistical Pattern Recognition and Decision Making Processes

Spring 2008, Prof. Boutin

Slecture

Collectively created by the students in the class


Lecture 1 Lecture notes

Jump to: Outline| 1| 2| 3| 4| 5| 6| 7| 8| 9| 10| 11| 12| 13| 14| 15| 16| 17| 18| 19| 20| 21| 22| 23| 24| 25| 26| 27| 28



This was the first day of class. These notes are from the class lecture.

Course Info

Continue reading...

Textbook Information

There is not a single book that covers all the things that will be discussed in ECE 662. The class will reference four books during the course of the semester as we cover various topics. All four of them are available through the reserves at the engineering library.

Definition and Examples of Pattern Recognition

Pattern Recognition is the art of assigning classes or categories to data. Continue reading....

Decision Surfaces and Algebraic Geometry

Decision surfaces are the boundaries in the feature space that distinguish classes. Continue reading...

Varieties

A Variety is a mathematical construct used to define a decision surface. Continue reading...


Next: Lecture 2

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Correspondence Chess Grandmaster and Purdue Alumni

Prof. Dan Fleetwood