(Useful Links)
Line 32: Line 32:
 
* [http://www.cs.iastate.edu/~dcaragea/SVMVis/data_sets.htm Some SVM sample data ]
 
* [http://www.cs.iastate.edu/~dcaragea/SVMVis/data_sets.htm Some SVM sample data ]
  
== Links ==
+
* [http://www.mathworks.com/access/helpdesk/help/toolbox/bioinfo/index.html?/access/helpdesk/help/toolbox/bioinfo/ref/svmclassify.html&http://www.mathworks.com/cgi-bin/texis/webinator/search/ SVM Matlab Bioinformatics Toolbox ]
Links to many SWM softwares, tutorials, etc: Most of these sites are compilation of several links to codes on the web
+
 
+
1. SVM and Kernel Methods Matlab Toolbox
+
http://asi.insa-rouen.fr/enseignants/~arakotom/toolbox/index.html
+
 
+
2. SVM - Support Vector Machines Software
+
http://www.support-vector-machines.org/SVM_soft.html
+
 
+
3. Some SVM sample data
+
http://www.cs.iastate.edu/~dcaragea/SVMVis/data_sets.htm
+
 
+
4. LIBSVM - A library of SVM software, including both C and Matlab code.  Various interfaces through several platforms available as well.
+
http://www.csie.ntu.edu.tw/~cjlin/libsvm/
+
 
+
Links to Matlab Toolbox tutorials
+
 
+
1. SVM Matlab Bioinformatics Toolbox http://www.mathworks.com/access/helpdesk/help/toolbox/bioinfo/index.html?/access/helpdesk/help/toolbox/bioinfo/ref/svmclassify.html&http://www.mathworks.com/cgi-bin/texis/webinator/search/
+
  
 
== Journal References ==
 
== Journal References ==

Revision as of 10:30, 3 April 2008

Course Topics

This page and its subtopics discusses about Support Vector Machines

Lectures discussing Support Vector Machines: Lecture 11, Lecture 12 and Lecture 13.

Relevant Homework Homework 2_Old Kiwi

Useful Links

  • LIBSVM - A library of SVM software, including both C and Matlab code. Various interfaces through several platforms available as well.
  • svms.org:Here is a good webpage containing links to effective Support Vector Machines packages, written in C/C++. Matlab, applicable for binary/multi- calss classifications.

Journal References

  • M.A. Aizerman, E.M. Braverman, L.I. Rozoner. Theoretical foundations of the potential function method in pattern recognition learning. Automation and Control, 1964, Vol. 25, pp. 821-837.
  • Bernhard E. Boser and Isabelle M. Guyon and Vladimir N. Vapnik. A training algorithm for optimal margin classifiers. COLT '92: Proceedings of the fifth annual workshop on Computational learning theory. 1992. Pittsburgh, PA.

Alumni Liaison

Abstract algebra continues the conceptual developments of linear algebra, on an even grander scale.

Dr. Paul Garrett