Difference between revisions of "SVM"

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==Introduction==
 
==Introduction==

Revision as of 14:50, 8 March 2011

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Introduction

The Support Vector Machines (SVM) module implements the support vector machines algorithm. It is a supervised classification method that computes a maximal separating hyperplane between the expression vectors of different classes or phenotypes. Given microarray data with n markers per sample, SVM outputs a hyperplane,W, which can be thought of as a vector with n components each corresponding to the expression of a particular marker. Loosely speaking, assuming that the expression values of each marker have similar ranges, the absolute magnitude of each element in W determines its importance in classifying a sample. 

In geWorkbench, the SVM computation compares one or more sets of arrays marked as "Case" against sets marked "Control".

The classifier that is generated can be applied to a test data set. This can be done in two ways. Before generating the classifier, additional arrays sets can be marked as "test". The new classifier will be applied immediately to the "test" data set. Or, after the classifier has been generated, "test" data nodes can be selected using a browser directly in the SVM component.

The result in either case is that the arrays in "test" set will be called as either belonging to the "Case" or "Control" categories, and a confidence value is indicated.

Parameters

The SVM module has no settable parameters for the computation.


SVM Parameters tab.png

GenePattern Server Settings

To run GenePattern components, a GenePattern account is required.

  • Protocol: HTTP or HTTPS, depending on the server being used.
  • Host: URL of a GenePattern server.
  • Port: Port at which the GenePattern server is located on the Host machine.
  • Username: A valid user name on the specified GenePattern server.
  • Password: A password, if required by the specified server.
  • Modify - change any of the GenePattern connection settings.


SVM GenePattern Server Settings.png


Pushing "Modify" brings up an editing box where any of the settings can be changed.


SVM Server Settings.png


Help

GenePattern components in geWorkbench have their own brief built-in Help section.


SVM Help tab.png


Running an analysis

The SVM classifier requires that at least two sets of markers be activated in the Markers component. At least one must be marked as "Case" and at least one must be marked as "Control".

In addition, one or more additional sets can be activated an marked as "Test". After the classifier has been built using the Case and Control sets, it will be run on the Test set.


SVM Arrays Setup.png


When "Analyze" is pushed, the data is transfered to the GenePattern server, and then the classifier will be run.


Training Classifier running:

SVM Running Classifier train.png


Test classifier running:

SVM Running Classifier test.png


The resulting classifier is placed into the Project Folders component.

SVM Project Folder.png


SVM Results Viewer

Under the "Train" tab, the results viewer shows a tabular and graphical view of the classifier results.

SVM Train Result.png


If a test set was used, the results of running the classifier on it are shown in under the "Test" tab.

In addition, a data node browser allows array sets from any microarray data node to be selected. The classifier can then be applied to the selected array set.

SVM Test Result.png


References:

  • R. Rifkin, S. Mukherjee, P. Tamayo, S. Ramaswamy, C-H Yeang, M. Angelo, M. Reich, T. Poggio, E.S. Lander, T.R. Golub, J.P. Mesirov, An Analytical Method for Multiclass Molecular Cancer Classification, SIAM Review, 45:4, (2003).
  • T. Evgeniou, M. Pontil, T. Poggio, Regularization networks and support vector machines, Adv. Comput. Math., 13 (2000), pp. 1-50.
  • V. Vapnik, Statistical Learning Theory, Wiley, New York, 1998.