I am trying to understand this example related to svm http://www.mathworks.com/help/bioinfo/ref/svmclassify.html
I ran the example taking iris data and plotted the svm as given in the example. However, when I view the support vectors in the svmstruct, I get lots of new values. AFAIK, support vectors should be the samples themselves, the ones that lie on the margin. However when I print svmStruct.SupportVectors I get different values like
-0.0073 -0.4143 -0.3706 -0.4143 -0.2495 -0.1789 -0.1284 0.2919 -0.0073 -0.4143 -0.1284 -0.6498 0.1139 0.0565 0.2350 -0.1789 -0.4918 -0.1789 -0.2495 -0.4143 -0.4918 0.0565 0.1139 -0.4143 -0.0073 0.2919 -0.1284 0.2919 -0.0073 0.2919 0.2350 -0.4143 0.8406 -0.6498 -0.1284 0.2919 0.2350 0.2919
These are not among the sample points. Any clarification
Also I tried to run my own example and this is what I got.
I don't understand the separating boundary lies exactly on one of the sample points. I don't think that is the best hyperplane. It should have defined some decision boundary somewhat lower I guess. Also it has circled the support vectors and I am not sure those should be the support vectors. The strangest thing is the margin from the hyperplane to the point is not greater. Why is it so?