Page History: SVM – Support Vector Machines
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    Page Revision: 2010/05/22 17:44
- Linear Support Vector Machine
 
Given a set of points               with label
The SVM finds a hyperplane defined by the pair (w,b)
(where w is the normal to the plane and b is the distance from the origin)
s.t.
- What if the data is not linearly separable?
 
- Project the data to high dimensional space where it is linearly separable and then we can use linear SVM – (Using Kernels)
 
Classification using SVM (w,b)
In non linear case we can see this as 
Kernel – Can be thought of as doing dot product in some high dimensional space
SVM
- Relatively new concept
- Nice Generalization properties
- Hard to learn – learned in batch mode using quadratic programming techniques
- Using kernels can learn very complex functions