Implementing a linear, binary SVM (support vector machine)

I want to implement a simple SVM classifier, in the case of high-dimensional binary data (text), for which I think a simple linear SVM is best. The reason for implementing it myself is basically that I want to learn how it works, so using a library is not what I want.

The problem is that most tutorials go up to an equation that can be solved as a "quadratic problem", but they never show an actual algorithm! So could you point me either to a very simple implementation I could study, or (better) to a tutorial that goes all the way to the implementation details?

Thanks a lot!

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Some pseudocode for the Sequential Minimal Optimization (SMO) method can be found in this paper by John C. Platt: Fast Training of Support Vector Machines using Sequential Minimal Optimization. There is also a Java implementation of the SMO algorithm, which is developed for research and educational purpose (SVM-JAVA).

Other commonly used methods to solve the QP optimization problem include:

• constrained conjugate gradients
• interior point methods
• active set methods

But be aware that some math knowledge is needed to understand this things (Lagrange multipliers, Karush–Kuhn–Tucker conditions, etc.).

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I have the math background, I just don't have a lot of time... Thanks for your answer! –  static_rtti Nov 18 '09 at 21:41

Are you interested in using kernels or not? Without kernels, the best way to solve these kinds of optimization problems is through various forms of stochastic gradient descent. A good version is described in http://ttic.uchicago.edu/~shai/papers/ShalevSiSr07.pdf and that has an explicit algorithm.

The explicit algorithm does not work with kernels but can be modified; however, it would be more complex, both in terms of code and runtime complexity.

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No, for now I'm only interested in linear SVMs. Thanks for your answer! –  static_rtti Nov 27 '09 at 15:31

Have a look at liblinear and for non linear SVM's at libsvm

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