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   I want to learn General SVM implementation which uses QP problem for training. Initially I do not want to learn Sequential minimal Optimization(SMO) kind of algorithm which over comes the QP matrix size issue. Can any one please give me some references to learn Pure General SVM implementation in any programming languages like C,C++ or Java. So that I can understand basic issues in SVM and it will help me in learning some other SVM optimized algorithms.

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2 Answers 2

up vote 6 down vote accepted

This blog post by Mathieu Blondel explains how to solve the SVM problem both with and without kernels using a generic QP solver in Python (in this case he is using CVXOPT).

The source code is published on this gist and is very simple to understand thanks to the numpy array notation for n-dimensional arrays (in this case, mostly 2D matrices and 1D vectors).

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You could check some of the resources mentioned here. It is also advisable to have a look at the existing code. One of the most popular implementations, LIBSVM, is open-source, so you can study the implementation.

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Hi Qnan, I have referred LIBSVM as you suggested...In LIBSVM I could see SMO-type decomposition method(Working Set Selection Using Second Order Information for Training Support Vector Machines) while training. Is it kind of General SVM implementation?. –  vignesh kumar rathakumar Aug 28 '12 at 3:21
LIBSVM is precisely implementing the SVM-specific optimizer that OP is not interested in, namely Sequential minimal Optimization(SMO). –  ogrisel Aug 28 '12 at 9:43
@ogrisel it does say "initially" there –  Qnan Aug 28 '12 at 12:31

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