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view toolboxes/SVM-light/Readme_optimization_relative_constraints.txt @ 0:e9a9cd732c1e tip
first hg version after svn
author | wolffd |
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date | Tue, 10 Feb 2015 15:05:51 +0000 |
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Solving general optimization problems ------------------------------------- You can use SVM-light to solve general optimzation problems of the form: min 0.5 w*w + C sum_i C_i \xi_i s.t. x_i * w > rhs_i - \xi_i Use the option "-z o". This allows specifying a training set where the examples are the inequality constraints. For example, to specify the problem min 0.5 w*w + 10 (1000 \xi_1 + 1 \xi_2 + 1 \xi_3 + 1 \xi_4) s.t. 1 w_1 >= 0 - \xi_1 -2 w_1 >= 1 - \xi_2 2 w_3 >= 2 - \xi_3 2 w_2 + 1 w_3 >= 3 - \xi_4 you can use the training set 0 cost:10000 1:1 1 1:-2 2 3:2 3 2:3 3:1 and run svm_learn -c 10 -z o train.dat model The format is just like the normal SVM-light format. Each line corresponds to one inequality. However, the first element of each line is the right-hand side of the inequality. The remainder of the line specifies the left-hand side. The parameter cost:<value> is optional and lets you specify a factor by which the value of the slack variable is weighted in the objective. The general regularization parameter (10 in the example) is specified with the option -c <value> on the command line. To classify new inequalities, you can use svm_classify in the normal way.