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<title>pkgsrc/math/liblinear/distinfo, branch pkgsrc_2015Q2</title>
<subtitle>[no description]</subtitle>
<id>https://git.osdyson.ru/mirror/pkgsrc/atom?h=pkgsrc_2015Q2</id>
<link rel='self' href='https://git.osdyson.ru/mirror/pkgsrc/atom?h=pkgsrc_2015Q2'/>
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<updated>2014-10-19T09:57:21Z</updated>
<entry>
<title>Add liblinear.</title>
<updated>2014-10-19T09:57:21Z</updated>
<author>
<name>cheusov</name>
<email>cheusov</email>
</author>
<published>2014-10-19T09:57:21Z</published>
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<id>urn:sha1:54f376ee9d3abeb1b368f6b4fa10553eec4e8c98</id>
<content type='text'>
LIBLINEAR is a linear classifier for data with millions of instances
and features. It supports
    L2-regularized classifiers
    L2-loss linear SVM, L1-loss linear SVM, and logistic regression (LR)
    L1-regularized classifiers (after version 1.4)
    L2-loss linear SVM and logistic regression (LR)
    L2-regularized support vector regression (after version 1.9)
    L2-loss linear SVR and L1-loss linear SVR.
Main features of LIBLINEAR include
    Same data format as LIBSVM, our general-purpose SVM solver,
        and also similar usage
    Multi-class classification: 1) one-vs-the rest, 2) Crammer &amp; Singer
    Cross validation for model selection
    Probability estimates (logistic regression only)
    Weights for unbalanced data
    MATLAB/Octave, Java, Python, Ruby interfaces

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