aa901feeca
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 & Singer Cross validation for model selection Probability estimates (logistic regression only) Weights for unbalanced data MATLAB/Octave, Java, Python, Ruby interfaces
16 lines
791 B
Text
16 lines
791 B
Text
LIBLINEAR is a linear classifier for data with millions of instances
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and features. It supports
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L2-regularized classifiers
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L2-loss linear SVM, L1-loss linear SVM, and logistic regression (LR)
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L1-regularized classifiers (after version 1.4)
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L2-loss linear SVM and logistic regression (LR)
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L2-regularized support vector regression (after version 1.9)
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L2-loss linear SVR and L1-loss linear SVR.
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Main features of LIBLINEAR include
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Same data format as LIBSVM, our general-purpose SVM solver,
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and also similar usage
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Multi-class classification: 1) one-vs-the rest, 2) Crammer & Singer
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Cross validation for model selection
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Probability estimates (logistic regression only)
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Weights for unbalanced data
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MATLAB/Octave, Java, Python, Ruby interfaces
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