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GNU/Linux man pages

Livre :
Expressions régulières,
Syntaxe et mise en oeuvre :

ISBN : 978-2-7460-9712-4
EAN : 9782746097124
(Editions ENI)

GNU/Linux

Debian 7.3.0

(Wheezy)

liblinear-train(1)


LIBLINEAR-TRAIN

LIBLINEAR-TRAIN

NAME
SYNOPSIS
DESCRIPTION
OPTIONS
EXAMPLES
SEE ALSO
AUTHORS

NAME

liblinear-train − train a linear classifier and produce a model

SYNOPSIS

liblinear-train [options] training_set_file [model_file]

DESCRIPTION

liblinear-train trains a linear classifier using liblinear and produces a model suitable for use with liblinear-predict(1).

training_set_file is the file containing the data used for training. model_file is the file to which the model will be saved. If model_file is not provided, it defaults to training_set_file.model.

To obtain good performances, sometimes one needs to scale the data. This can be done with svm-scale(1).

OPTIONS

A summary of options is included below.
−s
type

Set the type of the solver:

0 ... L2-regularized logistic regression

1 ... L2-regularized L2-loss support vector classification (dual) (default)

2 ... L2-regularized L2-loss support vector classification (primal)

3 ... L2-regularized L1-loss support vector classification (dual)

4 ... multi-class support vector classification

5 ... L1-regularized L2-loss support vector classification

6 ... L1-regularized logistic regression

7 ... L2-regularized logistic regression (dual)

−c cost

Set the parameter C (default: 1)

−e epsilon

Set the tolerance of the termination criterion

For −s 0 and 2:

|f’(w)|_2 <= epsilon*min(pos,neg)/l*|f’(w0)_2, where f is
the primal function and pos/neg are the number of positive/negative data
(default: 0.01)

For −s 1, 3, 4 and 7:

Dual maximal violation <= epsilon; similar to libsvm (default: 0.1)

For −s 5 and 6:

|f’(w)|_inf <= epsilon*min(pos,neg)/l*|f’(w0)|_inf, where f is the primal
function (default: 0.01)

−B bias

If bias >= 0, then instance x becomes [x; bias]; if bias < 0, then
no bias term is added (default: -1)

−wi weight

Weight-adjusts the parameter C of class i by the value weight

−v n

n-fold cross validation mode

−q

Quiet mode (no outputs).

EXAMPLES

Train a linear SVM using L2-loss function:

liblinear-train data_file

Train a logistic regression model:

liblinear-train −s 0 data_file

Do five-fold cross-validation using L2-loss SVM, using a smaller stopping tolerance 0.001 instead of the default 0.1 for more accurate solutions:

liblinear-train −v 5 −e 0.001 data_file

Train four classifiers:

positive negative Cp Cn
class 1 class 2,3,4 20 10
class 2 class 1,3,4 50 10
class 3 class 1,2,4 20 10
class 4 class 1,2,3 10 10

liblinear-train −c 10 −w1 2 −w2 5 −w3 2 four_class_data_file

If there are only two classes, we train ONE model. The C values for the two classes are 10 and 50:

liblinear-train −c 10 −w3 1 −w2 5 two_class_data_file

Output probability estimates (for logistic regression only) using liblinear-predict(1):

liblinear-predict −b 1 test_file data_file.model output_file

SEE ALSO

liblinear-predict(1), svm-predict(1), svm-train(1)

AUTHORS

liblinear-train was written by the LIBLINEAR authors at National Taiwan university for the LIBLINEAR Project.

This manual page was written by Christian Kastner <debian@kvr.at>, for the Debian project (and may be used by others).



liblinear-train(1)