liblinear-train - Online in the Cloud

This is the command liblinear-train that can be run in the OnWorks free hosting provider using one of our multiple free online workstations such as Ubuntu Online, Fedora Online, Windows online emulator or MAC OS online emulator

PROGRAM:

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

-C Find parameter C (only for -s 0 and 2)

-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

Conduct cross validation many times by L2-loss SVM and find the parameter C which achieves
the best cross validation accuracy:

train -C datafile

For parameter selection by -C, users can specify other solvers (currently -s 0 and -s 2
are supported) and different number of CV folds. Further, users can use the -c option to
specify the smallest C value of the search range. This setting is useful when users want
to rerun the parameter selection procedure from a specified C under a different setting,
such as a stricter stopping tolerance -e 0.0001 in the above example.

train -C -s 0 -v 3 -c 0.5 -e 0.0001 datafile

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

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