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PROGRAM:

NAME


msvmocas - train a multi-class linear SVM classifier

SYNOPSIS


msvmocas [options] example_file model_file

DESCRIPTION


msvmocas is a program that trains a multi-class linear SVM classifier using the Optimized
Cutting Plane Algorithm for Support Vector Machines (OCAS) and produces a model file.

example_file is a file with training examples in SVM^light format, and model_file is the
file in which to store the learned linear rule f(x)=W'*x. model_file contains M columns
and D lines, where M is the number of classes and D the number of dimensions,
corresponding to the elements of the matrix W [D x M].

OPTIONS


A summary of options is included below.

General options:

-h Show summary of options.

-v (0|1)
Set the verbosity level (default: 1)

Learning options:

-c float
Regularization constant C. (default: 1)

-n integer
Use only the first integer examples for training. By default, integer equals the
number of examples in example_file.

Optimization options:

-m (0|1)
Solver to be used:

0 ... standard cutting plane (equivalent to BMRM, SVM^perf)

1 ... OCAS (default)

-s integer
Cache size for cutting planes. (default: 2000)

Stopping conditions:

-a float
Absolute tolerance TolAbs: halt if QP-QD <= TolAbs. (default: 0)

-r float
Relative tolerance TolAbs: halt if QP-QD <= abs(QP)*TolRel. (default: 0.01)

-q float
Desired objective value QPValue: halt is QP <= QPValue. (default: 0)

-t float
Halts if the solver time (loading time is not counted) exceeds the time given in
seconds. (default: infinity)

EXAMPLES


Train the multi-class SVM classifier from example file example4_train.light, with the
regularization constant C=10, verbosity switched off, and save model to msvmocas.model:

msvmocas -c 10 -v 0 example4_train.light msvmocas.model

Compute the testing error of the classifier stored in msvmocas.model with linclassif(1)
using testing examples from example4_test.light and save the predicted labels to
example4_test.pred:

linclassif -e -o example4_test.pred example4_test.light msvmocas.model

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