ACDC_KNOSYS-2021/MSC/libsvm-weights-3.20/python/README.weight

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Introduction
============
This tool provides a Python interface to LIBSVM with instance weight support
Installation
============
Please check README for detail.
USAGE
=====
The usage is bascally the same as the version without supporting
instance weights. We only show differences below.
- Function: svm_train
There are three ways to call svm_train()
>>> model = svm_train(W, y, x [, 'training_options'])
>>> model = svm_train(prob [, 'training_options'])
>>> model = svm_train(prob, param)
W: a list/tuple of l training weights (type must be double).
Use [] if no weights.
y: a list/tuple of l training labels (type must be int/double).
x: a list/tuple of l training instances. The feature vector of
each training instance is an instance of list/tuple or dictionary.
training_options: a string in the same form as that for LIBSVM command
mode.
prob: an svm_problem instance generated by calling
svm_problem(W, y, x).
param: an svm_parameter instance generated by calling
svm_parameter('training_options')
model: the returned svm_model instance. See svm.h for details of this
structure. If '-v' is specified, cross validation is
conducted and the returned model is just a scalar: cross-validation
accuracy for classification and mean-squared error for regression.
To train the same data many times with different
parameters, the second and the third ways should be faster..
Examples:
>>> y, x = svm_read_problem('../heart_scale')
>>> W = [1] * len(y)
>>> W[0] = 10
>>> prob = svm_problem(W, y, x)
>>> param = svm_parameter('-s 3 -c 5 -h 0')
>>> m = svm_train([], y, x, '-c 5')
>>> m = svm_train(W, y, x)
>>> m = svm_train(prob, '-t 2 -c 5')
>>> m = svm_train(prob, param)
>>> CV_ACC = svm_train(W, y, x, '-v 3')