orange-multitarget / _multitarget /


The following example uses a simple multi-target data set (generated with
:download:` <code/>`) to show
some basic functionalities (part of
:download:` <code/>`).

.. literalinclude:: code/
    :lines: 1-6

Multi-target learners can build prediction models (classifiers)
which then predict (multiple) class values for a new instance (continuation of
:download:` <code/>`):

.. literalinclude:: code/
    :lines: 8-


from pkg_resources import resource_filename
def datasets():
    yield ('multitarget', resource_filename(__name__, 'datasets'))

# Multi-target algorithms
import tree
import chain
import binary
import neural
import scoring
import pls
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