# Copyright (c) 2017, System Engineering Software Society
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"""
Some of the docstrings for this module have been automatically
extracted from the `scikit-learn <http://scikit-learn.org/>`_ library
and are covered by their respective licenses.
"""
from __future__ import (print_function, division, unicode_literals,
                        absolute_import)
import sklearn
import sklearn.ensemble
from sympathy.api import node
from sympathy.api.nodeconfig import Ports, Tag, Tags
from sylib.machinelearning.model import ModelPort
from sylib.machinelearning.abstract_nodes import SyML_abstract
from sylib.machinelearning.decisiontrees import IsolationForestDescriptor
from sylib.machinelearning.descriptors import BoolType
from sylib.machinelearning.descriptors import FloatType
from sylib.machinelearning.descriptors import IntType
from sylib.machinelearning.descriptors import NoneType
from sylib.machinelearning.descriptors import StringSelectionType
from sylib.machinelearning.descriptors import UnionType
[docs]class IsolationForest(SyML_abstract, node.Node):
    name = 'Isolation Forest'
    author = 'Mathias Broxvall'
    copyright = '(C) 2017 System Engineering Software Society'
    version = '0.1'
    icon = 'isolation_forest.svg'
    description = (
        'Predicts outliers based on minimum path length of random trees with '
        'single nodes in the leafs.')
    nodeid = 'org.sysess.sympathy.machinelearning.isolation_forest'
    tags = Tags(Tag.MachineLearning.Unsupervised)
    descriptor = IsolationForestDescriptor()
    descriptor.name = name
    descriptor.set_info([
        {'name': 'n_estimators',
         'type': IntType(min_value=0, default=100)},
        {'name': 'max_samples',
         'type': UnionType([
             IntType(),
             FloatType(),
             StringSelectionType(['auto'])],
                           default='auto'),
         'desc': (
             'The number of samples to draw from X to train each base '
             'estimator  expressed as number of samples (int), or a '
             'fraction of all samples (float). If "auto" then a maximum of '
             '256 samples will be used (less when fewer input samples given)'
         )},
        {'name': 'contamination',
         'type': FloatType(min_value=0, max_value=0.5, default=0.1)},
        {'name': 'max_features',
         'type': UnionType([
             IntType(min_value=1),
             FloatType(min_value=0.0, max_value=1.0)],
            default=1.0)},
        {'name': 'bootstrap',
         'type': BoolType(default=False)},
        {'name': 'n_jobs',
         'type': IntType(min_value=-1, default=1)},
        {'name': 'random_state',
         'type': UnionType([
             IntType(), NoneType()], default=None)},
    ], doc_class=sklearn.ensemble.IsolationForest)
    descriptor.set_attributes([
        {'name': 'estimators_samples_', },
        {'name': 'max_samples_'},
    ], doc_class=sklearn.ensemble.IsolationForest)
    parameters = node.parameters()
    SyML_abstract.generate_parameters(parameters, descriptor)
    inputs = Ports([])
    outputs = Ports([ModelPort('Model', 'model')])
    __doc__ = SyML_abstract.generate_docstring(
        description, descriptor.info, descriptor.attributes, inputs, outputs)
    def execute(self, node_context):
        model = node_context.output['model']
        desc = self.__class__.descriptor
        model.set_desc(desc)
        kwargs = self.__class__.descriptor.get_parameters(
            node_context.parameters)
        skl = sklearn.ensemble.IsolationForest(**kwargs)
        model.set_skl(skl)
        model.save()