Python sklearn.feature_selection.SelectFpr() Examples
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code examples of sklearn.feature_selection.SelectFpr().
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Example #1
Source File: test_base.py From Mastering-Elasticsearch-7.0 with MIT License | 6 votes |
def test_clone(): # Tests that clone creates a correct deep copy. # We create an estimator, make a copy of its original state # (which, in this case, is the current state of the estimator), # and check that the obtained copy is a correct deep copy. from sklearn.feature_selection import SelectFpr, f_classif selector = SelectFpr(f_classif, alpha=0.1) new_selector = clone(selector) assert selector is not new_selector assert_equal(selector.get_params(), new_selector.get_params()) selector = SelectFpr(f_classif, alpha=np.zeros((10, 2))) new_selector = clone(selector) assert selector is not new_selector
Example #2
Source File: test_feature_selection.py From pandas-ml with BSD 3-Clause "New" or "Revised" License | 6 votes |
def test_objectmapper(self): df = pdml.ModelFrame([]) self.assertIs(df.feature_selection.GenericUnivariateSelect, fs.GenericUnivariateSelect) self.assertIs(df.feature_selection.SelectPercentile, fs.SelectPercentile) self.assertIs(df.feature_selection.SelectKBest, fs.SelectKBest) self.assertIs(df.feature_selection.SelectFpr, fs.SelectFpr) self.assertIs(df.feature_selection.SelectFromModel, fs.SelectFromModel) self.assertIs(df.feature_selection.SelectFdr, fs.SelectFdr) self.assertIs(df.feature_selection.SelectFwe, fs.SelectFwe) self.assertIs(df.feature_selection.RFE, fs.RFE) self.assertIs(df.feature_selection.RFECV, fs.RFECV) self.assertIs(df.feature_selection.VarianceThreshold, fs.VarianceThreshold)
Example #3
Source File: test_base.py From twitter-stock-recommendation with MIT License | 6 votes |
def test_clone(): # Tests that clone creates a correct deep copy. # We create an estimator, make a copy of its original state # (which, in this case, is the current state of the estimator), # and check that the obtained copy is a correct deep copy. from sklearn.feature_selection import SelectFpr, f_classif selector = SelectFpr(f_classif, alpha=0.1) new_selector = clone(selector) assert_true(selector is not new_selector) assert_equal(selector.get_params(), new_selector.get_params()) selector = SelectFpr(f_classif, alpha=np.zeros((10, 2))) new_selector = clone(selector) assert_true(selector is not new_selector)
Example #4
Source File: test_base.py From Mastering-Elasticsearch-7.0 with MIT License | 5 votes |
def test_clone_2(): # Tests that clone doesn't copy everything. # We first create an estimator, give it an own attribute, and # make a copy of its original state. Then we check that the copy doesn't # have the specific attribute we manually added to the initial estimator. from sklearn.feature_selection import SelectFpr, f_classif selector = SelectFpr(f_classif, alpha=0.1) selector.own_attribute = "test" new_selector = clone(selector) assert not hasattr(new_selector, "own_attribute")
Example #5
Source File: test_base.py From twitter-stock-recommendation with MIT License | 5 votes |
def test_clone_2(): # Tests that clone doesn't copy everything. # We first create an estimator, give it an own attribute, and # make a copy of its original state. Then we check that the copy doesn't # have the specific attribute we manually added to the initial estimator. from sklearn.feature_selection import SelectFpr, f_classif selector = SelectFpr(f_classif, alpha=0.1) selector.own_attribute = "test" new_selector = clone(selector) assert_false(hasattr(new_selector, "own_attribute"))