laywerrobot/lib/python3.6/site-packages/sklearn/model_selection/tests/test_search.py

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2020-08-27 21:55:39 +02:00
"""Test the search module"""
from sklearn.externals.six.moves import cStringIO as StringIO
from sklearn.externals.six.moves import xrange
from sklearn.externals.joblib._compat import PY3_OR_LATER
from itertools import chain, product
import pickle
import sys
from types import GeneratorType
import re
import numpy as np
import scipy.sparse as sp
from sklearn.utils.fixes import sp_version
from sklearn.utils.fixes import _Iterable as Iterable, _Sized as Sized
from sklearn.utils.testing import assert_equal
from sklearn.utils.testing import assert_not_equal
from sklearn.utils.testing import assert_raises
from sklearn.utils.testing import assert_warns
from sklearn.utils.testing import assert_warns_message
from sklearn.utils.testing import assert_no_warnings
from sklearn.utils.testing import assert_raise_message
from sklearn.utils.testing import assert_false, assert_true
from sklearn.utils.testing import assert_array_equal
from sklearn.utils.testing import assert_array_almost_equal
from sklearn.utils.testing import assert_almost_equal
from sklearn.utils.testing import ignore_warnings
from sklearn.utils.mocking import CheckingClassifier, MockDataFrame
from scipy.stats import bernoulli, expon, uniform
from sklearn.base import BaseEstimator
from sklearn.base import clone
from sklearn.exceptions import NotFittedError
from sklearn.datasets import make_classification
from sklearn.datasets import make_blobs
from sklearn.datasets import make_multilabel_classification
from sklearn.model_selection import fit_grid_point
from sklearn.model_selection import KFold
from sklearn.model_selection import StratifiedKFold
from sklearn.model_selection import StratifiedShuffleSplit
from sklearn.model_selection import LeaveOneGroupOut
from sklearn.model_selection import LeavePGroupsOut
from sklearn.model_selection import GroupKFold
from sklearn.model_selection import GroupShuffleSplit
from sklearn.model_selection import GridSearchCV
from sklearn.model_selection import RandomizedSearchCV
from sklearn.model_selection import ParameterGrid
from sklearn.model_selection import ParameterSampler
from sklearn.model_selection._validation import FitFailedWarning
from sklearn.svm import LinearSVC, SVC
from sklearn.tree import DecisionTreeRegressor
from sklearn.tree import DecisionTreeClassifier
from sklearn.cluster import KMeans
from sklearn.neighbors import KernelDensity
from sklearn.metrics import f1_score
from sklearn.metrics import recall_score
from sklearn.metrics import accuracy_score
from sklearn.metrics import make_scorer
from sklearn.metrics import roc_auc_score
from sklearn.preprocessing import Imputer
from sklearn.pipeline import Pipeline
from sklearn.linear_model import Ridge, SGDClassifier
from sklearn.model_selection.tests.common import OneTimeSplitter
# Neither of the following two estimators inherit from BaseEstimator,
# to test hyperparameter search on user-defined classifiers.
class MockClassifier(object):
"""Dummy classifier to test the parameter search algorithms"""
def __init__(self, foo_param=0):
self.foo_param = foo_param
def fit(self, X, Y):
assert_true(len(X) == len(Y))
self.classes_ = np.unique(Y)
return self
def predict(self, T):
return T.shape[0]
def transform(self, X):
return X + self.foo_param
def inverse_transform(self, X):
return X - self.foo_param
predict_proba = predict
predict_log_proba = predict
decision_function = predict
def score(self, X=None, Y=None):
if self.foo_param > 1:
score = 1.
else:
score = 0.
return score
def get_params(self, deep=False):
return {'foo_param': self.foo_param}
def set_params(self, **params):
self.foo_param = params['foo_param']
return self
class LinearSVCNoScore(LinearSVC):
"""An LinearSVC classifier that has no score method."""
@property
def score(self):
raise AttributeError
X = np.array([[-1, -1], [-2, -1], [1, 1], [2, 1]])
y = np.array([1, 1, 2, 2])
def assert_grid_iter_equals_getitem(grid):
assert_equal(list(grid), [grid[i] for i in range(len(grid))])
def test_parameter_grid():
# Test basic properties of ParameterGrid.
params1 = {"foo": [1, 2, 3]}
grid1 = ParameterGrid(params1)
assert_true(isinstance(grid1, Iterable))
assert_true(isinstance(grid1, Sized))
assert_equal(len(grid1), 3)
assert_grid_iter_equals_getitem(grid1)
params2 = {"foo": [4, 2],
"bar": ["ham", "spam", "eggs"]}
grid2 = ParameterGrid(params2)
assert_equal(len(grid2), 6)
# loop to assert we can iterate over the grid multiple times
for i in xrange(2):
# tuple + chain transforms {"a": 1, "b": 2} to ("a", 1, "b", 2)
points = set(tuple(chain(*(sorted(p.items())))) for p in grid2)
assert_equal(points,
set(("bar", x, "foo", y)
for x, y in product(params2["bar"], params2["foo"])))
assert_grid_iter_equals_getitem(grid2)
# Special case: empty grid (useful to get default estimator settings)
empty = ParameterGrid({})
assert_equal(len(empty), 1)
assert_equal(list(empty), [{}])
assert_grid_iter_equals_getitem(empty)
assert_raises(IndexError, lambda: empty[1])
has_empty = ParameterGrid([{'C': [1, 10]}, {}, {'C': [.5]}])
assert_equal(len(has_empty), 4)
assert_equal(list(has_empty), [{'C': 1}, {'C': 10}, {}, {'C': .5}])
assert_grid_iter_equals_getitem(has_empty)
def test_grid_search():
# Test that the best estimator contains the right value for foo_param
clf = MockClassifier()
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]}, verbose=3)
# make sure it selects the smallest parameter in case of ties
old_stdout = sys.stdout
sys.stdout = StringIO()
grid_search.fit(X, y)
sys.stdout = old_stdout
assert_equal(grid_search.best_estimator_.foo_param, 2)
assert_array_equal(grid_search.cv_results_["param_foo_param"].data,
[1, 2, 3])
# Smoke test the score etc:
grid_search.score(X, y)
grid_search.predict_proba(X)
grid_search.decision_function(X)
grid_search.transform(X)
# Test exception handling on scoring
grid_search.scoring = 'sklearn'
assert_raises(ValueError, grid_search.fit, X, y)
def check_hyperparameter_searcher_with_fit_params(klass, **klass_kwargs):
X = np.arange(100).reshape(10, 10)
y = np.array([0] * 5 + [1] * 5)
clf = CheckingClassifier(expected_fit_params=['spam', 'eggs'])
searcher = klass(clf, {'foo_param': [1, 2, 3]}, cv=2, **klass_kwargs)
# The CheckingClassifier generates an assertion error if
# a parameter is missing or has length != len(X).
assert_raise_message(AssertionError,
"Expected fit parameter(s) ['eggs'] not seen.",
searcher.fit, X, y, spam=np.ones(10))
assert_raise_message(AssertionError,
"Fit parameter spam has length 1; expected 4.",
searcher.fit, X, y, spam=np.ones(1),
eggs=np.zeros(10))
searcher.fit(X, y, spam=np.ones(10), eggs=np.zeros(10))
def test_grid_search_with_fit_params():
check_hyperparameter_searcher_with_fit_params(GridSearchCV)
def test_random_search_with_fit_params():
check_hyperparameter_searcher_with_fit_params(RandomizedSearchCV, n_iter=1)
def test_grid_search_fit_params_deprecation():
# NOTE: Remove this test in v0.21
# Use of `fit_params` in the class constructor is deprecated,
# but will still work until v0.21.
X = np.arange(100).reshape(10, 10)
y = np.array([0] * 5 + [1] * 5)
clf = CheckingClassifier(expected_fit_params=['spam'])
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]},
fit_params={'spam': np.ones(10)})
assert_warns(DeprecationWarning, grid_search.fit, X, y)
def test_grid_search_fit_params_two_places():
# NOTE: Remove this test in v0.21
# If users try to input fit parameters in both
# the constructor (deprecated use) and the `fit`
# method, we'll ignore the values passed to the constructor.
X = np.arange(100).reshape(10, 10)
y = np.array([0] * 5 + [1] * 5)
clf = CheckingClassifier(expected_fit_params=['spam'])
# The "spam" array is too short and will raise an
# error in the CheckingClassifier if used.
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]},
fit_params={'spam': np.ones(1)})
expected_warning = ('Ignoring fit_params passed as a constructor '
'argument in favor of keyword arguments to '
'the "fit" method.')
assert_warns_message(RuntimeWarning, expected_warning,
grid_search.fit, X, y, spam=np.ones(10))
# Verify that `fit` prefers its own kwargs by giving valid
# kwargs in the constructor and invalid in the method call
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]},
fit_params={'spam': np.ones(10)})
assert_raise_message(AssertionError, "Fit parameter spam has length 1",
grid_search.fit, X, y, spam=np.ones(1))
@ignore_warnings
def test_grid_search_no_score():
# Test grid-search on classifier that has no score function.
clf = LinearSVC(random_state=0)
X, y = make_blobs(random_state=0, centers=2)
Cs = [.1, 1, 10]
clf_no_score = LinearSVCNoScore(random_state=0)
grid_search = GridSearchCV(clf, {'C': Cs}, scoring='accuracy')
grid_search.fit(X, y)
grid_search_no_score = GridSearchCV(clf_no_score, {'C': Cs},
scoring='accuracy')
# smoketest grid search
grid_search_no_score.fit(X, y)
# check that best params are equal
assert_equal(grid_search_no_score.best_params_, grid_search.best_params_)
# check that we can call score and that it gives the correct result
assert_equal(grid_search.score(X, y), grid_search_no_score.score(X, y))
# giving no scoring function raises an error
grid_search_no_score = GridSearchCV(clf_no_score, {'C': Cs})
assert_raise_message(TypeError, "no scoring", grid_search_no_score.fit,
[[1]])
def test_grid_search_score_method():
X, y = make_classification(n_samples=100, n_classes=2, flip_y=.2,
random_state=0)
clf = LinearSVC(random_state=0)
grid = {'C': [.1]}
search_no_scoring = GridSearchCV(clf, grid, scoring=None).fit(X, y)
search_accuracy = GridSearchCV(clf, grid, scoring='accuracy').fit(X, y)
search_no_score_method_auc = GridSearchCV(LinearSVCNoScore(), grid,
scoring='roc_auc').fit(X, y)
search_auc = GridSearchCV(clf, grid, scoring='roc_auc').fit(X, y)
# Check warning only occurs in situation where behavior changed:
# estimator requires score method to compete with scoring parameter
score_no_scoring = search_no_scoring.score(X, y)
score_accuracy = search_accuracy.score(X, y)
score_no_score_auc = search_no_score_method_auc.score(X, y)
score_auc = search_auc.score(X, y)
# ensure the test is sane
assert_true(score_auc < 1.0)
assert_true(score_accuracy < 1.0)
assert_not_equal(score_auc, score_accuracy)
assert_almost_equal(score_accuracy, score_no_scoring)
assert_almost_equal(score_auc, score_no_score_auc)
def test_grid_search_groups():
# Check if ValueError (when groups is None) propagates to GridSearchCV
# And also check if groups is correctly passed to the cv object
rng = np.random.RandomState(0)
X, y = make_classification(n_samples=15, n_classes=2, random_state=0)
groups = rng.randint(0, 3, 15)
clf = LinearSVC(random_state=0)
grid = {'C': [1]}
group_cvs = [LeaveOneGroupOut(), LeavePGroupsOut(2), GroupKFold(),
GroupShuffleSplit()]
for cv in group_cvs:
gs = GridSearchCV(clf, grid, cv=cv)
assert_raise_message(ValueError,
"The 'groups' parameter should not be None.",
gs.fit, X, y)
gs.fit(X, y, groups=groups)
non_group_cvs = [StratifiedKFold(), StratifiedShuffleSplit()]
for cv in non_group_cvs:
gs = GridSearchCV(clf, grid, cv=cv)
# Should not raise an error
gs.fit(X, y)
def test_return_train_score_warn():
# Test that warnings are raised. Will be removed in 0.21
X = np.arange(100).reshape(10, 10)
y = np.array([0] * 5 + [1] * 5)
grid = {'C': [1, 2]}
estimators = [GridSearchCV(LinearSVC(random_state=0), grid),
RandomizedSearchCV(LinearSVC(random_state=0), grid,
n_iter=2)]
result = {}
for estimator in estimators:
for val in [True, False, 'warn']:
estimator.set_params(return_train_score=val)
result[val] = assert_no_warnings(estimator.fit, X, y).cv_results_
train_keys = ['split0_train_score', 'split1_train_score',
'split2_train_score', 'mean_train_score', 'std_train_score']
for key in train_keys:
msg = (
'You are accessing a training score ({!r}), '
'which will not be available by default '
'any more in 0.21. If you need training scores, '
'please set return_train_score=True').format(key)
train_score = assert_warns_message(FutureWarning, msg,
result['warn'].get, key)
assert np.allclose(train_score, result[True][key])
assert key not in result[False]
for key in result['warn']:
if key not in train_keys:
assert_no_warnings(result['warn'].get, key)
def test_classes__property():
# Test that classes_ property matches best_estimator_.classes_
X = np.arange(100).reshape(10, 10)
y = np.array([0] * 5 + [1] * 5)
Cs = [.1, 1, 10]
grid_search = GridSearchCV(LinearSVC(random_state=0), {'C': Cs})
grid_search.fit(X, y)
assert_array_equal(grid_search.best_estimator_.classes_,
grid_search.classes_)
# Test that regressors do not have a classes_ attribute
grid_search = GridSearchCV(Ridge(), {'alpha': [1.0, 2.0]})
grid_search.fit(X, y)
assert_false(hasattr(grid_search, 'classes_'))
# Test that the grid searcher has no classes_ attribute before it's fit
grid_search = GridSearchCV(LinearSVC(random_state=0), {'C': Cs})
assert_false(hasattr(grid_search, 'classes_'))
# Test that the grid searcher has no classes_ attribute without a refit
grid_search = GridSearchCV(LinearSVC(random_state=0),
{'C': Cs}, refit=False)
grid_search.fit(X, y)
assert_false(hasattr(grid_search, 'classes_'))
def test_trivial_cv_results_attr():
# Test search over a "grid" with only one point.
# Non-regression test: grid_scores_ wouldn't be set by GridSearchCV.
clf = MockClassifier()
grid_search = GridSearchCV(clf, {'foo_param': [1]})
grid_search.fit(X, y)
assert_true(hasattr(grid_search, "cv_results_"))
random_search = RandomizedSearchCV(clf, {'foo_param': [0]}, n_iter=1)
random_search.fit(X, y)
assert_true(hasattr(grid_search, "cv_results_"))
def test_no_refit():
# Test that GSCV can be used for model selection alone without refitting
clf = MockClassifier()
for scoring in [None, ['accuracy', 'precision']]:
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]}, refit=False)
grid_search.fit(X, y)
assert_true(not hasattr(grid_search, "best_estimator_") and
hasattr(grid_search, "best_index_") and
hasattr(grid_search, "best_params_"))
# Make sure the functions predict/transform etc raise meaningful
# error messages
for fn_name in ('predict', 'predict_proba', 'predict_log_proba',
'transform', 'inverse_transform'):
assert_raise_message(NotFittedError,
('refit=False. %s is available only after '
'refitting on the best parameters'
% fn_name), getattr(grid_search, fn_name), X)
# Test that an invalid refit param raises appropriate error messages
for refit in ["", 5, True, 'recall', 'accuracy']:
assert_raise_message(ValueError, "For multi-metric scoring, the "
"parameter refit must be set to a scorer key",
GridSearchCV(clf, {}, refit=refit,
scoring={'acc': 'accuracy',
'prec': 'precision'}).fit,
X, y)
def test_grid_search_error():
# Test that grid search will capture errors on data with different length
X_, y_ = make_classification(n_samples=200, n_features=100, random_state=0)
clf = LinearSVC()
cv = GridSearchCV(clf, {'C': [0.1, 1.0]})
assert_raises(ValueError, cv.fit, X_[:180], y_)
def test_grid_search_one_grid_point():
X_, y_ = make_classification(n_samples=200, n_features=100, random_state=0)
param_dict = {"C": [1.0], "kernel": ["rbf"], "gamma": [0.1]}
clf = SVC()
cv = GridSearchCV(clf, param_dict)
cv.fit(X_, y_)
clf = SVC(C=1.0, kernel="rbf", gamma=0.1)
clf.fit(X_, y_)
assert_array_equal(clf.dual_coef_, cv.best_estimator_.dual_coef_)
def test_grid_search_when_param_grid_includes_range():
# Test that the best estimator contains the right value for foo_param
clf = MockClassifier()
grid_search = None
if PY3_OR_LATER:
grid_search = GridSearchCV(clf, {'foo_param': range(1, 4)})
else:
grid_search = GridSearchCV(clf, {'foo_param': xrange(1, 4)})
grid_search.fit(X, y)
assert_equal(grid_search.best_estimator_.foo_param, 2)
def test_grid_search_bad_param_grid():
param_dict = {"C": 1.0}
clf = SVC()
assert_raise_message(
ValueError,
"Parameter values for parameter (C) need to be a sequence"
"(but not a string) or np.ndarray.",
GridSearchCV, clf, param_dict)
param_dict = {"C": []}
clf = SVC()
assert_raise_message(
ValueError,
"Parameter values for parameter (C) need to be a non-empty sequence.",
GridSearchCV, clf, param_dict)
param_dict = {"C": "1,2,3"}
clf = SVC()
assert_raise_message(
ValueError,
"Parameter values for parameter (C) need to be a sequence"
"(but not a string) or np.ndarray.",
GridSearchCV, clf, param_dict)
param_dict = {"C": np.ones(6).reshape(3, 2)}
clf = SVC()
assert_raises(ValueError, GridSearchCV, clf, param_dict)
def test_grid_search_sparse():
# Test that grid search works with both dense and sparse matrices
X_, y_ = make_classification(n_samples=200, n_features=100, random_state=0)
clf = LinearSVC()
cv = GridSearchCV(clf, {'C': [0.1, 1.0]})
cv.fit(X_[:180], y_[:180])
y_pred = cv.predict(X_[180:])
C = cv.best_estimator_.C
X_ = sp.csr_matrix(X_)
clf = LinearSVC()
cv = GridSearchCV(clf, {'C': [0.1, 1.0]})
cv.fit(X_[:180].tocoo(), y_[:180])
y_pred2 = cv.predict(X_[180:])
C2 = cv.best_estimator_.C
assert_true(np.mean(y_pred == y_pred2) >= .9)
assert_equal(C, C2)
def test_grid_search_sparse_scoring():
X_, y_ = make_classification(n_samples=200, n_features=100, random_state=0)
clf = LinearSVC()
cv = GridSearchCV(clf, {'C': [0.1, 1.0]}, scoring="f1")
cv.fit(X_[:180], y_[:180])
y_pred = cv.predict(X_[180:])
C = cv.best_estimator_.C
X_ = sp.csr_matrix(X_)
clf = LinearSVC()
cv = GridSearchCV(clf, {'C': [0.1, 1.0]}, scoring="f1")
cv.fit(X_[:180], y_[:180])
y_pred2 = cv.predict(X_[180:])
C2 = cv.best_estimator_.C
assert_array_equal(y_pred, y_pred2)
assert_equal(C, C2)
# Smoke test the score
# np.testing.assert_allclose(f1_score(cv.predict(X_[:180]), y[:180]),
# cv.score(X_[:180], y[:180]))
# test loss where greater is worse
def f1_loss(y_true_, y_pred_):
return -f1_score(y_true_, y_pred_)
F1Loss = make_scorer(f1_loss, greater_is_better=False)
cv = GridSearchCV(clf, {'C': [0.1, 1.0]}, scoring=F1Loss)
cv.fit(X_[:180], y_[:180])
y_pred3 = cv.predict(X_[180:])
C3 = cv.best_estimator_.C
assert_equal(C, C3)
assert_array_equal(y_pred, y_pred3)
def test_grid_search_precomputed_kernel():
# Test that grid search works when the input features are given in the
# form of a precomputed kernel matrix
X_, y_ = make_classification(n_samples=200, n_features=100, random_state=0)
# compute the training kernel matrix corresponding to the linear kernel
K_train = np.dot(X_[:180], X_[:180].T)
y_train = y_[:180]
clf = SVC(kernel='precomputed')
cv = GridSearchCV(clf, {'C': [0.1, 1.0]})
cv.fit(K_train, y_train)
assert_true(cv.best_score_ >= 0)
# compute the test kernel matrix
K_test = np.dot(X_[180:], X_[:180].T)
y_test = y_[180:]
y_pred = cv.predict(K_test)
assert_true(np.mean(y_pred == y_test) >= 0)
# test error is raised when the precomputed kernel is not array-like
# or sparse
assert_raises(ValueError, cv.fit, K_train.tolist(), y_train)
def test_grid_search_precomputed_kernel_error_nonsquare():
# Test that grid search returns an error with a non-square precomputed
# training kernel matrix
K_train = np.zeros((10, 20))
y_train = np.ones((10, ))
clf = SVC(kernel='precomputed')
cv = GridSearchCV(clf, {'C': [0.1, 1.0]})
assert_raises(ValueError, cv.fit, K_train, y_train)
class BrokenClassifier(BaseEstimator):
"""Broken classifier that cannot be fit twice"""
def __init__(self, parameter=None):
self.parameter = parameter
def fit(self, X, y):
assert_true(not hasattr(self, 'has_been_fit_'))
self.has_been_fit_ = True
def predict(self, X):
return np.zeros(X.shape[0])
@ignore_warnings
def test_refit():
# Regression test for bug in refitting
# Simulates re-fitting a broken estimator; this used to break with
# sparse SVMs.
X = np.arange(100).reshape(10, 10)
y = np.array([0] * 5 + [1] * 5)
clf = GridSearchCV(BrokenClassifier(), [{'parameter': [0, 1]}],
scoring="precision", refit=True)
clf.fit(X, y)
def test_gridsearch_nd():
# Pass X as list in GridSearchCV
X_4d = np.arange(10 * 5 * 3 * 2).reshape(10, 5, 3, 2)
y_3d = np.arange(10 * 7 * 11).reshape(10, 7, 11)
check_X = lambda x: x.shape[1:] == (5, 3, 2)
check_y = lambda x: x.shape[1:] == (7, 11)
clf = CheckingClassifier(check_X=check_X, check_y=check_y)
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]})
grid_search.fit(X_4d, y_3d).score(X, y)
assert_true(hasattr(grid_search, "cv_results_"))
def test_X_as_list():
# Pass X as list in GridSearchCV
X = np.arange(100).reshape(10, 10)
y = np.array([0] * 5 + [1] * 5)
clf = CheckingClassifier(check_X=lambda x: isinstance(x, list))
cv = KFold(n_splits=3)
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]}, cv=cv)
grid_search.fit(X.tolist(), y).score(X, y)
assert_true(hasattr(grid_search, "cv_results_"))
def test_y_as_list():
# Pass y as list in GridSearchCV
X = np.arange(100).reshape(10, 10)
y = np.array([0] * 5 + [1] * 5)
clf = CheckingClassifier(check_y=lambda x: isinstance(x, list))
cv = KFold(n_splits=3)
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]}, cv=cv)
grid_search.fit(X, y.tolist()).score(X, y)
assert_true(hasattr(grid_search, "cv_results_"))
@ignore_warnings
def test_pandas_input():
# check cross_val_score doesn't destroy pandas dataframe
types = [(MockDataFrame, MockDataFrame)]
try:
from pandas import Series, DataFrame
types.append((DataFrame, Series))
except ImportError:
pass
X = np.arange(100).reshape(10, 10)
y = np.array([0] * 5 + [1] * 5)
for InputFeatureType, TargetType in types:
# X dataframe, y series
X_df, y_ser = InputFeatureType(X), TargetType(y)
def check_df(x):
return isinstance(x, InputFeatureType)
def check_series(x):
return isinstance(x, TargetType)
clf = CheckingClassifier(check_X=check_df, check_y=check_series)
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]})
grid_search.fit(X_df, y_ser).score(X_df, y_ser)
grid_search.predict(X_df)
assert_true(hasattr(grid_search, "cv_results_"))
def test_unsupervised_grid_search():
# test grid-search with unsupervised estimator
X, y = make_blobs(random_state=0)
km = KMeans(random_state=0)
# Multi-metric evaluation unsupervised
scoring = ['adjusted_rand_score', 'fowlkes_mallows_score']
for refit in ['adjusted_rand_score', 'fowlkes_mallows_score']:
grid_search = GridSearchCV(km, param_grid=dict(n_clusters=[2, 3, 4]),
scoring=scoring, refit=refit)
grid_search.fit(X, y)
# Both ARI and FMS can find the right number :)
assert_equal(grid_search.best_params_["n_clusters"], 3)
# Single metric evaluation unsupervised
grid_search = GridSearchCV(km, param_grid=dict(n_clusters=[2, 3, 4]),
scoring='fowlkes_mallows_score')
grid_search.fit(X, y)
assert_equal(grid_search.best_params_["n_clusters"], 3)
# Now without a score, and without y
grid_search = GridSearchCV(km, param_grid=dict(n_clusters=[2, 3, 4]))
grid_search.fit(X)
assert_equal(grid_search.best_params_["n_clusters"], 4)
def test_gridsearch_no_predict():
# test grid-search with an estimator without predict.
# slight duplication of a test from KDE
def custom_scoring(estimator, X):
return 42 if estimator.bandwidth == .1 else 0
X, _ = make_blobs(cluster_std=.1, random_state=1,
centers=[[0, 1], [1, 0], [0, 0]])
search = GridSearchCV(KernelDensity(),
param_grid=dict(bandwidth=[.01, .1, 1]),
scoring=custom_scoring)
search.fit(X)
assert_equal(search.best_params_['bandwidth'], .1)
assert_equal(search.best_score_, 42)
def test_param_sampler():
# test basic properties of param sampler
param_distributions = {"kernel": ["rbf", "linear"],
"C": uniform(0, 1)}
sampler = ParameterSampler(param_distributions=param_distributions,
n_iter=10, random_state=0)
samples = [x for x in sampler]
assert_equal(len(samples), 10)
for sample in samples:
assert_true(sample["kernel"] in ["rbf", "linear"])
assert_true(0 <= sample["C"] <= 1)
# test that repeated calls yield identical parameters
param_distributions = {"C": [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10]}
sampler = ParameterSampler(param_distributions=param_distributions,
n_iter=3, random_state=0)
assert_equal([x for x in sampler], [x for x in sampler])
if sp_version >= (0, 16):
param_distributions = {"C": uniform(0, 1)}
sampler = ParameterSampler(param_distributions=param_distributions,
n_iter=10, random_state=0)
assert_equal([x for x in sampler], [x for x in sampler])
def check_cv_results_array_types(search, param_keys, score_keys):
# Check if the search `cv_results`'s array are of correct types
cv_results = search.cv_results_
assert_true(all(isinstance(cv_results[param], np.ma.MaskedArray)
for param in param_keys))
assert_true(all(cv_results[key].dtype == object for key in param_keys))
assert_false(any(isinstance(cv_results[key], np.ma.MaskedArray)
for key in score_keys))
assert_true(all(cv_results[key].dtype == np.float64
for key in score_keys if not key.startswith('rank')))
scorer_keys = search.scorer_.keys() if search.multimetric_ else ['score']
for key in scorer_keys:
assert_true(cv_results['rank_test_%s' % key].dtype == np.int32)
def check_cv_results_keys(cv_results, param_keys, score_keys, n_cand):
# Test the search.cv_results_ contains all the required results
assert_array_equal(sorted(cv_results.keys()),
sorted(param_keys + score_keys + ('params',)))
assert_true(all(cv_results[key].shape == (n_cand,)
for key in param_keys + score_keys))
def check_cv_results_grid_scores_consistency(search):
# TODO Remove test in 0.20
if search.multimetric_:
assert_raise_message(AttributeError, "not available for multi-metric",
getattr, search, 'grid_scores_')
else:
cv_results = search.cv_results_
res_scores = np.vstack(list([cv_results["split%d_test_score" % i]
for i in range(search.n_splits_)])).T
res_means = cv_results["mean_test_score"]
res_params = cv_results["params"]
n_cand = len(res_params)
grid_scores = assert_warns(DeprecationWarning, getattr,
search, 'grid_scores_')
assert_equal(len(grid_scores), n_cand)
# Check consistency of the structure of grid_scores
for i in range(n_cand):
assert_equal(grid_scores[i].parameters, res_params[i])
assert_array_equal(grid_scores[i].cv_validation_scores,
res_scores[i, :])
assert_array_equal(grid_scores[i].mean_validation_score,
res_means[i])
def test_grid_search_cv_results():
X, y = make_classification(n_samples=50, n_features=4,
random_state=42)
n_splits = 3
n_grid_points = 6
params = [dict(kernel=['rbf', ], C=[1, 10], gamma=[0.1, 1]),
dict(kernel=['poly', ], degree=[1, 2])]
param_keys = ('param_C', 'param_degree', 'param_gamma', 'param_kernel')
score_keys = ('mean_test_score', 'mean_train_score',
'rank_test_score',
'split0_test_score', 'split1_test_score',
'split2_test_score',
'split0_train_score', 'split1_train_score',
'split2_train_score',
'std_test_score', 'std_train_score',
'mean_fit_time', 'std_fit_time',
'mean_score_time', 'std_score_time')
n_candidates = n_grid_points
for iid in (False, True):
search = GridSearchCV(SVC(), cv=n_splits, iid=iid, param_grid=params)
search.fit(X, y)
assert_equal(iid, search.iid)
cv_results = search.cv_results_
# Check if score and timing are reasonable
assert_true(all(cv_results['rank_test_score'] >= 1))
assert_true(all(cv_results[k] >= 0) for k in score_keys
if k is not 'rank_test_score')
assert_true(all(cv_results[k] <= 1) for k in score_keys
if 'time' not in k and
k is not 'rank_test_score')
# Check cv_results structure
check_cv_results_array_types(search, param_keys, score_keys)
check_cv_results_keys(cv_results, param_keys, score_keys, n_candidates)
# Check masking
cv_results = search.cv_results_
n_candidates = len(search.cv_results_['params'])
assert_true(all((cv_results['param_C'].mask[i] and
cv_results['param_gamma'].mask[i] and
not cv_results['param_degree'].mask[i])
for i in range(n_candidates)
if cv_results['param_kernel'][i] == 'linear'))
assert_true(all((not cv_results['param_C'].mask[i] and
not cv_results['param_gamma'].mask[i] and
cv_results['param_degree'].mask[i])
for i in range(n_candidates)
if cv_results['param_kernel'][i] == 'rbf'))
check_cv_results_grid_scores_consistency(search)
def test_random_search_cv_results():
X, y = make_classification(n_samples=50, n_features=4, random_state=42)
n_splits = 3
n_search_iter = 30
params = dict(C=expon(scale=10), gamma=expon(scale=0.1))
param_keys = ('param_C', 'param_gamma')
score_keys = ('mean_test_score', 'mean_train_score',
'rank_test_score',
'split0_test_score', 'split1_test_score',
'split2_test_score',
'split0_train_score', 'split1_train_score',
'split2_train_score',
'std_test_score', 'std_train_score',
'mean_fit_time', 'std_fit_time',
'mean_score_time', 'std_score_time')
n_cand = n_search_iter
for iid in (False, True):
search = RandomizedSearchCV(SVC(), n_iter=n_search_iter, cv=n_splits,
iid=iid, param_distributions=params)
search.fit(X, y)
assert_equal(iid, search.iid)
cv_results = search.cv_results_
# Check results structure
check_cv_results_array_types(search, param_keys, score_keys)
check_cv_results_keys(cv_results, param_keys, score_keys, n_cand)
# For random_search, all the param array vals should be unmasked
assert_false(any(cv_results['param_C'].mask) or
any(cv_results['param_gamma'].mask))
check_cv_results_grid_scores_consistency(search)
def test_search_iid_param():
# Test the IID parameter
# noise-free simple 2d-data
X, y = make_blobs(centers=[[0, 0], [1, 0], [0, 1], [1, 1]], random_state=0,
cluster_std=0.1, shuffle=False, n_samples=80)
# split dataset into two folds that are not iid
# first one contains data of all 4 blobs, second only from two.
mask = np.ones(X.shape[0], dtype=np.bool)
mask[np.where(y == 1)[0][::2]] = 0
mask[np.where(y == 2)[0][::2]] = 0
# this leads to perfect classification on one fold and a score of 1/3 on
# the other
# create "cv" for splits
cv = [[mask, ~mask], [~mask, mask]]
# once with iid=True (default)
grid_search = GridSearchCV(SVC(), param_grid={'C': [1, 10]}, cv=cv)
random_search = RandomizedSearchCV(SVC(), n_iter=2,
param_distributions={'C': [1, 10]},
cv=cv)
for search in (grid_search, random_search):
search.fit(X, y)
assert_true(search.iid)
test_cv_scores = np.array(list(search.cv_results_['split%d_test_score'
% s_i][0]
for s_i in range(search.n_splits_)))
train_cv_scores = np.array(list(search.cv_results_['split%d_train_'
'score' % s_i][0]
for s_i in range(search.n_splits_)))
test_mean = search.cv_results_['mean_test_score'][0]
test_std = search.cv_results_['std_test_score'][0]
train_cv_scores = np.array(list(search.cv_results_['split%d_train_'
'score' % s_i][0]
for s_i in range(search.n_splits_)))
train_mean = search.cv_results_['mean_train_score'][0]
train_std = search.cv_results_['std_train_score'][0]
# Test the first candidate
assert_equal(search.cv_results_['param_C'][0], 1)
assert_array_almost_equal(test_cv_scores, [1, 1. / 3.])
assert_array_almost_equal(train_cv_scores, [1, 1])
# for first split, 1/4 of dataset is in test, for second 3/4.
# take weighted average and weighted std
expected_test_mean = 1 * 1. / 4. + 1. / 3. * 3. / 4.
expected_test_std = np.sqrt(1. / 4 * (expected_test_mean - 1) ** 2 +
3. / 4 * (expected_test_mean - 1. / 3.) **
2)
assert_almost_equal(test_mean, expected_test_mean)
assert_almost_equal(test_std, expected_test_std)
# For the train scores, we do not take a weighted mean irrespective of
# i.i.d. or not
assert_almost_equal(train_mean, 1)
assert_almost_equal(train_std, 0)
# once with iid=False
grid_search = GridSearchCV(SVC(),
param_grid={'C': [1, 10]},
cv=cv, iid=False)
random_search = RandomizedSearchCV(SVC(), n_iter=2,
param_distributions={'C': [1, 10]},
cv=cv, iid=False)
for search in (grid_search, random_search):
search.fit(X, y)
assert_false(search.iid)
test_cv_scores = np.array(list(search.cv_results_['split%d_test_score'
% s][0]
for s in range(search.n_splits_)))
test_mean = search.cv_results_['mean_test_score'][0]
test_std = search.cv_results_['std_test_score'][0]
train_cv_scores = np.array(list(search.cv_results_['split%d_train_'
'score' % s][0]
for s in range(search.n_splits_)))
train_mean = search.cv_results_['mean_train_score'][0]
train_std = search.cv_results_['std_train_score'][0]
assert_equal(search.cv_results_['param_C'][0], 1)
# scores are the same as above
assert_array_almost_equal(test_cv_scores, [1, 1. / 3.])
# Unweighted mean/std is used
assert_almost_equal(test_mean, np.mean(test_cv_scores))
assert_almost_equal(test_std, np.std(test_cv_scores))
# For the train scores, we do not take a weighted mean irrespective of
# i.i.d. or not
assert_almost_equal(train_mean, 1)
assert_almost_equal(train_std, 0)
def test_grid_search_cv_results_multimetric():
X, y = make_classification(n_samples=50, n_features=4, random_state=42)
n_splits = 3
params = [dict(kernel=['rbf', ], C=[1, 10], gamma=[0.1, 1]),
dict(kernel=['poly', ], degree=[1, 2])]
for iid in (False, True):
grid_searches = []
for scoring in ({'accuracy': make_scorer(accuracy_score),
'recall': make_scorer(recall_score)},
'accuracy', 'recall'):
grid_search = GridSearchCV(SVC(), cv=n_splits, iid=iid,
param_grid=params, scoring=scoring,
refit=False)
grid_search.fit(X, y)
assert_equal(grid_search.iid, iid)
grid_searches.append(grid_search)
compare_cv_results_multimetric_with_single(*grid_searches, iid=iid)
def test_random_search_cv_results_multimetric():
X, y = make_classification(n_samples=50, n_features=4, random_state=42)
n_splits = 3
n_search_iter = 30
scoring = ('accuracy', 'recall')
# Scipy 0.12's stats dists do not accept seed, hence we use param grid
params = dict(C=np.logspace(-10, 1), gamma=np.logspace(-5, 0, base=0.1))
for iid in (True, False):
for refit in (True, False):
random_searches = []
for scoring in (('accuracy', 'recall'), 'accuracy', 'recall'):
# If True, for multi-metric pass refit='accuracy'
if refit:
refit = 'accuracy' if isinstance(scoring, tuple) else refit
clf = SVC(probability=True, random_state=42)
random_search = RandomizedSearchCV(clf, n_iter=n_search_iter,
cv=n_splits, iid=iid,
param_distributions=params,
scoring=scoring,
refit=refit, random_state=0)
random_search.fit(X, y)
random_searches.append(random_search)
compare_cv_results_multimetric_with_single(*random_searches,
iid=iid)
if refit:
compare_refit_methods_when_refit_with_acc(
random_searches[0], random_searches[1], refit)
def compare_cv_results_multimetric_with_single(
search_multi, search_acc, search_rec, iid):
"""Compare multi-metric cv_results with the ensemble of multiple
single metric cv_results from single metric grid/random search"""
assert_equal(search_multi.iid, iid)
assert_true(search_multi.multimetric_)
assert_array_equal(sorted(search_multi.scorer_),
('accuracy', 'recall'))
cv_results_multi = search_multi.cv_results_
cv_results_acc_rec = {re.sub('_score$', '_accuracy', k): v
for k, v in search_acc.cv_results_.items()}
cv_results_acc_rec.update({re.sub('_score$', '_recall', k): v
for k, v in search_rec.cv_results_.items()})
# Check if score and timing are reasonable, also checks if the keys
# are present
assert_true(all((np.all(cv_results_multi[k] <= 1) for k in (
'mean_score_time', 'std_score_time', 'mean_fit_time',
'std_fit_time'))))
# Compare the keys, other than time keys, among multi-metric and
# single metric grid search results. np.testing.assert_equal performs a
# deep nested comparison of the two cv_results dicts
np.testing.assert_equal({k: v for k, v in cv_results_multi.items()
if not k.endswith('_time')},
{k: v for k, v in cv_results_acc_rec.items()
if not k.endswith('_time')})
def compare_refit_methods_when_refit_with_acc(search_multi, search_acc, refit):
"""Compare refit multi-metric search methods with single metric methods"""
if refit:
assert_equal(search_multi.refit, 'accuracy')
else:
assert_false(search_multi.refit)
assert_equal(search_acc.refit, refit)
X, y = make_blobs(n_samples=100, n_features=4, random_state=42)
for method in ('predict', 'predict_proba', 'predict_log_proba'):
assert_almost_equal(getattr(search_multi, method)(X),
getattr(search_acc, method)(X))
assert_almost_equal(search_multi.score(X, y), search_acc.score(X, y))
for key in ('best_index_', 'best_score_', 'best_params_'):
assert_equal(getattr(search_multi, key), getattr(search_acc, key))
def test_search_cv_results_rank_tie_breaking():
X, y = make_blobs(n_samples=50, random_state=42)
# The two C values are close enough to give similar models
# which would result in a tie of their mean cv-scores
param_grid = {'C': [1, 1.001, 0.001]}
grid_search = GridSearchCV(SVC(), param_grid=param_grid)
random_search = RandomizedSearchCV(SVC(), n_iter=3,
param_distributions=param_grid)
for search in (grid_search, random_search):
search.fit(X, y)
cv_results = search.cv_results_
# Check tie breaking strategy -
# Check that there is a tie in the mean scores between
# candidates 1 and 2 alone
assert_almost_equal(cv_results['mean_test_score'][0],
cv_results['mean_test_score'][1])
assert_almost_equal(cv_results['mean_train_score'][0],
cv_results['mean_train_score'][1])
assert_false(np.allclose(cv_results['mean_test_score'][1],
cv_results['mean_test_score'][2]))
assert_false(np.allclose(cv_results['mean_train_score'][1],
cv_results['mean_train_score'][2]))
# 'min' rank should be assigned to the tied candidates
assert_almost_equal(search.cv_results_['rank_test_score'], [1, 1, 3])
def test_search_cv_results_none_param():
X, y = [[1], [2], [3], [4], [5]], [0, 0, 0, 0, 1]
estimators = (DecisionTreeRegressor(), DecisionTreeClassifier())
est_parameters = {"random_state": [0, None]}
cv = KFold(random_state=0)
for est in estimators:
grid_search = GridSearchCV(est, est_parameters, cv=cv).fit(X, y)
assert_array_equal(grid_search.cv_results_['param_random_state'],
[0, None])
@ignore_warnings()
def test_search_cv_timing():
svc = LinearSVC(random_state=0)
X = [[1, ], [2, ], [3, ], [4, ]]
y = [0, 1, 1, 0]
gs = GridSearchCV(svc, {'C': [0, 1]}, cv=2, error_score=0)
rs = RandomizedSearchCV(svc, {'C': [0, 1]}, cv=2, error_score=0, n_iter=2)
for search in (gs, rs):
search.fit(X, y)
for key in ['mean_fit_time', 'std_fit_time']:
# NOTE The precision of time.time in windows is not high
# enough for the fit/score times to be non-zero for trivial X and y
assert_true(np.all(search.cv_results_[key] >= 0))
assert_true(np.all(search.cv_results_[key] < 1))
for key in ['mean_score_time', 'std_score_time']:
assert_true(search.cv_results_[key][1] >= 0)
assert_true(search.cv_results_[key][0] == 0.0)
assert_true(np.all(search.cv_results_[key] < 1))
def test_grid_search_correct_score_results():
# test that correct scores are used
n_splits = 3
clf = LinearSVC(random_state=0)
X, y = make_blobs(random_state=0, centers=2)
Cs = [.1, 1, 10]
for score in ['f1', 'roc_auc']:
grid_search = GridSearchCV(clf, {'C': Cs}, scoring=score, cv=n_splits)
cv_results = grid_search.fit(X, y).cv_results_
# Test scorer names
result_keys = list(cv_results.keys())
expected_keys = (("mean_test_score", "rank_test_score") +
tuple("split%d_test_score" % cv_i
for cv_i in range(n_splits)))
assert_true(all(np.in1d(expected_keys, result_keys)))
cv = StratifiedKFold(n_splits=n_splits)
n_splits = grid_search.n_splits_
for candidate_i, C in enumerate(Cs):
clf.set_params(C=C)
cv_scores = np.array(
list(grid_search.cv_results_['split%d_test_score'
% s][candidate_i]
for s in range(n_splits)))
for i, (train, test) in enumerate(cv.split(X, y)):
clf.fit(X[train], y[train])
if score == "f1":
correct_score = f1_score(y[test], clf.predict(X[test]))
elif score == "roc_auc":
dec = clf.decision_function(X[test])
correct_score = roc_auc_score(y[test], dec)
assert_almost_equal(correct_score, cv_scores[i])
def test_fit_grid_point():
X, y = make_classification(random_state=0)
cv = StratifiedKFold(random_state=0)
svc = LinearSVC(random_state=0)
scorer = make_scorer(accuracy_score)
for params in ({'C': 0.1}, {'C': 0.01}, {'C': 0.001}):
for train, test in cv.split(X, y):
this_scores, this_params, n_test_samples = fit_grid_point(
X, y, clone(svc), params, train, test,
scorer, verbose=False)
est = clone(svc).set_params(**params)
est.fit(X[train], y[train])
expected_score = scorer(est, X[test], y[test])
# Test the return values of fit_grid_point
assert_almost_equal(this_scores, expected_score)
assert_equal(params, this_params)
assert_equal(n_test_samples, test.size)
# Should raise an error upon multimetric scorer
assert_raise_message(ValueError, "scoring value should either be a "
"callable, string or None.", fit_grid_point, X, y,
svc, params, train, test, {'score': scorer},
verbose=True)
def test_pickle():
# Test that a fit search can be pickled
clf = MockClassifier()
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]}, refit=True)
grid_search.fit(X, y)
grid_search_pickled = pickle.loads(pickle.dumps(grid_search))
assert_array_almost_equal(grid_search.predict(X),
grid_search_pickled.predict(X))
random_search = RandomizedSearchCV(clf, {'foo_param': [1, 2, 3]},
refit=True, n_iter=3)
random_search.fit(X, y)
random_search_pickled = pickle.loads(pickle.dumps(random_search))
assert_array_almost_equal(random_search.predict(X),
random_search_pickled.predict(X))
def test_grid_search_with_multioutput_data():
# Test search with multi-output estimator
X, y = make_multilabel_classification(return_indicator=True,
random_state=0)
est_parameters = {"max_depth": [1, 2, 3, 4]}
cv = KFold(random_state=0)
estimators = [DecisionTreeRegressor(random_state=0),
DecisionTreeClassifier(random_state=0)]
# Test with grid search cv
for est in estimators:
grid_search = GridSearchCV(est, est_parameters, cv=cv)
grid_search.fit(X, y)
res_params = grid_search.cv_results_['params']
for cand_i in range(len(res_params)):
est.set_params(**res_params[cand_i])
for i, (train, test) in enumerate(cv.split(X, y)):
est.fit(X[train], y[train])
correct_score = est.score(X[test], y[test])
assert_almost_equal(
correct_score,
grid_search.cv_results_['split%d_test_score' % i][cand_i])
# Test with a randomized search
for est in estimators:
random_search = RandomizedSearchCV(est, est_parameters,
cv=cv, n_iter=3)
random_search.fit(X, y)
res_params = random_search.cv_results_['params']
for cand_i in range(len(res_params)):
est.set_params(**res_params[cand_i])
for i, (train, test) in enumerate(cv.split(X, y)):
est.fit(X[train], y[train])
correct_score = est.score(X[test], y[test])
assert_almost_equal(
correct_score,
random_search.cv_results_['split%d_test_score'
% i][cand_i])
def test_predict_proba_disabled():
# Test predict_proba when disabled on estimator.
X = np.arange(20).reshape(5, -1)
y = [0, 0, 1, 1, 1]
clf = SVC(probability=False)
gs = GridSearchCV(clf, {}, cv=2).fit(X, y)
assert_false(hasattr(gs, "predict_proba"))
def test_grid_search_allows_nans():
# Test GridSearchCV with Imputer
X = np.arange(20, dtype=np.float64).reshape(5, -1)
X[2, :] = np.nan
y = [0, 0, 1, 1, 1]
p = Pipeline([
('imputer', Imputer(strategy='mean', missing_values='NaN')),
('classifier', MockClassifier()),
])
GridSearchCV(p, {'classifier__foo_param': [1, 2, 3]}, cv=2).fit(X, y)
class FailingClassifier(BaseEstimator):
"""Classifier that raises a ValueError on fit()"""
FAILING_PARAMETER = 2
def __init__(self, parameter=None):
self.parameter = parameter
def fit(self, X, y=None):
if self.parameter == FailingClassifier.FAILING_PARAMETER:
raise ValueError("Failing classifier failed as required")
def predict(self, X):
return np.zeros(X.shape[0])
def test_grid_search_failing_classifier():
# GridSearchCV with on_error != 'raise'
# Ensures that a warning is raised and score reset where appropriate.
X, y = make_classification(n_samples=20, n_features=10, random_state=0)
clf = FailingClassifier()
# refit=False because we only want to check that errors caused by fits
# to individual folds will be caught and warnings raised instead. If
# refit was done, then an exception would be raised on refit and not
# caught by grid_search (expected behavior), and this would cause an
# error in this test.
gs = GridSearchCV(clf, [{'parameter': [0, 1, 2]}], scoring='accuracy',
refit=False, error_score=0.0)
assert_warns(FitFailedWarning, gs.fit, X, y)
n_candidates = len(gs.cv_results_['params'])
# Ensure that grid scores were set to zero as required for those fits
# that are expected to fail.
def get_cand_scores(i):
return np.array(list(gs.cv_results_['split%d_test_score' % s][i]
for s in range(gs.n_splits_)))
assert all((np.all(get_cand_scores(cand_i) == 0.0)
for cand_i in range(n_candidates)
if gs.cv_results_['param_parameter'][cand_i] ==
FailingClassifier.FAILING_PARAMETER))
gs = GridSearchCV(clf, [{'parameter': [0, 1, 2]}], scoring='accuracy',
refit=False, error_score=float('nan'))
assert_warns(FitFailedWarning, gs.fit, X, y)
n_candidates = len(gs.cv_results_['params'])
assert all(np.all(np.isnan(get_cand_scores(cand_i)))
for cand_i in range(n_candidates)
if gs.cv_results_['param_parameter'][cand_i] ==
FailingClassifier.FAILING_PARAMETER)
def test_grid_search_failing_classifier_raise():
# GridSearchCV with on_error == 'raise' raises the error
X, y = make_classification(n_samples=20, n_features=10, random_state=0)
clf = FailingClassifier()
# refit=False because we want to test the behaviour of the grid search part
gs = GridSearchCV(clf, [{'parameter': [0, 1, 2]}], scoring='accuracy',
refit=False, error_score='raise')
# FailingClassifier issues a ValueError so this is what we look for.
assert_raises(ValueError, gs.fit, X, y)
def test_parameters_sampler_replacement():
# raise error if n_iter too large
params = {'first': [0, 1], 'second': ['a', 'b', 'c']}
sampler = ParameterSampler(params, n_iter=7)
assert_raises(ValueError, list, sampler)
# degenerates to GridSearchCV if n_iter the same as grid_size
sampler = ParameterSampler(params, n_iter=6)
samples = list(sampler)
assert_equal(len(samples), 6)
for values in ParameterGrid(params):
assert_true(values in samples)
# test sampling without replacement in a large grid
params = {'a': range(10), 'b': range(10), 'c': range(10)}
sampler = ParameterSampler(params, n_iter=99, random_state=42)
samples = list(sampler)
assert_equal(len(samples), 99)
hashable_samples = ["a%db%dc%d" % (p['a'], p['b'], p['c'])
for p in samples]
assert_equal(len(set(hashable_samples)), 99)
# doesn't go into infinite loops
params_distribution = {'first': bernoulli(.5), 'second': ['a', 'b', 'c']}
sampler = ParameterSampler(params_distribution, n_iter=7)
samples = list(sampler)
assert_equal(len(samples), 7)
def test_stochastic_gradient_loss_param():
# Make sure the predict_proba works when loss is specified
# as one of the parameters in the param_grid.
param_grid = {
'loss': ['log'],
}
X = np.arange(24).reshape(6, -1)
y = [0, 0, 0, 1, 1, 1]
clf = GridSearchCV(estimator=SGDClassifier(tol=1e-3, loss='hinge'),
param_grid=param_grid)
# When the estimator is not fitted, `predict_proba` is not available as the
# loss is 'hinge'.
assert_false(hasattr(clf, "predict_proba"))
clf.fit(X, y)
clf.predict_proba(X)
clf.predict_log_proba(X)
# Make sure `predict_proba` is not available when setting loss=['hinge']
# in param_grid
param_grid = {
'loss': ['hinge'],
}
clf = GridSearchCV(estimator=SGDClassifier(tol=1e-3, loss='hinge'),
param_grid=param_grid)
assert_false(hasattr(clf, "predict_proba"))
clf.fit(X, y)
assert_false(hasattr(clf, "predict_proba"))
def test_search_train_scores_set_to_false():
X = np.arange(6).reshape(6, -1)
y = [0, 0, 0, 1, 1, 1]
clf = LinearSVC(random_state=0)
gs = GridSearchCV(clf, param_grid={'C': [0.1, 0.2]},
return_train_score=False)
gs.fit(X, y)
def test_grid_search_cv_splits_consistency():
# Check if a one time iterable is accepted as a cv parameter.
n_samples = 100
n_splits = 5
X, y = make_classification(n_samples=n_samples, random_state=0)
gs = GridSearchCV(LinearSVC(random_state=0),
param_grid={'C': [0.1, 0.2, 0.3]},
cv=OneTimeSplitter(n_splits=n_splits,
n_samples=n_samples))
gs.fit(X, y)
gs2 = GridSearchCV(LinearSVC(random_state=0),
param_grid={'C': [0.1, 0.2, 0.3]},
cv=KFold(n_splits=n_splits))
gs2.fit(X, y)
# Give generator as a cv parameter
assert_true(isinstance(KFold(n_splits=n_splits,
shuffle=True, random_state=0).split(X, y),
GeneratorType))
gs3 = GridSearchCV(LinearSVC(random_state=0),
param_grid={'C': [0.1, 0.2, 0.3]},
cv=KFold(n_splits=n_splits, shuffle=True,
random_state=0).split(X, y))
gs3.fit(X, y)
gs4 = GridSearchCV(LinearSVC(random_state=0),
param_grid={'C': [0.1, 0.2, 0.3]},
cv=KFold(n_splits=n_splits, shuffle=True,
random_state=0))
gs4.fit(X, y)
def _pop_time_keys(cv_results):
for key in ('mean_fit_time', 'std_fit_time',
'mean_score_time', 'std_score_time'):
cv_results.pop(key)
return cv_results
# Check if generators are supported as cv and
# that the splits are consistent
np.testing.assert_equal(_pop_time_keys(gs3.cv_results_),
_pop_time_keys(gs4.cv_results_))
# OneTimeSplitter is a non-re-entrant cv where split can be called only
# once if ``cv.split`` is called once per param setting in GridSearchCV.fit
# the 2nd and 3rd parameter will not be evaluated as no train/test indices
# will be generated for the 2nd and subsequent cv.split calls.
# This is a check to make sure cv.split is not called once per param
# setting.
np.testing.assert_equal({k: v for k, v in gs.cv_results_.items()
if not k.endswith('_time')},
{k: v for k, v in gs2.cv_results_.items()
if not k.endswith('_time')})
# Check consistency of folds across the parameters
gs = GridSearchCV(LinearSVC(random_state=0),
param_grid={'C': [0.1, 0.1, 0.2, 0.2]},
cv=KFold(n_splits=n_splits, shuffle=True))
gs.fit(X, y)
# As the first two param settings (C=0.1) and the next two param
# settings (C=0.2) are same, the test and train scores must also be
# same as long as the same train/test indices are generated for all
# the cv splits, for both param setting
for score_type in ('train', 'test'):
per_param_scores = {}
for param_i in range(4):
per_param_scores[param_i] = list(
gs.cv_results_['split%d_%s_score' % (s, score_type)][param_i]
for s in range(5))
assert_array_almost_equal(per_param_scores[0],
per_param_scores[1])
assert_array_almost_equal(per_param_scores[2],
per_param_scores[3])
def test_transform_inverse_transform_round_trip():
clf = MockClassifier()
grid_search = GridSearchCV(clf, {'foo_param': [1, 2, 3]}, verbose=3)
grid_search.fit(X, y)
X_round_trip = grid_search.inverse_transform(grid_search.transform(X))
assert_array_equal(X, X_round_trip)