Intelegentny_Pszczelarz/.venv/Lib/site-packages/sklearn/tests/test_common.py

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2023-06-19 00:49:18 +02:00
"""
General tests for all estimators in sklearn.
"""
# Authors: Andreas Mueller <amueller@ais.uni-bonn.de>
# Gael Varoquaux gael.varoquaux@normalesup.org
# License: BSD 3 clause
import os
import warnings
import sys
import re
import pkgutil
from inspect import isgenerator, signature
from itertools import product, chain
from functools import partial
import pytest
import numpy as np
from sklearn.cluster import (
AffinityPropagation,
Birch,
MeanShift,
OPTICS,
SpectralClustering,
)
from sklearn.datasets import make_blobs
from sklearn.manifold import Isomap, TSNE, LocallyLinearEmbedding
from sklearn.neighbors import (
LocalOutlierFactor,
KNeighborsClassifier,
KNeighborsRegressor,
RadiusNeighborsClassifier,
RadiusNeighborsRegressor,
)
from sklearn.preprocessing import FunctionTransformer
from sklearn.semi_supervised import LabelPropagation, LabelSpreading
from sklearn.utils import all_estimators
from sklearn.utils._testing import ignore_warnings
from sklearn.exceptions import ConvergenceWarning
from sklearn.exceptions import FitFailedWarning
from sklearn.utils.estimator_checks import check_estimator
import sklearn
# make it possible to discover experimental estimators when calling `all_estimators`
from sklearn.experimental import enable_iterative_imputer # noqa
from sklearn.experimental import enable_halving_search_cv # noqa
from sklearn.decomposition import PCA
from sklearn.preprocessing import StandardScaler, MinMaxScaler, OneHotEncoder
from sklearn.linear_model._base import LinearClassifierMixin
from sklearn.linear_model import LogisticRegression
from sklearn.linear_model import Ridge
from sklearn.model_selection import GridSearchCV
from sklearn.model_selection import RandomizedSearchCV
from sklearn.model_selection import HalvingGridSearchCV
from sklearn.model_selection import HalvingRandomSearchCV
from sklearn.pipeline import make_pipeline
from sklearn.utils import IS_PYPY
from sklearn.utils._tags import _DEFAULT_TAGS, _safe_tags
from sklearn.utils._testing import (
SkipTest,
set_random_state,
)
from sklearn.utils.estimator_checks import (
_construct_instance,
_set_checking_parameters,
_get_check_estimator_ids,
check_class_weight_balanced_linear_classifier,
parametrize_with_checks,
check_dataframe_column_names_consistency,
check_n_features_in_after_fitting,
check_param_validation,
check_transformer_get_feature_names_out,
check_transformer_get_feature_names_out_pandas,
check_set_output_transform,
check_set_output_transform_pandas,
check_global_ouptut_transform_pandas,
check_get_feature_names_out_error,
)
def test_all_estimator_no_base_class():
# test that all_estimators doesn't find abstract classes.
for name, Estimator in all_estimators():
msg = (
"Base estimators such as {0} should not be included in all_estimators"
).format(name)
assert not name.lower().startswith("base"), msg
def _sample_func(x, y=1):
pass
@pytest.mark.parametrize(
"val, expected",
[
(partial(_sample_func, y=1), "_sample_func(y=1)"),
(_sample_func, "_sample_func"),
(partial(_sample_func, "world"), "_sample_func"),
(LogisticRegression(C=2.0), "LogisticRegression(C=2.0)"),
(
LogisticRegression(
random_state=1,
solver="newton-cg",
class_weight="balanced",
warm_start=True,
),
"LogisticRegression(class_weight='balanced',random_state=1,"
"solver='newton-cg',warm_start=True)",
),
],
)
def test_get_check_estimator_ids(val, expected):
assert _get_check_estimator_ids(val) == expected
def _tested_estimators(type_filter=None):
for name, Estimator in all_estimators(type_filter=type_filter):
try:
estimator = _construct_instance(Estimator)
except SkipTest:
continue
yield estimator
@parametrize_with_checks(list(_tested_estimators()))
def test_estimators(estimator, check, request):
# Common tests for estimator instances
with ignore_warnings(category=(FutureWarning, ConvergenceWarning, UserWarning)):
_set_checking_parameters(estimator)
check(estimator)
def test_check_estimator_generate_only():
all_instance_gen_checks = check_estimator(LogisticRegression(), generate_only=True)
assert isgenerator(all_instance_gen_checks)
def test_configure():
# Smoke test `python setup.py config` command run at the root of the
# scikit-learn source tree.
# This test requires Cython which is not necessarily there when running
# the tests of an installed version of scikit-learn or when scikit-learn
# is installed in editable mode by pip build isolation enabled.
pytest.importorskip("Cython")
cwd = os.getcwd()
setup_path = os.path.abspath(os.path.join(sklearn.__path__[0], ".."))
setup_filename = os.path.join(setup_path, "setup.py")
if not os.path.exists(setup_filename):
pytest.skip("setup.py not available")
try:
os.chdir(setup_path)
old_argv = sys.argv
sys.argv = ["setup.py", "config"]
with warnings.catch_warnings():
# The configuration spits out warnings when not finding
# Blas/Atlas development headers
warnings.simplefilter("ignore", UserWarning)
with open("setup.py") as f:
exec(f.read(), dict(__name__="__main__"))
finally:
sys.argv = old_argv
os.chdir(cwd)
def _tested_linear_classifiers():
classifiers = all_estimators(type_filter="classifier")
with warnings.catch_warnings(record=True):
for name, clazz in classifiers:
required_parameters = getattr(clazz, "_required_parameters", [])
if len(required_parameters):
# FIXME
continue
if "class_weight" in clazz().get_params().keys() and issubclass(
clazz, LinearClassifierMixin
):
yield name, clazz
@pytest.mark.parametrize("name, Classifier", _tested_linear_classifiers())
def test_class_weight_balanced_linear_classifiers(name, Classifier):
check_class_weight_balanced_linear_classifier(name, Classifier)
@ignore_warnings
def test_import_all_consistency():
# Smoke test to check that any name in a __all__ list is actually defined
# in the namespace of the module or package.
pkgs = pkgutil.walk_packages(
path=sklearn.__path__, prefix="sklearn.", onerror=lambda _: None
)
submods = [modname for _, modname, _ in pkgs]
for modname in submods + ["sklearn"]:
if ".tests." in modname:
continue
if IS_PYPY and (
"_svmlight_format_io" in modname
or "feature_extraction._hashing_fast" in modname
):
continue
package = __import__(modname, fromlist="dummy")
for name in getattr(package, "__all__", ()):
assert hasattr(package, name), "Module '{0}' has no attribute '{1}'".format(
modname, name
)
def test_root_import_all_completeness():
EXCEPTIONS = ("utils", "tests", "base", "setup", "conftest")
for _, modname, _ in pkgutil.walk_packages(
path=sklearn.__path__, onerror=lambda _: None
):
if "." in modname or modname.startswith("_") or modname in EXCEPTIONS:
continue
assert modname in sklearn.__all__
def test_all_tests_are_importable():
# Ensure that for each contentful subpackage, there is a test directory
# within it that is also a subpackage (i.e. a directory with __init__.py)
HAS_TESTS_EXCEPTIONS = re.compile(
r"""(?x)
\.externals(\.|$)|
\.tests(\.|$)|
\._
"""
)
resource_modules = {
"sklearn.datasets.data",
"sklearn.datasets.descr",
"sklearn.datasets.images",
}
lookup = {
name: ispkg
for _, name, ispkg in pkgutil.walk_packages(sklearn.__path__, prefix="sklearn.")
}
missing_tests = [
name
for name, ispkg in lookup.items()
if ispkg
and name not in resource_modules
and not HAS_TESTS_EXCEPTIONS.search(name)
and name + ".tests" not in lookup
]
assert missing_tests == [], (
"{0} do not have `tests` subpackages. "
"Perhaps they require "
"__init__.py or an add_subpackage directive "
"in the parent "
"setup.py".format(missing_tests)
)
def test_class_support_removed():
# Make sure passing classes to check_estimator or parametrize_with_checks
# raises an error
msg = "Passing a class was deprecated.* isn't supported anymore"
with pytest.raises(TypeError, match=msg):
check_estimator(LogisticRegression)
with pytest.raises(TypeError, match=msg):
parametrize_with_checks([LogisticRegression])
def _generate_search_cv_instances():
for SearchCV, (Estimator, param_grid) in product(
[
GridSearchCV,
HalvingGridSearchCV,
RandomizedSearchCV,
HalvingGridSearchCV,
],
[
(Ridge, {"alpha": [0.1, 1.0]}),
(LogisticRegression, {"C": [0.1, 1.0]}),
],
):
init_params = signature(SearchCV).parameters
extra_params = (
{"min_resources": "smallest"} if "min_resources" in init_params else {}
)
search_cv = SearchCV(Estimator(), param_grid, cv=2, **extra_params)
set_random_state(search_cv)
yield search_cv
for SearchCV, (Estimator, param_grid) in product(
[
GridSearchCV,
HalvingGridSearchCV,
RandomizedSearchCV,
HalvingRandomSearchCV,
],
[
(Ridge, {"ridge__alpha": [0.1, 1.0]}),
(LogisticRegression, {"logisticregression__C": [0.1, 1.0]}),
],
):
init_params = signature(SearchCV).parameters
extra_params = (
{"min_resources": "smallest"} if "min_resources" in init_params else {}
)
search_cv = SearchCV(
make_pipeline(PCA(), Estimator()), param_grid, cv=2, **extra_params
).set_params(error_score="raise")
set_random_state(search_cv)
yield search_cv
@parametrize_with_checks(list(_generate_search_cv_instances()))
def test_search_cv(estimator, check, request):
# Common tests for SearchCV instances
# We have a separate test because those meta-estimators can accept a
# wide range of base estimators (classifiers, regressors, pipelines)
with ignore_warnings(
category=(
FutureWarning,
ConvergenceWarning,
UserWarning,
FitFailedWarning,
)
):
check(estimator)
@pytest.mark.parametrize(
"estimator", _tested_estimators(), ids=_get_check_estimator_ids
)
def test_valid_tag_types(estimator):
"""Check that estimator tags are valid."""
tags = _safe_tags(estimator)
for name, tag in tags.items():
correct_tags = type(_DEFAULT_TAGS[name])
if name == "_xfail_checks":
# _xfail_checks can be a dictionary
correct_tags = (correct_tags, dict)
assert isinstance(tag, correct_tags)
@pytest.mark.parametrize(
"estimator", _tested_estimators(), ids=_get_check_estimator_ids
)
def test_check_n_features_in_after_fitting(estimator):
_set_checking_parameters(estimator)
check_n_features_in_after_fitting(estimator.__class__.__name__, estimator)
def _estimators_that_predict_in_fit():
for estimator in _tested_estimators():
est_params = set(estimator.get_params())
if "oob_score" in est_params:
yield estimator.set_params(oob_score=True, bootstrap=True)
elif "early_stopping" in est_params:
est = estimator.set_params(early_stopping=True, n_iter_no_change=1)
if est.__class__.__name__ in {"MLPClassifier", "MLPRegressor"}:
# TODO: FIX MLP to not check validation set during MLP
yield pytest.param(
est, marks=pytest.mark.xfail(msg="MLP still validates in fit")
)
else:
yield est
elif "n_iter_no_change" in est_params:
yield estimator.set_params(n_iter_no_change=1)
# NOTE: When running `check_dataframe_column_names_consistency` on a meta-estimator that
# delegates validation to a base estimator, the check is testing that the base estimator
# is checking for column name consistency.
column_name_estimators = list(
chain(
_tested_estimators(),
[make_pipeline(LogisticRegression(C=1))],
list(_generate_search_cv_instances()),
_estimators_that_predict_in_fit(),
)
)
@pytest.mark.parametrize(
"estimator", column_name_estimators, ids=_get_check_estimator_ids
)
def test_pandas_column_name_consistency(estimator):
_set_checking_parameters(estimator)
with ignore_warnings(category=(FutureWarning)):
with warnings.catch_warnings(record=True) as record:
check_dataframe_column_names_consistency(
estimator.__class__.__name__, estimator
)
for warning in record:
assert "was fitted without feature names" not in str(warning.message)
# TODO: As more modules support get_feature_names_out they should be removed
# from this list to be tested
GET_FEATURES_OUT_MODULES_TO_IGNORE = [
"ensemble",
"kernel_approximation",
]
def _include_in_get_feature_names_out_check(transformer):
if hasattr(transformer, "get_feature_names_out"):
return True
module = transformer.__module__.split(".")[1]
return module not in GET_FEATURES_OUT_MODULES_TO_IGNORE
GET_FEATURES_OUT_ESTIMATORS = [
est
for est in _tested_estimators("transformer")
if _include_in_get_feature_names_out_check(est)
]
@pytest.mark.parametrize(
"transformer", GET_FEATURES_OUT_ESTIMATORS, ids=_get_check_estimator_ids
)
def test_transformers_get_feature_names_out(transformer):
_set_checking_parameters(transformer)
with ignore_warnings(category=(FutureWarning)):
check_transformer_get_feature_names_out(
transformer.__class__.__name__, transformer
)
check_transformer_get_feature_names_out_pandas(
transformer.__class__.__name__, transformer
)
ESTIMATORS_WITH_GET_FEATURE_NAMES_OUT = [
est for est in _tested_estimators() if hasattr(est, "get_feature_names_out")
]
WHITELISTED_FAILING_ESTIMATORS = [
"AdditiveChi2Sampler",
"Binarizer",
"DictVectorizer",
"GaussianRandomProjection",
"GenericUnivariateSelect",
"IterativeImputer",
"IsotonicRegression",
"KBinsDiscretizer",
"KNNImputer",
"MaxAbsScaler",
"MinMaxScaler",
"MissingIndicator",
"Normalizer",
"OrdinalEncoder",
"PowerTransformer",
"QuantileTransformer",
"RFE",
"RFECV",
"RobustScaler",
"SelectFdr",
"SelectFpr",
"SelectFromModel",
"SelectFwe",
"SelectKBest",
"SelectPercentile",
"SequentialFeatureSelector",
"SimpleImputer",
"SparseRandomProjection",
"SplineTransformer",
"StackingClassifier",
"StackingRegressor",
"StandardScaler",
"TfidfTransformer",
"VarianceThreshold",
"VotingClassifier",
"VotingRegressor",
]
@pytest.mark.parametrize(
"estimator", ESTIMATORS_WITH_GET_FEATURE_NAMES_OUT, ids=_get_check_estimator_ids
)
def test_estimators_get_feature_names_out_error(estimator):
estimator_name = estimator.__class__.__name__
if estimator_name in WHITELISTED_FAILING_ESTIMATORS:
return pytest.xfail(
reason=f"{estimator_name} is not failing with a consistent NotFittedError"
)
_set_checking_parameters(estimator)
check_get_feature_names_out_error(estimator_name, estimator)
@pytest.mark.parametrize(
"Estimator",
[est for name, est in all_estimators()],
)
def test_estimators_do_not_raise_errors_in_init_or_set_params(Estimator):
"""Check that init or set_param does not raise errors."""
params = signature(Estimator).parameters
smoke_test_values = [-1, 3.0, "helloworld", np.array([1.0, 4.0]), [1], {}, []]
for value in smoke_test_values:
new_params = {key: value for key in params}
# Does not raise
est = Estimator(**new_params)
# Also do does not raise
est.set_params(**new_params)
@pytest.mark.parametrize(
"estimator", _tested_estimators(), ids=_get_check_estimator_ids
)
def test_check_param_validation(estimator):
name = estimator.__class__.__name__
_set_checking_parameters(estimator)
check_param_validation(name, estimator)
@pytest.mark.parametrize(
"Estimator",
[
AffinityPropagation,
Birch,
MeanShift,
KNeighborsClassifier,
KNeighborsRegressor,
RadiusNeighborsClassifier,
RadiusNeighborsRegressor,
LabelPropagation,
LabelSpreading,
OPTICS,
SpectralClustering,
LocalOutlierFactor,
LocallyLinearEmbedding,
Isomap,
TSNE,
],
)
def test_f_contiguous_array_estimator(Estimator):
# Non-regression test for:
# https://github.com/scikit-learn/scikit-learn/issues/23988
# https://github.com/scikit-learn/scikit-learn/issues/24013
X, _ = make_blobs(n_samples=80, n_features=4, random_state=0)
X = np.asfortranarray(X)
y = np.round(X[:, 0])
est = Estimator()
est.fit(X, y)
if hasattr(est, "transform"):
est.transform(X)
if hasattr(est, "predict"):
est.predict(X)
SET_OUTPUT_ESTIMATORS = list(
chain(
_tested_estimators("transformer"),
[
make_pipeline(StandardScaler(), MinMaxScaler()),
OneHotEncoder(sparse_output=False),
FunctionTransformer(feature_names_out="one-to-one"),
],
)
)
@pytest.mark.parametrize(
"estimator", SET_OUTPUT_ESTIMATORS, ids=_get_check_estimator_ids
)
def test_set_output_transform(estimator):
name = estimator.__class__.__name__
if not hasattr(estimator, "set_output"):
pytest.skip(
f"Skipping check_set_output_transform for {name}: Does not support"
" set_output API"
)
_set_checking_parameters(estimator)
with ignore_warnings(category=(FutureWarning)):
check_set_output_transform(estimator.__class__.__name__, estimator)
@pytest.mark.parametrize(
"estimator", SET_OUTPUT_ESTIMATORS, ids=_get_check_estimator_ids
)
def test_set_output_transform_pandas(estimator):
name = estimator.__class__.__name__
if not hasattr(estimator, "set_output"):
pytest.skip(
f"Skipping check_set_output_transform_pandas for {name}: Does not support"
" set_output API yet"
)
_set_checking_parameters(estimator)
with ignore_warnings(category=(FutureWarning)):
check_set_output_transform_pandas(estimator.__class__.__name__, estimator)
@pytest.mark.parametrize(
"estimator", SET_OUTPUT_ESTIMATORS, ids=_get_check_estimator_ids
)
def test_global_output_transform_pandas(estimator):
name = estimator.__class__.__name__
if not hasattr(estimator, "set_output"):
pytest.skip(
f"Skipping check_global_ouptut_transform_pandas for {name}: Does not"
" support set_output API yet"
)
_set_checking_parameters(estimator)
with ignore_warnings(category=(FutureWarning)):
check_global_ouptut_transform_pandas(estimator.__class__.__name__, estimator)