Exemplo n.º 1
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def test_header_happy(names, col_idx, feature_idx):
    h = Header(column_names=["a", "b", "c"], target_column_name="b")
    assert h.target_column_index == 1
    assert h.as_feature_indices(names) == feature_idx
    assert h.as_column_indices(names) == col_idx
    assert h.num_features == 2
    assert h.num_columns == 3
Exemplo n.º 2
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def test_automl():
    st_helper = SklearnTestHelper()

    data = np.array(
        [[4, 5, np.nan, 7], [0, np.nan, 2, 3], [8, 9, 10, 11],
         [np.nan, 13, 14, 15]],
        dtype=np.float32,
    )

    pipeline = Pipeline(
        steps=[("robustimputer",
                RobustImputer(fill_values=np.nan, strategy="constant"))])

    ct = ColumnTransformer(transformers=[("numeric_processing", pipeline,
                                          [0, 1, 2, 3])])
    ct.fit(data)

    pipeline = Pipeline(steps=[("column_transformer", ct)])
    header = Header(column_names=["x1", "x2", "x3", "class"],
                    target_column_name="class")

    na = NALabelEncoder()
    na.fit(data)

    automl_transformer = AutoMLTransformer(header, pipeline, na)

    dshape = (relay.Any(), relay.Any())
    _test_model_impl(st_helper, automl_transformer, dshape, data, auto_ml=True)
def test_automl_transformer(feature_transformer, target_transformer,
                            expected_X_transformed_shape,
                            expected_Xy_transformed_shape):
    X = np.arange(0, 3 * 10).reshape((10, 3)).astype(np.str)
    y = np.array([0] * 5 + [1] * 4 + [np.nan]).astype(np.str)

    header = Header(column_names=["x1", "x2", "x3", "class"],
                    target_column_name="class")
    automl_transformer = AutoMLTransformer(
        header=header,
        feature_transformer=feature_transformer,
        target_transformer=target_transformer,
    )

    model = automl_transformer.fit(X, y)

    X_transformed = model.transform(X)
    assert X_transformed.shape == expected_X_transformed_shape

    Xy = np.column_stack([X, y])

    Xy_transformed = model.transform(Xy)
    assert Xy_transformed.shape == expected_Xy_transformed_shape

    with pytest.raises(ValueError):
        model.transform(X[:, 2:])
def test_automl_transformer_regression():
    """Tests that rows in a regression dataset where the target column is not a finite numeric are imputed"""
    data = read_csv_data(source="test/data/csv/regression_na_labels.csv")
    X = data[:, :3]
    y = data[:, 3]
    header = Header(column_names=["x1", "x2", "x3", "class"],
                    target_column_name="class")
    automl_transformer = AutoMLTransformer(
        header=header,
        feature_transformer=RobustImputer(strategy="constant", fill_values=0),
        target_transformer=NALabelEncoder(),
    )
    model = automl_transformer.fit(X, y)
    X_transformed = model.transform(X)
    assert X_transformed.shape == X.shape

    Xy = np.concatenate((X, y.reshape(-1, 1)), axis=1)

    Xy_transformed = model.transform(Xy)
    assert Xy_transformed.shape == (3, 4)
    assert np.array_equal(
        Xy_transformed,
        np.array([[1.1, 1.0, 2.0, 3.0], [2.2, 4.0, 0.0, 5.0],
                  [3.3, 12.0, 13.0, 14.0]]))
Exemplo n.º 5
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from sagemaker_sklearn_extension.decomposition import RobustPCA
from sagemaker_sklearn_extension.externals import Header
from sagemaker_sklearn_extension.feature_extraction.text import MultiColumnTfidfVectorizer
from sagemaker_sklearn_extension.preprocessing import RobustLabelEncoder
from sagemaker_sklearn_extension.preprocessing import RobustStandardScaler
from sklearn.compose import ColumnTransformer
from sklearn.pipeline import Pipeline

# Given a list of column names and target column name, Header can return the index
# for given column name
HEADER = Header(column_names=['star_rating', 'review_body'],
                target_column_name='star_rating')


def build_feature_transform():
    """ Returns the model definition representing feature processing."""

    # These features can be parsed as natural language.
    text = HEADER.as_feature_indices(['review_body'])

    text_processors = Pipeline(steps=[(
        'multicolumntfidfvectorizer',
        MultiColumnTfidfVectorizer(
            max_df=0.99, min_df=0.0021, analyzer='char_wb', max_features=10000)
    )])

    column_transformer = ColumnTransformer(transformers=[('text_processing',
                                                          text_processors,
                                                          text)])

    return Pipeline(steps=[(
Exemplo n.º 6
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from sagemaker_sklearn_extension.externals import Header
from sagemaker_sklearn_extension.feature_extraction.text import MultiColumnTfidfVectorizer
from sagemaker_sklearn_extension.preprocessing import RobustLabelEncoder
from sagemaker_sklearn_extension.preprocessing import RobustStandardScaler
from sklearn.compose import ColumnTransformer
from sklearn.pipeline import Pipeline

# Given a list of column names and target column name, Header can return the index
# for given column name
HEADER = Header(column_names=['label', 'features'], target_column_name='label')


def build_feature_transform():
    """ Returns the model definition representing feature processing."""

    # These features can be parsed as natural language.
    text = HEADER.as_feature_indices(['features'])

    text_processors = Pipeline(
        steps=[
            (
                'multicolumntfidfvectorizer',
                MultiColumnTfidfVectorizer(
                    max_df=0.9684,
                    min_df=0.013108614232209739,
                    analyzer='word',
                    max_features=10000
                )
            )
        ]
    )
Exemplo n.º 7
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from sagemaker_sklearn_extension.externals import Header
from sagemaker_sklearn_extension.feature_extraction.text import MultiColumnTfidfVectorizer
from sagemaker_sklearn_extension.preprocessing import RobustLabelEncoder
from sagemaker_sklearn_extension.preprocessing import RobustStandardScaler
from sklearn.compose import ColumnTransformer
from sklearn.pipeline import Pipeline

# Given a list of column names and target column name, Header can return the index
# for given column name
HEADER = Header(column_names=["star_rating", "review_body"],
                target_column_name="star_rating")


def build_feature_transform():
    """ Returns the model definition representing feature processing."""

    # These features can be parsed as natural language.

    text = HEADER.as_feature_indices(["review_body"])

    text_processors = Pipeline(steps=[(
        "multicolumntfidfvectorizer",
        MultiColumnTfidfVectorizer(
            max_df=0.9941, min_df=0.0007, analyzer="word", max_features=10000),
    )])

    column_transformer = ColumnTransformer(transformers=[("text_processing",
                                                          text_processors,
                                                          text)])

    return Pipeline(steps=[(
Exemplo n.º 8
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from sagemaker_sklearn_extension.decomposition import RobustPCA
from sagemaker_sklearn_extension.externals import Header
from sagemaker_sklearn_extension.impute import RobustImputer
from sagemaker_sklearn_extension.preprocessing import RobustStandardScaler
from sagemaker_sklearn_extension.preprocessing import ThresholdOneHotEncoder
from sklearn.compose import ColumnTransformer
from sklearn.pipeline import Pipeline
from sklearn.preprocessing import LabelEncoder

# Given a list of column names and target column name, Header can return the index
# for given column name
HEADER = Header(column_names=[
    'age', 'job', 'marital', 'education', 'default', 'housing', 'loan',
    'contact', 'month', 'day_of_week', 'duration', 'campaign', 'pdays',
    'previous', 'poutcome', 'emp.var.rate', 'cons.price.idx', 'cons.conf.idx',
    'euribor3m', 'nr.employed', 'y'
],
                target_column_name='y')


def build_feature_transform():
    """ Returns the model definition representing feature processing."""

    # These features can be parsed as numeric.
    numeric = HEADER.as_feature_indices([
        'age', 'duration', 'campaign', 'pdays', 'previous', 'emp.var.rate',
        'cons.price.idx', 'cons.conf.idx', 'euribor3m', 'nr.employed'
    ])

    # These features contain a relatively small number of unique items.
    categorical = HEADER.as_feature_indices([
from numpy import nan
from sagemaker_sklearn_extension.externals import Header
from sagemaker_sklearn_extension.impute import RobustImputer
from sagemaker_sklearn_extension.preprocessing import RobustLabelEncoder
from sagemaker_sklearn_extension.preprocessing import RobustStandardScaler
from sklearn.compose import ColumnTransformer
from sklearn.pipeline import Pipeline

# Given a list of column names and target column name, Header can return the index
# for given column name
HEADER = Header(
    column_names=[
        'Unnamed: 0', 'V1', 'V2', 'V3', 'V4', 'V5', 'V6', 'V7', 'V8', 'V9',
        'V10', 'V11', 'V12', 'V13', 'V14', 'V15', 'V16', 'V17', 'V18', 'V19',
        'V20', 'V21', 'V22', 'V23', 'V24', 'V25', 'V26', 'V27', 'V28', 'Class',
        'amt'
    ],
    target_column_name='Class'
)


def build_feature_transform():
    """ Returns the model definition representing feature processing."""

    # These features can be parsed as numeric.

    numeric = HEADER.as_feature_indices(
        [
            'Unnamed: 0', 'V1', 'V2', 'V3', 'V4', 'V5', 'V6', 'V7', 'V8', 'V9',
            'V10', 'V11', 'V12', 'V13', 'V14', 'V15', 'V16', 'V17', 'V18',
            'V19', 'V20', 'V21', 'V22', 'V23', 'V24', 'V25', 'V26', 'V27',
Exemplo n.º 10
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from sagemaker_sklearn_extension.impute import RobustImputer
from sagemaker_sklearn_extension.preprocessing import RobustStandardScaler
from sklearn.compose import ColumnTransformer
from sklearn.pipeline import Pipeline
from sklearn.preprocessing import LabelEncoder

# Given a list of column names and target column name, Header can return the index
# for given column name
HEADER = Header(column_names=[
    'Churn', 'Account Length', 'VMail Message', 'Day Mins', 'Day Calls',
    'Eve Mins', 'Eve Calls', 'Night Mins', 'Night Calls', 'Intl Mins',
    'Intl Calls', 'CustServ Calls', 'State_AK', 'State_AL', 'State_AR',
    'State_AZ', 'State_CA', 'State_CO', 'State_CT', 'State_DC', 'State_DE',
    'State_FL', 'State_GA', 'State_HI', 'State_IA', 'State_ID', 'State_IL',
    'State_IN', 'State_KS', 'State_KY', 'State_LA', 'State_MA', 'State_MD',
    'State_ME', 'State_MI', 'State_MN', 'State_MO', 'State_MS', 'State_MT',
    'State_NC', 'State_ND', 'State_NE', 'State_NH', 'State_NJ', 'State_NM',
    'State_NV', 'State_NY', 'State_OH', 'State_OK', 'State_OR', 'State_PA',
    'State_RI', 'State_SC', 'State_SD', 'State_TN', 'State_TX', 'State_UT',
    'State_VA', 'State_VT', 'State_WA', 'State_WI', 'State_WV', 'State_WY',
    'Area Code_408', 'Area Code_415', 'Area Code_510', "Int'l Plan_no",
    "Int'l Plan_yes", 'VMail Plan_no', 'VMail Plan_yes'
],
                target_column_name='Churn')


def build_feature_transform():
    """ Returns the model definition representing feature processing."""

    # These features can be parsed as numeric.
    numeric = HEADER.as_feature_indices([
        'Account Length', 'VMail Message', 'Day Mins', 'Day Calls', 'Eve Mins',
Exemplo n.º 11
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def test_header_error_as_column_index():
    h = Header(column_names=["a", "b", "c"], target_column_name="b")
    assert h.target_column_index == 1
    with pytest.raises(ValueError):
        h.as_column_indices(["unknown"])
Exemplo n.º 12
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def test_header_error_as_feature_indices(names, error_regex):
    h = Header(column_names=["a", "b", "c"], target_column_name="b")
    assert h.target_column_index == 1
    with pytest.raises(ValueError) as err:
        h.as_feature_indices(names)
        err.match(error_regex)
Exemplo n.º 13
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def test_header_errors_duplicate_columns(column_names, target_column):
    with pytest.raises(ValueError):
        Header(column_names=column_names, target_column_name=target_column)
Exemplo n.º 14
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def test_header_errors_target_missing():
    with pytest.raises(ValueError):
        Header(column_names=["a", "b"], target_column_name="c")
Exemplo n.º 15
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from sagemaker_sklearn_extension.decomposition import RobustPCA
from sagemaker_sklearn_extension.externals import Header
from sagemaker_sklearn_extension.feature_extraction.text import MultiColumnTfidfVectorizer
from sagemaker_sklearn_extension.preprocessing import RobustLabelEncoder
from sagemaker_sklearn_extension.preprocessing import RobustStandardScaler
from sagemaker_sklearn_extension.preprocessing import ThresholdOneHotEncoder
from sklearn.compose import ColumnTransformer
from sklearn.pipeline import Pipeline

# Given a list of column names and target column name, Header can return the index
# for given column name
HEADER = Header(column_names=[
    'ifa', 'label', 'bundle_vec', 'persona_segment_vec', 'persona_L1_vec',
    'persona_L2_vec', 'persona_L3_vec', 'device_vendor_vec', 'device_name_vec',
    'device_manufacturer_vec', 'device_model_vec',
    'device_year_of_release_vec', 'dev_platform_vec', 'major_os_vec'
],
                target_column_name='label')


def build_feature_transform():
    """ Returns the model definition representing feature processing."""

    # These features contain a relatively small number of unique items.
    categorical = HEADER.as_feature_indices(['dev_platform_vec'])

    # These features can be parsed as natural language.
    text = HEADER.as_feature_indices([
        'ifa', 'bundle_vec', 'persona_segment_vec', 'persona_L1_vec',
        'persona_L2_vec', 'persona_L3_vec', 'device_vendor_vec',
        'device_name_vec', 'device_manufacturer_vec', 'device_model_vec',
Exemplo n.º 16
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HEADER = Header(
    column_names=[
        'activity', 'tBodyAcc.mean.X', 'tBodyAcc.mean.Y', 'tBodyAcc.mean.Z',
        'tBodyAcc.std.X', 'tBodyAcc.std.Y', 'tBodyAcc.std.Z', 'tBodyAcc.mad.X',
        'tBodyAcc.mad.Y', 'tBodyAcc.mad.Z', 'tBodyAcc.max.X', 'tBodyAcc.max.Y',
        'tBodyAcc.max.Z', 'tBodyAcc.min.X', 'tBodyAcc.min.Y', 'tBodyAcc.min.Z',
        'tBodyAcc.sma', 'tBodyAcc.energy.X', 'tBodyAcc.energy.Y',
        'tBodyAcc.energy.Z', 'tBodyAcc.iqr.X', 'tBodyAcc.iqr.Y',
        'tBodyAcc.iqr.Z', 'tBodyAcc.entropy.X', 'tBodyAcc.entropy.Y',
        'tBodyAcc.entropy.Z', 'tBodyAcc.arCoeff.X.1', 'tBodyAcc.arCoeff.X.2',
        'tBodyAcc.arCoeff.X.3', 'tBodyAcc.arCoeff.X.4', 'tBodyAcc.arCoeff.Y.1',
        'tBodyAcc.arCoeff.Y.2', 'tBodyAcc.arCoeff.Y.3', 'tBodyAcc.arCoeff.Y.4',
        'tBodyAcc.arCoeff.Z.1', 'tBodyAcc.arCoeff.Z.2', 'tBodyAcc.arCoeff.Z.3',
        'tBodyAcc.arCoeff.Z.4', 'tBodyAcc.correlation.X.Y',
        'tBodyAcc.correlation.X.Z', 'tBodyAcc.correlation.Y.Z',
        'tGravityAcc.mean.X', 'tGravityAcc.mean.Y', 'tGravityAcc.mean.Z',
        'tGravityAcc.std.X', 'tGravityAcc.std.Y', 'tGravityAcc.std.Z',
        'tGravityAcc.mad.X', 'tGravityAcc.mad.Y', 'tGravityAcc.mad.Z',
        'tGravityAcc.max.X', 'tGravityAcc.max.Y', 'tGravityAcc.max.Z',
        'tGravityAcc.min.X', 'tGravityAcc.min.Y', 'tGravityAcc.min.Z',
        'tGravityAcc.sma', 'tGravityAcc.energy.X', 'tGravityAcc.energy.Y',
        'tGravityAcc.energy.Z', 'tGravityAcc.iqr.X', 'tGravityAcc.iqr.Y',
        'tGravityAcc.iqr.Z', 'tGravityAcc.entropy.X', 'tGravityAcc.entropy.Y',
        'tGravityAcc.entropy.Z', 'tGravityAcc.arCoeff.X.1',
        'tGravityAcc.arCoeff.X.2', 'tGravityAcc.arCoeff.X.3',
        'tGravityAcc.arCoeff.X.4', 'tGravityAcc.arCoeff.Y.1',
        'tGravityAcc.arCoeff.Y.2', 'tGravityAcc.arCoeff.Y.3',
        'tGravityAcc.arCoeff.Y.4', 'tGravityAcc.arCoeff.Z.1',
        'tGravityAcc.arCoeff.Z.2', 'tGravityAcc.arCoeff.Z.3',
        'tGravityAcc.arCoeff.Z.4', 'tGravityAcc.correlation.X.Y',
        'tGravityAcc.correlation.X.Z', 'tGravityAcc.correlation.Y.Z',
        'tBodyAccJerk.mean.X', 'tBodyAccJerk.mean.Y', 'tBodyAccJerk.mean.Z',
        'tBodyAccJerk.std.X', 'tBodyAccJerk.std.Y', 'tBodyAccJerk.std.Z',
        'tBodyAccJerk.mad.X', 'tBodyAccJerk.mad.Y', 'tBodyAccJerk.mad.Z',
        'tBodyAccJerk.max.X', 'tBodyAccJerk.max.Y', 'tBodyAccJerk.max.Z',
        'tBodyAccJerk.min.X', 'tBodyAccJerk.min.Y', 'tBodyAccJerk.min.Z',
        'tBodyAccJerk.sma', 'tBodyAccJerk.energy.X', 'tBodyAccJerk.energy.Y',
        'tBodyAccJerk.energy.Z', 'tBodyAccJerk.iqr.X', 'tBodyAccJerk.iqr.Y',
        'tBodyAccJerk.iqr.Z', 'tBodyAccJerk.entropy.X',
        'tBodyAccJerk.entropy.Y', 'tBodyAccJerk.entropy.Z',
        'tBodyAccJerk.arCoeff.X.1', 'tBodyAccJerk.arCoeff.X.2',
        'tBodyAccJerk.arCoeff.X.3', 'tBodyAccJerk.arCoeff.X.4',
        'tBodyAccJerk.arCoeff.Y.1', 'tBodyAccJerk.arCoeff.Y.2',
        'tBodyAccJerk.arCoeff.Y.3', 'tBodyAccJerk.arCoeff.Y.4',
        'tBodyAccJerk.arCoeff.Z.1', 'tBodyAccJerk.arCoeff.Z.2',
        'tBodyAccJerk.arCoeff.Z.3', 'tBodyAccJerk.arCoeff.Z.4',
        'tBodyAccJerk.correlation.X.Y', 'tBodyAccJerk.correlation.X.Z',
        'tBodyAccJerk.correlation.Y.Z', 'tBodyGyro.mean.X', 'tBodyGyro.mean.Y',
        'tBodyGyro.mean.Z', 'tBodyGyro.std.X', 'tBodyGyro.std.Y',
        'tBodyGyro.std.Z', 'tBodyGyro.mad.X', 'tBodyGyro.mad.Y',
        'tBodyGyro.mad.Z', 'tBodyGyro.max.X', 'tBodyGyro.max.Y',
        'tBodyGyro.max.Z', 'tBodyGyro.min.X', 'tBodyGyro.min.Y',
        'tBodyGyro.min.Z', 'tBodyGyro.sma', 'tBodyGyro.energy.X',
        'tBodyGyro.energy.Y', 'tBodyGyro.energy.Z', 'tBodyGyro.iqr.X',
        'tBodyGyro.iqr.Y', 'tBodyGyro.iqr.Z', 'tBodyGyro.entropy.X',
        'tBodyGyro.entropy.Y', 'tBodyGyro.entropy.Z', 'tBodyGyro.arCoeff.X.1',
        'tBodyGyro.arCoeff.X.2', 'tBodyGyro.arCoeff.X.3',
        'tBodyGyro.arCoeff.X.4', 'tBodyGyro.arCoeff.Y.1',
        'tBodyGyro.arCoeff.Y.2', 'tBodyGyro.arCoeff.Y.3',
        'tBodyGyro.arCoeff.Y.4', 'tBodyGyro.arCoeff.Z.1',
        'tBodyGyro.arCoeff.Z.2', 'tBodyGyro.arCoeff.Z.3',
        'tBodyGyro.arCoeff.Z.4', 'tBodyGyro.correlation.X.Y',
        'tBodyGyro.correlation.X.Z', 'tBodyGyro.correlation.Y.Z',
        'tBodyGyroJerk.mean.X', 'tBodyGyroJerk.mean.Y', 'tBodyGyroJerk.mean.Z',
        'tBodyGyroJerk.std.X', 'tBodyGyroJerk.std.Y', 'tBodyGyroJerk.std.Z',
        'tBodyGyroJerk.mad.X', 'tBodyGyroJerk.mad.Y', 'tBodyGyroJerk.mad.Z',
        'tBodyGyroJerk.max.X', 'tBodyGyroJerk.max.Y', 'tBodyGyroJerk.max.Z',
        'tBodyGyroJerk.min.X', 'tBodyGyroJerk.min.Y', 'tBodyGyroJerk.min.Z',
        'tBodyGyroJerk.sma', 'tBodyGyroJerk.energy.X', 'tBodyGyroJerk.energy.Y',
        'tBodyGyroJerk.energy.Z', 'tBodyGyroJerk.iqr.X', 'tBodyGyroJerk.iqr.Y',
        'tBodyGyroJerk.iqr.Z', 'tBodyGyroJerk.entropy.X',
        'tBodyGyroJerk.entropy.Y', 'tBodyGyroJerk.entropy.Z',
        'tBodyGyroJerk.arCoeff.X.1', 'tBodyGyroJerk.arCoeff.X.2',
        'tBodyGyroJerk.arCoeff.X.3', 'tBodyGyroJerk.arCoeff.X.4',
        'tBodyGyroJerk.arCoeff.Y.1', 'tBodyGyroJerk.arCoeff.Y.2',
        'tBodyGyroJerk.arCoeff.Y.3', 'tBodyGyroJerk.arCoeff.Y.4',
        'tBodyGyroJerk.arCoeff.Z.1', 'tBodyGyroJerk.arCoeff.Z.2',
        'tBodyGyroJerk.arCoeff.Z.3', 'tBodyGyroJerk.arCoeff.Z.4',
        'tBodyGyroJerk.correlation.X.Y', 'tBodyGyroJerk.correlation.X.Z',
        'tBodyGyroJerk.correlation.Y.Z', 'tBodyAccMag.mean', 'tBodyAccMag.std',
        'tBodyAccMag.mad', 'tBodyAccMag.max', 'tBodyAccMag.min',
        'tBodyAccMag.sma', 'tBodyAccMag.energy', 'tBodyAccMag.iqr',
        'tBodyAccMag.entropy', 'tBodyAccMag.arCoeff1', 'tBodyAccMag.arCoeff2',
        'tBodyAccMag.arCoeff3', 'tBodyAccMag.arCoeff4', 'tGravityAccMag.mean',
        'tGravityAccMag.std', 'tGravityAccMag.mad', 'tGravityAccMag.max',
        'tGravityAccMag.min', 'tGravityAccMag.sma', 'tGravityAccMag.energy',
        'tGravityAccMag.iqr', 'tGravityAccMag.entropy',
        'tGravityAccMag.arCoeff1', 'tGravityAccMag.arCoeff2',
        'tGravityAccMag.arCoeff3', 'tGravityAccMag.arCoeff4',
        'tBodyAccJerkMag.mean', 'tBodyAccJerkMag.std', 'tBodyAccJerkMag.mad',
        'tBodyAccJerkMag.max', 'tBodyAccJerkMag.min', 'tBodyAccJerkMag.sma',
        'tBodyAccJerkMag.energy', 'tBodyAccJerkMag.iqr',
        'tBodyAccJerkMag.entropy', 'tBodyAccJerkMag.arCoeff1',
        'tBodyAccJerkMag.arCoeff2', 'tBodyAccJerkMag.arCoeff3',
        'tBodyAccJerkMag.arCoeff4', 'tBodyGyroMag.mean', 'tBodyGyroMag.std',
        'tBodyGyroMag.mad', 'tBodyGyroMag.max', 'tBodyGyroMag.min',
        'tBodyGyroMag.sma', 'tBodyGyroMag.energy', 'tBodyGyroMag.iqr',
        'tBodyGyroMag.entropy', 'tBodyGyroMag.arCoeff1',
        'tBodyGyroMag.arCoeff2', 'tBodyGyroMag.arCoeff3',
        'tBodyGyroMag.arCoeff4', 'tBodyGyroJerkMag.mean',
        'tBodyGyroJerkMag.std', 'tBodyGyroJerkMag.mad', 'tBodyGyroJerkMag.max',
        'tBodyGyroJerkMag.min', 'tBodyGyroJerkMag.sma',
        'tBodyGyroJerkMag.energy', 'tBodyGyroJerkMag.iqr',
        'tBodyGyroJerkMag.entropy', 'tBodyGyroJerkMag.arCoeff1',
        'tBodyGyroJerkMag.arCoeff2', 'tBodyGyroJerkMag.arCoeff3',
        'tBodyGyroJerkMag.arCoeff4', 'fBodyAcc.mean.X', 'fBodyAcc.mean.Y',
        'fBodyAcc.mean.Z', 'fBodyAcc.std.X', 'fBodyAcc.std.Y', 'fBodyAcc.std.Z',
        'fBodyAcc.mad.X', 'fBodyAcc.mad.Y', 'fBodyAcc.mad.Z', 'fBodyAcc.max.X',
        'fBodyAcc.max.Y', 'fBodyAcc.max.Z', 'fBodyAcc.min.X', 'fBodyAcc.min.Y',
        'fBodyAcc.min.Z', 'fBodyAcc.sma', 'fBodyAcc.energy.X',
        'fBodyAcc.energy.Y', 'fBodyAcc.energy.Z', 'fBodyAcc.iqr.X',
        'fBodyAcc.iqr.Y', 'fBodyAcc.iqr.Z', 'fBodyAcc.entropy.X',
        'fBodyAcc.entropy.Y', 'fBodyAcc.entropy.Z', 'fBodyAcc.maxInds.X',
        'fBodyAcc.maxInds.Y', 'fBodyAcc.maxInds.Z', 'fBodyAcc.meanFreq.X',
        'fBodyAcc.meanFreq.Y', 'fBodyAcc.meanFreq.Z', 'fBodyAcc.skewness.X',
        'fBodyAcc.kurtosis.X', 'fBodyAcc.skewness.Y', 'fBodyAcc.kurtosis.Y',
        'fBodyAcc.skewness.Z', 'fBodyAcc.kurtosis.Z',
        'fBodyAcc.bandsEnergy.1.8', 'fBodyAcc.bandsEnergy.9.16',
        'fBodyAcc.bandsEnergy.17.24', 'fBodyAcc.bandsEnergy.25.32',
        'fBodyAcc.bandsEnergy.33.40', 'fBodyAcc.bandsEnergy.41.48',
        'fBodyAcc.bandsEnergy.49.56', 'fBodyAcc.bandsEnergy.57.64',
        'fBodyAcc.bandsEnergy.1.16', 'fBodyAcc.bandsEnergy.17.32',
        'fBodyAcc.bandsEnergy.33.48', 'fBodyAcc.bandsEnergy.49.64',
        'fBodyAcc.bandsEnergy.1.24', 'fBodyAcc.bandsEnergy.25.48',
        'fBodyAcc.bandsEnergy.1.8.1', 'fBodyAcc.bandsEnergy.9.16.1',
        'fBodyAcc.bandsEnergy.17.24.1', 'fBodyAcc.bandsEnergy.25.32.1',
        'fBodyAcc.bandsEnergy.33.40.1', 'fBodyAcc.bandsEnergy.41.48.1',
        'fBodyAcc.bandsEnergy.49.56.1', 'fBodyAcc.bandsEnergy.57.64.1',
        'fBodyAcc.bandsEnergy.1.16.1', 'fBodyAcc.bandsEnergy.17.32.1',
        'fBodyAcc.bandsEnergy.33.48.1', 'fBodyAcc.bandsEnergy.49.64.1',
        'fBodyAcc.bandsEnergy.1.24.1', 'fBodyAcc.bandsEnergy.25.48.1',
        'fBodyAcc.bandsEnergy.1.8.2', 'fBodyAcc.bandsEnergy.9.16.2',
        'fBodyAcc.bandsEnergy.17.24.2', 'fBodyAcc.bandsEnergy.25.32.2',
        'fBodyAcc.bandsEnergy.33.40.2', 'fBodyAcc.bandsEnergy.41.48.2',
        'fBodyAcc.bandsEnergy.49.56.2', 'fBodyAcc.bandsEnergy.57.64.2',
        'fBodyAcc.bandsEnergy.1.16.2', 'fBodyAcc.bandsEnergy.17.32.2',
        'fBodyAcc.bandsEnergy.33.48.2', 'fBodyAcc.bandsEnergy.49.64.2',
        'fBodyAcc.bandsEnergy.1.24.2', 'fBodyAcc.bandsEnergy.25.48.2',
        'fBodyAccJerk.mean.X', 'fBodyAccJerk.mean.Y', 'fBodyAccJerk.mean.Z',
        'fBodyAccJerk.std.X', 'fBodyAccJerk.std.Y', 'fBodyAccJerk.std.Z',
        'fBodyAccJerk.mad.X', 'fBodyAccJerk.mad.Y', 'fBodyAccJerk.mad.Z',
        'fBodyAccJerk.max.X', 'fBodyAccJerk.max.Y', 'fBodyAccJerk.max.Z',
        'fBodyAccJerk.min.X', 'fBodyAccJerk.min.Y', 'fBodyAccJerk.min.Z',
        'fBodyAccJerk.sma', 'fBodyAccJerk.energy.X', 'fBodyAccJerk.energy.Y',
        'fBodyAccJerk.energy.Z', 'fBodyAccJerk.iqr.X', 'fBodyAccJerk.iqr.Y',
        'fBodyAccJerk.iqr.Z', 'fBodyAccJerk.entropy.X',
        'fBodyAccJerk.entropy.Y', 'fBodyAccJerk.entropy.Z',
        'fBodyAccJerk.maxInds.X', 'fBodyAccJerk.maxInds.Y',
        'fBodyAccJerk.maxInds.Z', 'fBodyAccJerk.meanFreq.X',
        'fBodyAccJerk.meanFreq.Y', 'fBodyAccJerk.meanFreq.Z',
        'fBodyAccJerk.skewness.X', 'fBodyAccJerk.kurtosis.X',
        'fBodyAccJerk.skewness.Y', 'fBodyAccJerk.kurtosis.Y',
        'fBodyAccJerk.skewness.Z', 'fBodyAccJerk.kurtosis.Z',
        'fBodyAccJerk.bandsEnergy.1.8', 'fBodyAccJerk.bandsEnergy.9.16',
        'fBodyAccJerk.bandsEnergy.17.24', 'fBodyAccJerk.bandsEnergy.25.32',
        'fBodyAccJerk.bandsEnergy.33.40', 'fBodyAccJerk.bandsEnergy.41.48',
        'fBodyAccJerk.bandsEnergy.49.56', 'fBodyAccJerk.bandsEnergy.57.64',
        'fBodyAccJerk.bandsEnergy.1.16', 'fBodyAccJerk.bandsEnergy.17.32',
        'fBodyAccJerk.bandsEnergy.33.48', 'fBodyAccJerk.bandsEnergy.49.64',
        'fBodyAccJerk.bandsEnergy.1.24', 'fBodyAccJerk.bandsEnergy.25.48',
        'fBodyAccJerk.bandsEnergy.1.8.1', 'fBodyAccJerk.bandsEnergy.9.16.1',
        'fBodyAccJerk.bandsEnergy.17.24.1', 'fBodyAccJerk.bandsEnergy.25.32.1',
        'fBodyAccJerk.bandsEnergy.33.40.1', 'fBodyAccJerk.bandsEnergy.41.48.1',
        'fBodyAccJerk.bandsEnergy.49.56.1', 'fBodyAccJerk.bandsEnergy.57.64.1',
        'fBodyAccJerk.bandsEnergy.1.16.1', 'fBodyAccJerk.bandsEnergy.17.32.1',
        'fBodyAccJerk.bandsEnergy.33.48.1', 'fBodyAccJerk.bandsEnergy.49.64.1',
        'fBodyAccJerk.bandsEnergy.1.24.1', 'fBodyAccJerk.bandsEnergy.25.48.1',
        'fBodyAccJerk.bandsEnergy.1.8.2', 'fBodyAccJerk.bandsEnergy.9.16.2',
        'fBodyAccJerk.bandsEnergy.17.24.2', 'fBodyAccJerk.bandsEnergy.25.32.2',
        'fBodyAccJerk.bandsEnergy.33.40.2', 'fBodyAccJerk.bandsEnergy.41.48.2',
        'fBodyAccJerk.bandsEnergy.49.56.2', 'fBodyAccJerk.bandsEnergy.57.64.2',
        'fBodyAccJerk.bandsEnergy.1.16.2', 'fBodyAccJerk.bandsEnergy.17.32.2',
        'fBodyAccJerk.bandsEnergy.33.48.2', 'fBodyAccJerk.bandsEnergy.49.64.2',
        'fBodyAccJerk.bandsEnergy.1.24.2', 'fBodyAccJerk.bandsEnergy.25.48.2',
        'fBodyGyro.mean.X', 'fBodyGyro.mean.Y', 'fBodyGyro.mean.Z',
        'fBodyGyro.std.X', 'fBodyGyro.std.Y', 'fBodyGyro.std.Z',
        'fBodyGyro.mad.X', 'fBodyGyro.mad.Y', 'fBodyGyro.mad.Z',
        'fBodyGyro.max.X', 'fBodyGyro.max.Y', 'fBodyGyro.max.Z',
        'fBodyGyro.min.X', 'fBodyGyro.min.Y', 'fBodyGyro.min.Z', 'fBodyGyro.sma',
        'fBodyGyro.energy.X', 'fBodyGyro.energy.Y', 'fBodyGyro.energy.Z',
        'fBodyGyro.iqr.X', 'fBodyGyro.iqr.Y', 'fBodyGyro.iqr.Z',
        'fBodyGyro.entropy.X', 'fBodyGyro.entropy.Y', 'fBodyGyro.entropy.Z',
        'fBodyGyro.maxInds.X', 'fBodyGyro.maxInds.Y', 'fBodyGyro.maxInds.Z',
        'fBodyGyro.meanFreq.X', 'fBodyGyro.meanFreq.Y', 'fBodyGyro.meanFreq.Z',
        'fBodyGyro.skewness.X', 'fBodyGyro.kurtosis.X', 'fBodyGyro.skewness.Y',
        'fBodyGyro.kurtosis.Y', 'fBodyGyro.skewness.Z', 'fBodyGyro.kurtosis.Z',
        'fBodyGyro.bandsEnergy.1.8', 'fBodyGyro.bandsEnergy.9.16',
        'fBodyGyro.bandsEnergy.17.24', 'fBodyGyro.bandsEnergy.25.32',
        'fBodyGyro.bandsEnergy.33.40', 'fBodyGyro.bandsEnergy.41.48',
        'fBodyGyro.bandsEnergy.49.56', 'fBodyGyro.bandsEnergy.57.64',
        'fBodyGyro.bandsEnergy.1.16', 'fBodyGyro.bandsEnergy.17.32',
        'fBodyGyro.bandsEnergy.33.48', 'fBodyGyro.bandsEnergy.49.64',
        'fBodyGyro.bandsEnergy.1.24', 'fBodyGyro.bandsEnergy.25.48',
        'fBodyGyro.bandsEnergy.1.8.1', 'fBodyGyro.bandsEnergy.9.16.1',
        'fBodyGyro.bandsEnergy.17.24.1', 'fBodyGyro.bandsEnergy.25.32.1',
        'fBodyGyro.bandsEnergy.33.40.1', 'fBodyGyro.bandsEnergy.41.48.1',
        'fBodyGyro.bandsEnergy.49.56.1', 'fBodyGyro.bandsEnergy.57.64.1',
        'fBodyGyro.bandsEnergy.1.16.1', 'fBodyGyro.bandsEnergy.17.32.1',
        'fBodyGyro.bandsEnergy.33.48.1', 'fBodyGyro.bandsEnergy.49.64.1',
        'fBodyGyro.bandsEnergy.1.24.1', 'fBodyGyro.bandsEnergy.25.48.1',
        'fBodyGyro.bandsEnergy.1.8.2', 'fBodyGyro.bandsEnergy.9.16.2',
        'fBodyGyro.bandsEnergy.17.24.2', 'fBodyGyro.bandsEnergy.25.32.2',
        'fBodyGyro.bandsEnergy.33.40.2', 'fBodyGyro.bandsEnergy.41.48.2',
        'fBodyGyro.bandsEnergy.49.56.2', 'fBodyGyro.bandsEnergy.57.64.2',
        'fBodyGyro.bandsEnergy.1.16.2', 'fBodyGyro.bandsEnergy.17.32.2',
        'fBodyGyro.bandsEnergy.33.48.2', 'fBodyGyro.bandsEnergy.49.64.2',
        'fBodyGyro.bandsEnergy.1.24.2', 'fBodyGyro.bandsEnergy.25.48.2',
        'fBodyAccMag.mean', 'fBodyAccMag.std', 'fBodyAccMag.mad',
        'fBodyAccMag.max', 'fBodyAccMag.min', 'fBodyAccMag.sma',
        'fBodyAccMag.energy', 'fBodyAccMag.iqr', 'fBodyAccMag.entropy',
        'fBodyAccMag.maxInds', 'fBodyAccMag.meanFreq', 'fBodyAccMag.skewness',
        'fBodyAccMag.kurtosis', 'fBodyBodyAccJerkMag.mean',
        'fBodyBodyAccJerkMag.std', 'fBodyBodyAccJerkMag.mad',
        'fBodyBodyAccJerkMag.max', 'fBodyBodyAccJerkMag.min',
        'fBodyBodyAccJerkMag.sma', 'fBodyBodyAccJerkMag.energy',
        'fBodyBodyAccJerkMag.iqr', 'fBodyBodyAccJerkMag.entropy',
        'fBodyBodyAccJerkMag.maxInds', 'fBodyBodyAccJerkMag.meanFreq',
        'fBodyBodyAccJerkMag.skewness', 'fBodyBodyAccJerkMag.kurtosis',
        'fBodyBodyGyroMag.mean', 'fBodyBodyGyroMag.std', 'fBodyBodyGyroMag.mad',
        'fBodyBodyGyroMag.max', 'fBodyBodyGyroMag.min', 'fBodyBodyGyroMag.sma',
        'fBodyBodyGyroMag.energy', 'fBodyBodyGyroMag.iqr',
        'fBodyBodyGyroMag.entropy', 'fBodyBodyGyroMag.maxInds',
        'fBodyBodyGyroMag.meanFreq', 'fBodyBodyGyroMag.skewness',
        'fBodyBodyGyroMag.kurtosis', 'fBodyBodyGyroJerkMag.mean',
        'fBodyBodyGyroJerkMag.std', 'fBodyBodyGyroJerkMag.mad',
        'fBodyBodyGyroJerkMag.max', 'fBodyBodyGyroJerkMag.min',
        'fBodyBodyGyroJerkMag.sma', 'fBodyBodyGyroJerkMag.energy',
        'fBodyBodyGyroJerkMag.iqr', 'fBodyBodyGyroJerkMag.entropy',
        'fBodyBodyGyroJerkMag.maxInds', 'fBodyBodyGyroJerkMag.meanFreq',
        'fBodyBodyGyroJerkMag.skewness', 'fBodyBodyGyroJerkMag.kurtosis',
        'angle.tBodyAccMean.gravity', 'angle.tBodyAccJerkMean.gravityMean',
        'angle.tBodyGyroMean.gravityMean', 'angle.tBodyGyroJerkMean.gravityMean',
        'angle.X.gravityMean', 'angle.Y.gravityMean', 'angle.Z.gravityMean'
    ],
    target_column_name='activity'
)
Exemplo n.º 17
0
def test_header_feature_column_index_order():
    h = Header(column_names=["a", "b", "c", "d"], target_column_name="c")
    assert h.feature_column_indices == [0, 1, 3]