163 lines
5.0 KiB
Python
163 lines
5.0 KiB
Python
"""
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The :mod:`sklearn.datasets` module includes utilities to load datasets,
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including methods to load and fetch popular reference datasets. It also
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features some artificial data generators.
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"""
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import textwrap
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from ._base import (
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clear_data_home,
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get_data_home,
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load_breast_cancer,
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load_diabetes,
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load_digits,
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load_files,
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load_iris,
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load_linnerud,
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load_sample_image,
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load_sample_images,
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load_wine,
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)
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from ._california_housing import fetch_california_housing
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from ._covtype import fetch_covtype
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from ._kddcup99 import fetch_kddcup99
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from ._lfw import fetch_lfw_pairs, fetch_lfw_people
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from ._olivetti_faces import fetch_olivetti_faces
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from ._openml import fetch_openml
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from ._rcv1 import fetch_rcv1
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from ._samples_generator import (
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make_biclusters,
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make_blobs,
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make_checkerboard,
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make_circles,
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make_classification,
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make_friedman1,
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make_friedman2,
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make_friedman3,
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make_gaussian_quantiles,
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make_hastie_10_2,
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make_low_rank_matrix,
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make_moons,
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make_multilabel_classification,
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make_regression,
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make_s_curve,
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make_sparse_coded_signal,
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make_sparse_spd_matrix,
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make_sparse_uncorrelated,
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make_spd_matrix,
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make_swiss_roll,
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)
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from ._species_distributions import fetch_species_distributions
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from ._svmlight_format_io import (
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dump_svmlight_file,
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load_svmlight_file,
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load_svmlight_files,
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)
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from ._twenty_newsgroups import fetch_20newsgroups, fetch_20newsgroups_vectorized
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__all__ = [
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"clear_data_home",
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"dump_svmlight_file",
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"fetch_20newsgroups",
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"fetch_20newsgroups_vectorized",
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"fetch_lfw_pairs",
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"fetch_lfw_people",
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"fetch_olivetti_faces",
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"fetch_species_distributions",
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"fetch_california_housing",
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"fetch_covtype",
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"fetch_rcv1",
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"fetch_kddcup99",
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"fetch_openml",
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"get_data_home",
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"load_diabetes",
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"load_digits",
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"load_files",
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"load_iris",
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"load_breast_cancer",
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"load_linnerud",
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"load_sample_image",
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"load_sample_images",
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"load_svmlight_file",
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"load_svmlight_files",
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"load_wine",
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"make_biclusters",
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"make_blobs",
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"make_circles",
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"make_classification",
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"make_checkerboard",
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"make_friedman1",
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"make_friedman2",
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"make_friedman3",
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"make_gaussian_quantiles",
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"make_hastie_10_2",
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"make_low_rank_matrix",
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"make_moons",
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"make_multilabel_classification",
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"make_regression",
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"make_s_curve",
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"make_sparse_coded_signal",
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"make_sparse_spd_matrix",
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"make_sparse_uncorrelated",
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"make_spd_matrix",
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"make_swiss_roll",
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]
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def __getattr__(name):
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if name == "load_boston":
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msg = textwrap.dedent("""
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`load_boston` has been removed from scikit-learn since version 1.2.
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The Boston housing prices dataset has an ethical problem: as
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investigated in [1], the authors of this dataset engineered a
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non-invertible variable "B" assuming that racial self-segregation had a
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positive impact on house prices [2]. Furthermore the goal of the
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research that led to the creation of this dataset was to study the
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impact of air quality but it did not give adequate demonstration of the
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validity of this assumption.
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The scikit-learn maintainers therefore strongly discourage the use of
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this dataset unless the purpose of the code is to study and educate
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about ethical issues in data science and machine learning.
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In this special case, you can fetch the dataset from the original
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source::
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import pandas as pd
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import numpy as np
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data_url = "http://lib.stat.cmu.edu/datasets/boston"
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raw_df = pd.read_csv(data_url, sep="\\s+", skiprows=22, header=None)
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data = np.hstack([raw_df.values[::2, :], raw_df.values[1::2, :2]])
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target = raw_df.values[1::2, 2]
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Alternative datasets include the California housing dataset and the
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Ames housing dataset. You can load the datasets as follows::
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from sklearn.datasets import fetch_california_housing
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housing = fetch_california_housing()
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for the California housing dataset and::
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from sklearn.datasets import fetch_openml
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housing = fetch_openml(name="house_prices", as_frame=True)
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for the Ames housing dataset.
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[1] M Carlisle.
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"Racist data destruction?"
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<https://medium.com/@docintangible/racist-data-destruction-113e3eff54a8>
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[2] Harrison Jr, David, and Daniel L. Rubinfeld.
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"Hedonic housing prices and the demand for clean air."
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Journal of environmental economics and management 5.1 (1978): 81-102.
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<https://www.researchgate.net/publication/4974606_Hedonic_housing_prices_and_the_demand_for_clean_air>
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""")
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raise ImportError(msg)
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try:
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return globals()[name]
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except KeyError:
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# This is turned into the appropriate ImportError
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raise AttributeError
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