"""California housing dataset. The original database is available from StatLib http://lib.stat.cmu.edu/datasets/ The data contains 20,640 observations on 9 variables. This dataset contains the average house value as target variable and the following input variables (features): average income, housing average age, average rooms, average bedrooms, population, average occupation, latitude, and longitude in that order. References ---------- Pace, R. Kelley and Ronald Barry, Sparse Spatial Autoregressions, Statistics and Probability Letters, 33 (1997) 291-297. """ # Authors: Peter Prettenhofer # License: BSD 3 clause from os.path import dirname, exists, join from os import makedirs, remove import tarfile import numpy as np import logging import joblib from . import get_data_home from ._base import _convert_data_dataframe from ._base import _fetch_remote from ._base import _pkl_filepath from ._base import RemoteFileMetadata from ..utils import Bunch from ..utils.validation import _deprecate_positional_args # The original data can be found at: # https://www.dcc.fc.up.pt/~ltorgo/Regression/cal_housing.tgz ARCHIVE = RemoteFileMetadata( filename='cal_housing.tgz', url='https://ndownloader.figshare.com/files/5976036', checksum=('aaa5c9a6afe2225cc2aed2723682ae40' '3280c4a3695a2ddda4ffb5d8215ea681')) logger = logging.getLogger(__name__) @_deprecate_positional_args def fetch_california_housing(*, data_home=None, download_if_missing=True, return_X_y=False, as_frame=False): """Load the California housing dataset (regression). ============== ============== Samples total 20640 Dimensionality 8 Features real Target real 0.15 - 5. ============== ============== Read more in the :ref:`User Guide `. Parameters ---------- data_home : optional, default: None Specify another download and cache folder for the datasets. By default all scikit-learn data is stored in '~/scikit_learn_data' subfolders. download_if_missing : optional, default=True If False, raise a IOError if the data is not locally available instead of trying to download the data from the source site. return_X_y : boolean, default=False. If True, returns ``(data.data, data.target)`` instead of a Bunch object. .. versionadded:: 0.20 as_frame : boolean, default=False If True, the data is a pandas DataFrame including columns with appropriate dtypes (numeric, string or categorical). The target is a pandas DataFrame or Series depending on the number of target_columns. .. versionadded:: 0.23 Returns ------- dataset : :class:`~sklearn.utils.Bunch` Dictionary-like object, with the following attributes. data : ndarray, shape (20640, 8) Each row corresponding to the 8 feature values in order. If ``as_frame`` is True, ``data`` is a pandas object. target : numpy array of shape (20640,) Each value corresponds to the average house value in units of 100,000. If ``as_frame`` is True, ``target`` is a pandas object. feature_names : list of length 8 Array of ordered feature names used in the dataset. DESCR : string Description of the California housing dataset. (data, target) : tuple if ``return_X_y`` is True .. versionadded:: 0.20 frame : pandas DataFrame Only present when `as_frame=True`. DataFrame with ``data`` and ``target``. .. versionadded:: 0.23 Notes ----- This dataset consists of 20,640 samples and 9 features. """ data_home = get_data_home(data_home=data_home) if not exists(data_home): makedirs(data_home) filepath = _pkl_filepath(data_home, 'cal_housing.pkz') if not exists(filepath): if not download_if_missing: raise IOError("Data not found and `download_if_missing` is False") logger.info('Downloading Cal. housing from {} to {}'.format( ARCHIVE.url, data_home)) archive_path = _fetch_remote(ARCHIVE, dirname=data_home) with tarfile.open(mode="r:gz", name=archive_path) as f: cal_housing = np.loadtxt( f.extractfile('CaliforniaHousing/cal_housing.data'), delimiter=',') # Columns are not in the same order compared to the previous # URL resource on lib.stat.cmu.edu columns_index = [8, 7, 2, 3, 4, 5, 6, 1, 0] cal_housing = cal_housing[:, columns_index] joblib.dump(cal_housing, filepath, compress=6) remove(archive_path) else: cal_housing = joblib.load(filepath) feature_names = ["MedInc", "HouseAge", "AveRooms", "AveBedrms", "Population", "AveOccup", "Latitude", "Longitude"] target, data = cal_housing[:, 0], cal_housing[:, 1:] # avg rooms = total rooms / households data[:, 2] /= data[:, 5] # avg bed rooms = total bed rooms / households data[:, 3] /= data[:, 5] # avg occupancy = population / households data[:, 5] = data[:, 4] / data[:, 5] # target in units of 100,000 target = target / 100000.0 module_path = dirname(__file__) with open(join(module_path, 'descr', 'california_housing.rst')) as dfile: descr = dfile.read() X = data y = target frame = None target_names = ["MedHouseVal", ] if as_frame: frame, X, y = _convert_data_dataframe("fetch_california_housing", data, target, feature_names, target_names) if return_X_y: return X, y return Bunch(data=X, target=y, frame=frame, target_names=target_names, feature_names=feature_names, DESCR=descr)