Source code for libuplift.datasets.Information

"""The marketing campaign dataset from the CRAN Information package by
Kim Larsen.

See: https://cran.r-project.org/web/packages/Information/index.html
for details.

"""

import numpy as np

from .base import _fetch_remote_csv
from .base import RemoteFileMetadata


ARCHIVE_T = RemoteFileMetadata(
    filename="Information_train.csv.gz",
    url=('https://github.com/jszymon/uplift_sklearn_data/'
         'releases/download/Information/Information_train.csv.gz'),
    checksum=('7632536786357871de3f2438dbbe6c70'
              '17829b2d244b2878dba9fb11af0a449b'))
ARCHIVE_V = RemoteFileMetadata(
    filename="Information_valid.csv.gz",
    url=('https://github.com/jszymon/uplift_sklearn_data/'
         'releases/download/Information/Information_valid.csv.gz'),
    checksum=('96b1773bc9fea564de03d412b936b32a'
              'b5d3b1a9f7338dbb59aa6f918806fe66'))


[docs] def fetch_Information(version="train", data_home=None, download_if_missing=True, random_state=None, shuffle=False, categ_as_strings=False, return_X_y=False, as_frame=False): """Load the marketing campaign dataset from the CRAN Information package by Kim Larsen. See: https://cran.r-project.org/web/packages/Information/index.html Two datasets are available: "train" and "validation". Use version argument to select. Download it if necessary. Parameters ---------- data_home : string, optional 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 : boolean, 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. random_state : int, RandomState instance or None (default) Determines random number generation for dataset shuffling. Pass an int for reproducible output across multiple function calls. shuffle : bool, default=False Whether to shuffle dataset. categ_as_strings : bool, default=False Whether to return categorical variables as strings. return_X_y : boolean, default=False. If True, returns ``(data.data, data.target)`` instead of a Bunch object. as_frame : boolean, default=False If True features are returned as pandas DataFrame. If False features are returned as object or float array. Float array is returned if all features are floats. Returns ------- dataset : dict-like object with the following attributes: dataset.data : numpy array Each row corresponds to the features in the dataset. dataset.target : numpy array Each value is 1 if a purchase was made 0 otherwise. dataset.DESCR : string Description of the dataset. (data, target_conversion, target_visit, target_exposure) : tuple if ``return_X_y`` is True """ # dictionaries treatment_values = ['control', 'treated'] categ_values = dict() # attribute descriptions treatment_descr = [("treatment", np.int32, "TREATMENT")] target_descr = [("target", np.int32, "PURCHASE"), ] feature_descr = [('AGE', float), ('AGRGT_BAL_ALL_XCLD_MRTG', float), ('AUTO_2_OPEN_DATE_YRS', float), ('AUTO_HI_CRDT_2_ACTUAL', float), ('AVG_BAL_ALL_FNC_REV_ACTS', float), ('AVG_BAL_ALL_PRM_BC_ACTS', float), ('D_DEPTCARD', float), ('D_NA_AVG_BAL_ALL_FNC_REV_ACTS', float), ('D_NA_M_SNCOLDST_BNKINSTL_ACTOPN', float), ('D_NA_M_SNC_MST_RCNT_ACT_OPN', float), ('D_NA_M_SNC_MST_RCNT_MRTG_DEAL', float), ('D_NA_M_SNC_OLDST_MRTG_ACT_OPN', float), ('D_NA_RATIO_PRSNL_FNC_BAL2HICRDT', float), ('D_REGION_A', float), ('D_REGION_B', float), ('D_REGION_C', float), ('FNC_CARD_OPEN_DATE_YRS', float), ('HI_RETAIL_CRDT_LMT', float), ('MAX_MRTG_CLOSE_DATE', float), ('MRTG_1_MONTHLY_PAYMENT', float), ('MRTG_2_CURRENT_BAL', float), ('M_SNCOLDST_BNKINSTL_ACTOPN', float), ('M_SNCOLDST_OIL_NTN_TRD_OPN', float), ('M_SNC_MSTRCNT_MRTG_ACT_UPD', float), ('M_SNC_MSTREC_INSTL_TRD_OPN', float), ('M_SNC_MST_RCNT_60_DAY_RTNG', float), ('M_SNC_MST_RCNT_ACT_OPN', float), ('M_SNC_MST_RCNT_MRTG_DEAL', float), ('M_SNC_OLDST_MRTG_ACT_OPN', float), ('M_SNC_OLDST_RETAIL_ACT_OPN', float), ('N30D_ORWRS_RTNG_MRTG_ACTS', float), ('N_120D_RATINGS', float), ('N_30D_AND_60D_RATINGS', float), ('N_30D_RATINGS', float), ('N_ACTS_90D_PLS_LTE_IN_6M', float), ('N_ACTS_WITH_MXD_3_IN_24M', float), ('N_ACTS_WITH_MXD_4_IN_24M', float), ('N_BANK_INSTLACTS', float), ('N_BC_ACTS_OPN_IN_12M', float), ('N_BC_ACTS_OPN_IN_24M', float), ('N_DEROG_PUB_RECS', float), ('N_DISPUTED_ACTS', float), ('N_FNC_ACTS_OPN_IN_12M', float), ('N_FNC_ACTS_VRFY_IN_12M', float), ('N_FNC_INSTLACTS', float), ('N_INQUIRIES', float), ('N_OF_MRTG_ACTS_DLINQ_24M', float), ('N_OF_SATISFY_FNC_REV_ACTS', float), ('N_OPEN_REV_ACTS', float), ('N_PUB_REC_ACT_LINE_DEROGS', float), ('N_RETAIL_ACTS_OPN_IN_24M', float), ('N_SATISFY_INSTL_ACTS', float), ('N_SATISFY_OIL_NATIONL_ACTS', float), ('N_SATISFY_PRSNL_FNC_ACTS', float), ('PRCNT_OF_ACTS_NEVER_DLQNT', float), ('PREM_BANKCARD_CRED_LMT', float), ('RATIO_BAL_TO_HI_CRDT', float), ('RATIO_PRSNL_FNC_BAL2HICRDT', float), ('RATIO_RETAIL_BAL2HI_CRDT', float), ('STUDENT_HI_CRED_RANGE', float), ('STUDENT_OPEN_DATE_YRS', float), ('TOT_BAL_ALL_DPT_STORE_ACTS', float), ('TOT_HI_CRDT_CRDT_LMT', float), ('TOT_INSTL_HI_CRDT_CRDT_LMT', float), ('TOT_NOW_LTE', float), ('TOT_OTHRFIN_HICRDT_CRDTLMT', float), ('UPSCALE_OPEN_DATE_YRS', float), ] if version == "train": arch = ARCHIVE_T elif version == "valid": arch = ARCHIVE_V else: raise ValueError("Wrong Information dataset version." " Got '{version}', expected 'train' or 'valid'.") ret = _fetch_remote_csv(arch, "Information", feature_attrs=feature_descr, treatment_attrs=treatment_descr, target_attrs=target_descr, categ_as_strings=categ_as_strings, return_X_y=return_X_y, as_frame=as_frame, download_if_missing=download_if_missing, random_state=random_state, shuffle=shuffle, total_attrs=69, all_num=True ) if not return_X_y: ret.descr = __doc__ return ret