encrypted_credit_scoring / utils /pre_processing.py
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Impose correct column order in pre-processing
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"""Data pre-processing functions.
The pre-processing steps are heavily inspired by the following notebook :
https://www.kaggle.com/code/rikdifos/credit-card-approval-prediction-using-ml
Additional steps, mostly including renaming some values or features, were added for better user
experience.
"""
import numpy
from sklearn.compose import ColumnTransformer
from sklearn.pipeline import Pipeline
from sklearn.preprocessing import OneHotEncoder, FunctionTransformer, KBinsDiscretizer
def _get_pipeline_replace_one_hot(func, value):
return Pipeline([
("replace", FunctionTransformer(
func,
kw_args={"value": value},
feature_names_out='one-to-one',
)),
("one_hot", OneHotEncoder(),),
])
def _replace_values_geq(column, value):
return numpy.where(column >= value, f"{value}_or_more", column)
def _replace_values_eq(column, value):
for desired_value, values_to_replace in value.items():
column = numpy.where(numpy.isin(column, values_to_replace), desired_value, column)
return column
def get_pre_processors():
pre_processor_user = ColumnTransformer(
transformers=[
(
"replace_num_children",
_get_pipeline_replace_one_hot(_replace_values_geq, 2),
['Num_children']
),
(
"replace_household_size",
_get_pipeline_replace_one_hot(_replace_values_geq, 3),
['Household_size']
),
(
"replace_income_type",
_get_pipeline_replace_one_hot(_replace_values_eq, {"Public Sector": ["Retired", "Student"]}),
['Income_type']
),
(
"replace_education_type",
_get_pipeline_replace_one_hot(_replace_values_eq, {"Higher education": ["Academic degree"]}),
['Education_type']
),
(
"replace_occupation_type_labor",
_get_pipeline_replace_one_hot(
_replace_values_eq,
{
"Labor_work": ["Cleaning staff", "Cooking staff", "Drivers", "Laborers", "Low-wage laborers", "Security staff", "Waiters/barmen staff"],
"Office_work": ["Accountants", "Core staff", "HR staff", "Medicine staff", "Private service staff", "Realty agents", "Sales staff", "Secretaries"],
"High_tech_work": ["Managers", "High skill tech staff", "IT staff"],
},
),
['Occupation_type']
),
('one_hot_housing_fam_status', OneHotEncoder(), ['Housing_type', 'Family_status']),
('qbin_total_income', KBinsDiscretizer(n_bins=3, strategy='quantile', encode="onehot"), ['Total_income']),
('bin_age', KBinsDiscretizer(n_bins=5, strategy='uniform', encode="onehot"), ['Age']),
],
remainder='passthrough',
verbose_feature_names_out=False,
)
pre_processor_third_party = ColumnTransformer(
transformers=[
('bin_years_employed', KBinsDiscretizer(n_bins=5, strategy='uniform', encode="onehot"), ['Years_employed'])
],
remainder='passthrough',
verbose_feature_names_out=False,
)
return pre_processor_user, pre_processor_third_party