The preparations
You will find the code for this example here:
Loading the libraries
To run this example, you need to install the following libraries:
mldatasets
to load the datasetpandas
andnumpy
to manipulate itsklearn
(scikit-learn),xgboost
,aif360
, andlightgbm
to split the data and fit the modelsmatplotlib
,seaborn
, andxai
to visualize the interpretationseconml
anddowhy
for causal inference
You should load all of them first, as follows:
import math import os import mldatasets import pandas as pd import numpy as np from tqdm.notebook import tqdm from sklearn import model_selection, tree import lightgbm as lgb import xgboost as xgb from aif360.datasets import BinaryLabelDataset from aif360.metrics import BinaryLabelDatasetMetric,\ ClassificationMetric from aif360.algorithms...