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tpot_exported_pipeline.py
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tpot_exported_pipeline.py
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import numpy as np
import pandas as pd
from sklearn.ensemble import ExtraTreesClassifier
from sklearn.model_selection import train_test_split
from sklearn.pipeline import make_pipeline
from sklearn.preprocessing import MaxAbsScaler
from tpot.export_utils import set_param_recursive
# NOTE: Make sure that the outcome column is labeled 'target' in the data file
tpot_data = pd.read_csv('PATH/TO/DATA/FILE', sep='COLUMN_SEPARATOR', dtype=np.float64)
features = tpot_data.drop('target', axis=1)
training_features, testing_features, training_target, testing_target = \
train_test_split(features, tpot_data['target'], random_state=42)
# Average CV score on the training set was: 0.9799559410711828
exported_pipeline = make_pipeline(
MaxAbsScaler(),
ExtraTreesClassifier(bootstrap=False, criterion="gini", max_features=0.3, min_samples_leaf=3, min_samples_split=4, n_estimators=100)
)
# Fix random state for all the steps in exported pipeline
set_param_recursive(exported_pipeline.steps, 'random_state', 42)
exported_pipeline.fit(training_features, training_target)
results = exported_pipeline.predict(testing_features)