Beispiel #1
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def test_BaseRRegressor_without_p(generate_regression_data):
    y, X, treatment, tau, b, e = generate_regression_data()

    learner = BaseRRegressor(learner=XGBRegressor())

    # check the accuracy of the ATE estimation
    ate_p, lb, ub = learner.estimate_ate(X=X, treatment=treatment, y=y)
    assert (ate_p >= lb) and (ate_p <= ub)
    assert ape(tau.mean(), ate_p) < ERROR_THRESHOLD

    # check the accuracy of the CATE estimation with the bootstrap CI
    cate_p, _, _ = learner.fit_predict(X=X,
                                       treatment=treatment,
                                       y=y,
                                       return_ci=True,
                                       n_bootstraps=10)

    auuc_metrics = pd.DataFrame({
        'cate_p': cate_p.flatten(),
        'W': treatment,
        'y': y,
        'treatment_effect_col': tau
    })

    cumgain = get_cumgain(auuc_metrics,
                          outcome_col='y',
                          treatment_col='W',
                          treatment_effect_col='tau')

    # Check if the cumulative gain when using the model's prediction is
    # higher than it would be under random targeting
    assert cumgain['cate_p'].sum() > cumgain['Random'].sum()
Beispiel #2
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def test_BaseRRegressor_without_p(generate_regression_data):
    y, X, treatment, tau, b, e = generate_regression_data()

    learner = BaseRRegressor(learner=XGBRegressor())

    # check the accuracy of the ATE estimation
    ate_p, lb, ub = learner.estimate_ate(X=X, treatment=treatment, y=y)
    assert (ate_p >= lb) and (ate_p <= ub)
    assert ape(tau.mean(), ate_p) < ERROR_THRESHOLD

    # check the accuracy of the CATE estimation with the bootstrap CI
    cate_p, _, _ = learner.fit_predict(X=X, treatment=treatment, y=y, return_ci=True, n_bootstraps=10)
    assert gini(tau, cate_p.flatten()) > .5
Beispiel #3
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def test_BaseRRegressor(generate_regression_data):
    y, X, treatment, tau, b, e = generate_regression_data()

    learner = BaseRRegressor(learner=XGBRegressor())

    # check the accuracy of the ATE estimation
    ate_p, lb, ub = learner.estimate_ate(X=X, treatment=treatment, y=y, p=e)
    assert (ate_p >= lb) and (ate_p <= ub)
    assert ape(tau.mean(), ate_p) < ERROR_THRESHOLD

    # check pre-train model
    ate_p_pt, lb_pt, ub_pt = learner.estimate_ate(X=X,
                                                  treatment=treatment,
                                                  y=y,
                                                  p=e,
                                                  pretrain=True)
    assert (ate_p_pt == ate_p) and (lb_pt == lb) and (ub_pt == ub)

    # check the accuracy of the CATE estimation with the bootstrap CI
    cate_p, _, _ = learner.fit_predict(X=X,
                                       treatment=treatment,
                                       y=y,
                                       p=e,
                                       return_ci=True,
                                       n_bootstraps=10)

    auuc_metrics = pd.DataFrame({
        "cate_p": cate_p.flatten(),
        "W": treatment,
        "y": y,
        "treatment_effect_col": tau,
    })

    cumgain = get_cumgain(auuc_metrics,
                          outcome_col="y",
                          treatment_col="W",
                          treatment_effect_col="tau")

    # Check if the cumulative gain when using the model's prediction is
    # higher than it would be under random targeting
    assert cumgain["cate_p"].sum() > cumgain["Random"].sum()