def test_partial_dependence_helpers(est, method, target_feature):
    # Check that what is returned by _partial_dependence_brute or
    # _partial_dependence_recursion is equivalent to manually setting a target
    # feature to a given value, and computing the average prediction over all
    # samples.
    # This also checks that the brute and recursion methods give the same
    # output.

    X, y = make_regression(random_state=0)
    # The 'init' estimator for GBDT (here the average prediction) isn't taken
    # into account with the recursion method, for technical reasons. We set
    # the mean to 0 to that this 'bug' doesn't have any effect.
    y = y - y.mean()
    est.fit(X, y)

    # target feature will be set to .5 and then to 123
    features = np.array([target_feature], dtype=np.int32)
    grid = np.array([[.5],
                     [123]])

    if method == 'brute':
        pdp = _partial_dependence_brute(est, grid, features, X,
                                        response_method='auto')
    else:
        pdp = _partial_dependence_recursion(est, grid, features)

    mean_predictions = []
    for val in (.5, 123):
        X_ = X.copy()
        X_[:, target_feature] = val
        mean_predictions.append(est.predict(X_).mean())

    pdp = pdp[0]  # (shape is (1, 2) so make it (2,))
    assert_allclose(pdp, mean_predictions, atol=1e-3)
def test_partial_dependence_helpers(est, method, target_feature):
    # Check that what is returned by _partial_dependence_brute or
    # _partial_dependence_recursion is equivalent to manually setting a target
    # feature to a given value, and computing the average prediction over all
    # samples.
    # This also checks that the brute and recursion methods give the same
    # output.

    X, y = make_regression(random_state=0)
    # The 'init' estimator for GBDT (here the average prediction) isn't taken
    # into account with the recursion method, for technical reasons. We set
    # the mean to 0 to that this 'bug' doesn't have any effect.
    y = y - y.mean()
    est.fit(X, y)

    # target feature will be set to .5 and then to 123
    features = np.array([target_feature], dtype=np.int32)
    grid = np.array([[.5],
                     [123]])

    if method == 'brute':
        pdp = _partial_dependence_brute(est, grid, features, X,
                                        response_method='auto')
    else:
        pdp = _partial_dependence_recursion(est, grid, features)

    mean_predictions = []
    for val in (.5, 123):
        X_ = X.copy()
        X_[:, target_feature] = val
        mean_predictions.append(est.predict(X_).mean())

    pdp = pdp[0]  # (shape is (1, 2) so make it (2,))
    assert_allclose(pdp, mean_predictions, atol=1e-3)