I want to custom loss function to quantile loss(pinball loss) in XGBRegressor
I use this code
def xgb_quantile_eval(preds, dmatrix, quantile=0.2):
labels = dmatrix.get_label()
return ('q{}_loss'.format(quantile),
np.nanmean((preds >= labels) * (1 - quantile) * (preds - labels) +
(preds < labels) * quantile * (labels - preds)))
def xgb_quantile_obj(preds, dmatrix, quantile=0.2):
try:
assert 0 <= quantile <= 1
except AssertionError:
raise ValueError("Quantile value must be float between 0 and 1.")
labels = dmatrix.get_label()
errors = preds - labels
left_mask = errors < 0
right_mask = errors > 0
grad = -quantile * left_mask + (1 - quantile) * right_mask
hess = np.ones_like(preds)
return grad, hess
And I build model like this
def XGB(q, X_train, Y_train, X_valid, Y_valid, X_test):
# (a) Modeling
model = XGBRegressor(objective=xgb_quantile_obj, alpha=q,
n_estimators=10000, bagging_fraction=0.7, learning_rate=0.027, subsample=0.7)
model.fit(X_train, Y_train, eval_metric = xgb_quantile_eval,
eval_set=[(X_valid, Y_valid)], early_stopping_rounds=300, verbose=500)
# (b) Predictions
pred = pd.Series(model.predict(X_test).round(2))
return model, pred
But I got an error
models_2, results_2 = XGB(0.5, X_train_1, Y_train_1, X_valid_1, Y_valid_1, X_test)
results_2
- AttributeError: 'numpy.ndarray' object has no attribute 'get_label'
I am not sure if I am doing well. Please help me
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