使用Xgboost时出现错误 TypeError: 'str' object is not callable
在Xgboost进行调参代码时,出现错误,TypeError: 'str' object is not callable
def modelfit(alg,dtrain,predictors,useTrainCV=True,cv_folds=5,early_stopping_rounds=50):
if useTrainCV:
xgb_param = alg.get_xgb_params()
xgbtrain = xgb.DMatrix(dtrain[predictors].values,label=dtrain[target].values)
cvresult = xgb.cv(xgb_param,xgbtrain,num_boost_round=alg.get_params()['n_estimators'],
nfold=cv_folds,metrics='auc',early_stopping_rounds=early_stopping_rounds,
show_stdv=False)
alg.set_params(n_estimators=cvresult.shape[0])
# Fit the algorithm on the data
alg.fit(dtrain[predictors],dtrain['FLAG'],eval_metric='auc')
#Predict training set:
dtrain_predictions = alg.predict(dtrain[predictors])
dtrain_predprob = alg.predict_proba(dtrain[predictors])[:,1]
#Print model report:
print("\nModel Report")
print("Accuracy : %.4g" % metrics.accuracy_score(dtrain['FLAG'].values, dtrain_predictions))
print("AUC Score (Train): %f" % metrics.roc_auc_score(dtrain['FLAG'], dtrain_predprob))
print('sucessful')
feat_imp = pd.Series(alg.booster().get_fscore()).sort_values(ascending=False)
feat_imp.plot(kind='bar', title='Feature Importances')
plt.ylabel('Feature Importance Score')
解决方法:
将代码中的 alg.booster() 改成alg.get_booster() 即可。
既然无论如何时间都会过去,为什么不选择做些有意义的事情呢
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