问题
I am using stratified 10-fold cross validation to find model that predicts y (binary outcome) from X (X has 34 labels) with the highest auc. I set the GridSearchCV:
log_reg = LogisticRegression()
parameter_grid = {'penalty' : ["l1", "l2"],'C': np.arange(0.1, 3, 0.1),}
cross_validation = StratifiedKFold(n_splits=10,shuffle=True,random_state=100)
grid_search = GridSearchCV(log_reg, param_grid = parameter_grid,scoring='roc_auc',
cv = cross_validation)
And then do the cross-validation:
grid_search.fit(X, y)
y_pr=grid_search.predict(X)
I do not understand the following:
why grid_search.score(X,y)
and roc_auc_score(y, y_pr)
give different results (the former is 0.74 and the latter is 0.63)? Why do not these commands do the same thing in my case?
回答1:
This is due to different initialization of roc_auc when used in GridSearchCV.
Look at the source code here
roc_auc_scorer = make_scorer(roc_auc_score, greater_is_better=True,
needs_threshold=True)
Observe the third parameter needs_threshold
. When true, it will require the continous values for y_pred
such as probabilities or confidence scores which in gridsearch will be calculated from log_reg.decision_function()
.
When you explicitly call roc_auc_score
with y_pr
, you are using .predict()
which will output the resultant predicted class labels of the data and not probabilities. That should account for the difference.
Try :
y_pr=grid_search.decision_function(X)
roc_auc_score(y, y_pr)
If still not same results, please update the question with complete code and some sample data.
来源:https://stackoverflow.com/questions/49061575/why-when-i-use-gridsearchcv-with-roc-auc-scoring-the-score-is-different-for-gri