I have a question related to the `roc_curve`

from `scikit-learn`

for a deep learning exercise, I have noticed that my data has 1 as the positive label. After my training the testing accuracy is coming around 74% but the roc area under curve(AUC) score coming as only as .24.

```
y_pred = model.predict([x_test_real[:, 0],x_test_real[:, 1]])
fpr, tpr, thresholds = metrics.roc_curve(y_test_real, y_pred,pos_label=1)
roc_auc = metrics.auc(fpr, tpr)
print("roc_auc: %0.2f" % roc_auc)
```

If I change the `pos_label`

to 0. The auc score becomes 0.76(obviously)

```
y_pred = model.predict([x_test_real[:, 0],x_test_real[:, 1]])
fpr, tpr, thresholds = metrics.roc_curve(y_test_real, y_pred,pos_label=0)
roc_auc = metrics.auc(fpr, tpr)
print("roc_auc: %0.2f" % roc_auc)
```

Now I ran a small experiment, I changed my training and testing labels(which are binary classification)

```
y_train_real = 1 - y_train_real
y_test_real = 1 - y_test_real
```

like this, which should flip the positive and negative labels from 1 to 0. Then I run my code again. This time expecting the behavior of the roc auc to flip as well. But NO!

```
fpr, tpr, thresholds = metrics.roc_curve(y_test_real, y_pred,pos_label=0)
```

Is still giving .80 and with `pos_label=1`

is giving .2. This is confusing me,

- If I change the positive label in my training target should it not affect the roc_curve auc values??
- Which case is the correct analysis
- Does the output has anything to do with the loss function used? I am solving a binary classification problem of match and not match using "contrastive loss"

Can anyone help me here? :)