so, I would like to calculate the ROC curve and AUC of a code of mine where I have 28 classes and my images can be several at the same time. For example, an image can belong to class 1, 2 and 3 at the same time. I have a vector of 28 positions as a label in y_true and there it is marked with 1 in the position for the class. For example, if an image belongs to class 2, 3 and 5 in positions 2, 3 and 5 of the vector, they will be marked with 1 -> [0,0,1,1,0,1,0,0,0 ,..., 0]
def data_validate(samples, loss, network, f1_class):
x, y_true = samples #x-->valor na matriz, y --> label
x = x.cuda() #to GPU
y_true = y_true.cuda() #to GPU
y_pred = network(x) #aqui executa o forward do model.py dos {batch_size} e retorna o fc
y_pred = torch.sigmoid(y_pred)
erro = loss(y_pred, y_true)
f1_class.acumulate(y_pred.cpu().detach(), y_true.cpu().detach(),th=0.5)
print(y_pred)
for i in range(28):
auc_score = roc_auc_score(y_true[:][i].cpu().detach(), y_pred.cpu().detach(), multi_class='ovr')
return erro, y_pred.cpu().detach(), y_true.cpu().detach()
but I receive that error --> ValueError: Target scores need to be probabilities for multiclass roc_auc, i.e. they should sum up to 1.0 over classes