I have two data sets that looks like this:
DATASET 1
Training (Class 0: 8982, Class 1: 380)
Testing (Class 0: 574, Class 1: 12)
DATASET 2
Training (Class 0: 8982, Class 1: 380)
Testing (Class 0: 574, Class 1: 8)
I am trying to build a deep feedforward neural net in Tensorflow. I get accuracies in the 90s and AUC scores in the 80s. Of course, the data set is heavily imbalanced so those metrics are useless. My emphasis is on getting a good recall value and I do not want to oversample the Class 1. I have toyed with the complexity of the model to no avail, the best model predicted only 25% of the positive class correctly.
My question is, considering the distribution of these data sets, is it a futile move to build models without getting more data(I can't get more data) or there's a way around getting to work with data that is this much imbalanced.
Thanks!