Hi.
In general, when we are developing Neural network models, we want to prevent overfitting and we would like to preserve the best state of the model during the training.
Du to this, in general, we use early stopping monitoring metrics on the validation dataset.
However, it is not clear for me which metric is the best for monitoring. In general, I use "val_loss", however, in practice, we are interested in the general accuracy of the model. Due to this, it seems to be better to monitor "val_accuracy".
What do you think about this?