in zero_inflated_lognormal.py line 76: ``` regression_loss = -tf.keras.backend.mean( positive * tfd.LogNormal(loc=loc, scale=scale).log_prob(safe_labels), axis=-1) return classification_loss + regression_loss ``` In the paper, the Loss equals CrossEntropyLoss + LogNormalLoss, so why there is a minus in front of the LogNormalLoss?
in zero_inflated_lognormal.py line 76:
In the paper, the Loss equals CrossEntropyLoss + LogNormalLoss, so why there is a minus in front of the LogNormalLoss?