I'm trying to train a model with PyTorch. Is there any simple way to create a loss like weighted_cross_entropy_with_logits from Tensorflow?

There are pos_weight argument in weighted_cross_entropy_with_logits that can help with balancing. But there are only weights for labels in the list of arguments in BCEWithLogitsLoss.

  • BTW I've implemented pos_weight and the corresponding pull request was merged into PyTorch 0.4.1. See the docs
    – velikodniy
    Aug 20, 2018 at 23:39

1 Answer 1


You can write your own custom loss function as you want. For example, you can write:

def weighted_cross_entropy_with_logits(logits, target, pos_weight):
    return targets * -logits.sigmoid().log() * pos_weight + 
               (1 - targets) * -(1 - logits.sigmoid()).log()

This is a basic implementation. You should follow the steps mentioned here to ensure stability and avoid overflow. Just use the final formulation that they derived.

  • But for single data-point, I want loss to be a scalar. For Example True Label: [0,0,0,1,0,1] and predicted output is logits: [0.01, -2.67, -1.03, -3.67, 0.87,-1.11] for this weighted_cross_entropy_with_logits should return single value of loss?
    – MAC
    Sep 8, 2021 at 11:14

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