custom loss function for DNN training

62 vues (au cours des 30 derniers jours)
Pratheek
Pratheek le 16 Mai 2019
how can i write a custom loss fucntion for DNN training. I want to try reconstruction loss

Réponses (2)

Shounak Mitra
Shounak Mitra le 17 Mai 2019
You can create custom layers and define custom loss functions for output layers.
The output layer uses two functions to compute the loss and the derivatives: forwardLoss and backwardLoss. The forwardLoss function computes the loss L. The backwardLoss function computes the derivatives of the loss with respect to the predictions.
For eg., to write a weighted cross entropy classification loss, try running this in the MATLAB command window
>> edit(fullfile(matlabroot,'examples','deeplearning_shared','main','weightedClassificationLayer.m'))
Hope this helps
  1 commentaire
ghali ahmed
ghali ahmed le 17 Oct 2019
hi!
is there more details for a real implementation :)
thank's

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