Neural Network Loss Function: Mean (absolute) Cubic Error

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ThomasP
ThomasP el 21 de Mzo. de 2022
Editada: ThomasP el 21 de Mzo. de 2022
Hello,
for my neural network, it's very important to not have a high error-range, i.e. a higher mean-error is better than a higher error-range.
That's why I'd like to implement a different loss function. My network has a regressionLayer Output which computes loss based on mean squared error. To increase the weight of errors that lie further away, I'd like to change that into a mean cubic error.
The standard loss function of the regression Layer is and I'd like to perform a tiny change to or alternatively .
Is that possible in a not so complicated way?
Thank you for your help in advance,
Best regards

Respuestas (1)

Torsten
Torsten el 21 de Mzo. de 2022
You want the error to be negative if t_i < y_i ?
This won't work: The loss function should always be non-negative.
  1 comentario
ThomasP
ThomasP el 21 de Mzo. de 2022
oh true, thanks, then it has to be either or the absolute value

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