Modifying loss function in neural network to be dependent on previous losses

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Hi. I am training a special neural network and after each iteration I want to modify loss function so that it changes based on loss and fit from iteration right before. How could I do this? I do not need example of code that produces good results, just code thatd does that. A second question, is how do I close automautically graphs that open up while training in matlab, I have tried many solutions I believe would work so pleas eonly answer if you have succedded in this special case yourself.
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Torsten
Torsten el 15 de Abr. de 2025
Editada: Torsten el 15 de Abr. de 2025
For your first question maybe "Dynamic Neural Networks" is the key term if "iteration" stands for "time":
If not, you should explain the reason behind the need to modify the loss function besed on iteration.
Gad Licht
Gad Licht el 16 de Abr. de 2025
Hi, I do nto think that works because its not an RNN, LSTM, or similar. More of a modified CNN. Time changes in loss function are also not dependent on data, but previous losses and fit.

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Matt J
Matt J el 17 de Abr. de 2025

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