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How can we recover the network state at iteration T

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Arjun Desai
Arjun Desai el 25 de Mayo de 2018
Comentada: Torsten K el 16 de Oct. de 2020
I am using a validation set to determine stop training when the validation loss stops decreasing. I have my validation patience as 3. Assuming that my networks stops training when it has surpassed this patience threshold, during the final 3 validation steps of my network would have been overfitting.
As a result, I want to recover the network state at the step that produced the minimum validation loss. Is there a way to do this?
  2 comentarios
Roberto
Roberto el 15 de En. de 2019
Hi Arjun. I have the same problem. Did you find a solution?
My current solution is keeping track of the best iterations and then re-train the network with the same rng seed and max epoch set in order to stop the training wher the validation loss reached the minimum in the previous training. It's an horrible solution but it's the only way I've found.
Torsten K
Torsten K el 16 de Oct. de 2020
Hi Roberto,
I also have the same problem. Did you find a solution yet? If so, I am very interested how you solved the problem!
Regards
Torsten

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Respuestas (1)

Greg Heath
Greg Heath el 26 de Mayo de 2018
In the distant past I'm pretty sure that I have checked, by using the error plot, that it is done automatically.
Thank you for formally accepting this answer
Greg.
  2 comentarios
Arjun Desai
Arjun Desai el 31 de Mayo de 2018
Hi Greg, I checked with the Mathworks team, and it seems that this is not the case. In fact, the state pf the network that is accepted is the last state before the training stops.
Greg Heath
Greg Heath el 16 de En. de 2019
Editada: Greg Heath el 16 de En. de 2019
I have not verified this but I have the feeling that, in the long run, the difference between stopping at minval and minval + 6 for 15% of the data is not significant w.r.t. performance on the entire dataset.
Greg

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