Get input/output gradient of neural network

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Aaron Kandel
Aaron Kandel on 11 Sep 2020
Commented: Ruyue Yang on 22 Jul 2021
Matlab's built in functions in the NN toolbox seem to provide a good set of options for getting the gradient of the network performance wrt the network parameters. Is there a way to get the gradient of the network output with respect to the network input?

Answers (1)

Mahesh Taparia
Mahesh Taparia on 14 Sep 2020
Hi
In general, in any neural network, the network tries to learn the weights which can reduce the cost/ loss function. The gradients are updated iteratively by using the derivative of loss function with respect to weights.
Usually for a fix input, calculating gradients of loss with respect to input is not meaningful because if input is fix, then d(loss)/d(Input) is not defined. If the network is feed with 2 different input sequence, in this case you can find the gradient by calculating (Loss2-Loss1)/(X2-X1), where Loss is the value of network loss with respect to input X. There is no use of this while training the network.
Hope it will helps!
  6 Comments
David Leather
David Leather on 24 Nov 2020
Edited: David Leather on 24 Nov 2020
This seems like an oversight. When applying the trained neural network to other applications, it is essential to be able to evaluate the gradient wrt to the output of the neural network, and not the loss function....
Ruyue Yang
Ruyue Yang on 22 Jul 2021
Get the gradient dy/dx can be really trick for the trained multi-layer neural network (not that deep, maybe 3 or 4 layer). Such function can help a lot for the network's various application.

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