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Compute attributions w.r.t the predicted logit, not the predicted loss #4882
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The trouble with doing it this way is that it hard-codes assumptions about the model's outputs which may not be true. The test failure you're getting is because of this. This method has to be generic enough to work for any model. This is ok when we query the
loss
key, because that key is already required by theTrainer
. Nothing else is guaranteed to be in the output, so we can't hard-code anything else.Maybe a better way of accomplishing what you want is to allow the caller to specify the output key, with a default value of "loss". Then it would be the model's responsibility make sure that the value in the key is a single number on which we can call
.backward()
. E.g., you could imagine adding atarget_logit
key in your model class, and then use that key when callingget_gradients()
.We could get by with less model modification if we add a second flag that says whether to take an argmax of the values in that key, but that gets a bit messy, because then you're always getting gradients of the model's prediction, completely ignoring whatever label was given in the input instance. This breaks a lot of assumptions in other methods in the code (which I think is what you were referring to when you said this breaks hotflip), so I don't really like this option.
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Thanks for the feedback! I agree that using a key is straightforward. I'll refactor.