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I am working on a problem where the labels/response variables take the form of #successes / #attempts. Clearly the goodness of the label depends on the number of attempt so I'd like to avoid the model to learn corner cases like y=0, y=1 that essentially occur because not enough attempts have been made.
We generally frame this problem as either a regression task with mse loss and weights given by #attempts or by looking at it as a classification task with label in [0, 1] and weights equal to #attempts - #successes and #successes respectively and trained through binary cross entropy.
Do you have any paper to recommend that tackle this problem?
thanks in advance
The text was updated successfully, but these errors were encountered:
I am working on a problem where the labels/response variables take the form of #successes / #attempts. Clearly the goodness of the label depends on the number of attempt so I'd like to avoid the model to learn corner cases like y=0, y=1 that essentially occur because not enough attempts have been made.
We generally frame this problem as either a regression task with mse loss and weights given by #attempts or by looking at it as a classification task with label in [0, 1] and weights equal to #attempts - #successes and #successes respectively and trained through binary cross entropy.
Do you have any paper to recommend that tackle this problem?
thanks in advance
The text was updated successfully, but these errors were encountered: