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  • #100

Closed
Open
Created Oct 23, 2020 by Oliver Kirsebom@kirsebomOwner

Neural net calibration

This paper describes a straightforward approach (Platt/Temperature scaling) to ``calibrating'' neural networks so that the output scores correspond more closely to probabilities/confidences.

It would be desirable to have this approach implemented in the next release of Ketos!

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