Parametric PDF for Goodness of Fit

10/25/2022
by   Natan Katz, et al.
0

The goodness of fit methods for classification problems relies traditionally on confusion matrices. This paper aims to enrich these methods with a risk evaluation and stability analysis tools. For this purpose, we present a parametric PDF framework.

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