Ensembling Uncertainty Measures to Improve Safety of Black-Box Classifiers
Tommaso Zoppi,
Andrea Ceccarelli,
Andrea Bondavalli
Abstract:Machine Learning (ML) algorithms that perform classification may predict the wrong class, experiencing misclassifications. It is well-known that misclassifications may have cascading effects on the encompassing system, possibly resulting in critical failures. This paper proposes SPROUT, a Safety wraPper thROugh ensembles of UncertainTy measures, which suspects misclassifications by computing uncertainty measures on the inputs and outputs of a black-box classifier. If a misclassification is detected, SPROUT blo… Show more
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