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Probabilistic calibration of a binary classifier, applied to detecting sleeping state in a car drive
  • Paolo Giudici,
  • Giulia Villone
Paolo Giudici
Xperi Corporation Galway

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Giulia Villone
Xperi Corporation Galway
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Abstract

Predictions arising from deep neural networks may be very accurate but not very robust, leading to uncertainty in their outcome. This critical problem is receiving growing attention from the Machine Learning (ML) community. A practical solution that is increasingly applied is calculating confidence bounds for the ML predictions. Most confidence bounds available in the literature are theoretically sound but unfeasible from a practical viewpoint. In this paper, we contribute to the literature with probabilistic confidence bounds based on conditional probabilities, and we demonstrate their operational validity by means of a real-world application that concerns the prediction of the sleeping states of car drivers.
06 Mar 2024Submitted to Expert Systems
12 Mar 2024Assigned to Editor
12 Mar 2024Submission Checks Completed
20 Mar 2024Reviewer(s) Assigned