Litcius/Paper detail

Operational calibration: debugging confidence errors for DNNs in the field

Zenan Li, Xiaoxing Ma, Chang Xu, Jingwei Xu, Chun Cao, Jian Lü

202024 citationsDOIOpen Access PDF

Abstract

Trained DNN models are increasingly adopted as integral parts of software systems, but they often perform deficiently in the field. A particularly damaging problem is that DNN models often give false predictions with high confidence, due to the unavoidable slight divergences between operation data and training data. To minimize the loss caused by inaccurate confidence, operational calibration, i.e., calibrating the confidence function of a DNN classifier against its operation domain, becomes a necessary debugging step in the engineering of the whole system.

Topics & Concepts

Computer scienceInterpretabilityDebuggingMachine learningCalibrationClassifier (UML)Artificial intelligenceData miningBayesian probabilityField (mathematics)Gaussian processGaussianStatisticsMathematicsPure mathematicsPhysicsProgramming languageQuantum mechanicsMachine Learning and Data ClassificationSoftware Engineering ResearchAdversarial Robustness in Machine Learning