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Bottom-up and top-down uncertainty quantification for measurements

Tom Burr, S. Croft, Andrea Favalli, Thomas Krieger, Brian Weaver

2020Chemometrics and Intelligent Laboratory Systems13 citationsDOIOpen Access PDF

Topics & Concepts

Measurement uncertaintyUncertainty quantificationCalibrationComputationApproximate Bayesian computationComputer scienceUncertainty reduction theoryObservational errorUncertainty analysisTop-down and bottom-up designStandard deviationBayesian probabilityMeasure (data warehouse)Propagation of uncertaintySystematic errorRandom errorAlgorithmData miningEconometricsStatisticsMathematicsSimulationArtificial intelligenceInferenceMachine learningCommunicationSociologySoftware engineeringFault Detection and Control SystemsScientific Measurement and Uncertainty EvaluationProbabilistic and Robust Engineering Design
Bottom-up and top-down uncertainty quantification for measurements | Litcius