Litcius/Paper detail

Per-object systematics using deep-learned calibration

Gregor Kasieczka, Michel Luchmann, Florian Otterpohl, Tilman Plehn

2020SciPost Physics44 citationsDOIOpen Access PDF

Abstract

We show how to treat systematic uncertainties using Bayesian deep networks for regression. First, we analyze how these networks separately trace statistical and systematic uncertainties on the momenta of boosted top quarks forming fat jets. Next, we propose a novel calibration procedure by training on labels and their error bars. Again, the network cleanly separates the different uncertainties. As a technical side effect, we show how Bayesian networks can be extended to describe non-Gaussian features.

Topics & Concepts

CalibrationBayesian probabilityComputer scienceArtificial intelligenceTRACE (psycholinguistics)GaussianObject (grammar)Machine learningRegressionBayesian networkSystematic errorAlgorithmPattern recognition (psychology)Data miningStatisticsMathematicsPhysicsLinguisticsPhilosophyQuantum mechanicsParticle physics theoretical and experimental studiesGaussian Processes and Bayesian InferenceComputational Physics and Python Applications