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OmniFold: A Method to Simultaneously Unfold All Observables

Anders Andreassen, Patrick Komiske, Eric Metodiev, Benjamin Nachman, Jesse Thaler

2020Physical Review Letters161 citationsDOIOpen Access PDF

Abstract

Collider data must be corrected for detector effects ("unfolded") to be compared with many theoretical calculations and measurements from other experiments. Unfolding is traditionally done for individual, binned observables without including all information relevant for characterizing the detector response. We introduce OmniFold, an unfolding method that iteratively reweights a simulated dataset, using machine learning to capitalize on all available information. Our approach is unbinned, works for arbitrarily high-dimensional data, and naturally incorporates information from the full phase space. We illustrate this technique on a realistic jet substructure example from the Large Hadron Collider and compare it to standard binned unfolding methods. This new paradigm enables the simultaneous measurement of all observables, including those not yet invented at the time of the analysis.

Topics & Concepts

ObservableSubstructureDetectorPhysicsLarge Hadron ColliderColliderParticle physicsPhase spaceComputer scienceData-drivenStatistical physicsAlgorithmArtificial intelligenceQuantum mechanicsOpticsStructural engineeringEngineeringParticle physics theoretical and experimental studiesHigh-Energy Particle Collisions ResearchParticle Detector Development and Performance
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