Abstract
Abstract
Estimating the impact of systematic uncertainties in particle physics experiments is
challenging, especially since the detector response is unknown analytically in most situations and
needs to be estimated through Monte Carlo (MC) simulations. Typically, detector property
variations are parameterized in ways that implicitly assume a specific physics model, which can
introduce biases on quantities measured by an analysis. In this paper, we present a method to
recover a model-independent, event-wise estimation of the detector response variation by applying
a likelihood-free inference method to a set of MC simulations representing discrete detector
realizations. The method provides a re-weighting scheme for every event, which can be used to
apply the effects of detector property variations fully decoupled from the assumed physics model.
Using a toy MC example inspired by fixed-baseline neutrino oscillation experiments, we demonstrate
the performance of our method. We show that it fully decouples the modeling of the detector
response from the physics parameters to be measured in a MC forward-folding analysis.
Subject
Mathematical Physics,Instrumentation
Cited by
1 articles.
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