Data-driven model validation for neutrino-nucleus cross section measurements
Neutrino-nucleus cross section measurements are needed to improve interaction modeling to meet the precision needs of neutrino experiments in efforts to measure oscillation parameters and search for physics beyond the Standard Model. We review the difficulties associated with modeling neutrino-nucle...
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Neutrino-nucleus cross section measurements are needed to improve interaction
modeling to meet the precision needs of neutrino experiments in efforts to
measure oscillation parameters and search for physics beyond the Standard
Model. We review the difficulties associated with modeling neutrino-nucleus
interactions that lead to a dependence on event generators in oscillation
analyses and cross section measurements alike. We then describe data-driven
model validation techniques intended to address this model dependence. The
method relies on utilizing various goodness-of-fit tests and the correlations
between different observables and channels to probe the model for defects in
the phase space relevant for the desired analysis. These techniques shed light
on relevant mis-modeling, allowing it to be detected before it begins to bias
the cross section results. We compare more commonly used model validation
methods which directly validate the model against alternative ones to these
data-driven techniques and show their efficacy with fake data studies. These
studies demonstrate that employing data-driven model validation in cross
section measurements represents a reliable strategy to produce robust results
that will stimulate the desired improvements to interaction modeling. |
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DOI: | 10.48550/arxiv.2411.03280 |