2024
DOI: 10.1007/jhep03(2024)117
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Boosting likelihood learning with event reweighting

Siyu Chen,
Alfredo Glioti,
Giuliano Panico
et al.

Abstract: Extracting maximal information from experimental data requires access to the likelihood function, which however is never directly available for complex experiments like those performed at high energy colliders. Theoretical predictions are obtained in this context by Monte Carlo events, which do furnish an accurate but abstract and implicit representation of the likelihood. Strategies based on statistical learning are currently being developed to infer the likelihood function explicitly by training a continuous… Show more

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