Inferring flavor mixtures in multijet events
Ezequiel Alvarez, Yuling Yao

TL;DR
This paper introduces a Bayesian mixture model approach to accurately infer flavor compositions in multijet events at the LHC, overcoming systematic uncertainties of traditional methods by modeling complex, nonparametric score distributions.
Contribution
The authors develop a flexible, nonparametric Bayesian method that infers flavor mixtures and score distributions simultaneously, improving robustness and efficiency over existing techniques.
Findings
Successfully recovered true mixture fractions with few hundred events
Eliminated need for parametric assumptions in score distribution modeling
Demonstrated robustness against model misspecification
Abstract
Multijet events with heavy-flavors are of central importance at the LHC since many relevant processes -- such as , , and others -- have a preferred branching ratio for this final state. Current techniques for tackling these processes use hard-assignment selections through -tagging working points, and suffer from systematic uncertainties because of the difficulties in Monte Carlo simulations. We develop a flexible Bayesian mixture model approach to simultaneously infer -tagging score distributions and the flavor mixture composition in the dataset. We model multidimensional jet events, and to enhance estimation efficiency, we design structured priors that leverages the continuity and unimodality of the -tagging score distributions. Remarkably, our method eliminates the need for a parametric assumption and is robust against model misspecification -- It…
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Taxonomy
TopicsCombustion and flame dynamics
