Extraction of Drell–Yan Angular Coefficients Using Neural Ratio Estimation in $pp$ Collisions at 120 GeV Beam Energy
ORAL
Abstract
Bayesian inference offers a principled and robust framework for parameter estimation and uncertainty quantification across a wide range of scientific applications. However, conventional approaches require explicit likelihood functions, which are often analytically intractable in realistic experimental conditions. To address this, we employ ``simulation-based inference" (SBI), a ``likelihood-free" approach that leverages simulations to estimate posterior distributions. Specifically, we use neural classifiers to approximate the likelihood-to-evidence ratio, enabling efficient posterior sampling. We apply this methodology to extract dimuon decay angular distribution coefficients in the Drell–Yan process using LH$_{2}$ target data from the E906/SeaQuest experiment. The results demonstrate that SBI can provide robust and scalable inference for complex particle physics observables.
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Presenters
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Dinupa Nawarathne
New Mexico State University
Authors
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Dinupa Nawarathne
New Mexico State University
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Vassili Papavassiliou
New Mexico State University
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Stephen Pate
New Mexico State University
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Harsha Arachchige
New Mexico State University
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Huma Haider
New Mexico State University