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      Neural Networks for Full Phase-space Reweighting and Parameter Tuning

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          Abstract

          Precise scientific analysis in collider-based particle physics is possible because of complex simulations that connect fundamental theories to observable quantities. The significant computational cost of these programs limits the scope, precision, and accuracy of Standard Model measurements and searches for new phenomena. We therefore introduce Deep neural networks using Classification for Tuning and Reweighting (DCTR), a neural network-based approach to reweight and fit simulations using the full phase space. DCTR can perform tasks that are currently not possible with existing methods, such as estimating non-perturbative fragmentation uncertainties. The core idea behind the new approach is to exploit powerful high-dimensional classifiers to reweight phase space as well as to identify the best parameters for describing data. Numerical examples from \(e^+e^-\rightarrow\text{jets}\) demonstrate the fidelity of these methods for simulation parameters that have a big and broad impact on phase space as well as those that have a minimal and/or localized impact. The high fidelity of the full phase-space reweighting enables a new paradigm for simulations, parameter tuning, and model systematic uncertainties across particle physics and possibly beyond.

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          Author and article information

          Journal
          18 July 2019
          Article
          1907.08209
          6069893e-24d5-469f-97c7-1ac374d28e27

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          7 pages, 3 figures
          hep-ph hep-ex stat.ML

          High energy & Particle physics,Machine learning
          High energy & Particle physics, Machine learning

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