Efficiency Parameterization with Neural Networks

Multidimensional efficiency maps are commonly used in high-energy physics experiments to mitigate the limitations in the generation of large samples of simulated events. Binned efficiency maps are however strongly limited by statistics. We propose a neural network approach to learn ratios of local d...

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Veröffentlicht in:Computing and software for big science 2021-12, Vol.5 (1), Article 14
Hauptverfasser: Di Bello, Francesco Armando, Shlomi, Jonathan, Badiali, Chiara, Frattari, Guglielmo, Gross, Eilam, Ippolito, Valerio, Kado, Marumi
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Sprache:eng
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Zusammenfassung:Multidimensional efficiency maps are commonly used in high-energy physics experiments to mitigate the limitations in the generation of large samples of simulated events. Binned efficiency maps are however strongly limited by statistics. We propose a neural network approach to learn ratios of local densities to estimate in an optimal fashion efficiencies as a function of a set of parameters. Graph neural network techniques are used to account for the high dimensional correlations between different physics objects in the event. We show in a specific toy model how this method is applicable to produce accurate multidimensional efficiency maps for heavy-flavor tagging classifiers in HEP experiments, including for processes on which it was not trained.
ISSN:2510-2036
2510-2044
DOI:10.1007/s41781-021-00059-x