Cargando…
Improving Parametric Neural Networks for High-Energy Physics (and Beyond)
Signal-background classification is a central problem in High-Energy Physics (HEP), that plays a major role for the discovery of new fundamental particles. A recent method -- the Parametric Neural Network (pNN) -- leverages multiple signal mass hypotheses as an additional input feature to effectivel...
Autores principales: | , , |
---|---|
Lenguaje: | eng |
Publicado: |
2022
|
Materias: | |
Acceso en línea: | https://dx.doi.org/10.1088/2632-2153/ac917c http://cds.cern.ch/record/2842568 |
_version_ | 1780976247699931136 |
---|---|
author | Anzalone, Luca Diotalevi, Tommaso Bonacorsi, Daniele |
author_facet | Anzalone, Luca Diotalevi, Tommaso Bonacorsi, Daniele |
author_sort | Anzalone, Luca |
collection | CERN |
description | Signal-background classification is a central problem in High-Energy Physics (HEP), that plays a major role for the discovery of new fundamental particles. A recent method -- the Parametric Neural Network (pNN) -- leverages multiple signal mass hypotheses as an additional input feature to effectively replace a whole set of individual classifiers, each providing (in principle) the best response for the corresponding mass hypothesis. In this work we aim at deepening the understanding of pNNs in light of real-world usage. We discovered several peculiarities of parametric networks, providing intuition, metrics, and guidelines to them. We further propose an alternative parametrization scheme, resulting in a new parametrized neural network architecture: the AffinePNN; along with many other generally applicable improvements, like the balanced training procedure. Finally, we extensively and empirically evaluate our models on the HEPMASS dataset, along its imbalanced version (called HEPMASS-IMB) we provide here for the first time, to further validate our approach. Provided results are in terms of the impact of the proposed design decisions, classification performance, and interpolation capability, as well. |
id | cern-2842568 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2022 |
record_format | invenio |
spelling | cern-28425682023-01-31T03:58:12Zdoi:10.1088/2632-2153/ac917chttp://cds.cern.ch/record/2842568engAnzalone, LucaDiotalevi, TommasoBonacorsi, DanieleImproving Parametric Neural Networks for High-Energy Physics (and Beyond)hep-excs.LGParticle Physics - ExperimentComputing and ComputersSignal-background classification is a central problem in High-Energy Physics (HEP), that plays a major role for the discovery of new fundamental particles. A recent method -- the Parametric Neural Network (pNN) -- leverages multiple signal mass hypotheses as an additional input feature to effectively replace a whole set of individual classifiers, each providing (in principle) the best response for the corresponding mass hypothesis. In this work we aim at deepening the understanding of pNNs in light of real-world usage. We discovered several peculiarities of parametric networks, providing intuition, metrics, and guidelines to them. We further propose an alternative parametrization scheme, resulting in a new parametrized neural network architecture: the AffinePNN; along with many other generally applicable improvements, like the balanced training procedure. Finally, we extensively and empirically evaluate our models on the HEPMASS dataset, along its imbalanced version (called HEPMASS-IMB) we provide here for the first time, to further validate our approach. Provided results are in terms of the impact of the proposed design decisions, classification performance, and interpolation capability, as well.arXiv:2202.00424oai:cds.cern.ch:28425682022 |
spellingShingle | hep-ex cs.LG Particle Physics - Experiment Computing and Computers Anzalone, Luca Diotalevi, Tommaso Bonacorsi, Daniele Improving Parametric Neural Networks for High-Energy Physics (and Beyond) |
title | Improving Parametric Neural Networks for High-Energy Physics (and Beyond) |
title_full | Improving Parametric Neural Networks for High-Energy Physics (and Beyond) |
title_fullStr | Improving Parametric Neural Networks for High-Energy Physics (and Beyond) |
title_full_unstemmed | Improving Parametric Neural Networks for High-Energy Physics (and Beyond) |
title_short | Improving Parametric Neural Networks for High-Energy Physics (and Beyond) |
title_sort | improving parametric neural networks for high-energy physics (and beyond) |
topic | hep-ex cs.LG Particle Physics - Experiment Computing and Computers |
url | https://dx.doi.org/10.1088/2632-2153/ac917c http://cds.cern.ch/record/2842568 |
work_keys_str_mv | AT anzaloneluca improvingparametricneuralnetworksforhighenergyphysicsandbeyond AT diotalevitommaso improvingparametricneuralnetworksforhighenergyphysicsandbeyond AT bonacorsidaniele improvingparametricneuralnetworksforhighenergyphysicsandbeyond |