ML-Based Analysis of Particle Distributions in High-Intensity Laser Experiments: Role of Binning Strategy.

artificial neural networks fully-connected neural networks laser physics

Journal

Entropy (Basel, Switzerland)
ISSN: 1099-4300
Titre abrégé: Entropy (Basel)
Pays: Switzerland
ID NLM: 101243874

Informations de publication

Date de publication:
25 Dec 2020
Historique:
received: 11 12 2020
revised: 22 12 2020
accepted: 22 12 2020
entrez: 30 12 2020
pubmed: 31 12 2020
medline: 31 12 2020
Statut: epublish

Résumé

When entering the phase of big data processing and statistical inferences in experimental physics, the efficient use of machine learning methods may require optimal data preprocessing methods and, in particular, optimal balance between details and noise. In experimental studies of strong-field quantum electrodynamics with intense lasers, this balance concerns data binning for the observed distributions of particles and photons. Here we analyze the aspect of binning with respect to different machine learning methods (Support Vector Machine (SVM), Gradient Boosting Trees (GBT), Fully-Connected Neural Network (FCNN), Convolutional Neural Network (CNN)) using numerical simulations that mimic expected properties of upcoming experiments. We see that binning can crucially affect the performance of SVM and GBT, and, to a less extent, FCNN and CNN. This can be interpreted as the latter methods being able to effectively learn the optimal binning, discarding unnecessary information. Nevertheless, given limited training sets, the results indicate that the efficiency can be increased by optimizing the binning scale along with other hyperparameters. We present specific measurements of accuracy that can be useful for planning of experiments in the specified research area.

Identifiants

pubmed: 33375733
pii: e23010021
doi: 10.3390/e23010021
pmc: PMC7823469
pii:
doi:

Types de publication

Journal Article

Langues

eng

Subventions

Organisme : Ministry of Science and Higher Education of the Russian Federation
ID : 075-15-2020-808.

Références

Phys Rev E Stat Nonlin Soft Matter Phys. 2015 Aug;92(2):023305
pubmed: 26382544
Proc Natl Acad Sci U S A. 2003 Dec 23;100(26):15324-8
pubmed: 14663152
Genetics. 2002 Dec;162(4):2025-35
pubmed: 12524368
Sci Rep. 2019 May 7;9(1):7043
pubmed: 31065006
Phys Rev Lett. 2017 Mar 10;118(10):105004
pubmed: 28339255
Phys Rep. 2019 May 30;810:1-124
pubmed: 31404441

Auteurs

Yury Rodimkov (Y)

Department of Mathematical Software and Supercomputing Technologies, Lobachevsky University, 603950 Nizhni Novgorod, Russia.

Evgeny Efimenko (E)

Institute of Applied Physics of the Russian Academy of Sciences, 603950 Nizhni Novgorod, Russia.
Department of Mathematical Software and Supercomputing Technologies, Lobachevsky University, 603950 Nizhni Novgorod, Russia.

Valentin Volokitin (V)

Department of Mathematical Software and Supercomputing Technologies, Lobachevsky University, 603950 Nizhni Novgorod, Russia.
Mathematical Center, Lobachevsky University, 603950 Nizhni Novgorod, Russia.

Elena Panova (E)

Department of Mathematical Software and Supercomputing Technologies, Lobachevsky University, 603950 Nizhni Novgorod, Russia.

Alexey Polovinkin (A)

Adv Learning Systems, TDAA, Intel, Chandler, AZ 85226, USA.

Iosif Meyerov (I)

Department of Mathematical Software and Supercomputing Technologies, Lobachevsky University, 603950 Nizhni Novgorod, Russia.
Mathematical Center, Lobachevsky University, 603950 Nizhni Novgorod, Russia.

Arkady Gonoskov (A)

Department of Mathematical Software and Supercomputing Technologies, Lobachevsky University, 603950 Nizhni Novgorod, Russia.
Institute of Applied Physics of the Russian Academy of Sciences, 603950 Nizhni Novgorod, Russia.
Department of Physics, University of Gothenburg, SE-41296 Gothenburg, Sweden.

Classifications MeSH