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Using neural networks for efficient evaluation of high multiplicity scattering amplitudes
by
Badger, Simon
, Bullock, Joseph
in
Amplitudes
/ Approximation
/ Central processing units
/ Classical and Quantum Gravitation
/ Computer simulation
/ CPUs
/ Data science
/ Elementary Particles
/ High energy physics
/ Interpolation
/ Machine learning
/ Neural networks
/ NLO Computations
/ Phenomenology
/ Physics
/ Physics and Astronomy
/ QCD Phenomenology
/ Quantum Field Theories
/ Quantum Field Theory
/ Quantum Physics
/ Regular Article - Theoretical Physics
/ Relativity Theory
/ Scattering
/ Simulation
/ String Theory
2020
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Using neural networks for efficient evaluation of high multiplicity scattering amplitudes
by
Badger, Simon
, Bullock, Joseph
in
Amplitudes
/ Approximation
/ Central processing units
/ Classical and Quantum Gravitation
/ Computer simulation
/ CPUs
/ Data science
/ Elementary Particles
/ High energy physics
/ Interpolation
/ Machine learning
/ Neural networks
/ NLO Computations
/ Phenomenology
/ Physics
/ Physics and Astronomy
/ QCD Phenomenology
/ Quantum Field Theories
/ Quantum Field Theory
/ Quantum Physics
/ Regular Article - Theoretical Physics
/ Relativity Theory
/ Scattering
/ Simulation
/ String Theory
2020
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Using neural networks for efficient evaluation of high multiplicity scattering amplitudes
by
Badger, Simon
, Bullock, Joseph
in
Amplitudes
/ Approximation
/ Central processing units
/ Classical and Quantum Gravitation
/ Computer simulation
/ CPUs
/ Data science
/ Elementary Particles
/ High energy physics
/ Interpolation
/ Machine learning
/ Neural networks
/ NLO Computations
/ Phenomenology
/ Physics
/ Physics and Astronomy
/ QCD Phenomenology
/ Quantum Field Theories
/ Quantum Field Theory
/ Quantum Physics
/ Regular Article - Theoretical Physics
/ Relativity Theory
/ Scattering
/ Simulation
/ String Theory
2020
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Using neural networks for efficient evaluation of high multiplicity scattering amplitudes
Journal Article
Using neural networks for efficient evaluation of high multiplicity scattering amplitudes
2020
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Overview
A
bstract
Precision theoretical predictions for high multiplicity scattering rely on the evaluation of increasingly complicated scattering amplitudes which come with an extremely high CPU cost. For state-of-the-art processes this can cause technical bottlenecks in the production of fully differential distributions. In this article we explore the possibility of using neural networks to approximate multi-variable scattering amplitudes and provide efficient inputs for Monte Carlo integration. We focus on QCD corrections to
e
+
e
−
→
jets up to one-loop and up to five jets. We demonstrate reliable interpolation when a series of networks are trained to amplitudes that have been divided into sectors defined by their infrared singularity structure. Complete simulations for one-loop distributions show speed improvements of at least an order of magnitude over a standard approach.
Publisher
Springer Berlin Heidelberg,Springer Nature B.V,SpringerOpen
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