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Event Generation and Statistical Sampling with Deep Generative Models

<!--HTML-->We present a study for the generation of events from a physical process with generative deep learning. To simulate physical processes it is not only important to produce physical events, but also to produce the events with the right frequency of occurrence (density). We investigate...

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Detalles Bibliográficos
Autor principal: Otten, Sydney
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2672120
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author Otten, Sydney
author_facet Otten, Sydney
author_sort Otten, Sydney
collection CERN
description <!--HTML-->We present a study for the generation of events from a physical process with generative deep learning. To simulate physical processes it is not only important to produce physical events, but also to produce the events with the right frequency of occurrence (density). We investigate the feasibility to learn the event generation and the frequency of occurrence with Generative Adversarial Networks (GANs) and Variational Autoencoders (VAEs) to produce events like Monte Carlo generators. We study three toy models from high energy physics, i.e. a simple two-body decay, the processes $e^+e^-\to Z \to l^+l^-$ and $p p \to t\bar{t} $ including the decay of the top quarks and a simulation of the detector response. We show that GANs and the standard VAE do not produce the right distributions. By buffering density information of Monte Carlo events in latent space given the encoder of a VAE we are able to construct a prior for the sampling of new events from the decoder that yields distributions that are in very good agreement with real Monte Carlo events and are generated $\mathcal{O}(10^8)$ times faster. Applications of this work include generic density estimation and sampling, targeted event generation via a principal component analysis of encoded events in the latent space and the possibility to generate better random numbers for importance sampling, e.g. for the phase space integration of matrix elements in quantum perturbation theories. The method also allows to build event generators directly from real data events.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling cern-26721202022-11-02T22:33:37Zhttp://cds.cern.ch/record/2672120engOtten, SydneyEvent Generation and Statistical Sampling with Deep Generative Models3rd IML Machine Learning WorkshopLPCC Workshops<!--HTML-->We present a study for the generation of events from a physical process with generative deep learning. To simulate physical processes it is not only important to produce physical events, but also to produce the events with the right frequency of occurrence (density). We investigate the feasibility to learn the event generation and the frequency of occurrence with Generative Adversarial Networks (GANs) and Variational Autoencoders (VAEs) to produce events like Monte Carlo generators. We study three toy models from high energy physics, i.e. a simple two-body decay, the processes $e^+e^-\to Z \to l^+l^-$ and $p p \to t\bar{t} $ including the decay of the top quarks and a simulation of the detector response. We show that GANs and the standard VAE do not produce the right distributions. By buffering density information of Monte Carlo events in latent space given the encoder of a VAE we are able to construct a prior for the sampling of new events from the decoder that yields distributions that are in very good agreement with real Monte Carlo events and are generated $\mathcal{O}(10^8)$ times faster. Applications of this work include generic density estimation and sampling, targeted event generation via a principal component analysis of encoded events in the latent space and the possibility to generate better random numbers for importance sampling, e.g. for the phase space integration of matrix elements in quantum perturbation theories. The method also allows to build event generators directly from real data events.oai:cds.cern.ch:26721202019
spellingShingle LPCC Workshops
Otten, Sydney
Event Generation and Statistical Sampling with Deep Generative Models
title Event Generation and Statistical Sampling with Deep Generative Models
title_full Event Generation and Statistical Sampling with Deep Generative Models
title_fullStr Event Generation and Statistical Sampling with Deep Generative Models
title_full_unstemmed Event Generation and Statistical Sampling with Deep Generative Models
title_short Event Generation and Statistical Sampling with Deep Generative Models
title_sort event generation and statistical sampling with deep generative models
topic LPCC Workshops
url http://cds.cern.ch/record/2672120
work_keys_str_mv AT ottensydney eventgenerationandstatisticalsamplingwithdeepgenerativemodels
AT ottensydney 3rdimlmachinelearningworkshop