Literature DB >> 34016982

Event generation and statistical sampling for physics with deep generative models and a density information buffer.

Sydney Otten1,2, Sascha Caron3,4, Wieske de Swart3, Melissa van Beekveld3,4, Luc Hendriks3, Caspar van Leeuwen5, Damian Podareanu5, Roberto Ruiz de Austri6, Rob Verheyen3.   

Abstract

Simulating nature and in particular processes in particle physics require expensive computations and sometimes would take much longer than scientists can afford. Here, we explore ways to a solution for this problem by investigating recent advances in generative modeling and present a study for the generation of events from a physical process with deep generative models. The simulation of physical processes requires not only the production of physical events, but to also ensure that these events occur with the correct frequencies. We investigate the feasibility of learning the event generation and the frequency of occurrence with several generative machine learning models to produce events like Monte Carlo generators. We study three processes: a simple two-body decay, the processes e+e- → Z → l+l- and [Formula: see text] including the decay of the top quarks and a simulation of the detector response. By buffering density information of encoded Monte Carlo events given the encoder of a Variational Autoencoder 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 several orders of magnitude faster. Applications of this work include generic density estimation and sampling, targeted event generation via a principal component analysis of encoded ground truth data, anomaly detection and more efficient importance sampling, e.g., for the phase space integration of matrix elements in quantum field theories.

Entities:  

Year:  2021        PMID: 34016982     DOI: 10.1038/s41467-021-22616-z

Source DB:  PubMed          Journal:  Nat Commun        ISSN: 2041-1723            Impact factor:   14.919


  2 in total

1.  Learning to simulate high energy particle collisions from unlabeled data.

Authors:  Jessica N Howard; Stephan Mandt; Daniel Whiteson; Yibo Yang
Journal:  Sci Rep       Date:  2022-05-09       Impact factor: 4.996

2.  Analysis-Specific Fast Simulation at the LHC with Deep Learning.

Authors:  C Chen; O Cerri; T Q Nguyen; J R Vlimant; M Pierini
Journal:  Comput Softw Big Sci       Date:  2021-06-09
  2 in total

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