Variational Pseudo Marginal Methods for Jet Reconstruction in Particle Physics

Open Access
Authors
  • Hanming Yang
  • Antonio Khalil Moretti
  • Sebastian Macaluso
  • Philippe Chlenski
Publication date 12-2024
Journal Transactions on Machine Learning Research
Article number 2926
Volume | Issue number 2024
Number of pages 20
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract

Reconstructing jets, which provide vital insights into the properties and histories of sub-atomic particles produced in high-energy collisions, is a main problem in data analyses of collider physics. This intricate task deals with estimating the latent structure of a jet (binary tree) and involves parameters such as particle energy, momentum, and types. While Bayesian methods offer a natural approach for handling uncertainty and leveraging prior knowledge, they face significant challenges due to the super-exponential growth of potential jet topologies as the number of observed particles increases. To address this, we introduce a Combinatorial Sequential Monte Carlo approach for inferring jet latent structures. As a second contribution, we leverage the resulting estimator to develop a variational inference algorithm for parameter learning. Building on this, we introduce a variational family using a pseudo-marginal framework for a fully Bayesian treatment of all variables, unifying the generative model with the inference process. We illustrate our method’s effectiveness through experiments using data generated with a collider physics generative model, highlighting superior speed and accuracy across a range of tasks.

Document type Article
Note With supplementary ZIP-file
Language English
Published at https://doi.org/10.48550/arXiv.2406.03242
Published at https://openreview.net/forum?id=pCapRF2vFf
Other links https://github.com/amoretti86/vcsmc_jet_reconstruction https://jmlr.org/tmlr/papers/index.html https://www.scopus.com/pages/publications/85217131223
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