Deep learning as a parton shower

Author:

Monk J. W.ORCID

Abstract

Abstract We make the connection between certain deep learning architectures and the renormalisation group explicit in the context of QCD by using a deep learning network to construct a toy parton shower model. The model aims to describe proton-proton collisions at the Large Hadron Collider. A convolutional autoencoder learns a set of kernels that efficiently encode the behaviour of fully showered QCD collision events. The network is structured recursively so as to ensure self-similarity, and the number of trained network parameters is low. Randomness is introduced via a novel custom masking layer, which also preserves existing parton splittings by using layer-skipping connections. By applying a shower merging procedure, the network can be evaluated on unshowered events produced by a matrix element calculation. The trained network behaves as a parton shower that qualitatively reproduces jet-based observables.

Publisher

Springer Science and Business Media LLC

Subject

Nuclear and High Energy Physics

Reference36 articles.

1. J.W. Monk, Wavelet Analysis: Event De-noising, Shower Evolution and Jet Substructure Without Jets, arXiv:1405.5008 [INSPIRE].

2. P. Mehta and D.J. Schwab, An exact mapping between the Variational Renormalization Group and Deep Learning, arXiv:1410.3831.

3. C. Bény, Deep learning and the renormalization group, arXiv:1301.3124.

4. D. Oprisa and P. Toth, Criticality & Deep Learning II: Momentum Renormalisation Group, arXiv:1705.11023.

5. A. Andreassen, I. Feige, C. Frye and M.D. Schwartz, JUNIPR: a Framework for Unsupervised Machine Learning in Particle Physics, arXiv:1804.09720 [INSPIRE].

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