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Retrieval of Boost Invariant Symbolic Observables via Feature Importance

Authors :
Munoz, Jose M
Batatia, Ilyes
Ortner, Christoph
Romeo, Francesco
Publication Year :
2023

Abstract

Deep learning approaches for jet tagging in high-energy physics are characterized as black boxes that process a large amount of information from which it is difficult to extract key distinctive observables. In this proceeding, we present an alternative to deep learning approaches, Boost Invariant Polynomials, which enables direct analysis of simple analytic expressions representing the most important features in a given task. Further, we show how this approach provides an extremely low dimensional classifier with a minimum set of features representing %effective discriminating physically relevant observables and how it consequently speeds up the algorithm execution, with relatively close performance to the algorithm using the full information.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.13496
Document Type :
Working Paper