6–10 Nov 2023
DESY
Europe/Zurich timezone

End-to-end analysis with jointly optimized particle identification and analysis optimization objectives

6 Nov 2023, 14:45
15m
Seminarraum 4a/b

Seminarraum 4a/b

Speaker

Matthias Vigl (Technische Universitat Munchen (DE))

Description

Most searches at the LHC employ an analysis pipeline consisting of various discrete components, each individually optimized and later combined to provide relevant features used to discriminate SM background from potential signal. These are typically high-level features constructed from particle four-momenta. However, the combination of individually optimized tasks doesn't guarantee an optimal performance on the final analysis objective. In this study, we show how an analysis would benefit from adopting an end-to-end ML optimization approach. Specifically, we investigate the impact of jointly optimizing particle identification and signal vs background discrimination exploiting the ParT transformers architecture [arXiv:2202.03772], showing its effectiveness in the case of multi jets final states with CMS open data [DOI:10.7483/OPENDATA.CMS.JGJX.MS7Q].

Authors

Lukas Alexander Heinrich (Technische Universitat Munchen (DE)) Matthias Vigl (Technische Universitat Munchen (DE)) Nicole Michelle Hartman (TUM (DE))

Presentation materials