Volume 476 - 42nd International Conference on High Energy Physics (ICHEP2024) - Computing and Data Handling
High Level Reconstruction with Deep Learning using ILD Full Simulation
T. Suehara*, R. Tagami, L. Gui, T. Murata, T. Tanabe, W. Ootani and M. Ishino
*: corresponding author
Full text: pdf
Pre-published on: December 17, 2024
Published on: April 29, 2025
Abstract
Deep learning can give a significant impact on physics performance of electron-positron Higgs factories such as ILC and FCCee.
We are working on two topics on event reconstruction to apply deep learning.
The first is jet flavor tagging, in which we apply particle transformer to ILD full simulation to obtain jet flavor, including strange tagging.
The second is particle flow, which clusters calorimeter hits and assigns tracks to them to improve jet energy resolution.
We modified the algorithm developed in context of CMS HGCAL based on GravNet and Object Condensation techniques and add a track-cluster assignment function into the network.
The overview and performance of these algorithms are described.
DOI: https://doi.org/10.22323/1.476.1019
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