Characterization and upgrade of a quantum graph neural network for charged particle tracking

2026-03-09Machine Learning

Machine Learning
AI summary

The authors study how to improve particle tracking in the Large Hadron Collider as it upgrades for higher data rates. They focus on a hybrid quantum-classical graph neural network that looks at how particle hits in detector layers connect. Their work upgrades this model and shows it trains better, especially in how quickly it reaches good results. This research explores combining quantum circuits with traditional neural networks to handle complex data from particle collisions.

Large Hadron Collidercharged particle track reconstructionquantum machine learninggraph neural networkshybrid quantum-classical modelsparametrized quantum circuitshigh luminosity datasetevent graphsfeedforward neural networks
Authors
Matteo Argenton, Laura Cappelli, Concezio Bozzi
Abstract
In the forthcoming years the LHC experiments are going to be upgraded to benefit from the substantial increase of the LHC instantaneous luminosity, which will lead to larger, denser events, and, consequently, greater complexity in reconstructing charged particle tracks, motivating frontier research in new technologies. Quantum machine learning models are being investigated as potential new approaches to high energy physics (HEP) tasks. We characterize and upgrade a quantum graph neural network (QGNN) architecture for charged particle track reconstruction on a simulated high luminosity dataset. The model operates on a set of event graphs, each built from the hits generated in tracking detector layers by particles produced in proton collisions, performing a classification of the possible hit connections between adjacent layers. In this approach the QGNN is designed as a hybrid architecture, interleaving classical feedforward networks with parametrized quantum circuits. We characterize the interplay between the classical and quantum components. We report on the principal upgrades to the original design, and present new evidence of improved training behavior, specifically in terms of convergence toward the final trained configuration.