Ranking-based neural network for ambiguity resolution in ACTS
Corentin Allaire, Fran\c{c}oise Bouvet, Hadrien Grasland, David, Rousseau

TL;DR
This paper introduces a neural network-based ambiguity resolution method in particle track reconstruction, significantly improving speed and duplicate removal efficiency in high-energy physics experiments.
Contribution
It presents a novel machine learning approach integrated into ACTS for faster, more accurate ambiguity resolution in particle tracking.
Findings
15 times faster than default algorithm
Removes 32 times more duplicates
Achieves less than one duplicated track per event
Abstract
The reconstruction of particle trajectories is a key challenge of particle physics experiments, as it directly impacts particle identification and physics performances while also representing one of the main CPU consumers of many high-energy physics experiments. As the luminosity of particle colliders increases, this reconstruction will become more challenging and resource-intensive. New algorithms are thus needed to address these challenges efficiently. One potential step of track reconstruction is ambiguity resolution. In this step, performed at the end of the tracking chain, we select which tracks candidates should be kept and which must be discarded. The speed of this algorithm is directly driven by the number of track candidates, which can be reduced at the cost of some physics performance. Since this problem is fundamentally an issue of comparison and classification, we propose to…
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Taxonomy
TopicsParticle Detector Development and Performance · Particle physics theoretical and experimental studies · Advanced Data Compression Techniques
