EPJ Web of Conferences (Jan 2024)

HyperTrack: Neural Combinatorics for High Energy Physics

  • Mieskolainen Mikael

DOI
https://doi.org/10.1051/epjconf/202429509021
Journal volume & issue
Vol. 295
p. 09021

Abstract

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Combinatorial inverse problems in high energy physics span enormous algorithmic challenges. This work presents a new deep learning driven clustering algorithm that utilizes a space-time non-local trainable graph constructor, a graph neural network, and a set transformer. The model is trained with loss functions at the graph node, edge and object level, including contrastive learning and meta-supervision. The algorithm can be applied to problems such as charged particle tracking, calorimetry, pile-up discrimination, jet physics, and beyond. We showcase the effectiveness of this cutting-edge AI approach through particle tracking simulations. The code is available online.