Optimal transport for a global event description at high-intensity hadron colliders

Published in arXiv, 2022

Recommended citation: Gouskos, L., Iemmi, F., Liechti, S., Maier, B., Mikuni, V., & Qu, H. (2022). Optimal transport for a global event description at high-intensity hadron colliders. arXiv preprint arXiv:2211.02029. https://arxiv.org/abs/2211.02029

The CERN Large Hadron Collider was built to uncover fundamental particles and their interactions at the energy frontier. Upon entering its High Luminosity phase at the end of this decade, the unprecedented interaction rates when colliding two proton bunches will pose a significant challenge to the reconstruction algorithms of experiments such as ATLAS and CMS. We propose an algorithm with a greatly enhanced capability of disentangling individual proton collisions to obtain a new global event description, considerably improving over the current state-of-the-art. Employing a metric inspired by optimal transport problems as the cost function of a graph neural network enhanced with attention mechanisms, our algorithm is able to compare two particle collections with different noise levels, thereby learning to correctly flag particles originating from the main proton interaction amidst products from up to 200 simultaneous pileup collisions. The adoption of such an algorithm will lead to a quasi-global sensitivity improvement for searches for new physics phenomena and will enable precision measurements at the percent level in the High Luminosity era of the Large Hadron Collider.

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Algorithm implementation

Recommended citation:

@article{Gouskos:2022xvn,
    author = "Gouskos, Loukas and Iemmi, Fabio and Liechti, Sascha and Maier, Benedikt and Mikuni, Vinicius and Qu, Huilin",
    title = "{Optimal transport for a global event description at high-intensity hadron colliders}",
    eprint = "2211.02029",
    archivePrefix = "arXiv",
    primaryClass = "hep-ph",
    month = "11",
    year = "2022"
}