Abstract
Particle production from secondary proton-proton collisions, commonly referred to as pile-up, impair the sensitivity of both new physics searches and precision measurements at large hadron collider (LHC) experiments. We propose a novel algorithm, Puma, for modeling pile-up with the help of deep neural networks based on sparse transformers. These attention mechanisms were developed for natural language processing but have become popular in other applications. In a realistic detector simulation, our method outperforms classical benchmark algorithms for pile-up mitigation in key observables. It provides a perspective for mitigating the effects of pile-up in the high luminosity era of the LHC, where up to 200 proton-proton collisions are expected to occur simultaneously.
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Maier, B., Narayanan, S. M., De Castro, G., Goncharov, M., Paus, C., & Schott, M. (2022). Pile-up mitigation using attention. Machine Learning: Science and Technology, 3(2). https://doi.org/10.1088/2632-2153/ac7198
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