E. E. Abasov, P. V. Volkov, G. A. Vorotnikov, L. V. Dudko, A. D. Zaborenko, E. S. Iudin, A. A. Markina, M. A. Perfilov
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引用次数: 0
摘要
柯尔莫哥洛夫-阿诺德网络是机器学习领域的最新进展,它有可能在各个领域超越基于感知器的传统神经网络,并通过使用符号公式和剪枝提供更多的可解释性。本研究探讨了 KAN 在高能物理特定任务中的应用。我们评估了 KAN 在区分质子-质子碰撞中的多喷流过程和重建暗物质事件中缺失的横动量方面的性能。
Application of Kolmogorov–Arnold Networks in High Energy Physics
Kolmogorov–Arnold Networks represent a recent advancement in machine learning, with the potential to outperform traditional perceptron-based neural networks across various domains as well as provide more interpretability with the use of symbolic formulas and pruning. This study explores the application of KANs to specific tasks in high-energy physics. We evaluate the performance of KANs in distinguishing multijet processes in proton–proton collisions and in reconstructing missing transverse momentum in events involving dark matter.
期刊介绍:
Moscow University Physics Bulletin publishes original papers (reviews, articles, and brief communications) in the following fields of experimental and theoretical physics: theoretical and mathematical physics; physics of nuclei and elementary particles; radiophysics, electronics, acoustics; optics and spectroscopy; laser physics; condensed matter physics; chemical physics, physical kinetics, and plasma physics; biophysics and medical physics; astronomy, astrophysics, and cosmology; physics of the Earth’s, atmosphere, and hydrosphere.