The Pareto Frontier of Resilient Jet Tagging
ORAL
Abstract
Classifying hadronic jets using their constituents' kinematic information is a critical task in modern high-energy collider physics. Often, classifiers are designed by targeting the best performance using metrics such as accuracy, AUC, or rejection rates. However, the use of a single metric can lead to the use of architectures that are more model-dependent than competitive alternatives, leading to potential uncertainty and bias in analysis. We explore such trade-offs and demonstrate the consequences of using networks with high performance metrics but low resilience.
*This work was supported by the Brown University Department of Physics, by the National Science Foundation under Cooperative Agreement PHY-2019786 (The NSF AI Institute for Artificial Intelligence and Fundamental Interactions, the NSF grant numbers OAC-2103889, OAC-2411215, and OAC-2417682; and by the U.S. DOE Office of High Energy Physics under grant numbers DE-SC0012567 and DE-SC1019775.
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Publication: Material based on a submission accepted for the 39th Conference on Neural Information Processing Systems (NeurIPS 2025) Workshop: Machine Learning and the Physical Sciences. 6 or 7 December, 2025; San Diego, California, USA. https://arxiv.org/abs/2509.19431
Presenters
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Yuanchen Zhou
- Brown University