Javier Duarte, Haoyang Li, Avik Roy, Ruike Zhu, E A Huerta, Daniel Diaz, Philip Harris, Raghav Kansal, Daniel S Katz, Ishaan H Kavoori, Volodymyr V Kindratenko, Farouk Mokhtar, Mark S Neubauer, Sang Eon Park, Melissa Quinnan, Roger Rusack, Zhizhen Zhao
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引用次数: 0
摘要
可查找、可访问、可互操作和可重用(FAIR)数据原则为检查、评估和改进数据共享方式以促进科学发现提供了一个框架。将这些原则推广到研究软件和其他数字产品是一个活跃的研究领域。机器学习模型--在没有明确编程的情况下根据数据进行训练的算法--以及更广义的人工智能(AI)模型,是这一研究的重要目标,因为人工智能正在以越来越快的速度改变科学领域,如实验高能物理(HEP)。在本文中,我们为高能物理实验中的人工智能模型提出了 FAIR 原则的实用定义,并描述了应用这些原则的模板。我们以一个应用于 HEP 的人工智能模型为例演示了模板的使用,其中使用了图神经网络来识别衰变为两个底夸克的希格斯玻色子。我们报告了这个 FAIR 人工智能模型的鲁棒性、它在不同硬件架构和软件框架之间的可移植性以及它的可解释性。
The findable, accessible, interoperable, and reusable (FAIR) data principles provide a framework for examining, evaluating, and improving how data is shared to facilitate scientific discovery. Generalizing these principles to research software and other digital products is an active area of research. Machine learning models—algorithms that have been trained on data without being explicitly programmed—and more generally, artificial intelligence (AI) models, are an important target for this because of the ever-increasing pace with which AI is transforming scientific domains, such as experimental high energy physics (HEP). In this paper, we propose a practical definition of FAIR principles for AI models in HEP and describe a template for the application of these principles. We demonstrate the template’s use with an example AI model applied to HEP, in which a graph neural network is used to identify Higgs bosons decaying to two bottom quarks. We report on the robustness of this FAIR AI model, its portability across hardware architectures and software frameworks, and its interpretability.
期刊介绍:
Machine Learning Science and Technology is a multidisciplinary open access journal that bridges the application of machine learning across the sciences with advances in machine learning methods and theory as motivated by physical insights. Specifically, articles must fall into one of the following categories: advance the state of machine learning-driven applications in the sciences or make conceptual, methodological or theoretical advances in machine learning with applications to, inspiration from, or motivated by scientific problems.