Parton Distribution Functions

S. Forte, J. Huston, R. Thorne, S. Carrazza, Jun Gao, Z. Kassabov, P. Nadolsky, J. Rojo
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引用次数: 3

Abstract

We discuss the determination of the parton substructure of hadrons by casting it as a peculiar form of pattern recognition problem in which the pattern is a probability distribution, and we present the way this problem has been tackled and solved. Specifically, we review the NNPDF approach to PDF determination, which is based on the combination of a Monte Carlo approach with neural networks as basic underlying interpolators. We discuss the current NNPDF methodology, based on genetic minimization, and its validation through closure testing. We then present recent developments in which a hyperoptimized deep-learning framework for PDF determination is being developed, optimized, and tested.
Parton分布函数
我们讨论了强子部分子结构的确定,将其作为一种特殊形式的模式识别问题,其中模式是一个概率分布,我们提出了解决这个问题的方法。具体来说,我们回顾了用于PDF确定的NNPDF方法,该方法基于蒙特卡罗方法和神经网络作为基本底层插值器的组合。我们讨论了当前基于遗传最小化的NNPDF方法,并通过闭合测试对其进行验证。然后,我们介绍了最近的发展,其中正在开发、优化和测试用于PDF确定的超优化深度学习框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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