Unfolding is an important procedure in particle physics experiments which corrects for detector effects and provides differential cross section measurements that can be used for a number of downstream tasks, such as extracting fundamental physics parameters. Traditionally, unfolding is done by discretizing the target phase space into a finite number of bins and is limited in the number of unfolded variables. Recently, there have been a number of proposals to perform unbinned unfolding with machine learning. However, none of these methods (like most unfolding methods) allow for simultaneously constraining (profiling) nuisance parameters. We propose a new machine learning-based unfolding method that results in an unbinned differential cross section and can profile nuisance parameters. The machine learning loss function is the full likelihood function, based on binned inputs at detector-level. We first demonstrate the method with simple Gaussian examples and then show the impact on a simulated Higgs boson cross section measurement.
翻译:解开是粒子物理实验中的一个重要程序,该实验纠正了检测效果,提供了可用于一系列下游任务(例如提取基本物理参数)的不同截面测量方法。传统上,通过将目标阶段空间分解成数量有限的垃圾桶来进行扩展。最近,有一些建议要用机器学习来进行非集成的演示。然而,这些方法(如大多数正在开发的方法)都不允许同时限制(剖析)扰动参数。我们提出了一种新的基于机器的学习方法,该方法将产生一个非集成的差异截面和能够剖析扰动参数。机器学习损失功能是完全可能性功能,以探测器级的集成输入为基础。我们首先用简单的标注示例演示这种方法,然后展示对模拟的Higgs 博森截面测量的影响。