多维解卷积与轮廓分析

Huanbiao Zhu, Krish Desai, Mikael Kuusela, Vinicius Mikuni, Benjamin Nachman, Larry Wasserman
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引用次数: 0

摘要

在许多实验环境中,有必要从统计学角度消除仪器效应的影响,以便从物理角度解释测量结果。粒子物理学对这项任务进行了广泛研究,其中的解卷积任务被称为展开。然而,所有这些方法的假设之一是,在蒙特卡罗模拟中探测器响应被准确地建模。在实践中,探测器的响应取决于许多干扰参数,而这些参数可以用数据来约束。我们提出了一种名为 "Profile OmniFold(POF)"的新算法,它的迭代方式与 OmniFold(OF)算法类似,同时能够对干扰参数进行剖析。我们用一个高斯例子来证明这种方法的概念,突出了它的强大功能。
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Multidimensional Deconvolution with Profiling
In many experimental contexts, it is necessary to statistically remove the impact of instrumental effects in order to physically interpret measurements. This task has been extensively studied in particle physics, where the deconvolution task is called unfolding. A number of recent methods have shown how to perform high-dimensional, unbinned unfolding using machine learning. However, one of the assumptions in all of these methods is that the detector response is accurately modeled in the Monte Carlo simulation. In practice, the detector response depends on a number of nuisance parameters that can be constrained with data. We propose a new algorithm called Profile OmniFold (POF), which works in a similar iterative manner as the OmniFold (OF) algorithm while being able to simultaneously profile the nuisance parameters. We illustrate the method with a Gaussian example as a proof of concept highlighting its promising capabilities.
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