In high-energy physics it is a recurring challenge to efficiently and precisely (enough) calculate the global significance of, e.g., a potential new resonance. The Gross and Vitells trials factor approximation [arXiv:1005.1891] and [arXiv:1105.4355], which is based on the average expected "up-crossings" of the significance in the search region, has revolutionized this for significances above 3 standard deviations, but the challenges of actually calculating the average expected up-crossings and the validity of the approximation for smaller significances remain. We propose a new method that models the significance in the search region as a Gaussian Process (GP). The covariance matrix of the GP is calculated with a carefully designed set of Asimov background-only data sets, comparable in number to the random background-only data sets used in a typical analysis, however, the average up-crossings (and even directly the trials factor for both low and moderate significances) can subsequently be calculated to the desired precision with a computationally inexpensive random sampling of the GP. Once the covariance of the GP is determined, the average number of up-crossings can be computed analytically. In our work we give some highlights of the analytic calculation and also discuss some peculiarities of the trials factor estimation on a finite grid. We illustrate the method with studies of three complementary statistical models, including the one studied by Gross and Vitells [arXiv:1005.1891].
翻译:在高能物理学中,这是一个反复出现的挑战,即如何有效、准确地(enough)计算出全球重要性,例如潜在的新的共振。Gross和Vitells试验系数近似于[arXiv:1005.1891]和[arXiv:1105.4355]。Gros和Vitells试验系数近近似于[arXiv:1005.1891]和[arXiv:1105.4355],这是根据搜索区域重要性的预期平均“交叉”值计算的,对3个标准偏差以上的重要性进行了革命,但实际计算平均交叉值(甚至直接计算中低重要性的虚拟值)和近似值的有效性的挑战依然存在。我们提出了一种新的方法,将搜索区域的重要性作为GOs进程(GP)的模式。GP的共变式矩阵是精心设计的一套Asimov背景试验数据集,其数量与典型分析中使用的随机背景数据集相比。然而,平均交叉值(甚至直接计算为低和中度值的虚拟值的虚拟值)随后可以计算出预想得到的精确度,对GPGPA进行计算。在计算时,我们进行某种分析研究时,从分析的平均值的平均值的平均值的平均值的平均值的计算可以确定。