天文学经典周期搜索技术统计入门。

Naomi Giertych, Ahmed Shaban, Pragya Haravu, Jonathan P Williams
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引用次数: 0

摘要

本文旨在从统计学家的角度研究经典的相位离散最小化(PDM)、方差分析(AOV)、弦长(SL)和伦布-斯卡格尔(LS)幂级数统计的特性。我们证实,当数据是恒定函数的扰动时,即在数据中无周期的零假设下,PDM 统计量的缩放版本遵循贝塔分布,AOV 统计量遵循 F 分布,LS 功率遵循具有两个自由度的秩方分布。然而,SL 统计量并没有封闭形式的分布。我们通过模拟进一步验证了这些理论分布,并证明了这些统计量的极值(在一系列试验周期内)(通常用于周期估计和确定误报概率 (FAP))所遵循的分布与单周期得出的分布不同。我们强调,要正确推导 FAP 边界,必须考虑多重测试。尽管事实上,多重测试控制已经内置于这些极值统计量的 FAP 边界中,例如,专门针对一系列试验期的最大 LS 功率统计量推导出的 FAP 边界。此外,我们还发现所有这些方法对旨在模拟仪器随时间退化或误判的异方差噪声都很稳健。最后,我们通过模拟数据来检验这些统计量检测非恒定周期函数的能力,我们发现 AOV 统计量检测到正确周期的能力最强,这与实际观察到的结果一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A statistical primer on classical period-finding techniques in astronomy.

The aim of our paper is to investigate the properties of the classical phase-dispersion minimization (PDM), analysis of variance (AOV), string-length (SL), and Lomb-Scargle (LS) power statistics from a statistician's perspective. We confirm that when the data are perturbations of a constant function, i.e. under the null hypothesis of no period in the data, a scaled version of the PDM statistic follows a beta distribution, the AOV statistic follows an F distribution, and the LS power follows a chi-squared distribution with two degrees of freedom. However, the SL statistic does not have a closed-form distribution. We further verify these theoretical distributions through simulations and demonstrate that the extreme values of these statistics (over a range of trial periods), often used for period estimation and determination of the false alarm probability (FAP), follow different distributions than those derived for a single period. We emphasize that multiple-testing considerations are needed to correctly derive FAP bounds. Though, in fact, multiple-testing controls are built into the FAP bound for these extreme-value statistics, e.g. the FAP bound derived specifically for the maximum LS power statistic over a range of trial periods. Additionally, we find that all of these methods are robust to heteroscedastic noise aimed to mimic the degradation or miscalibration of an instrument over time. Finally, we examine the ability of these statistics to detect a non-constant periodic function via simulating data that mimics a well-detached binary system, and we find that the AOV statistic has the most power to detect the correct period, which agrees with what has been observed in practice.

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