Cohen Joel E, Davis Richard A, Samorodnitsky Gennady
Laboratory of Populations, The Rockefeller University and Columbia University, New York, NY, USA.
Earth Institute, Department of Statistics, Columbia University, New York, NY, USA.
Proc Math Phys Eng Sci. 2020 Dec;476(2244):20200610. doi: 10.1098/rspa.2020.0610. Epub 2020 Dec 23.
Pillai & Meng (Pillai & Meng 2016 , 2089-2097; p. 2091) speculated that 'the dependence among [random variables, rvs] can be overwhelmed by the heaviness of their marginal tails ·· ·'. We give examples of statistical models that support this speculation. While under natural conditions the sample correlation of regularly varying (RV) rvs converges to a generally random limit, this limit is zero when the rvs are the reciprocals of powers greater than one of arbitrarily (but imperfectly) positively or negatively correlated normals. Surprisingly, the sample correlation of these RV rvs multiplied by the sample size has a limiting distribution on the negative half-line. We show that the asymptotic scaling of Taylor's Law (a power-law variance function) for RV rvs is, up to a constant, the same for independent and identically distributed observations as for reciprocals of powers greater than one of arbitrarily (but imperfectly) positively correlated normals, whether those powers are the same or different. The correlations and heterogeneity do not affect the asymptotic scaling. We analyse the sample kurtosis of heavy-tailed data similarly. We show that the least-squares estimator of the slope in a linear model with heavy-tailed predictor and noise unexpectedly converges much faster than when they have finite variances.
皮莱和孟(皮莱与孟,2016年,第2089 - 2097页;第2091页)推测,“[随机变量,rvs]之间的相关性可能会被其边际尾部的厚重程度所掩盖······”。我们给出了支持这一推测的统计模型示例。在自然条件下,正则变化(RV)随机变量的样本相关性会收敛到一个通常为随机的极限,但当这些随机变量是任意(但不完全)正相关或负相关正态分布大于1的幂的倒数时,这个极限为零。令人惊讶的是,这些RV随机变量的样本相关性乘以样本量在负半轴上有一个极限分布。我们表明,对于RV随机变量,泰勒定律(幂律方差函数)的渐近缩放,在一个常数范围内,对于独立同分布观测值与对于任意(但不完全)正相关正态分布大于1的幂的倒数的情况是相同的,无论这些幂是否相同。相关性和异质性并不影响渐近缩放。我们同样分析了重尾数据的样本峰度。我们表明,在具有重尾预测变量和噪声的线性模型中,斜率的最小二乘估计量意外地比它们具有有限方差时收敛得快得多。