论文标题
脂肪尾巴的统计后果:现实世界的定义学,认识论和应用
Statistical Consequences of Fat Tails: Real World Preasymptotics, Epistemology, and Applications
论文作者
论文摘要
该专着调查了传统统计技术对脂肪尾部分布的应用,并在可能的情况下寻找补救措施。 从薄尾巴变成脂肪尾部分布所需的不仅仅是“改变连衣裙的颜色”。传统的渐近学主要涉及n = 1或$ n = \ infty $,而现实世界则在“中号法律”下,在特定分布之间差异很大。大型定律和广义的中心极限机制都以高度特质的方式运行,超出标准的高斯或征收稳定稳定的融合盆地。 一些例子: +样本平均值很少与人口均值一致,并影响“天真的经验主义”,但有时可以通过参数方法估算。 +“经验分布”很少是经验。 +参数不确定性对统计指标具有复杂的影响。 +尺寸减小(主要组件)失败。 +不平等估计器(Gini或分位数贡献)不是加性的,并且产生错误的结果。 +在更复杂的概率分布下,心理学中发现的许多“偏见”变得完全合理 +金融经济学,计量经济学和行为经济学的大部分失败都可以归因于使用错误的分布。 这本书是技术Incerto的第一卷,编织了围绕发表的期刊文章的叙述。
The monograph investigates the misapplication of conventional statistical techniques to fat tailed distributions and looks for remedies, when possible. Switching from thin tailed to fat tailed distributions requires more than "changing the color of the dress". Traditional asymptotics deal mainly with either n=1 or $n=\infty$, and the real world is in between, under of the "laws of the medium numbers" --which vary widely across specific distributions. Both the law of large numbers and the generalized central limit mechanisms operate in highly idiosyncratic ways outside the standard Gaussian or Levy-Stable basins of convergence. A few examples: + The sample mean is rarely in line with the population mean, with effect on "naive empiricism", but can be sometimes be estimated via parametric methods. + The "empirical distribution" is rarely empirical. + Parameter uncertainty has compounding effects on statistical metrics. + Dimension reduction (principal components) fails. + Inequality estimators (GINI or quantile contributions) are not additive and produce wrong results. + Many "biases" found in psychology become entirely rational under more sophisticated probability distributions + Most of the failures of financial economics, econometrics, and behavioral economics can be attributed to using the wrong distributions. This book, the first volume of the Technical Incerto, weaves a narrative around published journal articles.