Independent Approximates (IAs) are proven to enable a closed-form estimation of heavy-tailed distributions with an analytical density such as the generalized Pareto and Student's t distributions. A broader proof using convolution of the characteristic function is described for future research. (IAs) are selected from independent, identically distributed samples by partitioning the samples into groups of size n and retaining the median of the samples in those groups which have approximately equal samples. The marginal distribution along the diagonal of equal values has a density proportional to the nth power of the original density. This nth power density, which the IAs approximate, has faster tail decay enabling closed-form estimation of its moments and retains a functional relationship with the original density. Computational experiments with between 1000 to 100,000 Student's t samples are reported for over a range of location, scale, and shape (inverse of degree of freedom) parameters. IA pairs are used to estimate the location, IA triplets for the scale, and the geometric mean of the original samples for the shape. With 10,000 samples the relative bias of the parameter estimates is less than 0.01 and a relative precision is less than plus or minus 0.1. The theoretical bias is zero for the location and the finite bias for the scale can be subtracted out. The theoretical precision has a finite range when the shape is less than 2 for the location estimate and less than 3/2 for the scale estimate. The boundary of finite precision can be extended using higher-order IAs.
翻译:独立分布近似值(IAs)被证明能够对具有分析密度的重尾分布进行封闭式估计,如泛泛的Pareto和Pareto及学生 t的分布等分析密度。为未来研究描述了使用特征函数变异的更广泛证据。(IAs)从独立、同样分布的样本中挑选出,将样本分成大小为n组,并保留具有大致相等样本的组群样本中位数。在等值对角的边际分布密度与原始密度的正弦力成正比。IAss近似,这种电源密度加快了尾部衰减,使得能够对时间进行闭式估计,并保持与原始密度的功能关系。(IAs)从独立、同样分布的样本中挑选出,将样本分成范围分为大约10 000至100 000至100 000个,学生 t的样本。在具有大致相等的样本中位数组数,在具有大致相等的组数的组数。使用IA3的密度和形状的测深度平均值。如果使用10 000个样本的精确度,则使用理论偏差偏差,则低于0.1,精确度的精确度的比为0.1,精确度的比0.1,精确度的精确度比为低。度比为0.1,精确度的精确度比为低。度比为0.1,精确度的精确度比为0.1,精确度的精确度比为0.1,精确度比为低。精确度比为低。