University of British Columbia, Canada.
Environ Monit Assess. 1984 Mar;4(1):81-4. doi: 10.1007/BF01047623.
This paper compares the efficiencies of two sampling techniques for estimating a population mean and variance. One procedure, called grab sampling, consists of collecting and analyzing one sample per period. The second procedure, called composite sampling, collectsn samples per period which are then pooled and analyzed as a single sample. We review the well known fact that composite sampling provides a superior estimate of the mean. However, it is somewhat surprising that composite sampling does not always generate a more efficient estimate of the variance. For populations with platykurtic distributions, grab sampling gives a more efficient estimate of the variance, whereas composite sampling is better for leptokurtic distributions. These conditions on kurtosis can be related to peakedness and skewness. For example, a necessary condition for composite sampling to provide a more efficient estimate of the variance is that the population density function evaluated at the mean (i.e.f(μ)) be greater than[Formula: see text]. If[Formula: see text], then a grab sample is more efficient. In spite of this result, however, composite sampling does provide a smaller estimate of standard error than does grab sampling in the context of estimating population means.
本文比较了两种抽样技术在估计总体均值和方差方面的效率。一种方法称为“抓取抽样”,即每个时期收集和分析一个样本。另一种方法称为“复合抽样”,每个时期收集多个样本,然后将这些样本合并并作为一个单一样本进行分析。我们回顾了一个众所周知的事实,即复合抽样提供了对均值的更优估计。然而,令人有些惊讶的是,复合抽样并不总是对方差产生更有效的估计。对于具有平坦峰态分布的总体,抓取抽样给出了方差的更有效估计,而对于尖峰态分布,复合抽样则更好。这些峰度的条件可以与峰值和偏度相关。例如,复合抽样提供方差更有效估计的必要条件是在均值处评估的总体密度函数(即 f(μ))大于[公式:见正文]。如果[公式:见正文],则抓取样本更有效。然而,尽管有这个结果,在估计总体均值的背景下,复合抽样确实提供了比抓取抽样更小的标准误差估计值。