基于排序集的自适应聚类抽样

Girish Chandra, Neeraj Tiwari, Hukum Chandra
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引用次数: 5

摘要

在许多调查中,兴趣特征是稀疏分布但高度聚集的;在这种情况下,自适应聚类采样非常有用。这些群体的例子可以在渔业、矿物调查(矿石浓度分布不均匀)、动植物种群(稀有和濒危物种)、污染浓度和热点调查以及罕见疾病流行病学中找到。排序集抽样(RSS)是另一种有用的技术,当研究中的抽样单位可以更容易地排序而不是测量时,它可以改善均值和方差的估计。在等分配和不等分配情况下,RSS比简单的随机抽样更精确,因为它包含有关每个顺序统计信息的信息。本文研究了采样点的特征值很低或可以忽略不计,但这些点的邻域可能有几个分散的相同的小袋的问题。提出了一种基于排序集的自适应聚类抽样理论。考虑了不同的总体均值估计量,并通过一个小总体的简单例子证明了所提出的设计。所提出的方法比现有的自适应聚类抽样方法性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive cluster sampling based on ranked sets
In many surveys, characteristic of interest is sparsely distributed but highly aggregated; in such situations the adaptive cluster sampling is very useful. Examples of such populations can be found in fisheries, mineral investigations (unevenly distributed ore concentrations), animal and plant populations (rare and endangered species), pollution concentrations and hot spot investigations, and epidemiology of rare diseases. Ranked Set Sampling (RSS) is another useful technique for improving the estimates of mean and variance when the sampling units in a study can be more easily ranked than measured. Under equal and unequal allocation, RSS is found to be more precise than simple random sampling, as it contains information about each order statistics. This paper deal with the problem in which the value of the characteristic under study on the sampled places is low or negligible but the neighbourhoods of these places may have a few scattered pockets of the same. We proposed an adaptive cluster sampling theory based on ranked sets. Different estimators of the population mean are considered and the proposed design is demonstrated with the help of one simple example of small populations. The proposed procedure appears to perform better than the existing procedures of adaptive cluster sampling.
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