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Combining the Information of Multiple Ranker in Ranked Set Sampling with Fuzzy Set Approach

机译:用模糊套法相结合排名集采样中多个排名的信息

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Ranked set sampling (RSS) is a useful alternative sampling method for parameter estimation. Compared to other sampling methods, it uses the ranking information of the units in the ranking mechanism before the actual measurement. The ranking mechanism can be described as a visual inspection of an expert or a highly-correlated concomitant variable. Accuracy for ranking of the sample units affects the precision of the estimation. This study proposes an alternative approach, called Fuzzy-weighted Ranked Set Sampling (FwRSS), to RSS for dealing with the uncertainty in ranking using fuzzy set. It assumes that there are K (K> 1) rankers for rank decisions and uses three different fuzzy norm operators to combine the decisions of all rankers in order to provide the accuracy of ranking. A simulation study is constructed to see the performance of the mean estimators based on RSS and FwRSS.
机译:排名集采样(RSS)是一种用于参数估计的有用的替代采样方法。与其他采样方法相比,它在实际测量之前使用排名机制中单位的排名信息。排名机制可以被描述为专家或高度相关的伴随变量的视觉检查。样本单元排名的准确性会影响估计的精度。本研究提出了一种替代方法,称为模糊加权排名集采样(FWRS),以处理使用模糊集排名中的不确定性。它假设有k(k> 1)排名决策并使用三种不同的模糊常规运算符来结合所有排名人员的决定,以便提供排名的准确性。构建模拟研究,以了解基于RSS和FWRS的平均估计的性能。

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