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ESTIMATION AND CLASSIFICATION FOR FINITE MIXTURE MODELS UNDER RANKED SET SAMPLING

机译:排序集采样下有限混合模型的估计和分类

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We consider maximum likelihood estimation of the parameters of a finite mixture model for independent order statistics data arising from ranked set sampling, as well as classification of the observed data. We propose two ranked-based sampling designs from a finite mixture density and explain how to estimate the unknown parameters of the model for each design. To exploit the special structure of the ranked set sampling, we develop a new expectation-maximization algorithm that turns out to be different from its counterpart with simple random sample data. Our findings are that estimators based on ranked set sampling are more efficient than their counterparts based on the commonly used simple random sampling technique. Theoretical results are augmented with simulation studies.
机译:我们考虑对来自排序集抽样的独立订单统计数据以及观察数据的分类的有限混合模型参数的最大似然估计。我们从有限的混合密度中提出了两个基于排名的抽样设计,并解释了如何为每个设计估算模型的未知参数。为了利用排序集抽样的特殊结构,我们开发了一种新的期望最大化算法,该算法与简单随机抽样数据的对应算法不同。我们的发现是,基于排序集抽样的估计量比基于常用简单随机抽样技术的估计量更有效。通过仿真研究可以增加理论结果。

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