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首页> 外文期刊>Scandinavian journal of statistics >Mixture Model Analysis of Partially Rank-Ordered Set Samples: Age Groups of Fish from Length-Frequency Data
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Mixture Model Analysis of Partially Rank-Ordered Set Samples: Age Groups of Fish from Length-Frequency Data

机译:部分按等级排序的集合样本的混合模型分析:鱼的年龄组(基于长频数据)

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摘要

We present a novel methodology for estimating the parameters of a finite mixture model (FMM) based on partially rank-ordered set (PROS) sampling and use it in a fishery application. A PROS sampling design first selects a simple random sample of fish and creates partially rank-ordered judgement subsets by dividing units into subsets of prespecified sizes. The final measurements are then obtained from these partially ordered judgement subsets. The traditional expectation-maximization algorithm is not directly applicable for these observations. We propose a suitable expectation-maximization algorithm to estimate the parameters of the FMMs based on PROS samples. We also study the problem of classification of the PROS sample into the components of the FMM. We show that the maximum likelihood estimators based on PROS samples perform substantially better than their simple random sample counterparts even with small samples. The results are used to classify a fish population using the length-frequency data.
机译:我们提出了一种新颖的方法,用于基于部分排序集(PROS)采样来估计有限混合模型(FMM)的参数,并将其用于渔业应用中。 PROS采样设计首先选择简单的鱼类随机样本,然后通过将单位划分为预定大小的子集来创建部分按等级排序的判断子集。然后从这些部分排序的判断子集获得最终测量结果。传统的期望最大化算法不适用于这些观察。我们提出了一种合适的期望最大化算法,以基于PROS样本来估计FMM的参数。我们还研究了将PROS样本分类为FMM组件的问题。我们表明,即使使用小样本,基于PROS样本的最大似然估计器的性能也比其简单的随机样本对应物好得多。使用长度-频率数据将结果用于对鱼类种群进行分类。

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