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Zero-inflated beta distribution for modeling the proportions in quantitative fatty acid signature analysis

机译:零膨胀β分布,用于建模定量脂肪酸特征分析中的比例

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Quantitative fatty acid signature analysis (QFASA) produces diet estimates containing the proportion of each species of prey in a predator's diet. Since the diet estimates are compositional, often contain an abundance of zeros (signifying the absence of a species in the diet), and samples sizes are generally small, inference problems require the use of nonstandard statistical methodology. Recently, a mixture distribution involving the multiplicative logistic normal distribution (and its skew-normal extension) was introduced in relation to QFASA to manage the problematic zeros. In this paper, we examine an alternative mixture distribution, namely, the recently proposed zero-inflated beta (ZIB) distribution. A potential advantage of using the ZIB distribution over the previously considered mixture models is that it does not require transformation of the data. To assess the usefulness of the ZIB distribution in QFASA inference problems, a simulation study is first carried out which compares the small sample properties of the maximum likelihood estimators of the means. The fit of the distributions is then examined using 'pseudo-predators' generated from a large real-life prey base. Finally, confidence intervals for the true diet based on the ZIB distribution are compared with earlier results through a simulation study and harbor seal data.
机译:定量脂肪酸特征分析(QFASA)可以得出饮食估计值,其中包含每种食物在捕食者饮食中的比例。由于饮食估计是有成分的,通常包含大量零(表示饮食中不存在某种物种),并且样本量通常很小,因此推断问题需要使用非标准的统计方法。最近,针对QFASA引入了涉及乘法逻辑正态分布(及其偏态正态扩展)的混合分布,以管理有问题的零。在本文中,我们研究了另一种混合分布,即最近提出的零膨胀beta(ZIB)分布。与以前考虑的混合模型相比,使用ZIB分布的潜在优势在于它不需要数据转换。为了评估ZF分布在QFASA推理问题中的有用性,首先进行了模拟研究,该研究比较了均值的最大似然估计量的小样本属性。然后使用从大型现实猎物库生成的“伪捕食者”检查分布的拟合度。最后,通过模拟研究和海豹海豹数据,将基于ZIB分布的真实饮食的置信区间与之前的结果进行比较。

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