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Zero-one-inflated simplex regression models for the analysis of continuous proportion data

机译:用于分析连续比例数据的零一次膨胀单纯x回归模型

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摘要

Continuous data restricted in the closed unit interval [0,1] often appear in various fields. Neither the beta distribution nor the simplex distribution provides a satisfactory fitting for such data, since the densities of the two distributions are defined only in the open interval (0,1). To model continuous proportional data with excessive zeros and excessive ones, it is the first time that we propose a zero-one-inflated simplex (ZOIS) distribution, which can be viewed as a mixture of the Bernoulli distribution and the simplex distribution. Besides, we introduce a new minorization-maximization (MM) algorithm to calculate the maximum likelihood estimates (MLEs) of parameters in the simplex distribution without covariates. Likelihood-based inference methods for the ZOIS regression model are also provided. Some simulation studies are performed and the hospital stay data of Barcelona in 1988 and 1990 are analyzed to illustrate the proposed methods. The comparison between the ZOIS model and the zero-one-inflated beta (ZOIB) model is also presented.
机译:在闭合单元间隔中限制的连续数据通常出现在各种字段中。 Beta分布和单纯形分布都不提供对这种数据的令人满意的拟合,因为两个分布的密度仅在打开间隔(0,1)中定义。以具有过多的零和过量的模拟连续比例数据,是我们第一次提出零一次膨胀的单纯形(ZOIS)分布,这可以被视为Bernoulli分布和单纯形分布的混合。此外,我们介绍了一种新的缩略化 - 最大化(MM)算法,以计算单纯x分布中的参数的最大似然估计(MLE),而不会协调。还提供了基于偏见的Zois回归模型的推断方法。进行了一些仿真研究,分析了1988年和1990年巴塞罗那的住院数据,以说明所提出的方法。还呈现了Zois模型与零一次膨胀的测试版(Zoib)模型之间的比较。

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