Modelling the Proportions with Excessive Endpoints Based on a Generalized Lindley Binomial Model.

IF 1 Q3 Mathematics
Dianliang Deng, Xiaoqing Zhang
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引用次数: 0

Abstract

This paper introduces the generalized Lindley binomial (GLB) distribution, a novel model for analyzing proportional data with excessive endpoint observations. The GLB distribution is derived by compounding the binomial distribution with a generalized three-parameter Lindley distribution, itself defined as a mixture of two gamma distributions with distinct rate parameters. We establish the probabilistic properties of the GLB distribution, including its probability mass function, factorial moments, mean, variance, moment generating function, and dispersion index, demonstrating its flexibility in modeling both under- and over-dispersed data as well as unimodal and bimodal shapes. Likelihood-based inference is developed for the GLB model, with and without covariates, using Fisher scoring and expectation-maximization (EM) algorithms. To improve estimation stability, a penalized EM algorithm incorporating Bayes-inspired penalties is proposed. Model diagnostics are addressed through Pearson and deviance residuals, as well as randomized quantile residual plots. Simulation studies are conducted to evaluate the performance of the estimation procedures under different scenarios. Finally, the practical utility of the GLB regression model is illustrated with the whitefly dataset, where it is shown to provide superior fit compared to existing endpoint-inflated binomial models.

基于广义Lindley二项模型的过度端点比例建模。
本文介绍了广义林德利二项分布(GLB)模型,这是一种用于分析具有过多端点观测值的比例数据的新模型。GLB分布是由二项分布与广义三参数林德利分布复合得到的,林德利分布本身被定义为两个具有不同速率参数的伽马分布的混合物。我们建立了GLB分布的概率属性,包括它的概率质量函数、阶乘矩、均值、方差、矩生成函数和色散指数,展示了它在建模欠分散和过度分散数据以及单峰和双峰形状方面的灵活性。使用Fisher评分和期望最大化(EM)算法,为GLB模型开发了基于似然的推理,有或没有协变量。为了提高估计的稳定性,提出了一种包含贝叶斯启发惩罚的惩罚EM算法。模型诊断是通过Pearson和偏差残差,以及随机分位数残差图来解决的。通过仿真研究来评估不同场景下估计过程的性能。最后,用白蝇数据集说明了GLB回归模型的实际效用,与现有的端点膨胀二项模型相比,它提供了更好的拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
13
审稿时长
13 weeks
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