多元统计
数学
零膨胀模型
计数数据
泊松分布
统计
多元分析
协变量
组分(热力学)
多元正态分布
计量经济学
零(语言学)
多元稳定分布
推论
泊松回归
正态Wishart分布
计算机科学
人工智能
人口
人口学
社会学
哲学
物理
语言学
热力学
作者
Qin Wu,Guo‐Liang Tian,Tao Li,Man‐Lai Tang,Chi Zhang
摘要
Summary Multivariate zero‐inflated Poisson (ZIP) distributions are important tools for modelling and analysing correlated count data with extra zeros. Unfortunately, existing multivariate ZIP distributions consider only the overall zero‐inflation while the component zero‐inflation is not well addressed. This paper proposes a flexible multivariate ZIP distribution, called the multivariate component ZIP distribution, in which both the overall and component zero‐inflations are taken into account. Likelihood‐based inference procedures including the calculation of maximum likelihood estimates of parameters in the model without and with covariates are provided. Simulation studies indicate that the performance of the proposed methods on the multivariate component ZIP model is satisfactory. The Australia health care utilisation data set is analysed to demonstrate that the new distribution is more appropriate than the existing multivariate ZIP distributions.
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