以暴露和相关为协变量函数的多元广义泊松回归模型:参数估计和假设检验

S. Berliana, Purhadi, Sutikno, S. Rahayu
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引用次数: 4

摘要

本文提出了一个修正的多元广义泊松回归(MGPR)模型的参数估计和参数的同时检验,该模型考虑了暴露的度量,并将相关性定义为协变量的函数。模型中包含了暴露量,以解释研究中分析单元的人口大小差异,其中每个响应变量的暴露量不一定相同。响应变量之间的相关性被定义为协变量的函数,假设每个响应变量及其相关性受到相同协变量的影响。利用牛顿法和BHHH算法对修正后的MGPR模型进行了极大似然估计。同时假设检验的检验统计量G2采用似然比方法,该方法为v自由度渐近卡方分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multivariate generalized Poisson regression model with exposure and correlation as a function of covariates: Parameter estimation and hypothesis testing
This paper presents the parameter estimation and the simultaneous testing for the parameters of a modified multivariate generalized Poisson regression (MGPR) model that takes into account a measure of exposure and defines the correlation as a function of covariates. An exposure is included in the model to account for population size difference of the analysis units in the study where the exposure is not necessarily the same for each response variable. The correlations between the response variable are defined as a function of the covariates with the assumption that each response variable and their correlations are affected by the same covariates. The Newton method with BHHH algorithm is used to obtain maximum likelihood estimators of the modified MGPR model. The test statistic G2 for simultaneous hypothesis testing is achieved using the likelihood ratio method which is asymptotically chi-square distributed with v degrees of freedom.
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