Xiang Liming, Yau Kelvin K W, Lee Andy H, Fung Wing K
Department of Epidemiology and Biostatistics, School of Public Health, Curtin University of Technology, Australia.
Stat Med. 2005 Oct 15;24(19):3053-71. doi: 10.1002/sim.2160.
In many medical and health applications, Poisson mixture regression models are commonly used to analyse heterogeneous count data. Motivated by two data sets drawn from public health studies, influence diagnostics are proposed for assessing the sensitivity of the fitted two-component Poisson mixture regression models. Under various perturbations of the observed data or model assumptions, influence assessments based on the local influence approach are developed for detecting clusters and/or individual observations that impact on the estimation of model parameters. Results from studies on recurrent urinary tract infections and maternity length of stay illustrate the usefulness of the influence diagnostics.
在许多医疗卫生应用中,泊松混合回归模型常用于分析异质计数数据。受两项来自公共卫生研究的数据集的启发,提出了影响诊断方法,用于评估拟合的双组分泊松混合回归模型的敏感性。在观测数据或模型假设的各种扰动下,基于局部影响方法开发了影响评估,以检测对模型参数估计有影响的聚类和/或单个观测值。关于复发性尿路感染和产妇住院时间的研究结果说明了影响诊断的有用性。