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Generalized Count Data Regression Models and Their Applications to Health Care Data

机译:广义计数数据回归模型及其对医疗保健数据的应用

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A method for developing generalized parametric regression models for count data is proposed and studied. The method is based on the framework of the T-geomet-ric family of distributions. A T-geometric family consists of discrete distributions, which are analogues to the continuous distributions for the random variable T. The general methodology is applied to derive some generalized regression models for count data. These regression models can fit count data that are under-dispersed, equi-dispersed or over-dispersed. The extension to model truncated or inflated data is addressed. Some new generalized T-geometric regression models are applied to real world data sets to illustrate the flexibility of the models. The models were fitted to four response variables from health care data and their performance compared. No single regression model outperforms other models for all the four response variables. Thus, a researcher should evaluate different models before selecting a final regression model for a count response variable.
机译:提出并研究了用于开发计数数据的广义参数回归模型的方法。该方法基于T-Geomet-Ric系列分布的框架。 T-Geometric系列由离散分布组成,它们是随机变量T的连续分布的类似物。普遍方法应用于导出用于计数数据的一些广义回归模型。这些回归模型可以拟合分散的数据,平衡或过分分散。解决了截断或膨胀数据的扩展。一些新的广义T-Geometric回归模型应用于真实世界的数据集,以说明模型的灵活性。该模型与医疗保健数据的四个响应变量及其表现相容。没有单一回归模型对于所有四个响应变量突出其他模型。因此,研究人员应该在为计数响应变量选择最终回归模型之前评估不同的模型。

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