混合泊松指数-逆高斯回归模型

E. Gómez–Déniz, E. Calderín-Ojeda
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摘要

本文介绍了计数数据的混合泊松回归模型。该模型是将泊松分布与单参数连续指数逆高斯分布混合而成的。得到的概率质量函数为过分散单峰,模态值为零。估计是由最大似然执行的。作为一项应用,65岁及以上人群的卫生服务需求使用该回归模型进行了检验,因为经验证据表明,过度分散和很大一部分非用户是医疗保健利用数据的共同特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
mixture Poisson exponential–inverse Gaussian regression model
In this paper a mixed Poisson regression model for count data is introduced. This model is derived by mixing the Poisson distribution with the one–parameter continuous exponential–inverse Gaussian distribution. The obtained probability mass function is over-dispersed and unimodal with modal value located at zero. Estimation is performed by maximum likelihood. As an application, the demand for health services among people 65 and over is examined using this regression model since empirical evidence has suggested that the over–dispersion and a large portion of non–users are common features of medical care utilization data.
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