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On a new mixture-based regression model: simulation and application to data with high censoring

机译:在新的基于混合的回归模型中:仿真和应用于高审查的数据

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摘要

In this paper, we derive a new continuous-discrete mixture regression model which is useful for describing highly censored data. This mixture model employs the Birnbaum-Saunders distribution for the continuous response variable of interest, whereas the Bernoulli distribution is used for the point mass of the censoring observations. We estimate the corresponding parameters with the maximum likelihood method. Numerical evaluation of the model is performed by means of Monte Carlo simulations and of an illustration with real data. The results show the good performance of the proposed model, making it an addition to the tool-kit of biometricians, medical doctors, applied statisticians, and data scientists.
机译:在本文中,我们推出了一种新的连续离散混合回归模型,可用于描述高度审查的数据。该混合物模型采用Birnbaum-Saunders分布用于感兴趣的连续响应变量,而Bernoulli分布用于审查观察的点质量。我们估计最大似然方法的相应参数。模型的数值评估是通过蒙特卡罗模拟和实际数据的例证执行的。结果表明拟议模型的良好表现,使其成为生物统计学家,医生,应用统计学家和数据科学家的工具套件之外。

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