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New Flexible Regression Models Generated by Gamma Random Variables with Censored Data

机译:伽马随机变量生成的新灵活回归模型,具有删除数据

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We propose and study a new log-gamma Weibull regression model. We obtain explicit expressions for the raw and incomplete moments, quantile and generating functions and mean deviations of the log-gamma Weibull distribution. We demonstrate that the new regression model can be applied to censored data since it represents a parametric family of models which includes as sub-models several widely-known regression models and therefore can be used more effectively in the analysis of survival data. We obtain the maximum likelihood estimates of the model parameters by considering censored data and evaluate local influence on the estimates of the parameters by taking different perturbation schemes. Some global-influence measurements are also investigated. Further, for different parameter settings, sample sizes and censoring percentages, various simulations are performed. In addition, the empirical distribution of some modified residuals are displayed and compared with the standard normal distribution. These studies suggest that the residual analysis usually performed in normal linear regression models can be extended to a modified deviance residual in the proposed regression model applied to censored data. We demonstrate that our extended regression model is very useful to the analysis of real data and may give more realistic fits than other special regression models.
机译:我们提出并研究了一个新的Log-Gamma Weibull回归模型。我们获取原始和不完整的时刻,定量和生成函数的显式表达式,以及日志伽马威布尔分布的平均偏差。我们证明,新的回归模型可以应用于审查的数据,因为它代表了作为子模型的参数族的模型,可以在存活数据的分析中更有效地使用。通过考虑缩短的数据来获得模型参数的最大似然估计,并通过采用不同的扰动方案来评估对参数估计的局部影响。还研究了一些全球影响测量。此外,对于不同的参数设置,采样大小和审查百分比,执行各种仿真。此外,与标准正态分布相比,显示并比较一些修饰残留的经验分布。这些研究表明,通常在正常线性回归模型中进行的残余分析可以扩展到应用于审查数据的提出的回归模型中的修改偏差残差。我们证明,我们的扩展回归模型对实际数据分析非常有用,并且可能比其他特殊回归模型提供更现实的符合。

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