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Least squares type estimation for Cox regression model and specification error

机译:Cox回归模型的最小二乘类型估计和规格误差

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摘要

A new estimation procedure for the Cox proportional hazards model is introduced. The method proposed employs the sample covariance matrix of model covariates and alternates between estimating the baseline cumulative hazard function and estimating model coefficients. It is shown that the estimating equation for model parameters resembles the least squares estimate in a linear regression model, where the outcome variable is the transformed event time. As a result an explicit expression for the difference in the parameter estimates between nested models can be derived. Nesting occurs when the covariates of one model are a subset of the covariates of the other. The new method applies mainly to the uncensored data, but its extension to the right censored observations is also proposed.
机译:介绍了一种新的Cox比例风险模型估计程序。所提出的方法采用模型协变量的样本协方差矩阵,并在估计基准累积危害函数和估计模型系数之间交替。结果表明,模型参数的估计方程类似于线性回归模型中的最小二乘估计,其中结果变量是转换后的事件时间。结果,可以得出嵌套模型之间参数估计差异的显式表达式。当一个模型的协变量是另一个模型的协变量的子集时,就会发生嵌套。该新方法主要适用于未经审查的数据,但也建议将其扩展到正确的审查数据。

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