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Modified Semiparametric Maximum Likelihood Estimator in Linear Regression Analysis With Complete Data or Right-Censored Data

机译:具有完整数据或右删失数据的线性回归分析中的修正半参数最大似然估计

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摘要

Consider a linear regression model where the response variable may be right-censored. The standard maximum likelihood estimator (MLE)-based parametric approach to estimation of regression coefficients requires that the parametric form of the error distribution be known. Given a dataset, we may not be able to find a valid parametric form for the error distribution. In such a case the error distribution is unknown and arbitrary, and a semiparametric approach is plausible. A special modified semiparametric MLE (MSMLE) of the regression coefficients is proposed. Simulation suggests that the MSMLE is consistent is asymptotically normally distributed and may be efficient. The new procedure is applied to engineering data.
机译:考虑一个线性回归模型,其中的响应变量可能是右删失的。用于回归系数估计的基于标准最大似然估计器(MLE)的参数方法要求知道误差分布的参数形式。给定数据集,我们可能无法找到有效的参数形式用于误差分布。在这种情况下,误差分布是未知的并且是任意的,并且半参数方法是合理的。提出了一种特殊的回归系数修正半参数MLE(MSMLE)。仿真表明,MSMLE是一致的,渐近正态分布并且可能有效。新过程将应用于工程数据。

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