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Robust and efficient parameter estimation based on censored data with stochastic covariates

机译:基于带有随机协变量的删失数据的鲁棒高效参数估计

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Analysis of random censored life-time data along with some related stochastic covariables is of great importance in many applied sciences. The parametric estimation technique commonly used under this set-up is based on the efficient but non-robust likelihood approach. In this paper, we propose a robust parametric estimator for censored data with stochastic covariates based on the minimum density power divergence approach. The resulting estimator also has competitive efficiency with respect to the maximum likelihood estimator under pure data. The strong robustness property of the proposed estimator with respect to the presence of outliers is examined and illustrated through an appropriate real data example and simulation studies. Further, the theoretical asymptotic properties of the proposed estimator are also derived in terms of a general class of M-estimators based on the estimating equation.
机译:在许多应用科学中,对随机删失的生命周期数据以及一些相关的随机协变量进行分析非常重要。在此设置下通常使用的参数估计技术基于有效但非鲁棒的似然方法。在本文中,我们提出了一种基于最小密度幂散方法的,具有随机协变量的删失数据的鲁棒参数估计器。相对于纯数据下的最大似然估计量,所得估计量也具有竞争效率。通过适当的实际数据示例和仿真研究,对提出的估计量相对于异常值的强鲁棒性进行了检查和说明。此外,还基于估计方程,根据M类估计器的一般类别,得出了所提出估计器的理论渐近性质。

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