Robust parameter estimation of the log-logistic distribution based on density power divergence estimators

A. Felipe, M. Jaenada, P. Miranda, L. Pardo
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Abstract

Robust inferential methods based on divergences measures have shown an appealing trade-off between efficiency and robustness in many different statistical models. In this paper, minimum density power divergence estimators (MDPDEs) for the scale and shape parameters of the log-logistic distribution are considered. The log-logistic is a versatile distribution modeling lifetime data which is commonly adopted in survival analysis and reliability engineering studies when the hazard rate is initially increasing but then it decreases after some point. Further, it is shown that the classical estimators based on maximum likelihood (MLE) are included as a particular case of the MDPDE family. Moreover, the corresponding influence function of the MDPDE is obtained, and its boundlessness is proved, thus leading to robust estimators. A simulation study is carried out to illustrate the slight loss in efficiency of MDPDE with respect to MLE and, at besides, the considerable gain in robustness.
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基于密度幂发散估计器的对数对数分布稳健参数估计
在许多不同的统计模型中,基于发散度量的稳健推断方法在效率和稳健性之间做出了令人满意的权衡。本文考虑了对数对数分布的规模和形状参数的最小密度功率发散估计器(MDPDE)。对数-对数分布是对生命周期数据建模的一种通用分布,在生存分析和可靠性工程研究中,当危险率最初不断增加,但在某个点之后又不断减少时,通常会采用对数-对数分布。此外,还得到了 MDPDE 的相应影响函数,并证明了其无边界性,从而得到了稳健的估计值。通过模拟研究说明了 MDPDE 相对于 MLE 在效率上的轻微损失,以及在稳健性上的显著提高。
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