The parameters of the log-logistic distribution are generally estimated based on classical methods such as maximum likelihood estimation, whereas these methods usually result in severe biased estimates when the data contain outliers. In this paper, we consider several alternative estimators, which not only have closed-form expressions, but also are quite robust to a certain level of data contamination. We investigate the robustness property of each estimator in terms of the breakdown point. The finite sample performance and effectiveness of these estimators are evaluated through Monte Carlo simulations and a real-data application. Numerical results demonstrate that the proposed estimators perform favorably in a manner that they are comparable with the maximum likelihood estimator for the data without contamination and that they provide superior performance in the presence of data contamination.
翻译:日志分布参数一般是根据传统方法估计的,如最大可能性估计,而当数据包含外部线时,这些方法通常会产生严重偏差的估计数。在本文件中,我们考虑若干替代估计器,这些估计器不仅具有封闭式表达式,而且相当可靠,足以达到一定程度的数据污染。我们从分解点的角度调查每个估计器的稳健性属性。这些估计器的有限抽样性能和有效性通过蒙特卡洛模拟和真实数据应用进行评估。数字结果表明,拟议的估计器的性能优异,可以与无污染数据的最大概率估计器相比,在存在数据污染的情况下,它们提供优异性能。