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Performance of Some Weighted Liu Estimators for Logit Regression Model: An Application to Swedish Accident Data

机译:Logit回归模型的一些加权Liu估计量的性能:在瑞典事故数据中的应用

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摘要

In this article, we propose some new estimators for the shrinkage parameter d of the weighted Liu estimator along with the traditional maximum likelihood (ML) estimator for the logit regression model. A simulation study has been conducted to compare the performance of the proposed estimators. The mean squared error is considered as a performance criteria. The average value and standard deviation of the shrinkage parameter d are investigated. In an application, we analyze the effect of usage of cars, motorcycles, and trucks on the probability that pedestrians are getting killed in different counties in Sweden. In the example, the benefits of using the weighted Liu estimator are shown. Both results from the simulation study and the empirical application show that all proposed shrinkage estimators outperform the ML estimator. The proposed D9 estimator performed best and it is recommended for practitioners.
机译:在本文中,我们为加权Liu估计量的收缩参数d提出了一些新的估计量,以及对数logit回归模型的传统最大似然(ML)估计量。进行了仿真研究,以比较建议的估计器的性能。均方误差被认为是性能标准。研究收缩参数d的平均值和标准偏差。在一个应用程序中,我们分析了汽车,摩托车和卡车的使用对瑞典不同县市行人被杀的可能性的影响。在示例中,显示了使用加权Liu估计量的好处。仿真研究和经验应用的结果均表明,所有拟议的收缩率估计值均优于ML估计值。建议的D9估算器效果最好,建议从业人员使用。

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