Kuran Özge, Özkale M Revan
Faculty of Science, Department of Statistics, Dicle University, Diyarbakır, Turkey.
Faculty of Science and Letters, Department of Statistics, Çukurova University, Adana, Turkey.
J Appl Stat. 2020 Oct 10;48(5):924-942. doi: 10.1080/02664763.2020.1833182. eCollection 2021.
In this paper, we introduce stochastic-restricted Liu predictors which will be defined by combining in a special way the two approaches followed in obtaining the mixed predictors and the Liu predictors in the linear mixed models. Superiorities of the linear combination of the new predictor to the Liu and mixed predictors are done in the sense of mean square error matrix criterion. Finally, numerical examples and a simulation study are done to illustrate the findings. In numerical examples, we took some arbitrary observations from the data as the prior information since we did not have historical data or additional information about the data sets. The results show that this case does the new estimator gain efficiency over the constituent estimators and provide accurate estimation and prediction of the data.
在本文中,我们引入了随机受限刘预测器,它将通过以一种特殊方式结合在线性混合模型中获得混合预测器和刘预测器时所采用的两种方法来定义。新预测器的线性组合相对于刘预测器和混合预测器的优越性是在均方误差矩阵准则的意义下进行的。最后,通过数值例子和模拟研究来说明这些发现。在数值例子中,由于我们没有关于数据集的历史数据或额外信息,我们从数据中选取了一些任意观测值作为先验信息。结果表明,在这种情况下,新估计器相对于组成估计器提高了效率,并对数据提供了准确的估计和预测。