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A new difference-based weighted mixed Liu estimator in partially linear models

机译:部分线性模型中基于差的加权混合Liu估计

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摘要

In this paper, a generalized difference-based estimator is introduced for the vector parameter beta in the partially linear model when the errors are correlated. A generalized difference-based Liu estimator is defined for the vector parameter beta. Under the linear stochastic constraint r = R beta + e, a new generalized difference-based weighted mixed Liu estimator is introduced. The performance of this estimator over the generalized difference-based weighted mixed estimator and the generalized difference-based Liu estimator in terms of the mean squared error matrix criterion is investigated. Then, a method to select the biasing parameter d and non-stochastic weight. is considered. The efficiency properties of the newestimator are illustrated by a simulation study. Finally, the performance of the new estimator is evaluated for a real data set.
机译:本文在误差相关的情况下,针对部分线性模型中的矢量参数β引入了一种基于差分的广义估计器。为矢量参数beta定义了一个基于广义差异的Liu估计器。在线性随机约束r = R beta + e下,引入了一种新的基于广义差分的加权混合Liu估计器。根据均方误差矩阵准则,研究了该估计量相对于基于广义差的加权混合估计和基于广义差的Liu估计的性能。然后,选择偏置参数d和非随机权重的方法。被认为。仿真研究说明了新估算器的效率属性。最后,针对真实数据集评估新估算器的性能。

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