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Combining estimators to improve structural model estimation and inference under quadratic loss

机译:组合估计器以改善二次损失下的结构模型估计和推断

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摘要

Asymptotically, semi parametric estimators of the parameters in linear structural models have the same sampling properties. In finite samples the sampling properties of these estimators vary and large biases may result for sample sizes often found inpractice. With a goal of improving asymptotic risk performance and finite sample efficiency properties, we investigate the idea of combining correlated structural equation estimators with different finite and asymptotic sampling characteristics. Based ona quadratic loss measure, we present evidence that the finite sample performance of the resulting combination estimator can be notably superior to that of a leading traditional moment based estimator.
机译:渐近地,线性结构模型中参数的半参数估计量具有相同的采样特性。在有限样本中,这些估计量的抽样属性会发生变化,并且对于经常发现的样本大小,可能会导致较大的偏差。为了改善渐近风险绩效和有限样本效率属性,我们研究了将具有不同有限和渐近抽样特征的相关结构方程估计量组合在一起的想法。基于二次损失测度,我们提供的证据表明,所得组合估计量的有限样本性能可以明显优于领先的传统基于矩的估计量。

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