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Robust inference with GMM estimators

机译:用GMM估计器进行可靠的推断

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The local robustness properties of generalized method of moments (GMM) estimators and of a broad class of GMM based tests are investigated in a unified framework. GMM statistics are shown to have bounded influence if and only if the function defining the orthogonality restrictions imposed on the underlying model is bounded. Since in many applications this function is unbounded, it is useful to have procedures that modify the starting orthogonality conditions in order to obtain a robust version of aGMM estimator or test. We show how this can be obtained when a reference model for the data distribution can be assumed. We develop a flexible algorithm for constructing a robust GMM (RGMM) estimator leading to stable GMM test statistics. The amount ofrobustness can be controlled by an appropriate tuning constant. We relate by an explicit formula the choice of this constant to the maximal admissible bias on the level or (and) the power of a GMM test and the amount of contamination that one can reasonably assume given some information on the data. Finally, we illustrate the RGMM methodology with some simulations of an application to RGMM testing for conditional heteroscedasticity in a simple linear autoregressive model. In this example we find a significant instability of the size and the power of a classical GMM testing procedure under a non-normal conditional error distribution. On the other side, the RGMM testing procedures can control the size and the power of the test under non-standard conditions while maintaining a satisfactory power under an approximatively normal conditional error distribution.
机译:在统一的框架中研究了广义矩量法(GMM)估计器和大量基于GMM的测试的局部鲁棒性。当且仅当定义强加给基础模型的正交性约束的函数是有界的时,GMM统计数据才会显示出有限的影响。由于在许多应用中此功能是无限的,因此具有修改起始正交性条件的过程以获取可靠的aGMM估计器或测试版本非常有用。我们展示了当可以假设一个用于数据分布的参考模型时如何获得此结果。我们开发了一种灵活的算法,用于构造健壮的GMM(RGMM)估计量,从而获得稳定的GMM测试统计数据。鲁棒性的大小可以通过适当的调整常数来控制。我们通过一个明确的公式将这个常数的选择与GMM测试的水平或(和)功效的最大允许偏差以及一个人可以合理地假设在数据中提供一些信息的污染量相关联。最后,我们以简单的线性自回归模型中的条件异方差性的RGMM测试应用程序的一些模拟为例,说明RGMM方法。在此示例中,我们发现在非正态条件误差分布下,经典GMM测试程序的大小和功能存在很大的不稳定性。另一方面,RGMM测试程序可以在非标准条件下控制测试的大小和功效,同时在近似正常的条件误差分布下保持令人满意的功效。

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