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首页> 外文期刊>Journal of Econometrics >Simultaneous selection and weighting of moments in GMM using a trapezoidal kernel
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Simultaneous selection and weighting of moments in GMM using a trapezoidal kernel

机译:使用梯形核同时选择和加权GMM中的矩

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This paper proposes a novel procedure to estimate linear models when the number of instruments is large. At the heart of such models is the need to balance the trade off between attaining asymptotic efficiency, which requires more instruments, and minimizing bias, which is adversely affected by the addition of instruments. Two questions are of central concern: (1) What is the optimal number of instruments to use? (2) Should the instruments receive different weights? This paper contains the followingcontributions toward resolving these issues. First, I propose a kernel weighted generalized method of moments (GMM) estimator that uses a trapezoidal kernel. This kernel turns out to be attractive to select and weight the number of moments. Second, I derive the higher order mean squared error of the kernel weighted GMM estimator and show that the trapezoidal kernel generates a lower asymptotic variance than regular kernels. Finally, Monte Carlo simulations show that in finite samples the kernel weightedGMM estimator performs on par with other estimators that choose optimal instruments and improves upon a GMM estimator that uses all instruments.
机译:本文提出了一种新的方法来估计大量仪器时的线性模型。这种模型的核心是需要在需要更多工具的渐近效率与最小化偏差之间权衡取舍,渐进效率需要增加工具才能达到。有两个主要问题需要关注:(1)使用的最佳仪器数量是多少? (2)仪器应承受不同的重量吗?本文包含以下对解决这些问题的贡献。首先,我提出了一种使用梯形核的核加权矩量广义矩估计器(GMM)。事实证明,选择并加权矩数很有吸引力。其次,我推导了核加权GMM估计量的高阶均方误差,并表明梯形核比常规核产生了更低的渐近方差。最后,蒙特卡洛模拟显示,在有限样本中,内核加权GMM估计器与选择最佳工具的其他估计器性能相当,并且在使用所有工具的GMM估计器上均得到了改进。

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