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Efficient estimation for longitudinal data by combining large-dimensional moment conditions

机译:通过组合高维矩条件有效地估算纵向数据

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The quadratic inference function approach is able to provide a consistent and efficient estimator if valid moment conditions are available. However, the QIF estimator is unstable when the dimension of moment conditions is large compared to the sample size, due to the singularity problem for the estimated weighting matrix. We propose a new estimation procedure which combines all valid moment conditions optimally via the spectral decomposition of the weighting matrix. In theory, we show that the proposed method yields a consistent and efficient estimator which follows an asymptotic normal distribution. In addition, Monte Carlo studies indicate that the proposed method performs well in the sense of reducing bias and improving estimation efficiency. A real data example of Fortune 500 companies is used to compare the performance of the new method with existing methods.
机译:如果有效矩条件可用,则二次推断函数方法能够提供一致且有效的估计器。但是,由于矩量条件的维数与样本大小相比较大时,由于估计的加权矩阵的奇异性问题,QIF估计器不稳定。我们提出了一种新的估计程序,该程序通过加权矩阵的频谱分解将所有有效矩条件最佳地组合在一起。从理论上讲,我们证明了所提出的方法产生了一个一致且有效的估计器,该估计器遵循渐近正态分布。此外,蒙特卡洛研究表明,该方法在减少偏差和提高估计效率的意义上表现良好。使用《财富》 500强公司的真实数据示例将新方法与现有方法的性能进行比较。

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