The Granular Instrumental Variables (GIV) methodology exploits panels with factor error structures to construct instruments to estimate structural time series models with endogeneity even after controlling for latent factors. We extend the GIV methodology in several dimensions. First, we extend the identification procedure to a large $N$ and large $T$ framework, which depends on the asymptotic Herfindahl index of the size distribution of $N$ cross-sectional units. Second, we treat both the factors and loadings as unknown and show that the sampling error in the estimated instrument and factors is negligible when considering the limiting distribution of the structural parameters. Third, we show that the sampling error in the high-dimensional precision matrix is negligible in our estimation algorithm. Fourth, we overidentify the structural parameters with additional constructed instruments, which leads to efficiency gains. Monte Carlo evidence is presented to support our asymptotic theory and application to the global crude oil market leads to new results.
翻译:显性乐器变量(GIV)方法利用带有因数错误结构的面板来建立工具,以估计结构时间序列模型,即使对潜在因素进行了控制,也能够以内源性来估计结构时间序列模型。我们将GIV方法扩大到几个方面。首先,我们将识别程序扩大到一个大美元和大美元的框架,这取决于以美元为单位的跨部门单位的大小分布的零星Herfindahl指数。第二,我们将各种因素和负荷都视为未知因素,并表明在考虑限制结构参数分布时,估计仪器和因素中的抽样错误微不足道。第三,我们表明高维精确矩阵中的抽样错误在我们的估计算法中微不足道。第四,我们用其他建筑工具来过度识别结构参数,从而提高效率。Monte Carlo提供了证据,以支持我们在全球原油市场中的无源理论和应用,并导致新的结果。