Banded Spatio-Temporal Autoregressions

Zhaoxing Gao, Yingying Ma, Hansheng Wang, Qiwei Yao
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引用次数: 24

Abstract

We propose a new class of spatio-temporal models with unknown and banded autoregressive coefficient matrices. The setting represents a sparse structure for high-dimensional spatial panel dynamic models when panel members represent economic (or other type) individuals at many different locations. The structure is practically meaningful when the order of panel members is arranged appropriately. Note that the implied autocovariance matrices are unlikely to be banded, and therefore, the proposal is radically different from the existing literature on the inference for high-dimensional banded covariance matrices. Due to the innate endogeneity, we apply the least squares method based on a Yule-Walker equation to estimate autoregressive coefficient matrices. The estimators based on multiple Yule-Walker equations are also studied. A ratio-based method for determining the bandwidth of autoregressive matrices is also proposed. Some asymptotic properties of the inference methods are established. The proposed methodology is further illustrated using both simulated and real data sets.
带状时空自回归
我们提出了一类具有未知和带状自回归系数矩阵的时空模型。当小组成员代表许多不同地点的经济(或其他类型)个体时,设置代表高维空间小组动态模型的稀疏结构。在适当安排小组成员的顺序时,这种结构具有实际意义。请注意,隐含的自协方差矩阵不太可能是带状的,因此,该建议与现有文献中关于高维带状协方差矩阵的推理有根本不同。由于固有的内生性,我们采用基于Yule-Walker方程的最小二乘法来估计自回归系数矩阵。研究了基于多个Yule-Walker方程的估计量。提出了一种确定自回归矩阵带宽的基于比率的方法。建立了推理方法的一些渐近性质。采用模拟和真实数据集进一步说明了所提出的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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