General spatio-temporal factor models for high-dimensional random fields on a lattice
提出一种通用时空因子模型(GSTFM),用于分析大规模时空面板数据,将随机场分解为共同成分和异质成分,并给出估计方法和理论保证,适用于经济学等领域的时空数据分析。
Motivated by the need for analysing large spatio-temporal panel data, we introduce a novel nonparametric methodology for n-dimensional random fields observed across S spatial locations and T time periods. We call it general spatio-temporal factor model (GSTFM). First, we provide the probabilistic and mathematical underpinning needed for the representation of a random field as the sum of two components: the common component (driven by a small number q of latent factors) and the idiosyncratic component (mildly cross-correlated). We show that the two components are identified as n→∞. Second, we propose an estimator of the common component and derive its statistical guarantees (consistency and rate of convergence) as min(n,S,T)→∞. Third, we propose an information criterion to determine the number of factors. Estimation makes use of Fourier analysis in the frequency domain and thus it fully exploits the information on the spatio-temporal covariance structure of the whole panel. Synthetic data examples illustrate the applicability of GSTFM and its advantages over the extant generalized dynamic factor model that ignores the spatial correlations.