Observations in various applications are frequently represented as a time series of multidimensional arrays, called tensor time series, preserving the inherent multidimensional structure. In this paper, we present a factor model approach, in a form similar to tensor CP decomposition, to the analysis of high-dimensional dynamic tensor time series. As the loading vectors are uniquely defined but not necessarily orthogonal, it is significantly different from the existing tensor factor models based on Tucker-type tensor decomposition. The model structure allows for a set of uncorrelated one-dimensional latent dynamic factor processes, making it much more convenient to study the underlying dynamics of the time series. A new high order projection estimator is proposed for such a factor model, utilizing the special structure and the idea of the higher order orthogonal iteration procedures commonly used in Tucker-type tensor factor model and general tensor CP decomposition procedures. Theoretical investigation provides statistical error bounds for the proposed methods, which shows the significant advantage of utilizing the special model structure. Simulation study is conducted to further demonstrate the finite sample properties of the estimators. Real data application is used to illustrate the model and its interpretations.
翻译:各种应用中的观测经常被作为多维阵列的时间序列来呈现,称为“高时序时间序列”,以维护内在的多维结构。在本文中,我们为分析高维动态阵列提供了一种要素模型方法,其形式与高维动态阵列分解类似。由于载荷矢量的定义独特,但不一定是正方形的,因此与基于塔克型的阵列分解的现有阵列变数系数模型大不相同。模型结构允许建立一套不相干的单维潜伏动力因素程序,从而更方便地研究时序序列的基本动态。为这种要素模型提出了一个新的高顺序预测估计估计值,利用了在塔克型的阵列因子模型和一般阵列的阵列分化程序中常用的特殊结构和更高顺序或高度变相程序的概念。理论调查为拟议方法提供了统计错误的界限,显示了利用特别模型结构的重大优势。模拟研究是为了进一步展示估量器的有限抽样特性。实际数据解释用于说明模型和模型。