Tensor time series data appears naturally in a lot of fields, including finance and economics. As a major dimension reduction tool, similar to its factor model counterpart, the idiosyncratic components of a tensor time series factor model can exhibit serial correlations, especially in financial and economic applications. This rules out a lot of state-of-the-art methods that assume white idiosyncratic components, or even independent/Gaussian data. While the traditional higher order orthogonal iteration (HOOI) is proved to be convergent to a set of factor loading matrices, the closeness of them to the true underlying factor loading matrices are in general not established, or only under some strict circumstances like having i.i.d. Gaussian noises (Zhang and Xia, 2018). Under the presence of serial and cross-correlations in the idiosyncratic components and time series variables with only bounded fourth order moments, we propose a pre-averaging method that accumulates information from tensor fibres for better estimating all the factor loading spaces. The estimated directions corresponding to the strongest factors are then used for projecting the data for a potentially improved re-estimation of the factor loading spaces themselves, with theoretical guarantees and rate of convergence spelt out. We also propose a new rank estimation method which utilizes correlation information from the projected data, in the same spirit as Fan, Guo and Zheng (2022) for factor models with independent data. Extensive simulation results reveal competitive performance of our rank and factor loading estimators relative to other state-of-the-art or traditional alternatives. A set of matrix-valued portfolio return data is also analyzed.
翻译:在很多领域,包括金融和经济学领域,塔面时间序列数据自然地出现在许多领域,包括金融和经济领域。作为主要的降低维度工具,类似于其要素模型,一个高时序列要素模型的特异性综合构件可以显示序列相关关系,特别是在金融和经济应用方面。这排除了许多最先进的方法,这些最先进的方法可以假定白色特异性结构组成部分,甚至独立/毛利数据。虽然传统较高的顺序或直线迭代(HOOI)被证明会与一套要素装载矩阵相融合,但它们与真正的基本要素装载矩阵的接近性能一般没有建立,或者只是在一些严格的情况下,例如有i.d.d.高斯的噪音(张和夏亚,2018年)。由于存在一系列和交叉的特异性成分和时间序列变量,我们提出了一种预变法方法,即从高光纤维中收集信息,以更好地估计所有要素装载空间的回流,它们与真实的基面值相对值矩阵结果的接近,或者仅在某些严格情况下,在某种最精确的递化模型中,我们用来预测一个最精确的递化数据流数据,用来预测一个比重数据。