We consider to model matrix time series based on a tensor CP-decomposition. Instead of using an iterative algorithm which is the standard practice for estimating CP-decompositions, we propose a new and one-pass estimation procedure based on a generalized eigenanalysis constructed from the serial dependence structure of the underlying process. To overcome the intricacy of solving a rank-reduced generalized eigenequation, we propose a further refined approach which projects it into a lower-dimensional full-ranked eigenequation. This refined method improves significantly the finite-sample performance of the estimation. The asymptotic theory has been established under a general setting without the stationarity. It shows, for example, that all the component coefficient vectors in the CP-decomposition are estimated consistently with certain convergence rates. The proposed model and the estimation method are also illustrated with both simulated and real data; showing effective dimension-reduction in modelling and forecasting matrix time series.
翻译:我们考虑在高压CP分解法的基础上模拟矩阵时间序列。我们不采用作为估计CP分解法标准做法的迭代算法,而是根据从基本过程的序列依赖结构中得出的普遍诊断法,提出一个新的和一次性的估计程序。为了克服解决降级普遍分解法的复杂性,我们提议进一步改进的方法,将之投射为低维全排分解法。这一精细方法大大改进了估算的有限抽样性能。在一般设置下建立了无定点性的无症状理论。它表明,例如,CP分解法中的所有构件系数矢量都是与某些趋同率一致的。还用模拟数据和真实数据来说明拟议的模型和估计方法;在模型和预测矩阵时间序列中显示有效的减少维度。