Vector autoregressive (VAR) models are popularly adopted for modelling high-dimensional time series, and their piecewise extensions allow for structural changes in the data. In VAR modelling, the number of parameters grow quadratically with the dimensionality which necessitates the sparsity assumption in high dimensions. However, it is debatable whether such an assumption is adequate for handling datasets exhibiting strong serial and cross-sectional correlations. We propose a piecewise stationary time series model that simultaneously allows for strong correlations as well as structural changes, where pervasive serial and cross-sectional correlations are accounted for by a time-varying factor structure, and any remaining idiosyncratic dependence between the variables is handled by a piecewise stationary VAR model. We propose an accompanying two-stage data segmentation methodology which fully addresses the challenges arising from the latency of the component processes. Its consistency in estimating both the total number and the locations of the change points in the latent components, is established under conditions considerably more general than those in the existing literature. We demonstrate the competitive performance of the proposed methodology on simulated datasets and an application to US blue chip stocks data.
翻译:用于模拟高维时间序列的矢量自动递减模型(VAR)被广泛采用,其片段扩展允许数据的结构变化。在VAR模型中,参数的数量随着维度的四倍增长,这就需要以高度的高度假设来假设。然而,这种假设是否足以处理显示强烈序列和跨部门关联的数据集,是值得商榷的。我们提议了一个小片的固定时间序列模型,既能同时产生强有力的相关性,又能进行结构变化,其中普遍存在的序列和跨部门相关关系由时间变化因素结构来计算,而变量之间任何尚存的特异性依赖性则由一个小片式的静止VAR模型来处理。我们建议了一种两阶段数据分解方法,以充分解决组成过程的悬浮性所带来的挑战。在估计潜在组成部分变化点的总数和位置方面的一致性,是在比现有文献中的条件更为普遍的条件下确定的。我们展示了模拟数据集的拟议方法和美国对蓝晶片储存的应用的竞争性表现。