On modeling of tall linear systems with multirate outputs

M. Zamani, B. Anderson, Elisabeth Felsenstein, M. Deistler
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Abstract

Motivated by problems of modeling high dimensional time series, this paper considers time-invariant, discrete-time linear systems which have a larger number of outputs than inputs, with the inputs being independent stationary white noise sequences. Moreover, different outputs are measured at different rates (in economic modeling, it is common that some variables are measured monthly and others quarterly). In particular, the paper focuses on the case where the number of measurements is extremely large compared to the number of inputs. In the current paper, our ultimate goal is to identify the parameter matrices of such systems from outputs covariance data. To achieve this main goal and avoid excessively high dimensionality in the model, we use the notion of static factor, which roughly is a special subvector of the latent vector i.e. those parts of output vector remaining after removal of contaminating additive noise in the measurement. Since the model associated with the static factor is periodic in the output parameters, we use the well-known technique of blocking to obtain a blocked linear time-invariant system associated with this model. It is illustrated that this blocked system is generically zero-free. Then we use the spectral factorization technique to obtain the parameter matrices associated with the blocked system. These parameter matrices can be obtained by a finite number of rational calculations from the spectral matrix due to the generic zero-freeness of tall spectral matrices. Finally, we use the parameter matrices associated with the blocked system to obtain the parameter matrices associated with the static factor and ultimately those of the original underlying unblocked system.
具有多速率输出的高线性系统的建模
受高维时间序列建模问题的启发,本文考虑了输出多于输入的时不变离散线性系统,输入为独立平稳白噪声序列。此外,不同的产出以不同的速率测量(在经济建模中,一些变量通常是按月测量,而另一些是按季度测量)。特别地,本文着重于测量的数量与输入的数量相比非常大的情况。在本文中,我们的最终目标是从输出的协方差数据中识别出这种系统的参数矩阵。为了实现这一主要目标并避免模型中的维度过高,我们使用了静态因子的概念,它大致是潜在向量的一个特殊子向量,即去除测量中污染的加性噪声后输出向量的剩余部分。由于与静态因子相关的模型在输出参数中是周期性的,我们使用众所周知的阻塞技术来获得与该模型相关的阻塞线性时不变系统。证明了该阻塞系统是一般无零的。然后利用谱分解技术得到与阻塞系统相关的参数矩阵。由于高谱矩阵的一般零自由性,这些参数矩阵可以由谱矩阵进行有限次有理计算得到。最后,我们使用与阻塞系统相关的参数矩阵来获得与静态因子相关的参数矩阵,并最终获得原始底层无阻塞系统的参数矩阵。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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