High-dimensional matrix-variate time series data are becoming widely available in many scientific fields, such as economics, biology, and meteorology. To achieve significant dimension reduction while preserving the intrinsic matrix structure and temporal dynamics in such data, Wang et al. (2017) proposed a matrix factor model that is shown to provide effective analysis. In this paper, we establish a general framework for incorporating domain or prior knowledge in the matrix factor model through linear constraints. The proposed framework is shown to be useful in achieving parsimonious parameterization, facilitating interpretation of the latent matrix factor, and identifying specific factors of interest. Fully utilizing the prior-knowledge-induced constraints results in more efficient and accurate modeling, inference, dimension reduction as well as a clear and better interpretation of the results. In this paper, constrained, multi-term, and partially constrained factor models for matrix-variate time series are developed, with efficient estimation procedures and their asymptotic properties. We show that the convergence rates of the constrained factor loading matrices are much faster than those of the conventional matrix factor analysis under many situations. Simulation studies are carried out to demonstrate the finite-sample performance of the proposed method and its associated asymptotic properties. We illustrate the proposed model with three applications, where the constrained matrix-factor models outperform their unconstrained counterparts in the power of variance explanation under the out-of-sample 10-fold cross-validation setting.
翻译:在许多科学领域,例如经济学、生物学和气象学领域,高度矩阵变化时间序列数据正在广泛获得。为了在保持数据内在矩阵结构和时间动态的同时实现显著的减少维度,同时保持这些数据的内在矩阵结构和时间动态,王等人(2017年)提议了一个矩阵要素模型,以提供有效分析;在本文件中,我们为通过线性限制将域或先前知识纳入矩阵要素模型建立了一个总框架; 显示拟议的框架对于实现偏差参数化、便利对潜在矩阵要素的解释以及查明具体的利益因素很有用。充分利用先前知识引起的制约因素,导致更高效和准确地建模、推断、缩小维度以及对结果作出明确和更好的解释。在本文件中,为矩阵变化时间序列开发了受限、多期和部分受限的要素模型,并附有有效的估计程序及其细微特性。我们显示,受限要素装载矩阵的趋同率大大快于许多情况下常规矩阵要素分析的趋同率。进行模拟研究的目的是展示拟议方法的有限和准确性性,我们用拟议矩阵解释其不具有约束性的解释。