Weiß Christian H
Department of Mathematics and Statistics, Helmut Schmidt University, 22043 Hamburg, Germany.
Entropy (Basel). 2020 Apr 17;22(4):458. doi: 10.3390/e22040458.
For the modeling of categorical time series, both nominal or ordinal time series, an extension of the basic discrete autoregressive moving-average (ARMA) models is proposed. It uses an observation-driven regime-switching mechanism, leading to the family of RS-DARMA models. After having discussed the stochastic properties of RS-DARMA models in general, we focus on the particular case of the first-order RS-DAR model. This RS-DAR ( 1 ) model constitutes a parsimoniously parameterized type of Markov chain, which has an easy-to-interpret data-generating mechanism and may also handle negative forms of serial dependence. Approaches for model fitting are elaborated on, and they are illustrated by two real-data examples: the modeling of a nominal sequence from biology, and of an ordinal time series regarding cloudiness. For future research, one might use the RS-DAR ( 1 ) model for constructing parsimonious advanced models, and one might adapt techniques for smoother regime transitions.
对于分类时间序列(包括名义或有序时间序列)的建模,本文提出了基本离散自回归移动平均(ARMA)模型的一种扩展。它采用了一种由观测驱动的状态切换机制,从而引出了RS-DARMA模型族。在总体讨论了RS-DARMA模型的随机性质之后,我们将重点关注一阶RS-DAR模型的特殊情况。这种RS-DAR(1)模型构成了一种参数简约的马尔可夫链类型,它具有易于解释的数据生成机制,并且还可以处理负形式的序列相关性。文中详细阐述了模型拟合方法,并通过两个实际数据示例进行说明:一个来自生物学的名义序列建模,以及一个关于云量的有序时间序列建模。对于未来的研究,可以使用RS-DAR(1)模型构建简约的高级模型,也可以采用技术实现更平滑的状态转换。