Department of Epileptology, University of Bonn Medical Centre, Venusberg Campus 1, 53127 Bonn, Germany; Helmholtz Institute for Radiation and Nuclear Physics, University of Bonn, Nussallee 14-16, 53115 Bonn, Germany; and Interdisciplinary Center for Complex Systems, University of Bonn, Brühler Straße 7, 53175 Bonn, Germany.
Chaos. 2023 Feb;33(2):022101. doi: 10.1063/5.0136181.
Ordinal time series analysis is based on the idea to map time series to ordinal patterns, i.e., order relations between the values of a time series and not the values themselves, as introduced in 2002 by C. Bandt and B. Pompe. Despite a resulting loss of information, this approach captures meaningful information about the temporal structure of the underlying system dynamics as well as about properties of interactions between coupled systems. This-together with its conceptual simplicity and robustness against measurement noise-makes ordinal time series analysis well suited to improve characterization of the still poorly understood spatiotemporal dynamics of the human brain. This minireview briefly summarizes the state-of-the-art of uni- and bivariate ordinal time-series-analysis techniques together with applications in the neurosciences. It will highlight current limitations to stimulate further developments, which would be necessary to advance characterization of evolving functional brain networks.
有序时间序列分析基于将时间序列映射到有序模式的思想,即时间序列的值之间的顺序关系,而不是值本身,这是由 C. Bandt 和 B. Pompe 于 2002 年引入的。尽管由此导致了信息的丢失,但这种方法可以捕获有关基础系统动态的时间结构以及关于耦合系统之间相互作用的特性的有意义的信息。这一点——加上其概念的简单性和对测量噪声的鲁棒性——使得有序时间序列分析非常适合于改善对人类大脑时空动态的理解仍较差的特征描述。这篇迷你评论简要总结了单变量和双变量有序时间序列分析技术的最新进展以及在神经科学中的应用。它将突出当前的局限性,以激发进一步的发展,这对于推进对不断发展的功能大脑网络的特征描述是必要的。