The fields of time series and graphical models emerged and advanced separately. Previous work on the structure learning of continuous and real-valued time series utilizes the time domain, with a focus on either structural autoregressive models or linear (non-)Gaussian Bayesian Networks. In contrast, we propose a novel frequency domain approach to identify a topological ordering and learn the structure of both real and complex-valued multivariate time series. In particular, we define a class of complex-valued Structural Causal Models (cSCM) at each frequency of the Fourier transform of the time series. Assuming that the time series is generated from the transfer function model, we show that the topological ordering and corresponding summary directed acyclic graph can be uniquely identified from cSCM. The performance of our algorithm is investigated using simulation experiments and real datasets.
翻译:时间序列和图形模型的领域分别出现和发展。以前关于连续和实值时间序列结构学习的工作使用时间域,侧重于结构自回归模型或线性(非)高斯贝叶斯网络。相反,我们提出了一种新颖的频域方法,用于识别复杂值多元时间序列的拓扑排序和结构学习。特别是,我们在时间序列的傅里叶变换的每个频率上定义了一类复杂值结构因果模型(cSCM)。假设时间序列是从传递函数模型中生成的,我们证明了拓扑排序和相应的摘要有向无环图可以从cSCM中唯一确定。我们使用模拟实验和实际数据集来研究算法的性能。