论文标题
多元时间序列中的深度动态有效连通性估计
Deep Dynamic Effective Connectivity Estimation from Multivariate Time Series
论文作者
论文摘要
最近,将数据表示为图形的方法,例如图形神经网络(GNN),已成功用于学习数据表示和结构,以求解分类并链接预测问题。这种方法的应用是巨大而多样的,但是当前的大多数工作都依赖于静态图的假设。对于许多高度动态的系统,基础连通性结构是非平稳的,并且大多未观察到。在这些情况下,使用静态模型可能会导致次优性能。相比之下,图表结构随时间的变化可以提供有关应用程序超出分类的系统的信息。这种类型的大多数工作都不学习有效的连接性,并专注于节点之间的互相关以生成无方向的图。一个无向图无法捕获在包括神经科学在内的许多领域至关重要的相互作用的方向。为了弥合这一差距,我们通过神经网络培训(DECENNT)开发了动态有效的连通性估计,这是一种新型模型,以学习由下游分类/预测任务引起的可解释的定向和动态图。 DECENNT在五个不同的任务上优于最新方法(SOTA)方法,并渗透了可解释的特定任务的动态图。功能神经影像学数据与现有文献良好相符,并提供其他信息,从功能神经影像学数据中推断出的动态图。此外,DECENNT的时间注意模块确定了多变量时间序列数据的预测下游任务至关重要的时间间隔。
Recently, methods that represent data as a graph, such as graph neural networks (GNNs) have been successfully used to learn data representations and structures to solve classification and link prediction problems. The applications of such methods are vast and diverse, but most of the current work relies on the assumption of a static graph. This assumption does not hold for many highly dynamic systems, where the underlying connectivity structure is non-stationary and is mostly unobserved. Using a static model in these situations may result in sub-optimal performance. In contrast, modeling changes in graph structure with time can provide information about the system whose applications go beyond classification. Most work of this type does not learn effective connectivity and focuses on cross-correlation between nodes to generate undirected graphs. An undirected graph is unable to capture direction of an interaction which is vital in many fields, including neuroscience. To bridge this gap, we developed dynamic effective connectivity estimation via neural network training (DECENNT), a novel model to learn an interpretable directed and dynamic graph induced by the downstream classification/prediction task. DECENNT outperforms state-of-the-art (SOTA) methods on five different tasks and infers interpretable task-specific dynamic graphs. The dynamic graphs inferred from functional neuroimaging data align well with the existing literature and provide additional information. Additionally, the temporal attention module of DECENNT identifies time-intervals crucial for predictive downstream task from multivariate time series data.