We introduce space-time graph neural network (ST-GNN), a novel GNN architecture, tailored to jointly process the underlying space-time topology of time-varying network data. The cornerstone of our proposed architecture is the composition of time and graph convolutional filters followed by pointwise nonlinear activation functions. We introduce a generic definition of convolution operators that mimic the diffusion process of signals over its underlying support. On top of this definition, we propose space-time graph convolutions that are built upon a composition of time and graph shift operators. We prove that ST-GNNs with multivariate integral Lipschitz filters are stable to small perturbations in the underlying graphs as well as small perturbations in the time domain caused by time warping. Our analysis shows that small variations in the network topology and time evolution of a system does not significantly affect the performance of ST-GNNs. Numerical experiments with decentralized control systems showcase the effectiveness and stability of the proposed ST-GNNs.
翻译:我们引入了时空图形神经网络(ST-GNNN),这是一个新的GNN结构,专门为共同处理时间变化网络数据的基本时空表层而专门设计。我们拟议结构的基石是时间和图变过滤器的构成,然后是点向的非线性激活功能。我们引入了模拟信号扩散过程的卷动操作器通用定义。除了这一定义外,我们提议了基于时间和图变操作器构成的时空图变异。我们证明,带有多变量的利普施茨综合过滤器的ST-GNNNS 与基本图形中的小扰动以及时间范围因时间扭曲造成的小扰动是稳定的。我们的分析表明,一个系统的网络表态和时间演化的小变化并不显著影响ST-GNNS的性能。用分散式控制系统进行的数量化实验,展示了拟议的ST-GNNP的效能和稳定性。