Dynamic Graph Neural Networks recently became more and more important as graphs from many scientific fields, ranging from mathematics, biology, social sciences, and physics to computer science, are dynamic by nature. While temporal changes (dynamics) play an essential role in many real-world applications, most of the models in the literature on Graph Neural Networks (GNN) process static graphs. The few GNN models on dynamic graphs only consider exceptional cases of dynamics, e.g., node attribute-dynamic graphs or structure-dynamic graphs limited to additions or changes to the graph's edges, etc. Therefore, we present a novel Fully Dynamic Graph Neural Network (FDGNN) that can handle fully-dynamic graphs in continuous time. The proposed method provides a node and an edge embedding that includes their activity to address added and deleted nodes or edges, and possible attributes. Furthermore, the embeddings specify Temporal Point Processes for each event to encode the distributions of the structure- and attribute-related incoming graph events. In addition, our model can be updated efficiently by considering single events for local retraining.
翻译:由于从数学、生物学、社会科学和物理学到计算机科学等许多科学领域的图表都具有自然的动态性质,动态神经网络最近变得越来越重要。时间变化(动力学)在许多现实应用中起着重要作用,而图形神经网络(GNN)进程静态图形文献中的大多数模型都发挥了至关重要的作用。动态图形中的少数GNN模型只考虑特殊的动态案例,例如节点属性动态图表或结构动态图表,仅限于对图形边缘的添加或变化等等。因此,我们提出了一个新型的全动态图形神经网络(FDGNN),可以在连续的时间处理全动态图形。拟议方法提供了一个节点和边缘嵌入,其中包括它们用于添加和删除节点或边缘的活动,以及可能的属性。此外,嵌入式还指定了每个事件的时间点进程,以编码结构和属性相关图表事件的分布。此外,我们的模型可以通过考虑单项事件进行本地再培训来有效更新。