Subgraph GNNs are a recent class of expressive Graph Neural Networks (GNNs) which model graphs as collections of subgraphs. So far, the design space of possible Subgraph GNN architectures as well as their basic theoretical properties are still largely unexplored. In this paper, we study the most prominent form of subgraph methods, which employs node-based subgraph selection policies such as ego-networks or node marking and deletion. We address two central questions: (1) What is the upper-bound of the expressive power of these methods? and (2) What is the family of equivariant message passing layers on these sets of subgraphs?. Our first step in answering these questions is a novel symmetry analysis which shows that modelling the symmetries of node-based subgraph collections requires a significantly smaller symmetry group than the one adopted in previous works. This analysis is then used to establish a link between Subgraph GNNs and Invariant Graph Networks (IGNs). We answer the questions above by first bounding the expressive power of subgraph methods by 3-WL, and then proposing a general family of message-passing layers for subgraph methods that generalises all previous node-based Subgraph GNNs. Finally, we design a novel Subgraph GNN dubbed SUN, which theoretically unifies previous architectures while providing better empirical performance on multiple benchmarks.
翻译:Subgraph GNNs 是最近一类的表达式图像神经网络(GNNs), 以图示图解为子集集。 到目前为止, 可能的Subgraph GNN 建筑的设计空间及其基本理论属性基本上尚未探索。 在本文中, 我们研究最突出的子谱方法形式, 采用自利网络或节点标记和删除等基于节点的子集选择政策。 我们处理两个核心问题:(1) 这些方法的表达力的上限是什么? 和 (2) 这些子集的平面传递层的等等异差信息的组合是什么? 我们回答这些问题的第一步是: 以3- WNNNN 结构及其基本理论属性的设计空间设计空间的设计空间的设计空间为新颖。 建模基于子集的子集需要比以前作品中采用的要小得多的对称组。 然后, 这个分析被用来在子集 GNNNP 和基于前几层的子系统设计结构中, 提出前几层的S- NBS 子系统, 然后提出一个子结构的子系统, 提供前一层次的系统结构的子结构的子结构, 。