Robustness in complex systems is of significant engineering and economic importance. However, conventional attack-based a posteriori robustness assessments incur prohibitive computational overhead. Recently, deep learning methods, such as Convolutional Neural Networks (CNNs) and Graph Neural Networks (GNNs), have been widely employed as surrogates for rapid robustness prediction. Nevertheless, these methods neglect the complex higher-order correlations prevalent in real-world systems, which are naturally modeled as hypergraphs. Although Hypergraph Neural Networks (HGNNs) have been widely adopted for hypergraph learning, their topological expressive power has not yet reached the theoretical upper bound. To address this limitation, inspired by Graph Isomorphism Networks, this paper proposes a hypergraph-level Hypergraph Isomorphism Network framework. Theoretically, this approach is proven to possess an expressive power strictly equivalent to the Hypergraph Weisfeiler-Lehman test and is applied to predict hypergraph robustness. Experimental results demonstrate that while maintaining superior efficiency in training and prediction, the proposed method not only outperforms existing graph-based models but also significantly surpasses conventional HGNNs in tasks that prioritize topological structure representation.
翻译:复杂系统的鲁棒性具有重要的工程与经济意义。然而,传统的基于攻击的后验鲁棒性评估方法会产生极高的计算开销。近年来,卷积神经网络(CNN)和图神经网络(GNN)等深度学习方法已被广泛用作快速鲁棒性预测的替代模型。然而,这些方法忽略了现实系统中普遍存在的复杂高阶关联,而这些关联自然地以超图进行建模。尽管超图神经网络(HGNN)已被广泛用于超图学习,但其拓扑表达能力尚未达到理论上限。为突破此限制,本文受图同构网络启发,提出了一种超图级的超图同构网络框架。理论上,该方法被证明具有与超图Weisfeiler-Lehman测试严格等同的表达能力,并被应用于预测超图鲁棒性。实验结果表明,在保持优异训练与预测效率的同时,所提方法不仅在性能上超越了现有的基于图的模型,而且在强调拓扑结构表示的任务中显著优于传统的超图神经网络。