Shen Cong, Liu Xiang, Luo Jiawei, Xia Kelin
IEEE Trans Pattern Anal Mach Intell. 2025 Apr;47(4):2946-2956. doi: 10.1109/TPAMI.2025.3528449. Epub 2025 Mar 6.
Geometric deep learning (GDL) models have demonstrated a great potential for the analysis of non-Euclidian data. They are developed to incorporate the geometric and topological information of non-Euclidian data into the end-to-end deep learning architectures. Motivated by the recent success of discrete Ricci curvature in graph neural network (GNNs), we propose TorGNN, an analytic Torsion enhanced Graph Neural Network model. The essential idea is to characterize graph local structures with an analytic torsion based weight formula. Mathematically, analytic torsion is a topological invariant that can distinguish spaces which are homotopy equivalent but not homeomorphic. In our TorGNN, for each edge, a corresponding local simplicial complex is identified, then the analytic torsion (for this local simplicial complex) is calculated, and further used as a weight (for this edge) in message-passing process. Our TorGNN model is validated on link prediction tasks from sixteen different types of networks and node classification tasks from four types of networks. It has been found that our TorGNN can achieve superior performance on both tasks, and outperform various state-of-the-art models. This demonstrates that analytic torsion is a highly efficient topological invariant in the characterization of graph structures and can significantly boost the performance of GNNs.
几何深度学习(GDL)模型在非欧几里得数据的分析中展现出了巨大潜力。它们的开发目的是将非欧几里得数据的几何和拓扑信息融入到端到端的深度学习架构中。受离散里奇曲率在图神经网络(GNNs)中近期成功的启发,我们提出了TorGNN,一种解析挠率增强图神经网络模型。其核心思想是用基于解析挠率的权重公式来刻画图的局部结构。在数学上,解析挠率是一种拓扑不变量,它可以区分同伦等价但不同胚的空间。在我们的TorGNN中,对于每条边,确定一个相应的局部单纯复形,然后计算(该局部单纯复形的)解析挠率,并在消息传递过程中进一步用作(这条边的)权重。我们的TorGNN模型在来自16种不同类型网络的链路预测任务和来自4种类型网络的节点分类任务上得到了验证。研究发现,我们的TorGNN在这两项任务上都能取得卓越性能,并且优于各种当前的先进模型。这表明解析挠率在刻画图结构方面是一种高效的拓扑不变量,并且能够显著提升GNNs的性能。