Understanding and quantifying node importance is a fundamental problem in network science and engineering, underpinning a wide range of applications such as influence maximization, social recommendation, and network dismantling. Prior research often relies on centrality measures or advanced graph embedding techniques using structural information, followed by downstream classification or regression tasks to identify critical nodes. However, these methods typically decouple node representation learning from the ranking objective and rely on the topological structure of target networks, leading to feature-task inconsistency and limited generalization across networks. This paper proposes a novel framework that leverages causal representation learning to get robust, invariant node embeddings for cross-network ranking tasks. Firstly, we introduce an influence-aware causal node embedding module within an autoencoder architecture to extract node embeddings that are causally related to node importance. Moreover, we introduce a causal ranking loss and design a unified optimization framework that jointly optimizes the reconstruction and ranking objectives, enabling mutual reinforcement between node representation learning and ranking optimization. This design allows the proposed model to be trained on synthetic networks and to generalize effectively across diverse real-world networks. Extensive experiments on multiple benchmark datasets demonstrate that the proposed model consistently outperforms state-of-the-art baselines in terms of both ranking accuracy and cross-network transferability, offering new insights for network analysis and engineering applications-particularly in scenarios where the target network's structure is inaccessible in advance due to privacy or security constraints.
翻译:理解和量化节点重要性是网络科学与工程中的一个基础问题,支撑着影响力最大化、社交推荐和网络拆解等广泛应用。先前研究通常依赖中心性度量或利用结构信息的先进图嵌入技术,随后通过下游分类或回归任务来识别关键节点。然而,这些方法通常将节点表示学习与排序目标解耦,并依赖于目标网络的拓扑结构,导致特征与任务不一致,且跨网络泛化能力有限。本文提出了一种新颖框架,利用因果表示学习来获得鲁棒、不变的节点嵌入,以用于跨网络排序任务。首先,我们在自编码器架构中引入一个影响力感知因果节点嵌入模块,以提取与节点重要性因果相关的节点嵌入。此外,我们引入了因果排序损失,并设计了一个统一的优化框架,联合优化重构和排序目标,实现节点表示学习与排序优化的相互增强。这一设计使得所提模型能够在合成网络上训练,并在多样化的现实世界网络中有效泛化。在多个基准数据集上的大量实验表明,所提模型在排序准确性和跨网络可迁移性方面均持续优于最先进的基线方法,为网络分析和工程应用提供了新的见解——特别是在由于隐私或安全约束而无法预先获取目标网络结构的场景中。