T-GINEE:基于张量的多层图表示学习 / T-GINEE: A Tensor-Based Multilayer Graph Representation Learning
1️⃣ 一句话总结
本文提出了一种名为T-GINEE的统计学习框架,通过张量分解巧妙地捕捉多层网络中不同层之间的依赖关系,从而更准确地分析现实世界中如社交或交通网络等多类型关系的复杂系统。
Traditional network analysis focuses on single-layer networks, real-world systems often form multilayer networks with multiple relationship types. However, existing methods typically fail to capture complex inter-layer dependencies by treating layers independently or aggregating them. To address this, we propose T-GINEE (Tensor-Based Generalized Multilayer-graph Estimating Equation), a statistical regularization framework combining tensor-based generalized estimating equations with task-specific loss to model cross-network correlations explicitly. Key innovations include: (1) CP tensor decomposition capturing structural dependencies via shared latent factors; (2) a generalized estimating equation framework modeling inter-layer correlations through working covariance matrices; and (3) a flexible link function accommodating characteristics like sparsity. Our theoretical analysis establishes consistency and asymptotic normality under mild conditions. Extensive experiments on synthetic and real-world datasets validate T-GINEE's effectiveness for multilayer network analysis.
T-GINEE:基于张量的多层图表示学习 / T-GINEE: A Tensor-Based Multilayer Graph Representation Learning
本文提出了一种名为T-GINEE的统计学习框架,通过张量分解巧妙地捕捉多层网络中不同层之间的依赖关系,从而更准确地分析现实世界中如社交或交通网络等多类型关系的复杂系统。
源自 arXiv: 2605.28300