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arXiv 提交日期: 2026-04-27
📄 Abstract - Latent-Hysteresis Graph ODEs: Modeling Coupled Topology-Feature Evolution via Continuous Phase Transitions

Graph neural ordinary differential equations (Graph ODEs) extend graph learning from discrete message-passing layers to continuous-time representation flows. While it supports adaptive long-range propagation, we show that Graph ODEs with strictly positive irreducible mixing operators face an inherent \emph{monostability trap}: in the long-time regime, information leakage is unavoidable and the dynamics converge to a single global consensus attractor. We propose the \textbf{Hysteresis Graph ODE (HGODE)}, which couples feature evolution with a latent topological potential driven by a learned pairwise force. A double-well edge potential and bipolarized gate allow edge states to polarize into connected or insulated phases while preserving differentiability. We provide asymptotic analysis of the collapse mechanism and the proposed hysteretic topology dynamics, and validate HGODE on theory-driven synthetic diagnostics and real-world graph benchmarks.

顶级标签: machine learning theory
详细标签: graph ode latent dynamics phase transition topology evolution information leakage 或 搜索:

滞后图神经网络常微分方程:通过连续相变建模耦合的拓扑-特征演化 / Latent-Hysteresis Graph ODEs: Modeling Coupled Topology-Feature Evolution via Continuous Phase Transitions


1️⃣ 一句话总结

本文提出一种新型图神经网络模型(HGODE),通过引入可学习的双稳态门控机制和潜在拓扑力,解决了传统图ODE模型长期演化中所有节点特征趋于一致的“信息泄漏”问题,使图的连接结构与节点特征能够协同演化,并保持可微性以支持端到端学习。

源自 arXiv: 2604.24293