cs.AI updates on arXiv.org 08月21日
Graph Structure Learning with Temporal Graph Information Bottleneck for Inductive Representation Learning
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本文提出GTGIB框架,结合图结构学习与时序图信息瓶颈,解决动态网络中节点和边随时间演化的问题,有效预测链接,优于现有方法。

arXiv:2508.14859v1 Announce Type: cross Abstract: Temporal graph learning is crucial for dynamic networks where nodes and edges evolve over time and new nodes continuously join the system. Inductive representation learning in such settings faces two major challenges: effectively representing unseen nodes and mitigating noisy or redundant graph information. We propose GTGIB, a versatile framework that integrates Graph Structure Learning (GSL) with Temporal Graph Information Bottleneck (TGIB). We design a novel two-step GSL-based structural enhancer to enrich and optimize node neighborhoods and demonstrate its effectiveness and efficiency through theoretical proofs and experiments. The TGIB refines the optimized graph by extending the information bottleneck principle to temporal graphs, regularizing both edges and features based on our derived tractable TGIB objective function via variational approximation, enabling stable and efficient optimization. GTGIB-based models are evaluated to predict links on four real-world datasets; they outperform existing methods in all datasets under the inductive setting, with significant and consistent improvement in the transductive setting.

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时序图学习 图结构学习 信息瓶颈 动态网络 链接预测
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