基于相关高斯特征的上下文图匹配 / Contextual Graph Matching with Correlated Gaussian Features
1️⃣ 一句话总结
这篇论文研究了在节点和边的特征都相关的情况下,如何匹配两个高斯网络,首次严格揭示了结构信息和上下文信息如何共同影响匹配的精确度,并发现了比传统图匹配更丰富的恢复阈值现象。
We investigate contextual graph matching in the Gaussian setting, where both edge weights and node features are correlated across two networks. We derive precise information-theoretic thresholds for exact recovery, and identify conditions under which almost exact recovery is possible or impossible, in terms of graph and feature correlation strengths, the number of nodes, and feature dimension. Interestingly, whereas an all-or-nothing phase transition is observed in the standard graph-matching scenario, the additional contextual information introduces a richer structure: thresholds for exact and almost exact recovery no longer coincide. Our results provide the first rigorous characterization of how structural and contextual information interact in graph matching, and establish a benchmark for designing efficient algorithms.
基于相关高斯特征的上下文图匹配 / Contextual Graph Matching with Correlated Gaussian Features
这篇论文研究了在节点和边的特征都相关的情况下,如何匹配两个高斯网络,首次严格揭示了结构信息和上下文信息如何共同影响匹配的精确度,并发现了比传统图匹配更丰富的恢复阈值现象。
源自 arXiv: 2603.23305