FR3.R7.1

Exact Graph Matching in Correlated Gaussian-Attributed Erdos-Renyi Model

Joonhyuk Yang, Hye Won Chung, Korea Advanced Institute of Science and Technology(KAIST), Korea (South)

Session:
Graph Theory and Analytics

Track:
21: Other topics

Location:
VIP

Presentation Time:
Fri, 12 Jul, 14:35 - 14:55

Session Chair:
Violetta Weger, Technical university Munich
Abstract
Graph matching problem aims to identify node correspondence between two or more correlated graphs. Previous studies have primarily focused on models where only edge information is provided. However, in many social networks, not only the relationships between users, represented by edges, but also their personal information, represented by features, are present. In this paper, we address the challenge of identifying node correspondence in correlated graphs, where additional node features exist, as in many real-world settings. We propose a two-step procedure, where we initially match a subset of nodes only using edge information, and then match the remaining nodes using node features. We derive information-theoretic limits for exact graph matching on this model. Our approach provides a comprehensive solution to the real-world graph matching problem by providing systematic ways to utilize both edge and node information for exact matching of the graphs.
Resources