Efficient and High-Quality Seeded Graph Matching: Employing High Order Structural Information
Haida Zhang, Zengfeng Huang, Xuemin Lin, Zhe Lin, Wenjie Zhang, Ying, Zhang

TL;DR
This paper introduces a novel seeded graph matching framework that leverages high order structural information and a postponing strategy, significantly improving accuracy and scalability over existing methods on large real-world networks.
Contribution
The paper proposes a new framework utilizing high order neighboring information and a postponing strategy with PPR to enhance seeded graph matching accuracy and efficiency.
Findings
Improves matching precision and recall significantly.
Achieves over tenfold speed-up on large datasets.
Outperforms state-of-the-art methods in accuracy and efficiency.
Abstract
Driven by many real applications, we study the problem of seeded graph matching. Given two graphs and , and a small set of pre-matched node pairs where and , the problem is to identify a matching between and growing from , such that each pair in the matching corresponds to the same underlying entity. Recent studies on efficient and effective seeded graph matching have drawn a great deal of attention and many popular methods are largely based on exploring the similarity between local structures to identify matching pairs. While these recent techniques work well on random graphs, their accuracy is low over many real networks. Motivated by this, we propose to utilize high order neighboring information to improve the matching accuracy. As a result, a new framework of seeded graph matching is proposed,…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Caching and Content Delivery · Graph Theory and Algorithms
