Isomorphic Graph Embedding for Progressive Maximal Frequent Subgraph Mining

子图同构问题 计算机科学 嵌入 诱导子图同构问题 子程序 理论计算机科学 图因式分解 图形 人工智能 折线图 电压图 操作系统
作者
Thanh Toan Nguyen,Thành Tâm Nguyên,Thanh Hung Nguyen,Hongzhi Yin,Thanh Thi Nguyen,Jun Jo,Quoc Viet Hung Nguyen
出处
期刊:ACM Transactions on Intelligent Systems and Technology [Association for Computing Machinery]
卷期号:15 (1): 1-26
标识
DOI:10.1145/3630635
摘要

Maximal frequent subgraph mining (MFSM) is the task of mining only maximal frequent subgraphs, i.e., subgraphs that are not a part of other frequent subgraphs. Although many intelligent systems require MFSM, MFSM is challenging compared to frequent subgraph mining (FSM), as maximal frequent subgraphs lie in the middle of graph lattice, and FSM algorithms must explore an exponential space and an NP-hard subroutine of frequency counting. Different from prior research, which primarily focused on optimal solutions, we introduce pmMine, a progressive graph neural framework designed for MFSM in a single large graph to attain an approximate solution. The framework combines isomorphic graph embedding, non-parametric partitioning, and an efficiently top-down pattern searching strategy. The critical insight that makes pmMine work is to define the concepts of rooted subgraph and isomorphic graph embedding, in which the costly isomorphism subroutine can be efficiently performed using similarity estimation in embedding space. In addition, pmMine returns the patterns identified during the mining process in a progressive manner. We validate the efficiency and effectiveness of our technique through extensive experiments on a variety of datasets spanning various domains.
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