计算机科学
利用
修剪
数据挖掘
模块化(生物学)
公制(单位)
图形
理论计算机科学
农学
运营管理
计算机安全
遗传学
生物
经济
作者
Martin Atzmueller,Henry Soldano,Guillaume Santini,Dominique Bouthinon
标识
DOI:10.1109/icdmw.2018.00040
摘要
Local pattern mining on attributed graphs is an important and interesting research area combining ideas from network analysis and graph mining. In this paper, we present MinerLSD, a method for efficient local pattern mining on attributed graphs. In order to prevent the typical pattern explosion in pattern mining, we employ closed patterns for focusing pattern exploration. In addition, we exploit efficient techniques for pruning the pattern space: We adapt a local variant of the Modularity metric with optimistic estimates, and include graph abstractions. Our experiments on several standard datasets demonstrate the efficacy of our proposed novel method MinerLSD as an efficient method for local pattern mining on attributed graphs.
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