ORIGAMI: Mining Representative Orthogonal Graph Patterns

M. Hasan, V. Chaoji, Saeed Salem, J. Besson, Mohammed J. Zaki
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引用次数: 84

Abstract

In this paper, we introduce the concept of alpha-orthogonal patterns to mine a representative set of graph patterns. Intuitively, two graph patterns are alpha-orthogonal if their similarity is bounded above by alpha. Each alpha-orthogonal pattern is also a representative for those patterns that are at least beta similar to it. Given user defined alpha, beta isin [0,1], the goal is to mine an alpha-orthogonal, beta-representative set that minimizes the set of unrepresented patterns. We present ORIGAMI, an effective algorithm for mining the set of representative orthogonal patterns. ORIGAMI first uses a randomized algorithm to randomly traverse the pattern space, seeking previously unexplored regions, to return a set of maximal patterns. ORIGAMI then extracts an alpha-orthogonal, beta-representative set from the mined maximal patterns. We show the effectiveness of our algorithm on a number of real and synthetic datasets. In particular, we show that our method is able to extract high quality patterns even in cases where existing enumerative graph mining methods fail to do so.
ORIGAMI:挖掘具有代表性的正交图模式
在本文中,我们引入了α -正交模式的概念来挖掘具有代表性的图模式集。直观地说,两个图形模式是正交的,如果它们的相似性在alpha的边界上。每个α -正交模式也是那些至少与它相似的模式的代表。给定用户定义的alpha, beta isin[0,1],目标是挖掘一个alpha-正交的beta代表集,以最小化未表示的模式集。提出了一种挖掘代表性正交模式集的有效算法ORIGAMI。ORIGAMI首先使用随机算法随机遍历模式空间,寻找以前未探索过的区域,以返回一组最大模式。然后ORIGAMI从挖掘的最大模式中提取一个α -正交的β -代表集。我们在大量真实数据集和合成数据集上展示了算法的有效性。特别是,我们表明,即使在现有的枚举图挖掘方法无法做到的情况下,我们的方法也能够提取高质量的模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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