Efficient Graph Similarity Joins with Edit Distance Constraints

Xiang Zhao, Chuan Xiao, Xuemin Lin, Wei Wang
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引用次数: 73

Abstract

Graphs are widely used to model complicated data semantics in many applications in bioinformatics, chemistry, social networks, pattern recognition, etc. A recent trend is to tolerate noise arising from various sources, such as erroneous data entry, and find similarity matches. In this paper, we study the graph similarity join problem that returns pairs of graphs such that their edit distances are no larger than a threshold. Inspired by the q-gram idea for string similarity problem, our solution extracts paths from graphs as features for indexing. We establish a lower bound of common features to generate candidates. An efficient algorithm is proposed to exploit both matching and mismatching features to improve the filtering and verification on candidates. We demonstrate the proposed algorithm significantly outperforms existing approaches with extensive experiments on publicly available datasets.
具有编辑距离约束的高效图相似连接
在生物信息学、化学、社会网络、模式识别等领域,图被广泛用于复杂数据语义的建模。最近的一个趋势是容忍来自各种来源的噪音,例如错误的数据输入,并找到相似的匹配。在本文中,我们研究了图相似连接问题,该问题返回的图对使得它们的编辑距离不大于一个阈值。受字符串相似问题的q-gram思想的启发,我们的解决方案从图中提取路径作为索引的特征。我们建立了一个共同特征的下界来生成候选者。提出了一种有效的算法,利用匹配和不匹配的特征来改进候选对象的过滤和验证。我们通过对公开可用数据集的大量实验证明了所提出的算法显着优于现有方法。
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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