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Computing frequent graph patterns from semistructured data

机译:从半结构化数据计算频繁的图形模式

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Whereas data mining in structured data focuses on frequent data values, in semistructured and graph data the emphasis is on frequent labels and common topologies. Here, the structure of the data is just as important as its content. We study the problem of discovering typical patterns of graph data. The discovered patterns can be useful for many applications, including: compact representation of source information and a road-map for browsing and querying information sources. Difficulties arise in the discovery task from the complexity of some of the required sub-tasks, such as sub-graph isomorphism. This paper proposes a new algorithm for mining graph data, based on a novel definition of support. Empirical evidence shows practical, as well as theoretical, advantages of our approach.
机译:结构化数据中的数据挖掘专注于频繁数据值,而半结构化和图形数据中的数据挖掘则侧重于频繁标签和通用拓扑。在这里,数据的结构与其内容同样重要。我们研究发现图形数据典型模式的问题。发现的模式可用于许多应用程序,包括:源信息的紧凑表示以及用于浏览和查询信息源的路线图。发现任务中的困难来自某些所需子任务(例如子图同构)的复杂性。本文提出了一种基于支持的新定义的图数据挖掘新算法。经验证据显示了我们方法的实际和理论优势。

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