Frequent Subgraph Retrieval in Geometric Graph Databases

Sebastian Nowozin, K. Tsuda
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引用次数: 7

Abstract

Discovery of knowledge from geometric graph databases is of particular importance in chemistry and biology, because chemical compounds and proteins are represented as graphs with 3D geometric coordinates. In such applications, scientists are not interested in the statistics of the whole database. Instead they need information about a novel drug candidate or protein at hand, represented as a query graph. We propose a polynomial-delay algorithm for geometric frequent subgraph retrieval. It enumerates all subgraphs of a single given query graph which are frequent geometric epsi-subgraphs under the entire class of rigid geometric transformations in a database. By using geometric epsi-subgraphs, we achieve tolerance against variations in geometry. We compare the proposed algorithm to gSpan on chemical compound data, and we show that for a given minimum support the total number of frequent patterns is substantially limited by requiring geometric matching. Although the computation time per pattern is larger than for non-geometric graph mining, the total time is within a reasonable level even for small minimum support.
几何图数据库中的频繁子图检索
从几何图形数据库中发现知识在化学和生物学中特别重要,因为化合物和蛋白质是用三维几何坐标表示的图形。在这种应用中,科学家对整个数据库的统计数据不感兴趣。相反,他们需要关于新的候选药物或手头蛋白质的信息,这些信息以查询图的形式表示。提出了一种几何频繁子图检索的多项式延迟算法。它枚举一个给定查询图的所有子图,这些子图是数据库中整个刚性几何变换类下的频繁几何epsi子图。通过使用几何epsi子图,我们实现了对几何变化的容忍度。我们将提出的算法与化合物数据上的gSpan进行了比较,结果表明,对于给定的最小支持度,频繁模式的总数基本上受到几何匹配的限制。虽然每个模式的计算时间比非几何图形挖掘要长,但即使最小支持很小,总时间也在合理的范围内。
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