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Mining Generalized Closed Patterns from Multi-graph Collections

机译:从多图集合中挖掘广义闭合模式

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Frequent approximate subgraph (FAS) mining has become an important technique into the data mining. However, FAS miners produce a large number of FASs affecting the computational performance of methods using them. For solving this problem, in the literature, several algorithms for mining only maximal or closed patterns have been proposed. However, there is no algorithm for mining FASs from multi-graph collections. For this reason, in this paper, we introduce an algorithm for mining generalized closed FASs from multi-graph collections. The proposed algorithm obtains more patterns than the maximal ones, but less than the closed one, covering patterns with small frequency differences. In our experiments over two real-world multi-graph collections, we show how our proposal reduces the size of the FAS set.
机译:频繁的近似子图(FAS)挖掘已成为数据挖掘中的一项重要技术。但是,FAS矿工会产生大量的FAS,从而影响使用它们的方法的计算性能。为了解决这个问题,在文献中,已经提出了几种仅用于挖掘最大或闭合模式的算法。但是,没有用于从多图集合中挖掘FAS的算法。因此,在本文中,我们介绍了一种从多图集合中挖掘广义封闭式FAS的算法。所提出的算法比最大的模式获得更多的模式,但是比封闭的模式更少,从而覆盖了具有较小频率差异的模式。在我们对两个真实世界的多图集合的实验中,我们展示了我们的建议如何减小FAS集的大小。

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