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A Data Mining Formalization to Improve Hypergraph Minimal Transversal Computation

机译:数据挖掘形式化以改善超图最小横向计算

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摘要

Finding hypergraph transversals is a major algorithmic issue which was shown having many connections with the data mining area. In this paper, by defining a new Galois connection, we show that this problem is closely related to the mining of the so-called condensed representations of frequent patterns. This data mining formalization enables us to benefit from efficient algorithms dedicated to the extraction of condensed representations. More precisely, we demonstrate how it is possible to use the levelwise framework to improve the hypergraph minimal transversal computation by exploiting an anti-monotone constraint to safely prune the search space. We propose a new algorithm MTminer to extract minimal transversals and provide experiments showing that our method is efficient in practice.
机译:查找超图横断是一个主要的算法问题,已证明与数据挖掘区域有许多联系。在本文中,通过定义新的Galois连接,我们表明此问题与频繁模式的所谓压缩表示的挖掘紧密相关。这种数据挖掘形式化使我们能够受益于专用于压缩表示形式提取的高效算法。更准确地说,我们演示了如何利用层级框架通过利用反单调约束来安全地修剪搜索空间,从而改进超图的最小横向计算。我们提出了一种新的算法MTminer来提取最小的横截面,并提供实验表明我们的方法在实践中是有效的。

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