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Mining Frequent Correlated-Quasi-Cliques from PPI Networks

机译:从PPI网络中挖掘频繁的相关类群

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Many of the previous studies show convincing arguments that mining frequent subgraphs is especially useful. Many hidden frequent patterns which are very interesting can not be found by mining single graph. Previous studies as Quasi-Clique have little success with the hub problem. In this paper, we introduce a new conception Correlated-Quasi-Clique and develop a novel algorithm, CoClique, to address the hub problem and improve the efficiency of frequent correlated-Quasi-Cliques mining. Meanwhile, we exploit several effective techniques to prune the search space. An extensive experimental evaluation on real databases demonstrates that our algorithm outperforms previous methods.
机译:先前的许多研究表明,令人信服的论点是挖掘频繁的子图特别有用。通过挖掘单个图无法找到许多非常有趣的隐藏频繁模式。以前的Quasi-Clique研究在轮毂问题上收效甚微。在本文中,我们介绍了一种新概念“相关相关类”,并开发了一种新算法“ CoClique”,以解决枢纽问题并提高频繁相关类“类”挖掘的效率。同时,我们利用几种有效的技术来修剪搜索空间。在真实数据库上进行的广泛实验评估表明,我们的算法优于以前的方法。

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