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Mining blackhole and volcano patterns in directed graphs: a general approach

机译:在有向图中挖掘黑洞和火山模式:一种通用方法

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摘要

Given a directed graph, the problem of blackhole mining is to identify groups of nodes, called blackhole patterns, in a way such that the average in-weight of this group is significantly larger than the average out-weight of the same group. The problem of finding volcano patterns is a dual problem of mining blackhole patterns. Therefore, we focus on discovering the blackhole patterns. Indeed, in this article, we develop a generalized blackhole mining framework. Specifically, we first design two pruning schemes for reducing the computational cost by reducing both the number of candidate patterns and the average computation cost for each candidate pattern. The first pruning scheme is to exploit the concept of combination dominance to reduce the exponential growth search space. Based on this pruning approach, we develop the gBlackhole algorithm. Instead, the second pruning scheme is an approximate approach, named approxBlackhole, which can strike a balance between the efficiency and the completeness of blackhole mining. Finally, experimental results on real-world data show that the performance of approxBlackhole can be several orders of magnitude faster than gBlackhole, and both of them have huge computational advantages over the brute-force approach. Also, we show that the blackhole mining algorithm can be used to capture some suspicious financial fraud patterns.
机译:给定一个有向图,黑洞挖掘的问题是以这种方式识别节点组,称为黑洞模式,以使该组的平均权重显着大于同一组的平均权重。寻找火山模式的问题是开采黑洞模式的双重问题。因此,我们专注于发现黑洞模式。实际上,在本文中,我们开发了一个广义的黑洞挖掘框架。具体来说,我们首先设计两个修剪方案,以通过减少候选模式的数量和每个候选模式的平均计算成本来减少计算成本。第一种修剪方案是利用组合优势的概念来减小指数增长搜索空间。基于这种修剪方法,我们开发了gBlackhole算法。取而代之的是,第二种修剪方案是一种近似的方法,称为roxBrowsehole,可以在黑洞开采的效率和完整性之间取得平衡。最后,在实际数据上的实验结果表明,大约Blackhole的性能可以比gBlackhole快几个数量级,并且与强力方法相比,它们都具有巨大的计算优势。此外,我们表明黑洞挖掘算法可用于捕获一些可疑的财务欺诈模式。

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