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HiDDen: Hierarchical Dense Subgraph Detection with Application to Financial Fraud Detection

机译:隐藏:分层密集的子图检测,应用于金融欺诈检测

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Dense subgraphs are fundamental patterns in graphs, and dense subgraph detection is often the key step of numerous graph mining applications. Most of the existing methods aim to find a single subgraph with a high density. However, dense subgraphs at different granularities could reveal more intriguing patterns in the underlying graph. In this paper, we propose to hierarchically detect dense subgraphs. The key idea of our method (HIDDEN) is to envision the density of subgraphs as a relative measure to its background (i.e., the subgraph at the coarse granularity). Given that the hierarchical dense subgraph detection problem is essentially a nonconvex quadratic programming problem, we propose effective and efficient alternative projected gradient based algorithms to solve it. The experimental evaluations on real graphs demonstrate that (1) our proposed algorithms find subgraphs with an up to 40% higher density in almost every hierarchy; (2) the densities of different hierarchies exhibit a desirable variety across different granularities; (3) our projected gradient descent based algorithm scales linearly w.r.t the number of edges of the input graph; and (4) our methods are able to reveal interesting patterns in the underlying graphs (e.g., synthetic ID in financial fraud detection).
机译:致密子图是图中的基本模式,并且致密的子图检测通常是众多图形挖掘应用的关键步骤。大多数现有方法旨在找到具有高密度的单个子图。然而,不同粒度的密集子图可以揭示底层图中的更有趣的模式。在本文中,我们建议在分层检测密集的子图。我们的方法(隐藏)的关键思想是设想将子图的密度作为其背景的相对测量(即,粗粒度的子图)。鉴于分层密集的子图检测问题基本上是一个非凸起的二次编程问题,我们提出了有效和高效的替代预计基于梯度的算法来解决它。真实图表的实验评估表明(1)我们所提出的算法在几乎每个层次结构中发现了高达40%的密度高达40%的子图; (2)不同层次结构的密度表现出不同粒度的理想品种; (3)我们投影梯度基于算法的算法缩放线性W.R.T输入图的边的数量; (4)我们的方法能够揭示底层图中的有趣模式(例如,金融欺诈检测中的合成ID)。

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