Query-based graph cuboid outlier detection

Ayushi Dalmia, Manish Gupta, Vasudeva Varma
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引用次数: 3

Abstract

Various projections or views of a heterogeneous information network can be modeled using the graph OLAP (On-line Analytical Processing) framework for effective decision making. Detecting anomalous projections of the network can help the analysts identify regions of interest from the graph specific to the projection attribute. While most previous studies on outlier detection in graphs deal with outlier nodes, edges or subgraphs, we are the first to propose detection of graph cuboid outliers. Further we perform this detection in a query sensitive way. Given a general subgraph query on a heterogeneous network, we study the problem of finding outlier cuboids from the graph OLAP lattice. A Graph Cuboid Outlier (GCOutlier) is a cuboid with exceptionally high density of matches for the query. The GCOutlier detection task is clearly challenging because: (1) finding matches for the query (subgraph isomorphism) is NP-hard; (2) number of matches for the query can be very high; and (3) number of cuboids can be large. We provide an approximate solution to the problem by computing only a fraction of the total matches originating from a select set of candidate nodes and including a select set of edges, chosen smartly. We perform extensive experiments on synthetic datasets to showcase the execution time versus accuracy trade-off. Experiments on real datasets like Four Area and Delicious containing thousands of nodes reveal interesting GCOutliers.
基于查询的图长方体离群点检测
异构信息网络的各种投影或视图可以使用图形OLAP(在线分析处理)框架进行建模,以实现有效的决策制定。检测网络的异常投影可以帮助分析人员从特定于投影属性的图中识别感兴趣的区域。虽然之前大多数关于图中离群点检测的研究都是处理离群点节点、边或子图,但我们首次提出了对图长方体离群点的检测。此外,我们以查询敏感的方式执行此检测。给定异构网络上的一般子图查询,研究了从图OLAP格中寻找离群长方体的问题。图长方体离群值(GCOutlier)是查询匹配密度异常高的长方体。GCOutlier检测任务显然具有挑战性,因为:(1)查找查询(子图同构)的匹配是np困难的;(2)查询的匹配数可以非常高;(3)长方体的数量可以很大。我们提供了一个近似的解决方案,通过计算来自一组选择的候选节点的总匹配的一小部分,并包括一组选择的边,巧妙地选择。我们在合成数据集上进行了大量的实验,以展示执行时间与准确性之间的权衡。在包含数千个节点的真实数据集(如Four Area和Delicious)上进行的实验揭示了有趣的goutliers。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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