图中异常节点和异常边的无监督识别

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
A. Senaratne, P. Christen, Graham J. Williams, Pouya Ghiasnezhad Omran
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引用次数: 4

摘要

如今,从社交网络到书目引用,许多数据都以图表的形式呈现。这种图中的节点对应于通常表示实体的记录,而边表示这些实体之间的关系。图中的节点和边都可以具有表征实体及其关系的属性。关系要么是明确已知的(如社交网络中的朋友),要么是通过链接预测推断出来的(如两个婴儿是兄弟姐妹,因为他们有同一个母亲)。任何表示真实世界数据的图形都可能包含异常的节点和边缘,识别这些节点和边缘对于从犯罪和欺诈检测到病毒式营销等应用中的异常值检测非常重要。我们提出了一种图中异常节点和边缘的无监督检测方法。我们首先使用一组特征来描述节点和边缘,然后使用单类分类器来识别异常节点和边缘。我们从这些异常节点和边缘提取特征模式,并应用聚类方法识别具有相似特征的模式组。我们最终将这些异常模式可视化,以显示共同出现的特征以及这些特征之间的关系,这些特征主要影响节点和边缘的异常。我们在不同领域的数据集上评估了我们的方法,包括历史出生证明、COVID患者记录、电子邮件、书籍和电影。该评估表明,我们的方法非常适合以无监督的方式识别图中的异常节点和边缘,并且它可以优于几种基线异常检测技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Identification of Abnormal Nodes and Edges in Graphs
Much of today’s data are represented as graphs, ranging from social networks to bibliographic citations. Nodes in such graphs correspond to records that generally represent entities, while edges represent relationships between these entities. Both nodes and edges in a graph can have attributes that characterize the entities and their relationships. Relationships are either explicitly known (like friends in a social network), or they are inferred using link prediction (such as two babies are siblings because they have the same mother). Any graph representing real-world data likely contains nodes and edges that are abnormal, and identifying these can be important for outlier detection in applications ranging from crime and fraud detection to viral marketing. We propose a novel approach to the unsupervised detection of abnormal nodes and edges in graphs. We first characterize nodes and edges using a set of features, and then employ a one-class classifier to identify abnormal nodes and edges. We extract patterns of features from these abnormal nodes and edges, and apply clustering to identify groups of patterns with similar characteristics. We finally visualize these abnormal patterns to show co-occurrences of features and relationships between those features that mostly influence the abnormality of nodes and edges. We evaluate our approach on datasets from diverse domains, including historical birth certificates, COVID patient records, e-mails, books, and movies. This evaluation demonstrates that our approach is well suited to identify both abnormal nodes and edges in graphs in an unsupervised way, and it can outperform several baseline anomaly detection techniques.
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来源期刊
ACM Journal of Data and Information Quality
ACM Journal of Data and Information Quality COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.10
自引率
4.80%
发文量
0
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