GAD-NR: Graph Anomaly Detection via Neighborhood Reconstruction.

Amit Roy, Juan Shu, Jia Li, Carl Yang, Olivier Elshocht, Jeroen Smeets, Pan Li
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Abstract

Graph Anomaly Detection (GAD) is a technique used to identify abnormal nodes within graphs, finding applications in network security, fraud detection, social media spam detection, and various other domains. A common method for GAD is Graph Auto-Encoders (GAEs), which encode graph data into node representations and identify anomalies by assessing the reconstruction quality of the graphs based on these representations. However, existing GAE models are primarily optimized for direct link reconstruction, resulting in nodes connected in the graph being clustered in the latent space. As a result, they excel at detecting cluster-type structural anomalies but struggle with more complex structural anomalies that do not conform to clusters. To address this limitation, we propose a novel solution called GAD-NR, a new variant of GAE that incorporates neighborhood reconstruction for graph anomaly detection. GAD-NR aims to reconstruct the entire neighborhood of a node, encompassing the local structure, self-attributes, and neighbor attributes, based on the corresponding node representation. By comparing the neighborhood reconstruction loss between anomalous nodes and normal nodes, GAD-NR can effectively detect any anomalies. Extensive experimentation conducted on six real-world datasets validates the effectiveness of GAD-NR, showcasing significant improvements (by up to 30%↑ in AUC) over state-of-the-art competitors. The source code for GAD-NR is openly available. Importantly, the comparative analysis reveals that the existing methods perform well only in detecting one or two types of anomalies out of the three types studied. In contrast, GAD-NR excels at detecting all three types of anomalies across the datasets, demonstrating its comprehensive anomaly detection capabilities.

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GAD-NR:基于邻域重建的图异常检测。
图异常检测(GAD)是一种用于识别图中异常节点的技术,可应用于网络安全、欺诈检测、社交媒体垃圾邮件检测等多个领域。图自动编码器(GAE)是 GAD 的常用方法,它将图数据编码为节点表示法,并根据这些表示法评估图的重构质量,从而识别异常。然而,现有的 GAE 模型主要针对直接链接重构进行了优化,导致图中连接的节点在潜在空间中聚类。因此,这些模型擅长检测聚类型结构异常,但对于不符合聚类的更复杂的结构异常却束手无策。为了解决这一局限性,我们提出了一种名为 GAD-NR 的新解决方案,它是 GAE 的一种新变体,将邻域重构纳入图异常检测。GAD-NR 的目的是根据相应的节点表示重建节点的整个邻域,包括局部结构、自属性和邻域属性。通过比较异常节点和正常节点的邻域重建损失,GAD-NR 可以有效地检测出任何异常。在六个真实数据集上进行的广泛实验验证了 GAD-NR 的有效性,与最先进的竞争对手相比,GAD-NR 的性能有了显著提高(AUC 高达 30%↑)。GAD-NR 的源代码是公开的。重要的是,对比分析表明,在所研究的三种异常类型中,现有方法只能很好地检测出一到两种类型的异常。相比之下,GAD-NR 在检测整个数据集的所有三种异常类型方面都表现出色,显示了其全面的异常检测能力。
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