Residual-enhanced graph convolutional networks with hypersphere mapping for anomaly detection in attributed networks

Wasim Khan , Afsaruddin Mohd , Mohammad Suaib , Mohammad Ishrat , Anwar Ahamed Shaikh , Syed Mohd Faisal
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Abstract

In the burgeoning field of anomaly detection within attributed networks, traditional methodologies often encounter the intricacies of network complexity, particularly in capturing nonlinearity and sparsity. This study introduces an innovative approach that synergizes the strengths of graph convolutional networks with advanced deep residual learning and a unique residual-based attention mechanism, thereby creating a more nuanced and efficient method for anomaly detection in complex networks. The heart of our model lies in the integration of graph convolutional networks that capture complex structural relationships within the network data. This is further bolstered by deep residual learning, which is employed to model intricate nonlinear connections directly from input data. A pivotal innovation in our approach is the incorporation of a residual-based attention mechanism. This mechanism dynamically adjusts the importance of nodes based on their residual information, thereby significantly enhancing the sensitivity of the model to subtle anomalies. Furthermore, we introduce a novel hypersphere mapping technique in the latent space to distinctly separate normal and anomalous data. This mapping is the key to our model’s ability to pinpoint anomalies with greater precision. An extensive experimental setup was used to validate the efficacy of the proposed model. Using attributed social network datasets, we demonstrate that our model not only competes with but also surpasses existing state-of-the-art methods in anomaly detection. The results show the exceptional capability of our model to handle the multifaceted nature of real-world networks.
基于超球映射的残差增强图卷积网络在属性网络中的异常检测
在新兴的属性网络异常检测领域,传统的方法经常遇到网络复杂性的复杂性,特别是在捕获非线性和稀疏性方面。本研究引入了一种创新的方法,将图卷积网络的优势与先进的深度残差学习和独特的基于残差的注意机制相结合,从而为复杂网络中的异常检测创造了一种更细致、更有效的方法。我们模型的核心在于图形卷积网络的集成,该网络捕获网络数据中的复杂结构关系。这进一步得到了深度残差学习的支持,深度残差学习用于直接从输入数据中建模复杂的非线性连接。我们方法中的一个关键创新是结合了基于残差的注意机制。该机制根据节点的残差信息动态调整节点的重要程度,从而显著提高了模型对细微异常的敏感性。此外,我们在潜在空间中引入了一种新的超球映射技术来区分正态和异常数据。这种映射是我们的模型能够更精确地定位异常的关键。通过广泛的实验设置来验证所提出模型的有效性。使用属性社交网络数据集,我们证明了我们的模型不仅与现有的最先进的异常检测方法竞争,而且超越了现有的最先进的异常检测方法。结果表明,我们的模型在处理现实世界网络的多面性方面具有卓越的能力。
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CiteScore
7.50
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