基于GNN算法的多数据源异常事件检测方法

Yipeng Ji, Jingyi Wang, Shaoning Li, Yangyang Li, Shenwen Lin, Xiong Li
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引用次数: 3

摘要

异常事件检测对于关键基础设施安全(交通系统、社会生态部门、保险服务、政府部门等)至关重要,因为它能够通过分析来自数字系统和网络的数据(消息、微博、日志等)提前揭示和解决潜在的网络威胁。然而,智能设备的方便性和适用性以及互联技术的成熟,使得社会异常事件数据具有多源性和动态性,从而导致对多源数据检测的不适应性,从而影响关键基础设施的安全。为了有效地解决上述问题,本文设计了一种基于多源数据的异常检测方法。首先,我们利用光谱聚类算法进行多数据源的特征提取和融合。其次,利用深度图神经网络(deep - gnn)的力量,进行精细获得的异常社会事件检测,揭示威胁事件,保证关键基础设施的安全。实验结果表明,该框架优于其他基线异常事件检测方法,具有较高的跟踪精度、较强的鲁棒性和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Anomaly Event Detection Method Based on GNN Algorithm for Multi-data Sources
Anomaly event detection is crucial for critical infrastructure security(transportation system, social-ecological sector, insurance service, government sector etc.) due to its ability to reveal and address the potential cyber-threats in advance by analysing the data(messages, microblogs, logs etc.) from digital systems and networks. However, the convenience and applicability of smart devices and the maturity of connected technology make the social anomaly events data multi-source and dynamic, which result in the inadaptability for multi-source data detection and thus affect the critical infrastructure security. To effectively address the proposed problems, in this paper, we design a novel anomaly detection method based on multi-source data. First, we leverage spectral clustering algorithm for feature extraction and fusion of multiple data sources. Second, by harnessing the power of deep graph neural network(Deep-GNN), we perform a fine-gained anomaly social event detection, revealing the threatening events and guarantee the critical infrastructure security. Experimental results demonstrate that our framework outperforms other baseline anomaly event detection methods and shows high tracking accuracy, strong robustness and stability.
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