首页> 中文期刊> 《通讯、网络与系统学国际期刊(英文)》 >Network Intrusion Detection and Visualization Using Aggregations in a Cyber Security Data Warehouse

Network Intrusion Detection and Visualization Using Aggregations in a Cyber Security Data Warehouse

         

摘要

The challenge of achieving situational understanding is a limiting factor in effective, timely, and adaptive cyber-security analysis. Anomaly detection fills a critical role in network assessment and trend analysis, both of which underlie the establishment of comprehensive situational understanding. To that end, we propose a cyber security data warehouse implemented as a hierarchical graph of aggregations that captures anomalies at multiple scales. Each node of our proposed graph is a summarization table of cyber event aggregations, and the edges are aggregation operators. The cyber security data warehouse enables domain experts to quickly traverse a multi-scale aggregation space systematically. We describe the architecture of a test bed system and a summary of results on the IEEE VAST 2012 Cyber Forensics data.

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