Cyber anomaly detection: Using tabulated vectors and embedded analytics for efficient data mining

Author:

Gutierrez Robert J1,Bauer Kenneth W1,Boehmke Bradley C1ORCID,Saie Cade M2,Bihl Trevor J3

Affiliation:

1. Air Force Institute of Technology, Dayton, OH, USA

2. U.S. Army, Lorton, VA, USA

3. Air Force Research Laboratory Sensors Directorate, Wright-Patterson AFB, OH, USA

Abstract

Firewalls, especially at large organizations, process high velocity internet traffic and flag suspicious events and activities. Flagged events can be benign, such as misconfigured routers, or malignant, such as a hacker trying to gain access to a specific computer. Confounding this is that flagged events are not always obvious in their danger and the high velocity nature of the problem. Current work in firewall log analysis is manual intensive and involves manpower hours to find events to investigate. This is predominantly achieved by manually sorting firewall and intrusion detection/prevention system log data. This work aims to improve the ability of analysts to find events for cyber forensics analysis. A tabulated vector approach is proposed to create meaningful state vectors from time-oriented blocks. Multivariate and graphical analysis is then used to analyze state vectors in human–machine collaborative interface. Statistical tools, such as the Mahalanobis distance, factor analysis, and histogram matrices, are employed for outlier detection. This research also introduces the breakdown distance heuristic as a decomposition of the Mahalanobis distance, by indicating which variables contributed most to its value. This work further explores the application of the tabulated vector approach methodology on collected firewall logs. Lastly, the analytic methodologies employed are integrated into embedded analytic tools so that cyber analysts on the front-line can efficiently deploy the anomaly detection capabilities.

Publisher

SAGE Publications

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Comparative Analysis of Anomaly Detection Approaches in Firewall Logs: Integrating Light-Weight Synthesis of Security Logs and Artificially Generated Attack Detection;Sensors;2024-04-20

2. Anomaly detection of policies in distributed firewalls using data log analysis;The Journal of Supercomputing;2023-05-29

3. Firewall Anomaly Detection Based on Double Decision Tree;Symmetry;2022-12-16

4. Decision Support Systems and Data Science;Encyclopedia of Data Science and Machine Learning;2022-10-14

5. Malicious traffic analysis using Markov chain;Proceedings of the International Conference on Engineering and Information Technology for Sustainable Industry;2022-09-21

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