A Multi-Sensor Model to Improve Automated Attack Detection
Paper in proceeding, 2008

Most intrusion detection systems available today are using a single audit source for detection, even though attacks have distinct manifestations in different parts of the system. In this paper we investigate how to use the alerts from several audit sources to improve the accuracy of the intrusion detection system (IDS). Concentrating on web server attacks, we design a theoretical model to automatically reason about alerts from different sensors, thereby also giving security operators a better understanding of possible attacks against their systems. Our model takes sensor status and capability into account, and therefore enables reasoning about the absence of expected alerts. We require an explicit model for each sensor in the system, which allows us to reason about the quality of information from each particular sensor and to resolve apparent contradictions in a set of alerts. Our model, which is built using Bayesian networks, needs some initial parameter values that can be provided by the IDS operator. We apply this model in two different scenarios for web server security. The scenarios show the importance of having a model that dynamically can adapt to local transitional traffic conditions, such as encrypted requests, when using conflicting evidence from sensors to reason about attacks.

intrusion detection - alert reasoning

Author

Magnus Almgren

Chalmers, Computer Science and Engineering (Chalmers), Computer Engineering (Chalmers)

Ulf Lindqvist

Erland Jonsson

Chalmers, Computer Science and Engineering (Chalmers), Computer Engineering (Chalmers)

11th International Symposium, RAID 2008, Cambridge, MA, USA, September 15-17, 2008. Lecture Notes in Computer Science

Vol. 5230/2008 291-310
978-3-540-87402-7 (ISBN)

Subject Categories

Other Computer and Information Science

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3/12/2021