Experiments on Adaptive Techniques for Host-Based Intrusion Detection
Author(s) -
Timothy J. Draelos,
Michael Collins,
David Duggan,
Edward V. Thomas,
Donald C. Wunsch
Publication year - 2001
Publication title -
osti oai (u.s. department of energy office of scientific and technical information)
Language(s) - English
Resource type - Reports
DOI - 10.2172/787645
Subject(s) - exploit , intrusion detection system , computer science , anomaly detection , preprocessor , host (biology) , signature (topology) , anomaly based intrusion detection system , artificial neural network , data mining , artificial intelligence , data pre processing , machine learning , pattern recognition (psychology) , computer security , biology , ecology , geometry , mathematics
This research explores four experiments of adaptive host-based intrusion detection (ID) techniques in an attempt to develop systems that can detect novel exploits. The technique considered to have the most potential is adaptive critic designs (ACDs) because of their utilization of reinforcement learning, which allows learning exploits that are difficult to pinpoint in sensor data. Preliminary results of ID using an ACD, an Elman recurrent neural network, and a statistical anomaly detection technique demonstrate an ability to learn to distinguish between clean and exploit data. We used the Solaris Basic Security Module (BSM) as a data source and performed considerable preprocessing on the raw data. A detection approach called generalized signature-based ID is recommended as a middle ground between signature-based ID, which has an inability to detect novel exploits, and anomaly detection, which detects too many events including events that are not exploits. The primary results of the ID experiments demonstrate the use of custom data for generalized signature-based intrusion detection and the ability of neural network-based systems to learn in this application environment
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