Title :
Effective Acquaintance Management based on Bayesian Learning for Distributed Intrusion Detection Networks
Author :
Fung, Carol J. ; Zhang, Jie ; Boutaba, Raouf
Author_Institution :
Dept. of Comput. Sci., Univ. of Waterloo, Waterloo, ON, Canada
fDate :
9/1/2012 12:00:00 AM
Abstract :
An effective Collaborative Intrusion Detection Network (CIDN) allows distributed Intrusion Detection Systems (IDSes) to collaborate and share their knowledge and opinions about intrusions, to enhance the overall accuracy of intrusion assessment as well as the ability of detecting new classes of intrusions. Toward this goal, we propose a distributed Host-based IDS (HIDS) collaboration system, particularly focusing on acquaintance management where each HIDS selects and maintains a list of collaborators from which they can consult about intrusions. Specifically, each HIDS evaluates both the false positive (FP) rate and false negative (FN) rate of its neighboring HIDSes´ opinions about intrusions using Bayesian learning, and aggregates these opinions using a Bayesian decision model. Our dynamic acquaintance management algorithm allows each HIDS to effectively select a set of collaborators. We evaluate our system based on a simulated collaborative HIDS network. The experimental results demonstrate the convergence, stability, robustness, and incentive-compatibility of our system.
Keywords :
belief networks; computer network security; convergence; decision theory; knowledge management; learning (artificial intelligence); stability; Bayesian decision model; Bayesian learning; CIDN; HIDSes opinions; collaborative intrusion detection network; convergence; distributed HIDS collaboration system; distributed host-based IDS collaboration system; distributed intrusion detection networks; dynamic acquaintance management algorithm; false negative rate; false positive rate; incentive-compatibility; intrusion assessment; knowledge sharing; robustness; simulated collaborative HIDS network; stability; Accuracy; Bayesian methods; Collaboration; Heuristic algorithms; Intrusion detection; Maintenance engineering; Random variables; Host-based intrusion detection systems; acquaintance management; collaborative networks; computer security;
Journal_Title :
Network and Service Management, IEEE Transactions on
DOI :
10.1109/TNSM.2012.051712.110124