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Effective Acquaintance Management based on Bayesian Learning for Distributed Intrusion Detection Networks

机译:基于贝叶斯学习的分布式入侵检测网络有效的熟人管理

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摘要

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.
机译:有效的协作入侵检测网络(CIDN)允许分布式入侵检测系统(IDSes)进行协作并共享其有关入侵的知识和意见,从而提高入侵评估的整体准确性以及检测新类别入侵的能力。为了实现这一目标,我们提出了一个分布式的基于主机的IDS(HIDS)协作系统,特别关注于熟人管理,每个HIDS都选择并维护一个协作者列表,他们可以从中咨询入侵者。具体来说,每个HIDS都使用贝叶斯学习来评估其相邻HIDS对入侵的看法的误报率(FP)和虚假(FN)率,并使用贝叶斯决策模型汇总这些意见。我们的动态熟人管理算法允许每个HIDS有效地选择一组协作者。我们基于模拟的协作式HIDS网络评估我们的系统。实验结果证明了我们系统的收敛性,稳定性,鲁棒性和激励兼容性。

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