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An Immunology-inspired Multi-engine Anomaly Detection System with Hybrid Particle Swarm Optimisations

机译:具有混合粒子群优化的免疫学鼓励多发动机异常检测系统

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In this paper, multiple detection engines with multi-layered intrusion detection mechanisms are proposed for enhancing computer security. The principle is to coordinate the results from each single-engine intrusion alert system, which seamlessly integrates with a multiple layered distributed service-oriented structure. An improved hidden Markov model (HMM) is created for the detection engine which is capable of the immunology-based self/nonself discrimination. The classifications of normal and abnormal behaviours of system calls are further examined by an advanced fuzzy-based inference process tuned by HPSOWM. Considering a real benchmark dataset from the public domain, our experimental results show that the proposed scheme can greatly shorten the training time of HMM and significantly reduce the false positive rate. The proposed HPSOWM works especially well for the efficient classification of unknown behaviors and malicious attacks.
机译:本文提出了具有多层入侵检测机制的多种检测发动机,用于增强计算机安全性。原理是协调每个单引擎入侵警报系统的结果,它与多个分层分布式服务的结构无缝集成。为能够进行免疫学的自主/不合判别的检测引擎来创建一种改进的隐马尔可夫模型(HMM)。通过Hpsowm调整的高级模糊的基于推断过程进一步检查了系统呼叫的正常和异常行为的分类。考虑到公共领域的真实基准数据集,我们的实验结果表明,该方案可以大大缩短培训时间,并显着降低误率。拟议的Hpsowm尤其适用于有效的未知行为和恶意攻击的分类。

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