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An Autonomous Intrusion Detection System Using an Ensemble of Advanced Learners

机译:使用高级学习者集合的自主入侵检测系统

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An intrusion detection system (IDS) is a vital security component of modern computer networks. With the increasing amount of sensitive services that use computer network-based infrastructures, IDSs need to be more intelligent and autonomous. Aside from autonomy, another important feature for an IDS is its ability to detect zero-day attacks. To address these issues, in this paper, we propose an IDS which reduces the amount of manual interaction and needed expert knowledge and is able to yield acceptable performance under zero-day attacks. Our approach is to use three learning techniques in parallel: gated recurrent unit (GRU), convolutional neural network as deep techniques and random forest as an ensemble technique. These systems are trained in parallel and the results are combined under two logics: majority vote and “OR” logic. We use the NSL-KDD dataset to verify the proficiency of our proposed system. Simulation results show that the system has the potential to operate with a very low technician interaction under the zero-day attacks. We achieved 87.28% accuracy on the NSL-KDD's “KDDTest+” dataset and 76.61% accuracy on the challenging “KDDTest-21” with lower training time and lower needed computational resources.
机译:入侵检测系统(IDS)是现代计算机网络的重要安全组件。随着使用基于计算机网络基础结构的敏感服务数量的增加,IDS需要更加智能和自治。除了自治之外,IDS的另一个重要功能是其检测零日攻击的能力。为了解决这些问题,在本文中,我们提出了一种IDS,该IDS可以减少手动交互的数量和所需的专家知识,并且能够在零日攻击下产生可接受的性能。我们的方法是并行使用三种学习技术:门控递归单元(GRU),作为深度技术的卷积神经网络和作为集成技术的随机森林。这些系统经过并行训练,结果根据两种逻辑进行组合:多数表决和“或”逻辑。我们使用NSL-KDD数据集来验证我们提出的系统的熟练程度。仿真结果表明,该系统具有在零日攻击下以极低的技术人员交互能力运行的潜力。我们在NSL-KDD的“ KDDTest +”数据集上实现了87.28%的精度,在具有挑战性的“ KDDTest-21”上实现了76.61%的精度,所需的训练时间更少,所需的计算资源也更少。

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