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Multiple negative selection algorithm: Improving detection error rates in IoT intrusion detection systems

机译:多重否定选择算法:提高物联网入侵检测系统中的检测错误率

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The creation of intrusion detection systems for IoT scenarios presents various challenges. One of them being the need for an implementation of unsupervised learning and decision making in the detection syste1m. The algorithm presented in this paper is capable of definitively identifying a large percentage of possible intrusions as true or false without the need of operator input. Our proposal is based on the Negative Selection algorithm and the co-stimulation principles of Immunology. It uses a two-tiered negative selection process to implement a co-stimulation approach aimed at decreasing the number of detection errors without the need of an operator input.
机译:针对物联网场景的入侵检测系统的创建提出了各种挑战。其中之一是需要在检测系统 1 m中实施无监督的学习和决策。本文提出的算法能够在不需要操作员输入的情况下,将大部分可能的入侵确定为真或假。我们的建议基于负选择算法和免疫学的共同刺激原理。它使用两层否定选择过程来实施共刺激方法,旨在减少检测错误的数量,而无需操作员输入。

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