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Negative Selection with Antigen Feedback in Intrusion Detection

机译:入侵检测中带有抗原反馈的负选择

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One of the major challenges for negative selection is to efficiently generate effective detectors. The experiment in the past shows that random generation fails to generate useful detectors within acceptable time duration. In this paper, we propose an antigen feedback mechanism for generating the detectors. For an unmatched antigen, we make a copy of the antigen and treat it the same as a newly randomly generated antibody: it goes through the same maturing process and is subject to elimination due to self matching. If it survives and is then activated by more antigens, it becomes a legitimate detector. Our experiment demonstrates that the antigen feedback mechanism provides an efficient way to generate enough effective detectors within a very short period of time. With the antigen feedback mechanism, we achieved 95.21% detection rate on attack strings, with 4.79% false negative rate, and 99.21% detection rate on normal strings, 0.79% false positive. In this paper, we also introduce Arisytis -Artificial Immune System Tool Kits - a project we are undertaking for not only our own experiment, but also the research communities in the same area to avoid the waste on repeatedly developing similar software. Arisytis is available on the public domain. Finally, we also discuss the effectiveness of the r-continuous bits match and its impact on data presentation.
机译:否定选择的主要挑战之一是有效地生成有效的检测器。过去的实验表明,随机生成无法在可接受的时间内生成有用的检测器。在本文中,我们提出了一种用于生成检测器的抗原反馈机制。对于不匹配的抗原,我们会复制一份抗原,并将其与新随机生成的抗体相同:它会经历相同的成熟过程,并且会由于自身匹配而被消除。如果它能够存活并随后被更多的抗原激活,那么它将成为合法的检测器。我们的实验表明,抗原反馈机制提供了一种在很短的时间内生成足够有效的检测器的有效方法。通过抗原反馈机制,攻击字符串的检出率为95.21%,假阴性率为4.79%,正常字符串的检出率为99.21%,假阳性为0.79%。在本文中,我们还介绍了Arisytis-人工免疫系统工具套件-我们正在为这个项目进行实验,该实验不仅用于我们自己的实验,还用于同一地区的研究社区,以避免浪费在重复开发相似的软件上。 Arisytis可在公共领域使用。最后,我们还讨论了r连续位匹配的有效性及其对数据表示的影响。

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