论文标题

利用暹罗网络进行一次性入侵检测模型

Leveraging Siamese Networks for One-Shot Intrusion Detection Model

论文作者

Hindy, Hanan, Tachtatzis, Christos, Atkinson, Robert, Brosset, David, Bures, Miroslav, Andonovic, Ivan, Michie, Craig, Bellekens, Xavier

论文摘要

使用监督的机器学习(ML)来增强入侵检测系统已成为重要研究的主题。监督的ML基于学习的方式,要求大量代表性实例进行有效培训,并需要为每个看不见的网络攻击类重新培训该模型。但是,对原位进行检验,这使网络易受攻击,这是由于获取足够数量的数据所需的时间窗口。尽管异常检测系统可针对看不见的攻击提供粗粒的防御,但这些方法的准确性明显较小,并且遭受了高阳性速率的影响。在这里,一种补充方法称为“单次学习”,其中使用有限数量的新攻击类示例来识别新的攻击类(在许多人中)。该模型可以在不进行重新培训的情况下授予新的网络攻击分类。对暹罗网络进行了训练,可以根据对的相似性而不是功能来区分类别,从而识别新的和以前看不见的攻击。使用三个数据集评估了仅基于一个示例的攻击类别的预训练模型的性能。结果证实了该模型在对看不见的攻击以及绩效和独特班级表示需求之间的权衡时的适应性。

The use of supervised Machine Learning (ML) to enhance Intrusion Detection Systems has been the subject of significant research. Supervised ML is based upon learning by example, demanding significant volumes of representative instances for effective training and the need to re-train the model for every unseen cyber-attack class. However, retraining the models in-situ renders the network susceptible to attacks owing to the time-window required to acquire a sufficient volume of data. Although anomaly detection systems provide a coarse-grained defence against unseen attacks, these approaches are significantly less accurate and suffer from high false-positive rates. Here, a complementary approach referred to as 'One-Shot Learning', whereby a limited number of examples of a new attack-class is used to identify a new attack-class (out of many) is detailed. The model grants a new cyber-attack classification without retraining. A Siamese Network is trained to differentiate between classes based on pairs similarities, rather than features, allowing to identify new and previously unseen attacks. The performance of a pre-trained model to classify attack-classes based only on one example is evaluated using three datasets. Results confirm the adaptability of the model in classifying unseen attacks and the trade-off between performance and the need for distinctive class representation.

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