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Persistent dataset generation using real-time operative framework

机译:使用实时操作框架的持久数据集生成

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During the widening of information technology, the need to a framework that efficiently constructs connection vectors from online data flow for evaluating intrusion detection models has become fundamental. Moreover, known datasets in intrusion detection are either outdated or offline aggregated. Therefore, these datasets are not adequate for performance evaluation anymore. In this paper we present a novel framework, OptiFilter, that mines network packets and host events, based on significant features in intrusion detection. The framework collects network packets and host events continuously in real-time and parses them to a queue of dynamic windows, then it generates connection vectors accordingly. We evaluate the framework in a real-time heterogeneous network and compare it with other benchmark datasets. Our framework shows promising results with minimal processing time for maximum amount of packets. Moreover, it can constantly produce significant and meaningful datasets for evaluating intrusion detection systems.
机译:在信息技术的扩展过程中,需要一个框架,以便有效地构造来自在线数据流的连接向量进行评估入侵检测模型已经成为基础。此外,已知的入侵检测数据集是过时或离线的聚合。因此,这些数据集不再足以进行性能评估。在本文中,我们介绍了一种新颖的框架,即,基于入侵检测中的显着特征,挖掘网络数据包和主机事件。该框架在实时连续收集网络数据包和主机事件,并将其解析为动态窗口的队列,然后相应地生成连接向量。我们评估实时异构网络中的框架,并将其与其他基准数据集进行比较。我们的框架显示了有希望的结果,具有最大数量的数据包的处理时间最小。此外,它可以不断生产用于评估入侵检测系统的重要和有意义的数据集。

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