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Intrusion Detection Using Transfer Learning in Machine Learning Classifiers Between Non-cloud and Cloud Datasets

机译:在非云和云数据集之间的机器学习分类器中使用转移学习的入侵检测

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One of the critical issues in developing intrusion detection systems (IDS) in cloud-computing environments is the lack of publicly available cloud intrusion detection datasets, which hinders research into IDS in this area. There are, however, many non-cloud intrusion detection datasets. This paper seeks to leverage one of the well-established non-cloud datasets and analyze it in relation to one of the few available cloud datasets to develop a detection model using a machine learning technique. A complication is that these datasets often have different structures, contain different features and contain different, though over-lapping, types of attack. The aim of this paper is to explore whether a simple machine learning classifier containing a small common feature set trained using a non-cloud dataset that has a packet-based structure can be usefully applied to detect specific attacks in the cloud dataset, which contains time-based traffic. Through this, the differences and similarities between attacks in the cloud and non-cloud datasets are analyzed and suggestions for future work are presented.
机译:开发云计算环境中的入侵检测系统(IDS)中的关键问题之一是缺乏公开可用的云入侵检测数据集,其阻碍了该区域ID的研究。但是,许多非云入侵检测数据集。本文旨在利用其中一个良好的非云数据集并与少数可用云数据集中的一个进行分析,以使用机器学习技术开发检测模型。并发症是这些数据集通常具有不同的结构,包含不同的功能并包含不同的功能,但仍然是过研磨的类型的攻击。本文的目的是探讨包含使用具有基于数据包的结构的非云数据集的小型通用特征集的简单机器学习分类器是否可以有效地应用于检测云数据集中的特定攻击,其中包含时间基于交通。通过这一点,分析了云和非云数​​据集之间的攻击之间的差异和相似性,并提出了对未来工作的建议。

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