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Autoencoder-based IDS for cloud and mobile devices

机译:基于AutoEncoder的云和移动设备的ID

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摘要

Along with the popularization of cloud computing and the increase in responsibilities of mobile devices, there is a need for intrusion detection systems available for working in these two new areas. At the same time, the increase in computational power of mobile devices gives us the possibility to use them to do a part of data preprocessing. Similarly, more complex operations can be executed in the cloud – this concept is known as mobile cloud computing. In this paper, we propose an autoencoder-based intrusion detection system applicable to cloud and mobile environments. The system provides multiple data gathering points, allowing to monitor either fully controlled networks, like virtual networks in the cloud, or mobile devices scattered in different networks. The monitoring process uses both mobile devices and cloud computational power. Gathered network traffic records are sent to a proper intrusion detection node, which executes the detection process. In case of suspicious behavior, an alert of a possible intrusion can be sent to the device owner. The detection process is based on an autoencoder neural network, which brings significant advantages: an anomaly-based approach, training only on benign samples, and a good performance. To improve detection results, we created time-window-based features, and there is also a possibility to share computed statistics between intrusion detection nodes. In the experiments, we construct three models using pure network flows data and time-window-based features. The results show that the autoencoder-based approach can detect with a high performance attacks not known during the training process. We also prove that created derived features have a significant impact on detection results.
机译:随着云计算的普及和移动设备责任的增加,需要在这两个新区域中使用入侵检测系统。与此同时,移动设备的计算能力的增加使我们能够使用它们来执行数据预处理的一部分。类似地,可以在云中执行更复杂的操作 - 该概念被称为移动云计算。在本文中,我们提出了一种基于AutoEncoder的入侵检测系统,适用于云和移动环境。系统提供多个数据收集点,允许监视完全控制的网络,如云中的虚拟网络,或者在不同网络中散落的移动设备。监控过程使用移动设备和云计算功率。收集的网络流量记录被发送到正确的入侵检测节点,执行检测过程。在可疑行为的情况下,可以将可能的入侵的警报发送到设备所有者。检测过程基于AutoEncoder神经网络,其带来了显着的优势:基于异常的方法,仅培训良性样本以及良好的性能。为了提高检测结果,我们创建了基于时间窗口的特征,并且还有可能在入侵检测节点之间共享计算的统计信息。在实验中,我们使用纯网络流数据和基于时间窗口的特征构建三种模型。结果表明,基于AutoEncoder的方法可以通过训练过程中未知的高性能攻击来检测。我们还证明了创建的衍生功能对检测结果产生了重大影响。

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