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A Deep Learning Approach to Distributed Anomaly Detection for Edge Computing

机译:一种用于边缘计算的分布式异常检测的深度学习方法

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One of the multiplier effects of the boom in mobile technologies ranging from cell phones to computers and wearables like smart watches is that every public and private common spaces are now dotted with Wi-Fi hotspots. These hotspots provide the convenience of accessing the internet on-the-go for either play or work. Also, with the increased automation of our daily routines by our mobile devices via a multitude of applications, our vulnerability to cyber fraud or attacks becomes higher too. Hence, the need for heightened security that is capable of detecting anomalies on-the-fly. However, these edge devices connected to the local area network come with diverse capabilities with varying degrees of limitations in compute and energy resources. Therefore, running a process-based anomaly detector is not given a high priority in these devices because; a) the primary functions of the applications running on the devices is not security; therefore, the device allocates much of its resources into satisfying the primary duty of the applications. b) the volume and velocity of the data are high. Therefore, in this paper, we introduce a multi-node (nodes and devices are used interchangeably in the paper) ad-hoc network that uses a novel offloading scheme to bring an online anomaly detection capability on the kernel events to the nodes in the network. We test the framework in a Wi-Fi-based ad-hoc network made up of several devices, and the results confirm our hypothesis that the scheme can reduce latency and increase the throughput of the anomaly detector, thereby making online anomaly detection in the edge possible without sacrificing the accuracy of the deep recurrent neural network.
机译:从手机到计算机到智能手表等可穿戴设备,移动技术蓬勃发展的乘数效应之一是,每个公共和私人公共场所现在都布满了Wi-Fi热点。这些热点为您在旅途中娱乐或工作提供了方便地访问Internet的便利。此外,随着我​​们的移动设备通过多种应用程序使我们的日常工作更加自动化,我们对网络欺诈或攻击的脆弱性也越来越高。因此,需要能够实时检测异常的增强安全性。但是,这些连接到局域网的边缘设备具有多种功能,在计算和能源资源上都有不同程度的限制。因此,在这些设备中,运行基于进程的异常检测器不被赋予较高的优先级,因为; a)设备上运行的应用程序的主要功能不是安全性;因此,设备将其大量资源分配以满足应用程序的主要职责。 b)数据量和速度都很高。因此,在本文中,我们介绍了一个多节点(本文中的节点和设备可互换使用)ad-hoc网络,该网络使用一种新颖的卸载方案来将内核事件的在线异常检测功能引入网络中的节点。 。我们在由多个设备组成的基于Wi-Fi的自组织网络中测试了该框架,结果证实了我们的假设,即该方案可以减少延迟并增加异常检测器的吞吐量,从而在边缘进行在线异常检测可能不牺牲深度递归神经网络的准确性。

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