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A scalable distributed machine learning approach for attack detection in edge computing environments

机译:用于边缘计算环境中攻击检测的可扩展分布式机器学习方法

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The ever-increasing number of loT applications and cyber-physical services is introducing significant challenges associated to their cyber-security. Due to the constrained nature of the involved devices, some heavier computational tasks, such as deep traffic inspection and classification, essential for implementing automatic attack detection systems, are moved on specialized "edge" devices, in order to distribute the processing intelligence near to the data sources. These edge devices are mainly capable of effectively running pre-built classification models but have not enough storage and processing capabilities to build and upgrade such models from huge volumes of field training data, imposing a serious barrier to the deployment of such solutions. This work leverages the flexibility of cloud-based architectures, together with the recent advancements in the area of large-scale machine learning for shifting the more computationally-expensive and storage-demanding operations to the cloud in order to benefit of edge computing capabilities only for effectively performing traffic classification based on sophisticated Extreme Learning Machines models that are pre-built over the cloud. (C) 2018 Elsevier Inc. All rights reserved.
机译:物联网应用和网络物理服务的数量不断增加,带来了与它们的网络安全相关的重大挑战。由于所涉及设备的受限制性质,为了实现自动攻击检测系统必不可少的一些较重的计算任务(例如深度流量检查和分类)在专用的“边缘”设备上移动,以便将处理智能分布到附近。数据源。这些边缘设备主要能够有效运行预先建立的分类模型,但没有足够的存储和处理能力,无法从大量的现场训练数据中构建和升级此类模型,从而严重阻碍了此类解决方案的部署。这项工作利用了基于云的体系结构的灵活性,以及​​大规模机器学习领域的最新进展,以将计算量更大和存储需求更大的操作转移到云中,从而仅使边缘计算功能受益基于通过云预先构建的复杂的极限学习机模型有效地执行流量分类。 (C)2018 Elsevier Inc.保留所有权利。

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