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A fog-based privacy-preserving approach for distributed signature-based intrusion detection

机译:基于雾的隐私保护方法,用于基于签名的分布式入侵检测

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Intrusion detection systems (IDSs) are the frontier of defense against transmissible cyber threats that spread across distributed systems. Modern IDSs overcome the limitation of hardware processing power by offloading computation extensive operations such as signature matching to the cloud. Moreover, in order to prevent the rapid spread of transmissible cyber threats, collaborative intrusion detection schemes are widely deployed to allow distributed IDS nodes to exchange information with each other. However, no party wants to disclose their own data during the detection process, especially sensitive user data to others, even the cloud providers for privacy concerns. In this background, privacy-preserving technology has been researched in the field of intrusion detection, whereas a collaborative intrusion detection network (CIDN) environment still lacks of appropriate solutions due to its geographical distribution. With the advent of fog computing, in this paper, we propose a privacy-preserving framework for signature based intrusion detection in a distributed network based on fog devices. The results in both simulated and real environments demonstrate that our proposed framework can help reserve the privacy of shared data, reduce the workload on the cloud side, and offer less detection delay as compared to similar approaches. (C) 2018 Elsevier Inc. All rights reserved.
机译:入侵检测系统(IDS)是防御跨分布式系统传播的可传播网络威胁的前沿。现代IDS通过卸载计算扩展操作(例如签名匹配到云)来克服硬件处理能力的限制。而且,为了防止可传播的网络威胁的迅速传播,协作入侵检测方案被广泛部署以允许分布式IDS节点彼此交换信息。但是,没有任何一方愿意在检测过程中公开自己的数据,特别是将敏感的用户数据透露给其他人,甚至是出于隐私考虑的云提供商。在这种背景下,已经在入侵检测领域研究了隐私保护技术,而协作入侵检测网络(CIDN)环境由于其地理分布而仍然缺乏适当的解决方案。随着雾计算的出现,本文提出了一种基于雾设备的分布式网络中基于签名的入侵检测的隐私保护框架。在模拟和真实环境中的结果表明,与类似方法相比,我们提出的框架可以帮助保留共享数据的隐私,减少云侧的工作量并提供更少的检测延迟。 (C)2018 Elsevier Inc.保留所有权利。

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