Distributed Intrusion Detection Systems in Big Data: A Survey

B. Hameed, Abdallah A. Alhabshy, K. Eldahshan
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引用次数: 2

Abstract

We live in a time where data stream by the second, which makes intrusion detection a more difficult and tiresome task, and in turn intrusion detection systems require an efficient and improved detection mechanism to detect the intrusive activities. Moreover, handling the size, complexity, and availability of big data requires techniques that can create beneficial knowledge from huge streams of the information, which imposes the challenges on the process of both designing and management of both Intrusion Detection System (IDS) and Intrusion Prevention System (IPS) in terms of performance, sustainability, security, reliability, privacy, energy consumption, fault tolerance, scalability, and flexibility. IDSs and IPSs utilize various methodologies to guarantee security, accessibility and reliability of enterprise computer networks. This paper presents a comprehensive study of the Distributed Intrusion Detection Systems in Big Data, and presents intrusion detection and prevention techniques that utilize machine learning, big data analytics techniques in distributed systems of the intrusion detection.
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大数据中的分布式入侵检测系统:综述
我们生活在一个以秒为单位的数据流时代,这使得入侵检测变得更加困难和繁琐,入侵检测系统需要一种高效和改进的检测机制来检测入侵活动。此外,处理大数据的规模、复杂性和可用性需要能够从大量信息流中创造有益知识的技术,这对入侵检测系统(IDS)和入侵防御系统(IPS)的设计和管理过程在性能、可持续性、安全性、可靠性、隐私性、能耗、容错、可扩展性和灵活性方面都提出了挑战。ids和ips利用各种方法来保证企业计算机网络的安全性、可访问性和可靠性。本文对大数据下的分布式入侵检测系统进行了全面的研究,提出了利用机器学习、大数据分析技术在分布式系统中进行入侵检测和防御的技术。
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