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A review of intrusion detection using anomaly based detection

机译:使用基于异常的检测进行入侵检测的综述

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Security from intruders in data mining and machine learning have been important area of research during the last few years. Today malicious attack is serious security threat. These malicious executables are created at the rate of thousands every year and create serious security problems. Intrusion Detection System (IDS) is used to Access unauthorized and malicious attacks over the network. Data mining techniques that can be applied to IDS to detect normal and abnormal behavior patterns. Intrusion detection systems analyzes network activities and identify suspicious activity in the network to improve accuracy and security and detect anomalies attacks. Data mining provide a way to analyze, classify, clean and eliminate the large amount of network data through intrusion detection system. Several privacy and security techniques and algorithms have been proposed recently. In this paper we provide techniques of research problem and achievements in the field of security of big data using anomaly based IDS. Intrusion detection is a software application for detecting and monitoring the network activities and protect from unknown and suspicious access of device.
机译:在过去的几年中,数据挖掘和机器学习中入侵者的安全性一直是重要的研究领域。如今,恶意攻击已成为严重的安全威胁。这些恶意可执行文件每年以成千上万的速度创建,并带来严重的安全问题。入侵检测系统(IDS)用于通过网络访问未经授权的恶意攻击。可以应用于IDS的数据挖掘技术,以检测正常和异常行为模式。入侵检测系统分析网络活动并识别网络中的可疑活动,以提高准确性和安全性并检测异常攻击。数据挖掘通过入侵检测系统提供了一种分析,分类,清理和消除大量网络数据的方法。最近已经提出了几种隐私和安全技术及算法。在本文中,我们提供了使用基于异常的IDS在大数据安全领域研究问题的技术和取得的成就。入侵检测是一种软件应用程序,用于检测和监视网络活动并防止未知和可疑的设备访问。

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