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A Novel Data Mining based Hybrid Intrusion Detection Framework

机译:一种基于数据挖掘的新型混合入侵检测框架

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摘要

The prosperity of technology worldwide has made the concerns of security tend to increase rapidly. The enormous usage of internetworking has raised the need of protecting system(s) as well as network(s) from the unauthorized access (intrusion). To tackle the intrusive activities, several countermeasures have been found in literature viz. firewall, antivirus and currently widely preferred Intrusion detection System (IDS). IDS, is a detection mechanism for detecting the intrusive activities hidden among the normal activities. The revolutionary establishment of IDS has attracted analysts to work dedicatedly enabling the system to deal with technological advancements. Hence in this regard, various beneficial schemes and models have been proposed in order to achieve enhanced IDS. This paper proposes a novel hybrid model for intrusion detection. The proposed framework in this paper may be expected as another step towards advancement of IDS. The framework utilizes the crucial data mining classification algorithms beneficial for intrusion detection. The Hybrid framework would henceforth, will lead to effective, adaptive and intelligent intrusion detection.
机译:全球技术的繁荣使得对安全性的关注趋于迅速增加。互联网络的大量使用提出了保护系统和网络免受未经授权的访问(入侵)的需求。为了解决侵入性活动,在文献中发现了几种对策。防火墙,防病毒软件和当前广泛使用的入侵检测系统(IDS)。 IDS是一种检测机制,用于检测隐藏在正常活动中的侵入活动。 IDS的革命性建立吸引了分析人员的全力以赴,使系统能够处理技术进步。因此,在这方面,已经提出了各种有益的方案和模型以实现增强的IDS。本文提出了一种新型的入侵检测混合模型。本文中提议的框架有望被视为朝着IDS迈进的又一步。该框架利用了对入侵检测有利的关键数据挖掘分类算法。今后,混合框架将导致有效,自适应和智能的入侵检测。

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