A Review on Various Methods of Intrusion Detection System

D. Agrawal, Chetan Agrawal
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引用次数: 5

Abstract

Detection of Intrusion is an essential expertise business segment as well as a dynamic area of study and expansion caused by its requirement. Modern day intrusion detection systems still have these limitations of time sensitivity. The main requirement is to develop a system which is able of handling large volume of network data to detect attacks more accurately and proactively. Research conducted by on the KDDCUP99 dataset resulted in a various set of attributes for each of the four major attack types. Without reducing the number of features, detecting attack patterns within the data is more difficult for rule generation, forecasting, or classification. The goal of this research is to present a new method that Compare results of appropriately categorized and inaccurately categorized as proportions and the features chosen. Data mining is used to clean, classify and examine large amount of network data. Since a large volume of network traffic that requires processing, we use data mining techniques. Different Data Mining techniques such as clustering, classification and association rules are proving to be useful for analyzing network traffic. This paper presents the survey on data mining techniques applied on intrusion detection systems for the effective identification of both known and unknown patterns of attacks, thereby helping the users to develop secure information systems. Keywords: IDS, Data Mining, Machine Learning, Clustering, Classification DOI : 10.7176/CEIS/11-1-02 Publication date: January 31 st 2020
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入侵检测系统的各种方法综述
入侵检测是一个重要的专业领域,也是一个动态的研究和发展领域。现代入侵检测系统仍然存在这些时间敏感性的限制。主要要求是开发一种能够处理大量网络数据的系统,以便更准确、更主动地检测攻击。对KDDCUP99数据集进行的研究得出了四种主要攻击类型的不同属性集。如果不减少特征的数量,检测数据中的攻击模式对于规则生成、预测或分类来说将更加困难。本研究的目的是提出一种新的方法来比较正确分类和不准确分类的结果作为比例和特征的选择。数据挖掘用于对大量网络数据进行清理、分类和检验。由于大量的网络流量需要处理,我们采用了数据挖掘技术。不同的数据挖掘技术,如聚类、分类和关联规则,被证明对分析网络流量非常有用。本文介绍了数据挖掘技术在入侵检测系统中的应用,以有效识别已知和未知的攻击模式,从而帮助用户开发安全的信息系统。关键词:IDS,数据挖掘,机器学习,聚类,分类DOI: 10.7176/CEIS/11-1-02出版日期:2020年1月31日
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