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Review on Feature Selection Algorithms for Anomaly-Based Intrusion Detection System

机译:基于异常的入侵检测系统特征选择算法综述

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As Internet networks expand, the amount of network threats and intrusions increased, the demand for an efficient and reliable defense system is required to detect network security vulnerabilities. Intrusion Detection Systems (IDS) are a vital constituent of security of a network to avert data illegal usage and misappropriation. IDS deal with massive amount of data movement that comprises repetitive and inappropriate features. The detection rate implementation is frequently affected by these inappropriate features which also munch up intrusion detection system resources. A significant portion in the removal of dissimilar and not used features in IDS is done by the feature selection method. Methods included are data mining techniques, machine learning, statistical analysis, support vector machine models and neural networks. In this paper, we provide review of several algorithms used for anomaly-based intrusion detection systems to improve performance of machine learning classifiers. This paper first summarizes the theoretical basis of IDS, and then discusses the feature selection techniques and their types.
机译:随着互联网网络的扩展,网络威胁和入侵的数量增加,需要对高效且可靠的防御系统的需求来检测网络安全漏洞。入侵检测系统(IDS)是网络安全性的重要组成,以避免数据非法使用和盗用。 IDS处理大量数据移动,包括重复和不适当的功能。检测率实现经常受到这些不适当的特征的影响,也咀嚼入侵检测系统资源。在IDS中移除不相似的和未使用特征的显着部分是通过特征选择方法完成的。包括的方法是数据挖掘技术,机器学习,统计分析,支持向量机模型和神经网络。在本文中,我们提供了对基于异常的入侵检测系统的若干算法的审查,以提高机器学习分类器的性能。本文首先总结了ID的理论基础,然后讨论了特征选择技术及其类型。

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