利用机器学习分析和预防恶意软件的入侵检测和防御系统

V. Ebenezer, Rosebel Devassy, G. Kathrine
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引用次数: 2

摘要

计算机安全已成为通信和信息技术领域所有研究面临的一个潜在挑战。为了保证一定程度的安全,满足当代生活的需要,已经开发了几种工具和程序,其中入侵检测和预防系统(IDPS)经常检测网络攻击和脆弱行为,从而降低系统的高效运行。本研究的重点是在KDDCup 1999数据集的帮助下,利用NIDS和Docker Jail系统设计和实现一个IDPS。采用主成分分析法实现降维。本课题的分类算法为监督支持向量机和KNN算法。为了阻止攻击,HoneyPot,最好是Artillery,与Docker jail系统一起使用,Docker jail系统基于FreeBSD和BSD jail系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion Detection and Prevention System to Analyse and Prevent Malware using Machine Learning
Computer security has become a potential challenge for all of the studies that have been conducted in communication and information technology domain. In order to guarantee a degree of safety that satisfies the needs of contemporary living, several instruments and procedures have been developed Among them, Intrusion Detection and Prevention Systems (IDPS) frequently detects network attacks and vulnerable behaviours that can reduce the system's efficient operation. This study focuses on designing and implementing an IDPS using NIDS and Docker Jail system with the help of KDDCup 1999 Dataset. Dimension reduction is achieved using PCA. The project's classification algorithms are the supervised SVM and KNN algorithms. In order to stop the attack, a HoneyPot, preferably Artillery, is used in conjunction with the Docker jail system, which is based on the FreeBSD and BSD jail system.
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