基于机器学习的IDS数据挖掘技术的实现

Mahesh T R, V Vivek, Vinoth Kumar
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引用次数: 0

摘要

在现代社会,互联网对于持续的联系是必不可少的,但它的有效性可能会减轻所谓的入侵的影响。任何对目标系统产生负面影响的行为都被认为是入侵。随着互联网的迅速发展,网络安全已成为一个重大问题。网络入侵检测系统(IDS, Network Intrusion Detection System)是防范此类恶意攻击的主要安全防御机制,目前已得到广泛应用。数据挖掘和机器学习技术已广泛应用于网络入侵检测和防御系统中,从网络流量数据中提取用户行为模式。关联规则和序列规则是入侵检测中数据挖掘的主要基础。针对Auto encoder算法传统方法频繁项集挖掘的瓶颈,提出了一种基于数据挖掘的减长支持入侵识别方法,这是IDS基于机器学习的数据挖掘技术的升级版。根据测试结果,建议的策略似乎是成功的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Machine Learning-Based Data Mining Techniques for IDS
The internet is essential for ongoing contact in the modern world, yet its effectiveness might lessen the effect known as intrusions. Any action that negatively affects the targeted system is considered an intrusion. Network security has grown to be a major issue as a result of the Internet's rapid expansion. The Network Intrusion Detection System (IDS), which is widely used, is the primary security defensive mechanism against such hostile assaults. Data mining and machine learning technologies have been extensively employed in network intrusion detection and prevention systems to extract user behaviour patterns from network traffic data. Association rules and sequence rules are the main foundations of data mining used for intrusion detection. Given the Auto encoder algorithm's traditional method's bottleneck of frequent itemsets mining, we provide a Length-Decreasing Support to Identify Intrusion based on Data Mining, which is an upgraded Data Mining Techniques based on Machine Learning for IDS. Based on test results, it appears that the suggested strategy is successful
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