智能入侵与检测系统的合适方法研究

C. Leghris, Ouafae Elaeraj
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引用次数: 0

摘要

如今,公司的信息安全成为重中之重。事实上,随着网络攻击力量的发展,网络安全与监控的发展就显得越来越必要。数据将在公司内部网络和外部网络(如Internet)之间交换。因此,有必要防止恶意入侵公司的网络,还要监控网络内部的流量,以防止可能的内部攻击。目前,安全性和可靠性已成为个人或组织关注的主要问题。称为Snort的基于规则的入侵检测系统(IDS)是一种开源软件,用作网络保护工具,只能检测已识别的攻击。为了检测高级网络攻击和检测欺诈性网络流量,本文提出了一种先进的、更智能的方法,即应用机器学习。为了找到与Snort一起使用以改进其检测的最佳算法,根据其准确性选择了支持向量机(SVM)。在安全入侵检测领域,与已有的检测方法相比,该系统具有较高的检测率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward an Appropriate Approach for Intelligent Intrusion and Detection Systems
Now a days, the company’s information security become among a main priority. Indeed, the more the attack force on the network develops, the more it is necessary to develop the security and the network surveillance. The data is to be exchanged between the internal company network and the outside one such as Internet. It is therefore necessary to be protected against malicious intrusions into the company's network, but also to monitor the traffic inside the network in order to prevent possible internal attacks. Currently, security and reliability have become the major concerns of an individual or organization. A rule-based intrusion detection system (IDS) called Snort is an open-source software used as a network protection tool that can only detect recognized attacks. In order to detect advanced network attacks and detect fraudulent network traffic, this research paper proposes an advanced and more intelligent approach by applying machine learning. To find the best algorithm to use with Snort to improve its detection, the support vector machine (SVM) was chosen based on its accuracy. The proposed system has produced efficient detection rates versus other proposed approaches in the security intrusions detection field.
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