基于稳定性准则的洪水攻击检测方法特征选择数学模型

Abdulaziz Aborujilah, Nor Azlina Ali, R. Nassr, Mohd Nizam Husen, Abdulaleem Al- Othmani, K. A. Alezabi, Zalizah Awang Long
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引用次数: 0

摘要

在这个时代,互联网代表了数据搜索和交换的主要工具。通过使用互联网,许多应用程序在不同的位置,可以通过网络服务器连接到彼此远程连接。这种连接暴露在诸如洪水攻击之类的互联网漏洞之下。洪水攻击是一种针对web服务器资源或网络带宽进行有害行为的攻击。基于多元相关分析的检测方法(MADM)是用于检测此类攻击的基于统计的检测方法之一。然而,MADM使用预定义的特征,这些特征包含一些对分类性能有直接影响的相互关联的特征。本文提出了一种基于支持向量机的特征选择方法,对MADM体系进行了扩展。这就解释了数学公式。所提出的特征选择方法将有助于降低误报报警率和分类错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A mathematical Model for Selecting Features of Flooding Attacks Detection Methods based on Stability Criterion
In this era, the Internet represents the main tool of data searching and exchanging. By using Internet many apps in different locations, can be connected to each other remotely via web server connectivity. This connectivity is exposed to the internet vulnerabilities such as flooding attacks. Flooding attack is an example of an attack that causes harmful action against the web server resources or network bandwidth. Multivariate Correlation Analysis based Detection approach (MADM) is one of the statistical based detection (NIDS) approaches used to detect such attacks. However, MADM use predefined features that contain some intercorrelated features that have direct impact on classification performance. In this paper, a new extension on MADM architecture is proposed by adding SVM based feature selection method. So the mathematical formulation is explained. The proposed features selection method will be contributing in minimizing the false positive alarm rate and classification error rate.
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