New Features of User's Behavior to Distributed Denial of Service Attacks Detection in Application Layer

Silvia Bravo, D. Mauricio
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引用次数: 2

Abstract

Distributed Denial of Service (DDoS) attacks are a threat to the security of red. In recent years, these attacks have been directed especially towards the application layer. This phenomenon is mainly due to the large number of existing tools for the generation of this type of attack. The highest detection rate achieved by a method in the application capacity is 98.5%. Therefore, the problem of detecting DDoS attacks persists. In this work an alternative of detection based on the dynamism of the web user is proposed. To do this, evaluate the user's characteristics, mouse functions and right click. For the evaluation, a data set of 11055 requests was used, from which the characteristics were extracted and entered into a classification algorithm. To that end, it can be applied once in Java for the classification of real users and DDoS attacks. The results showed that the evaluated characteristics achieved an efficiency of 100%. Therefore, it is concluded that these characteristics show the dynamism of the user and can be used in a detection method of DDoS attacks.
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应用层用户行为对分布式拒绝服务攻击检测的新特征
分布式拒绝服务(DDoS)攻击是网络安全的一大威胁。近年来,这些攻击主要针对应用层。这种现象主要是由于大量现有的工具来生成这种类型的攻击。该方法在应用容量下的最高检出率为98.5%。因此,检测DDoS攻击的问题一直存在。在这项工作中,提出了一种基于web用户动态的替代检测方法。要做到这一点,评估用户的特点,鼠标功能和右键。为了进行评估,使用了11055个请求的数据集,从中提取特征并输入分类算法。为此,它可以在Java中应用一次,用于对真实用户和DDoS攻击进行分类。结果表明,所评价的特征达到了100%的效率。因此,这些特征显示了用户的动态性,可以用于DDoS攻击的检测方法。
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