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Behavior Analysis of Web Service Attacks

机译:Web服务攻击行为分析

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摘要

With the rapid development of Internet and its services, cyber attacks are increasingly emerging and evolving nowadays. To be aware of new attacks and elaborate the appropriate protection mechanisms, an interesting idea is to attract attackers, then to automatically monitor their activities and analyze their behaviors. In this paper, we are particularly interested in detecting and learning attacks against web services. We propose an approach that describes the attacker's behavior based on data collected from the deployment of a web service honeypot. The strengths of our approach are that it offers a high interaction environment, able to collect valuable information about malicious activities; our solution preprocesses the set of data attributes in order to keep only significant ones it ensures two levels of clustering in order to produce more concise attack scenarios. In order to achieve these contributions, we employ three analysis techniques: Principal Component Analysis, Spectral Clustering and Sequence Clustering. Our experimental tests allow us discovering some attacks scenarios, such as SQL Injection and Denial of Services (DoS), that are modeled in Markov chains.
机译:随着Internet及其服务的飞速发展,当今网络攻击正日益兴起和发展。要了解新的攻击并制定适当的保护机制,一个有趣的想法是吸引攻击者,然后自动监视其活动并分析其行为。在本文中,我们对检测和学习针对Web服务的攻击特别感兴趣。我们提出一种方法,该方法基于从Web服务蜜罐的部署中收集的数据来描述攻击者的行为。我们的方法的优势在于它提供了一个高度交互的环境,能够收集有关恶意活动的有价值的信息;我们的解决方案对数据属性集进行预处理,以仅保留重要的数据属性,并确保两个级别的集群化,以产生更简洁的攻击场景。为了实现这些贡献,我们采用了三种分析技术:主成分分析,光谱聚类和序列聚类。通过实验测试,我们可以发现一些攻击情形,例如以马尔可夫链为模型的SQL注入和拒绝服务(DoS)。

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