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Information Theoretic XSS Attack Detection in Web Applications

机译:Web应用程序中的信息理论XSS攻击检测

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Cross-Site Scripting (XSS) has been ranked among the top three vulnerabilities over the last few years. XSS vulnerability allows an attacker to inject arbitrary JavaScript code that can be executed in the victim's browser to cause unwanted behaviors and security breaches. Despite the presence of many mitigation approaches, the discovery of XSS is still widespread among today s web applications. As a result, there is a need to improve existing solutions and to develop novel attack detection techniques. This paper proposes a proxy-level XSS attack detection approach based on a popular information-theoretic measure known as Kullback-Leibler Divergence (KLD). Legitimate JavaScript code present in an application should remain similar or very close to the JavaScript code present in a rendered web page. A deviation between the two can be an indication of an XSS attack. This paper applies a back-off smoothing technique to effectively detect the presence of malicious JavaScript code in response pages. The proposed approach has been applied for a number of open-source PHP web applications containing XSS vulnerabilities. The initial results show that the approach can effectively detect XSS attacks and suffer from low false positive rate through proper choice of threshold values of KLD. Further, the performance overhead has been found to be negligible.
机译:跨站点脚本(XSS)在过去几年中已被列为前三名漏洞之一。 XSS漏洞使攻击者可以注入任意JavaScript代码,这些代码可以在受害者的浏览器中执行,从而导致不良行为和安全漏洞。尽管存在许多缓解方法,但是XSS的发现仍然在当今的Web应用程序中广泛存在。结果,需要改进现有的解决方案并开发新颖的攻击检测技术。本文提出了一种基于流行的信息理论方法(称为Kullback-Leibler Divergence(KLD))的代理级XSS攻击检测方法。应用程序中存在的合法JavaScript代码应与呈现的网页中存在的JavaScript代码保持相似或非常接近。两者之间的偏差可能表示XSS攻击。本文应用退避平滑技术来有效检测响应页面中是否存在恶意JavaScript代码。提议的方法已应用于许多包含XSS漏洞的开源PHP Web应用程序。初步结果表明,该方法可以通过正确选择KLD阈值来有效检测XSS攻击,并具有较低的误报率。此外,发现性能开销可以忽略不计。

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