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The Detecting Cross-Site Scripting (XSS) Using Machine Learning Methods

机译:使用机器学习方法检测跨站点脚本(XSS)

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This article discusses the problem of detecting cross-site scripting (XSS) using machine learning methods. XSS is an attack in which malicious code is embedded on a page to interact with an attacker’s web server. The XSS attack ranks third in the ranking of key web application risks according to Open Source Foundation for Application Security (OWASP). This attack has not been studied for a long time. It was considered harmless. However, this is fallacious: the page or HTTP Cookie may contain very vulnerable data, such as payment document numbers or the administrator session token. Machine learning is a tool that can be used to detect XSS attacks. This article describes an experiment. As a result the model for detecting XSS attacks was created. Following machine learning algorithms are considered: the support vector method, the decision tree, the Naive Bayes classifier, and Logistic Regression. The accuracy of the presented methods is made a comparison.
机译:本文讨论了使用机器学习方法检测跨站点脚本(XSS)的问题。 XSS是一种攻击,其中恶意代码嵌入在页面上以与攻击者的Web服务器进行交互。根据应用安全(OWASP)的开源基础,XSS攻击在关键Web应用风险排名中排名第三。这次攻击已经暂时过很长时间。它被认为是无害的。但是,这是谬误的:页面或HTTP cookie可能包含非常脆弱的数据,例如支付文档编号或管理员会话令牌。机器学习是一种可用于检测XSS攻击的工具。本文介绍了一个实验。结果,创建了检测XSS攻击的模型。遵循机器学习算法:支持向量方法,决策树,天真贝叶斯分类器和逻辑回归。提出了方法的准确性进行了比较。

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