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Web Application Attacks Detection Using Machine Learning Techniques

机译:使用机器学习技术的Web应用程序攻击检测

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Web applications are permanently being exposed to attacks that exploit their vulnerabilities. In this work we investigate the use of machine learning techniques to leverage the performance of Web Application Firewalls (WAFs), systems that are used to detect and prevent attacks. We propose a characterization of the problem by defining different scenarios depending if we have valid and/or attack data available for training. We also propose two solutions: first a multi-class approach for the scenario when valid and attack data is available; and second a one-class solution when only valid data is at hand. We present results using both approaches that outperform MODSECURITY configured with the OWASP Core Rule Set out of the box, which is the baseline configuration setting of a widely deployed WAF technology. We also propose a tagged dataset based on the DRUPAL content management framework.
机译:Web应用程序永久受到利用其漏洞的攻击。在这项工作中,我们研究了使用机器学习技术来利用Web应用程序防火墙(WAF)的性能,WAF是用于检测和预防攻击的系统。我们通过定义不同的方案来提出问题的特征,具体取决于我们是否具有可用于训练的有效和/或攻击数据。我们还提出了两种解决方案:第一,针对有效数据和攻击数据可用的情况,采用多类方法。第二种是只有有效数据时的一类解决方案。我们提供的两种方法的结果均优于现成的OWASP核心规则集(这是广泛部署的WAF技术的基准配置设置)所配置的MODSECURITY。我们还提出了一种基于DRUPAL内容管理框架的标记数据集。

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