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A Deep Learning Method to Detect Web Attacks Using a Specially Designed CNN

机译:使用专门设计的CNN检测Web攻击的深度学习方法

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With the increasing information sharing and other activities conducted on the World Wide Web, the Web has become the main venue for attackers to make troubles. The effective methods to detect Web attacks are critical and significant to guarantee the Web security. In recent years, many machine learning methods have been applied to detect Web attacks. We present a deep learning method to detect Web attacks by using a specially designed CNN. The method is based on analyzing the HTTP request packets, to which only some preprocessing is needed whereas the tedious feature extraction is done by the CNN itself. The experimental results on dataset HTTP DATASET CSIC 2010 show that the designed CNN has a good performance and the method achieves satisfactory results in detecting Web attacks, having a high detection rate while keeping a low false alarm rate.
机译:随着越来越多的信息共享和世界范围内进行的其他活动,网络已成为攻击者造成麻烦的主要场所。检测Web攻击的有效方法对于保证Web安全性是至关重要的并且很重要。近年来,已经应用了许多机器学习方法来检测Web攻击。我们通过使用专门设计的CNN来提出一种深入的学习方法来检测Web攻击。该方法基于分析HTTP请求分组,仅需要一些预处理,而繁琐的特征提取由CNN本身完成。 DataSet HTTP数据集CSIC 2010上的实验结果表明,设计的CNN具有良好的性能,并且该方法达到令人满意的导致检测Web攻击,具有高检测率,同时保持低误报率。

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