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Performance evaluation of Convolutional Neural Network for web security

机译:Web安全卷积神经网络的性能评估

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摘要

Due to the daily use of web applications in several critical domains such as banking and online shopping, cybersecurity has become a challenge. Recently, deep learning techniques have achieved promising results and attracted cybersecurity researchers. In this paper, we explore and evaluate deep learning techniques used for the security of web applications. We analyze through experiments the different factors influencing the performance of the Convolutional Neural Network (CNN) technique for web attacks detection. The experiments done in this paper focus on CNN and have three goals. First, we evaluate the performance of different CNN models using two different methods of data input presentation and data input splitting. Second, we study the impact of the different CNN hyper-parameters on the attack detection rate. Third, we select the best deep learning toolbox that will be used in our future proposed detection technique. Through the experiments conducted in this paper, we reveal that an adequate tuning of hyper-parameters and the way of pre-processing data input have a significant impact on the attack detection rate.
机译:由于在几个关键域中使用Web应用程序,例如银行和在线购物,网络安全已成为挑战。最近,深入学习技术取得了有希望的结果,并吸引了网络安全研究人员。在本文中,我们探索并评估用于Web应用程序的安全性的深度学习技术。我们通过实验分析了影响卷积神经网络(CNN)技术对Web攻击检测性能的不同因素。本文在本文中的实验侧重于CNN并有三个目标。首先,我们使用两种不同的数据输入呈现和数据输入分离来评估不同CNN模型的性能。其次,我们研究不同的CNN超参数对攻击检测率的影响。第三,我们选择将在未来的建议检测技术中使用的最佳深层学习工具箱。通过本文进行的实验,我们揭示了足够的超参数调整和预处理数据输入的方式对攻击检测率产生了重大影响。

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