计算机科学
黑客
Web应用程序安全性
Web服务器
网站分析
卷积神经网络
建筑
Web应用程序
服务器
异常检测
万维网
计算机安全
网页
Web开发
人工智能
互联网
艺术
视觉艺术
标识
DOI:10.1016/j.cose.2020.102096
摘要
Unprotected Web applications are vulnerable places for hackers to attack an organization's network. Statistics show that 42% of Web applications are exposed to threats and hackers. Web requests that Web users request from Web applications are manipulated by hackers to control Web servers. Web queries are detected to prevent manipulations of hacker's attacks. Web attack detection is extremely essential in information distribution over the past decades. Anomaly methods based on machine learning are preferred in the Web application security. This present study aimed to propose an anomaly-based Web attack detection architecture in a Web application using deep learning methods. The architecture structure consists of data preprocess and Convolution Neural Network (CNN) steps. To prove the suitability and success of the proposed CNN architecture, CSIC2010v2 datasets were used. The proposed architecture performed detection of Web attacks, using anomaly-based detection type. Based on the experimental results of the study, the proposed CNN deep learning architecture presented successful outcomes.
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