Web应用程序攻击检测和取证:调查

M. Babiker, Enis Karaarslan, Yasar Hoscan
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引用次数: 17

摘要

Web应用程序攻击是信息安全和数字取证中一个日益重要的领域。据观察,攻击者正在开发绕过安全控制并发起大量复杂攻击的能力。人们已经尝试使用各种技术来解决这些攻击,最大的挑战之一是以有效的方式响应新的和未知的攻击。本研究旨在研究用于检测攻击的技术和解决方案,如防火墙、入侵检测系统、蜜罐和取证技术。数据挖掘和机器学习技术,试图解决传统技术的缺点,并产生更有效的解决方案,也进行了研究。它旨在通过专注于取证中的数据挖掘技术,探索更智能和方便的web应用程序攻击检测技术,从而为这一不断发展的研究领域做出贡献。
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Web application attack detection and forensics: A survey
Web application attacks are an increasingly important area in information security and digital forensics. It has been observed that attackers are developing the capability to bypass security controls and launch a large number of sophisticated attacks. Several attempts have been made to address these attacks using a wide range of technology and one of the greatest challenges is responding to new and unknown attacks in an effective way. This study aims to investigate the techniques and solutions used to detect attacks, such as firewalls, intrusion detection systems, honeypots and forensic techniques. Data mining and machine learning techniques, which attempt to address traditional technology shortcomings and produce more effective solutions, are also investigated. It was aimed to contribute to this growing area of research by exploring more intelligent and convenient techniques for web application attack detection by focusing on the data mining techniques in forensics.
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