AIIDA-SQL: An Adaptive Intelligent Intrusion Detector Agent for detecting SQL Injection attacks

Cristian Pinzón, J. F. D. Paz, J. Bajo, Álvaro Herrero, E. Corchado
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引用次数: 45

Abstract

SQL Injection attacks on web applications have become one of the most important information security concerns over the past few years. This paper presents a hybrid approach based on the Adaptive Intelligent Intrusion Detector Agent (AIIDA-SQL) for the detection of those attacks. The AIIDA-SQL agent incorporates a Case-Based Reasoning (CBR) engine which is equipped with learning and adaptation capabilities for the classification of SQL queries and detection of malicious user requests. To carry out the tasks of attack classification and detection, the agent incorporates advanced algorithms in the reasoning cycle stages. Concretely, an innovative classification model based on a mixture of an Artificial Neuronal Network together with a Support Vector Machine is applied in the reuse stage of the CBR cycle. This strategy enables to classify the received SQL queries in a reliable way. Finally, a projection neural technique is incorporated, which notably eases the revision stage carried out by human experts in the case of suspicious queries. The experimental results obtained on a real-traffic case study show that AIIDA-SQL performs remarkably well in practice.
AIIDA-SQL:用于检测SQL注入攻击的自适应智能入侵检测代理
在过去几年中,针对web应用程序的SQL注入攻击已成为最重要的信息安全问题之一。本文提出了一种基于自适应智能入侵检测代理(AIIDA-SQL)的混合检测方法。AIIDA-SQL代理集成了一个基于案例的推理(CBR)引擎,该引擎具有学习和适应能力,用于SQL查询分类和恶意用户请求检测。为了完成攻击分类和检测任务,智能体在推理循环阶段采用了先进的算法。具体而言,将人工神经网络与支持向量机相结合的分类模型应用于CBR循环的重用阶段。该策略支持以可靠的方式对接收到的SQL查询进行分类。最后,结合了投影神经技术,在可疑查询的情况下,大大简化了人类专家进行的修改阶段。在实际流量案例研究中得到的实验结果表明,AIIDA-SQL在实际应用中具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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