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WEB APPLICATION VULNERABILITY DETECTION BASED ON REINFORCEMENT LEARNING

机译:基于加固学习的Web应用漏洞检测

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To solve the problem of low crawling yield and low detection efficiency in web applications security' detection,we propose a web application security vulnerability detection method based on Q-learning.We present a strategy of form focused crawling (QLC) which uses Q-learning algorithm to increase the crawling yield and detection efficiency.In the learning algorithm,we present the method of combining immediate rewards and future rewards to evaluate and optimize the learning rules.Simulating web attacking and analyzing the data of response are used to detect security-vulnerabilities,and rich attacking vectors ensure the improvement of detection accuracy.Finally,through effective training of the reinforcement learning the rules,a series of experimental results verify the effectiveness of the method we proposed in this paper.
机译:针对Web应用安全检测中爬网率低,检测效率低的问题,提出了一种基于Q学习的Web应用安全漏洞检测方法。在学习算法中,我们提出了结合立即奖励和未来奖励来评估和优化学习规则的方法。模拟网络攻击并分析响应数据来检测安全漏洞。最后,通过有效训练强化学习规则,一系列实验结果验证了本文提出方法的有效性。

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