Automated Inference of Access Control Policies for Web Applications

H. Le, Duy Cu Nguyen, L. Briand, Benjamin Hourte
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引用次数: 19

Abstract

In this paper, we present a novel, semi-automated approach to infer access control policies automatically for web-based applications. Our goal is to support the validation of implemented access control policies, even when they have not been clearly specified or documented. We use role-based access control as a reference model. Built on top of a suite of security tools, our approach automatically exercises a system under test and builds access spaces for a set of known users and roles. Then, we apply a machine learning technique to infer access rules. Inconsistent rules are then analysed and fed back to the process for further testing and improvement. Finally, the inferred rules can be validated based on pre-specified rules if they exist. Otherwise, the inferred rules are presented to human experts for validation and for detecting access control issues. We have evaluated our approach on two applications; one is open source while the other is a proprietary system built by our industry partner. The obtained results are very promising in terms of the quality of inferred rules and the access control vulnerabilities it helped detect.
Web应用访问控制策略的自动推理
在本文中,我们提出了一种新颖的半自动方法来自动推断基于web的应用程序的访问控制策略。我们的目标是支持已实现的访问控制策略的验证,即使它们没有明确指定或文档化。我们使用基于角色的访问控制作为参考模型。我们的方法建立在一套安全工具之上,自动地测试系统,并为一组已知的用户和角色构建访问空间。然后,我们应用机器学习技术来推断访问规则。然后分析不一致的规则并将其反馈到流程中,以进行进一步的测试和改进。最后,可以根据预先指定的规则(如果存在)验证推断出的规则。否则,推断出的规则将提交给人类专家进行验证和检测访问控制问题。我们已经在两个应用中评估了我们的方法;一个是开源的,而另一个是由我们的行业合作伙伴构建的专有系统。就推断规则的质量和它帮助检测的访问控制漏洞而言,获得的结果非常有希望。
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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