Better Safe Than Sorry! Automated Identification of Functionality-Breaking Security-Configuration Rules

Patrick Stöckle, Michael Sammereier, Bernd Grobauer, A. Pretschner
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Abstract

Insecure default values in software settings can be exploited by attackers to compromise the system that runs the software. As a countermeasure, there exist security-configuration guides specifying in detail which values are secure. However, most administrators still refrain from hardening existing systems because the system functionality is feared to deteriorate if secure settings are applied. To foster the application of security-configuration guides, it is necessary to identify those rules that would restrict the functionality.This article presents our approach to use combinatorial testing to find problematic combinations of rules and machine learning techniques to identify the problematic rules within these combinations. The administrators can then apply only the unproblematic rules and, therefore, increase the system’s security without the risk of disrupting its functionality. To demonstrate the usefulness of our approach, we applied it to real-world problems drawn from discussions with administrators at Siemens and found the problematic rules in these cases. We hope that this approach and its open-source implementation motivate more administrators to harden their systems and, thus, increase their systems’ general security.
安全总比后悔好!自动识别破坏功能的安全配置规则
攻击者可以利用软件设置中不安全的默认值来破坏运行软件的系统。作为对策,存在安全配置指南,详细指定哪些值是安全的。但是,大多数管理员仍然避免加强现有系统,因为如果应用安全设置,担心系统功能会恶化。为了促进安全配置指南的应用,有必要确定那些限制功能的规则。本文介绍了我们使用组合测试来发现有问题的规则组合和机器学习技术来识别这些组合中有问题的规则的方法。然后,管理员可以只应用没有问题的规则,从而增加系统的安全性,而不会有破坏其功能的风险。为了证明我们的方法的有用性,我们将其应用于与西门子管理人员讨论的实际问题,并在这些情况下发现了有问题的规则。我们希望这种方法及其开源实现能够激励更多的管理员加强他们的系统,从而提高系统的总体安全性。
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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