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Detection of Rogue Certificates from Trusted Certificate Authorities Using Deep Neural Networks

机译:使用深度神经网络从受信任的证书颁发机构检测流氓证书

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摘要

Rogue certificates are valid certificates issued by a legitimate certificate authority (CA) that are nonetheless untrustworthy; yet trusted by web browsers and users. With the current public key infrastructure, there exists a window of vulnerability between the time a rogue certificate is issued and when it is detected. Rogue certificates from recent compromises have been trusted for as long as weeks before detection and revocation. Previous proposals to close this window of vulnerability require changes in the infrastructure, Internet protocols, or end user experience. We present a method for detecting rogue certificates from trusted CAs developed from a large and timely collection of certificates. This method automates classification by building machine-learning models with Deep Neural Networks (DNN). Despite the scarcity of rogue instances in the dataset, DNN produced a classification method that is proven both in simulation and in the July 2014 compromise of the India CCA. We report the details of the classification method and illustrate that it is repeatable, such as with datasets obtained from crawling. We describe the classification performance under our current research deployment.
机译:流氓证书是由合法证书颁发机构(CA)颁发的有效证书,但这些证书不可信任;却受到网络浏览器和用户的信任。使用当前的公钥基础结构,在颁发恶意证书的时间与检测到恶意证书之间存在一个漏洞窗口。在发现和撤销之前,来自最近的威胁的流氓证书已经被信任了长达数周之久。以前关闭此漏洞窗口的建议要求更改基础架构,Internet协议或最终用户体验。我们提出了一种从大量及时收集的证书中开发的可信任CA中检测流氓证书的方法。该方法通过使用深度神经网络(DNN)建立机器学习模型来自动进行分类。尽管数据集中缺乏恶意实例,但DNN还是提供了一种分类方法,该方法在模拟和印度CCA的2014年7月折衷中均得到了证明。我们报告了分类方法的详细信息,并说明了该方法是可重复的,例如从爬网获得的数据集。我们在当前的研究部署下描述分类性能。

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