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Consensus forecasting of zero-day vulnerabilities for network security

机译:网络安全零漏零脆弱性的共识预测

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Network defenders are locked in a constant race with attackers as they try to defend their networks. The defenders suffer from a huge disadvantage: they lack knowledge of the existence of zero-day vulnerabilities that have not been yet been discovered or publically disclosed, but that are still weakening the security of their networks. It would be a huge advantage to these defenders if they had some idea of where and when these vulnerabilities would appear and how severe they would be. The research presented here is directed towards producing accurate forecasts of the location and severity of zero-day vulnerabilities that will be discovered in the next 12-24 months. Forecasts of future zero-day vulnerabilities can be incorporated into Attack Surface security metrics that calculate the security posture of a network. Incorporating yet-to-be-discovered vulnerabilities into these calculations will alert network defenders to potential areas of weakness before they become a problem. In this research, three distinct forecasting model suites based on regression models and machine learning are used. These forecast model suites are applied to zero-day vulnerability discovery at the global and category (web browser, operating system, and video player) levels. Preliminary results demonstrate, as expected, that different models provide better forecasts at different times, but that it is difficult to predict which models will perform better under which circumstances. Therefore, the outputs of the forecast models are combined using consensus models based on Quantile Regression Averaging (QRA) and other techniques. These consensus models are expected to perform better than most individual forecast models over time, and experimental results demonstrate the strength of these consensus models. It is also important to understand the margin of error in these forecasts. QRA and other methods generate 68% and 95% confidence bounds around the forecasts, which give network defenders an idea of the best- and worst-case scenarios for which they should prepare. Experimental results generated by the consensus models demonstrate the strength of the forecasts and the confidence bounds. The results make a strong case for continuing this work by applying it to individual software applications.
机译:当他们试图捍卫他们的网络时,网络捍卫者被锁定在持续的竞争者中。捍卫者遭受了巨大的缺点:他们缺乏了解迄今未被发现或公开披露的零天脆弱性的知识,但这仍然削弱了网络的安全性。如果他们对这些漏洞出现的地方以及它们会有多严重时,这将是这些捍卫者的巨大优势。此处提出的研究旨在生产对未来12-24个月内将发现的零天漏洞的位置和严重程度的准确预测。未来零日漏洞的预测可以纳入计算网络安全姿势的攻击表面安全度量。将尚未被发现的漏洞纳入这些计算将警告网​​络防御者在他们成为一个问题之前对潜在的弱势领域。在本研究中,使用了基于回归模型和机器学习的三个不同的预测模型套件。这些预测模型套件适用于全局和类别(Web浏览器,操作系统和视频播放器)级别的零天漏洞发现。初步结果正如所预期的那样,不同的模型在不同时间提供更好的预测,而是难以预测在哪种情况下更好地执行哪种模型。因此,使用基于定量回归平均(QRA)和其他技术的共识模型相结合预测模型的输出。这些共识模型预计比大多数个人预测模型随着时间的推移而言,实验结果表明了这些共识模型的实力。了解这些预测中的错误边际也很重要。 QRA和其他方法在预测周围产生了68%和95%的置信度,为网络维护者提供了他们应该准备的最佳和最坏情况的想法。共识模型产生的实验结果表明了预测的强度和置信度。结果为将其应用于个别软件应用程序来持续开展这项工作。

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