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Measuring, analyzing and predicting security vulnerabilities in software systems

机译:测量,分析和预测软件系统中的安全漏洞

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In this work we examine the feasibility of quantitatively characterizing some aspects of security. In particular, we investigate if it is possible to predict the number of vulnerabilities that can potentially be present in a software system but may not have been found yet. We use several major operating systems as representatives of complex software systems. The data on vulnerabilities discovered in these systems are analyzed. We examine the results to determine if the density of vulnerabilities in a program is a useful measure. We also address the question about what fraction of software defects are security related, i.e., are vulnerabilities. We examine the dynamics of vulnerability discovery hypothesizing that it may lead us to an estimate of the magnitude of the undiscovered vulnerabilities still present in the system. We consider the vulnerability discovery rate to see if models can be developed to project future trends. Finally, we use the data for both commercial and open-source systems to determine whether the key observations are generally applicable. Our results indicate that the values of vulnerability densities fall within a range of values, just like the commonly used measure of defect density for general defects. Our examination also reveals that it is possible to model the vulnerability discovery using a logistic model that can sometimes be approximated by a linear model.
机译:在这项工作中,我们研究了定量表征安全性某些方面的可行性。特别是,我们调查了是否有可能预测软件系统中可能存在但尚未发现的漏洞数量。我们使用几种主要的操作系统作为复杂软件系统的代表。分析在这些系统中发现的漏洞数据。我们检查结果以确定程序中漏洞的密度是否是有用的度量。我们还将解决以下问题:与安全相关的软件缺陷(即漏洞)的比例是多少。我们检查了漏洞发现的动态,并假设它可能使我们对系统中仍存在的未发现漏洞的数量进行估计。我们考虑漏洞发现率,以查看是否可以开发模型来预测未来趋势。最后,我们使用商业和开源系统的数据来确定主要观察结果是否普遍适用。我们的结果表明,脆弱性密度的值落在一个值的范围内,就像通常使用的一般缺陷的缺陷密度度量一样。我们的检查还显示,可以使用有时可以由线性模型近似的逻辑模型对漏洞发现进行建模。

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