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Vulnerability Discovery Modelling With Vulnerability Severity

机译:漏洞发现与漏洞严重性建模

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Web browsers are primary targets of attacks because of their extensive uses and the fact that they interact with sensitive data. Vulnerabilities present in a web browser can pose serious risk to millions of users. Thus, it is pertinent to address these vulnerabilities to provide adequate protection for personally identifiable information. Research done in the past has showed that few vulnerability discovery models (VDMs) highlight the characterization of vulnerability discovery process. In these models, severity which is one of the most crucial properties has not been considered. Vulnerabilities can be categorized into different levels based on their severity. The discovery process of each kind of vulnerabilities is different from the other. Hence, it is essential to incorporate the severity of the vulnerabilities during the modelling of the vulnerability discovery process. This paper proposes a model to assess the vulnerabilities present in the software quantitatively with consideration for the severity of the vulnerabilities. It is possible to apply the proposed model to approximate the number of vulnerabilities along with vulnerability discovery rate, future occurrence of vulnerabilities, risk analysis, etc. Vulnerability data obtained from one of the major web browsers (Google Chrome) is deployed to examine goodness-of-fit and predictive capability of the proposed model. Experimental results justify the fact that the model proposed herein can estimate the required information better than the existing VDMs.
机译:Web浏览器是主要攻击目标,因为它们广泛的用途以及它们与敏感数据交互的事实。 Web浏览器中存在的漏洞可能对数百万用户构成严重风险。因此,它与解决这些漏洞有关,以便为个人身份信息提供足够的保护。过去所做的研究表明,很少有漏洞发现模型(VDMS)突出了漏洞发现过程的表征。在这些模型中,尚未考虑最重要的属性之一的严重程度。漏洞可以根据其严重性分为不同的级别。每种漏洞的发现过程与另一个不同。因此,必须在漏洞发现过程的建模期间纳入漏洞的严重程度。本文提出了一种模型,以评估软件中存在的漏洞,以考虑漏洞的严重性。可以应用所提出的模型来近似漏洞的数量以及漏洞发现率,未来发生的漏洞,风险分析等。从一个主要的Web浏览器(Google Chrome)获得的漏洞数据被部署以检查良好 - 拟议模型的适合和预测能力。实验结果证明了本文所提出的模型可以估计比现有VDM更好的所需信息。

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