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Categorizing and Predicting Invalid Vulnerabilities on Common Vulnerabilities and Exposures

机译:对常见漏洞和暴露的无效漏洞进行分类和预测

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To share vulnerability information across separate databases, tools, and services, newly identified vulnerabilities are recurrently reported to Common Vulnerabilities and Exposures (CVE) database.Unfortunately, not all vulnerability reports will be accepted. Some of them might get rejected or be accepted with disputations.In this work, we refer to those rejected or disputed CVEs as invalid vulnerability reports. Invalid vulnerability reports not only cause unnecessary efforts to confirm the vulnerability but also impact the reputation of the software vendors. In this paper, we aim to understand the root causes of invalid vulnerability reports and build a prediction model to automatically identify them.To this end, we first leverage card sorting to categorize invalid vulnerability reports, from which six main reasons are observed for rejected and disputed CVEs, respectively.Then, we propose a text mining approach to predict the invalid vulnerability reports. Our experiments reveal that the proposed text mining approach can achieve an AUC score of 0.87 for predicting invalid vulnerabilities. We also discuss the implications of our study: our categorization can be used to guide new committer to avoid these traps; some root causes of invalid CVEs can be avoided by using automatic techniques or optimizing reviewing mechanism; invalid vulnerability reports data should not be neglected.
机译:为了在单独的数据库,工具和服务之间共享漏洞信息,新发现的漏洞会定期报告到“常见漏洞和披露(CVE)”数据库中。不幸的是,并非所有漏洞报告都会被接受。其中一些可能会被拒绝或存在争议。在这项工作中,我们将那些被拒绝或有争议的CVE称为无效漏洞报告。无效的漏洞报告不仅会导致不必要的努力来确认漏洞,而且还会影响软件供应商的声誉。本文旨在了解无效漏洞报告的根本原因,并建立预测模型以自动识别它们。为此,我们首先利用卡片分类对无效漏洞报告进行分类,从中可以观察到六个主要原因被拒绝和被拒绝。然后,我们提出了一种文本挖掘方法来预测无效的漏洞报告。我们的实验表明,所提出的文本挖掘方法在预测无效漏洞方面可以达到0.87的AUC评分。我们还讨论了我们研究的意义:我们的分类可以用来指导新提交者避免这些陷阱。通过使用自动技术或优化审查机制,可以避免无效CVE的某些根本原因;无效的漏洞报告数据不应忽略。

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