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首页> 外文期刊>The Journal of Systems and Software >Summarizing vulnerabilities' descriptions to support experts during vulnerability assessment activities
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Summarizing vulnerabilities' descriptions to support experts during vulnerability assessment activities

机译:汇总漏洞描述以在漏洞评估活动中为专家提供支持

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摘要

Vulnerabilities affecting software and systems have to be promptly fixed, to prevent violations to integrity, availability and confidentiality policies of targeted organizations. Once a vulnerability is discovered, it is published on the Common Vulnerabilities and Exposures (CVE) database, freely available on the web. However, vulnerabilities are described using natural language, which makes them hard to be automatically interpreted by machines. As a consequence, vulnerability assessment activities tend to be time-consuming and imprecise, as the assessors must manually read the majority of the vulnerabilities concerning the perimeter to be protected, to make a decision on which vulnerabilities have the highest priority for patching. In this paper we present CVErizer, an approach able to automatically generate summaries of daily posted vulnerabilities and categorize them according to a taxonomy modeled for industry. We empirically assess the classification capabilities of the approach on a set of 3369 pre-labeled CVE records and perform an end-to-end evaluation of CVErizer summaries involving 15 cybersecurity master students and 4 professional security experts. Our study demonstrates the high performance of the proposed approach in correctly extracting and classifying information from CVE descriptions. Summaries are also considered highly useful for helping analysts during the vulnerability assessment processes. (C) 2019 Elsevier Inc. All rights reserved.
机译:必须及时修复影响软件和系统的漏洞,以防止违反目标组织的完整性,可用性和机密性策略。一旦发现漏洞,它将发布在“常见漏洞和披露(CVE)”数据库上,该数据库可从Web上免费获得。但是,漏洞是使用自然语言描述的,这使得它们很难被机器自动解释。结果,漏洞评估活动往往是耗时且不精确的,因为评估人员必须手动阅读与要保护的外围有关的大多数漏洞,以决定哪些漏洞具有最高优先修补程序。在本文中,我们介绍了CVErizer,该方法能够自动生成每日发布的漏洞摘要,并根据为行业建模的分类法对漏洞进行分类。我们根据一套3369个预先标记的CVE记录对这种方法的分类能力进行经验评估,并对CVErizer汇总进行端到端评估,涉及15名网络安全硕士和4名专业安全专家。我们的研究证明了该方法在从CVE描述中正确提取和分类信息方面的高性能。在漏洞评估过程中,摘要也被认为对帮助分析人员非常有用。 (C)2019 Elsevier Inc.保留所有权利。

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