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首页> 外文期刊>International journal of systems assurance engineering and management >Software vulnerability prioritization using vulnerability description
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Software vulnerability prioritization using vulnerability description

机译:软件漏洞使用漏洞描述优先级

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摘要

Whenever a vulnerability is detected by the testing team, it is described based on its characteristics and a detailed overview of the vulnerability is given by the testing team. Usually, there are certain features or keywords that points towards the possible severity level of a vulnerability. Using these keywords in the vulnerability description, a possible estimation of the severity level of vulnerabilities can be given just by their description. In this paper, we are eliminating the need for generating a severity score for software vulnerabilities by using the description of a vulnerability for their prioritization. This study makes use of word embedding and convolution neural network (CNN). The CNN is trained with sufficient samples vulnerability descriptions from all the categories, so that it can capture discriminative words and features for the categorization task. The proposed system helps to channelize the efforts of the testing team by prioritizing the newly found vulnerabilities in three categories based on previous data. The dataset includes three data samples from three different vendors and two mixed vendor data samples.
机译:每当测试团队检测到漏洞时,它将基于其特征来描述,并由测试团队提供漏洞的详细概述。通常,存在某些功能或关键字,指向漏洞可能的严重性级别。在漏洞描述中使用这些关键字,可以仅通过他们的描述来估计漏洞的严重程度级别。在本文中,我们通过使用对其优先级排序的漏洞描述来消除对软件漏洞产生严重性分数的需求。本研究利用单词嵌入和卷积神经网络(CNN)。 CNN培训,具有足够的样本来自所有类别的样本漏洞描述,因此它可以捕获分类任务的判别单词和特征。该建议的系统有助于通过在基于以前的数据的三个类别中优先考虑新发现的漏洞来引导测试团队的努力。数据集包括来自三个不同供应商的三个数据样本和两个混合供应商数据样本。

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