Xiujun Gong, Zhenchang Xing, Xiaohong Li, Zhiyong Feng, Zhuobing Han
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引用次数: 30
Abstract
Software vulnerabilities seriously affect the security of computing systems and they are continuously disclosed and reported. When documenting software vulnerabilities, characterizing the severity, exploitability and impact of a vulnerability is critical for effective triaging and management of software vulnerabilities. Faced with ever-growing number of new vulnerabilities, we observe a significant lag between the disclosure of a vulnerability and the specification of its characteristics. This lag calls for automated, reliable assessment of vulnerability characteristics to assist security analysts in allocating their limited efforts to potentially most serious vulnerabilities. Existing automated techniques for vulnerability assessment require hand-crafted features and balanced data, and consider each specific characteristic independently at a time. In this paper, we propose a multi-task machine learning approach for the joint prediction of multiple vulnerability characteristics based on the vulnerability descriptions. Our approach gets rid of the requirement of balanced data, and it relies on neural networks that learn to extract features from training data. Using the large-scale vulnerability data in the Common Vulnerabilities and Exposure(CVE) database, we conduct extensive experiments to compare different configurations of neural network feature extractors, study the impact of multi-task learning versus independent-task learning, and investigate the performance of our approach for predicting the characteristics of newly disclosed vulnerabilities and the minimum requirement of historical vulnerability data for training reliable prediction model.
软件漏洞严重影响计算系统的安全,并不断被披露和报道。在记录软件漏洞时,描述漏洞的严重性、可利用性和影响对于有效地分类和管理软件漏洞至关重要。面对数量不断增长的新漏洞,我们观察到漏洞的披露和其特征的规范之间存在显著滞后。这种滞后要求对漏洞特征进行自动化、可靠的评估,以帮助安全分析人员将有限的精力分配给潜在的最严重的漏洞。现有的自动化脆弱性评估技术需要手工制作特征和平衡数据,并一次独立考虑每个特定特征。在本文中,我们提出了一种基于漏洞描述的多任务机器学习方法,用于联合预测多个漏洞特征。我们的方法摆脱了平衡数据的要求,它依赖于学习从训练数据中提取特征的神经网络。利用CVE (Common Vulnerabilities and Exposure)数据库中的大规模漏洞数据,我们进行了大量的实验,比较了不同配置的神经网络特征提取器,研究了多任务学习与独立任务学习的影响,并研究了我们的方法在预测新披露漏洞特征方面的性能,以及训练可靠预测模型所需的历史漏洞数据的最低要求。