超越保真度:基于学习的检测器的漏洞定位解释

IF 6.6 2区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING ACM Transactions on Software Engineering and Methodology Pub Date : 2024-01-31 DOI:10.1145/3641543
Baijun Cheng, Mingsheng Zhao, Kailong Wang, Meizhen Wang, Guangdong Bai, Ruitao Feng, Yao Guo, Lei Ma, Haoyu Wang
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引用次数: 0

摘要

摘要:近年来,基于深度学习(DL)模型的漏洞检测器已经证明了其有效性。然而,这些检测器的决策过程笼罩着一层不透明的面纱,使安全分析人员难以理解。为了解决这个问题,人们提出了各种解释方法,通过突出重要特征来解释预测结果,这些方法在计算机视觉和自然语言处理等其他领域已被证明是有效的。遗憾的是,对这些解释方法所学习和理解的漏洞关键特征(如细粒度的漏洞相关代码行)的深入评估仍然缺乏。在本研究中,我们首先评估了基于图和序列表示的漏洞检测器的十种解释方法的性能,通过两个定量指标来衡量,包括保真度和漏洞行覆盖率。我们的结果表明,仅靠保真度不足以评估这些方法,因为保真度在不同数据集和检测器之间会产生显著波动。我们随后检查了解释方法报告的漏洞相关代码行的精确度,发现所有解释方法在这项任务中的精确度都很低。这可以归因于解释者在选择重要特征时的低效率,以及基于 DL 的检测器所学习到的不相关人工智能的存在。
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Beyond Fidelity: Explaining Vulnerability Localization of Learning-based Detectors

Abstract: Vulnerability detectors based on deep learning (DL) models have proven their effectiveness in recent years. However, the shroud of opacity surrounding the decision-making process of these detectors makes it difficult for security analysts to comprehend. To address this, various explanation approaches have been proposed to explain the predictions by highlighting important features, which have been demonstrated effective in other domains such as computer vision and natural language processing. Unfortunately, an in-depth evaluation of vulnerability-critical features, such as fine-grained vulnerability-related code lines, learned and understood by these explanation approaches remains lacking. In this study, we first evaluate the performance of ten explanation approaches for vulnerability detectors based on graph and sequence representations, measured by two quantitative metrics including fidelity and vulnerability line coverage rate. Our results show that fidelity alone is not sufficient for evaluating these approaches, as fidelity incurs significant fluctuations across different datasets and detectors. We subsequently check the precision of the vulnerability-related code lines reported by the explanation approaches, and find poor accuracy in this task among all of them. This can be attributed to the inefficiency of explainers in selecting important features and the presence of irrelevant artifacts learned by DL-based detectors.

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来源期刊
ACM Transactions on Software Engineering and Methodology
ACM Transactions on Software Engineering and Methodology 工程技术-计算机:软件工程
CiteScore
6.30
自引率
4.50%
发文量
164
审稿时长
>12 weeks
期刊介绍: Designing and building a large, complex software system is a tremendous challenge. ACM Transactions on Software Engineering and Methodology (TOSEM) publishes papers on all aspects of that challenge: specification, design, development and maintenance. It covers tools and methodologies, languages, data structures, and algorithms. TOSEM also reports on successful efforts, noting practical lessons that can be scaled and transferred to other projects, and often looks at applications of innovative technologies. The tone is scholarly but readable; the content is worthy of study; the presentation is effective.
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