Machine-Learning-Guided Selectively Unsound Static Analysis

K. Heo, Hakjoo Oh, K. Yi
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引用次数: 51

Abstract

We present a machine-learning-based technique for selectively applying unsoundness in static analysis. Existing bug-finding static analyzers are unsound in order to be precise and scalable in practice. However, they are uniformly unsound and hence at the risk of missing a large amount of real bugs. By being sound, we can improve the detectability of the analyzer but it often suffers from a large number of false alarms. Our approach aims to strike a balance between these two approaches by selectively allowing unsoundness only when it is likely to reduce false alarms, while retaining true alarms. We use an anomaly-detection technique to learn such harmless unsoundness. We implemented our technique in two static analyzers for full C. One is for a taint analysis for detecting format-string vulnerabilities, and the other is for an interval analysis for buffer-overflow detection. The experimental results show that our approach significantly improves the recall of the original unsound analysis without sacrificing the precision.
机器学习引导的选择性不健全静态分析
我们提出了一种基于机器学习的技术,用于选择性地在静态分析中应用不稳健性。为了在实践中精确和可扩展,现有的bug查找静态分析器是不健全的。然而,它们都是不可靠的,因此有可能遗漏大量真正的bug。通过合理的检测,可以提高分析仪的可检测性,但往往存在大量的误报。我们的方法旨在在这两种方法之间取得平衡,只有在可能减少假警报的情况下才有选择地允许不健全,同时保留真警报。我们使用异常检测技术来学习这种无害的不健全。我们在两个静态分析器中实现了我们的技术。一个是用于检测格式字符串漏洞的污染分析,另一个是用于缓冲区溢出检测的间隔分析。实验结果表明,该方法在不牺牲精度的前提下,显著提高了原始不健全分析的召回率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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