Directing a Search Towards Execution Properties with a Learned Fitness Function

Leonid Joffe, D. Clark
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引用次数: 6

Abstract

Search based software testing is a popular and successful approach both in academia and industry. SBST methods typically aim to increase coverage whereas searching for executions with specific properties is largely unresearched. Fitness functions for execution properties often possess search landscapes that are difficult or intractable. We demonstrate how machine learning techniques can convert a property that is not searchable, in this case crashes, into one that is. Through experimentation on 6000 C programs drawn from the Codeflaws repository, we demonstrate a strong, program independent correlation between crashing executions and library function call patterns within those executions as discovered by a neural net. We then exploit the correlation to produce a searchable fitness landscape to modify American Fuzzy Lop, a widely used fuzz testing tool. On a test set of previously unseen programs drawn from Codeflaws, a search strategy based on a crash targeting fitness function outperformed a baseline in 80.1% of cases. The experiments were then repeated on three real world programs: the VLC media player, and the libjpeg and mpg321 libraries. The correlation between library call traces and crashes generalises as indicated by ROC AUC scores of 0.91, 0.88 and 0.61. The produced search landscape however is not convenient due to plateaus. This is likely because these programs do not use standard C libraries as often as do those in Codeflaws. This limitation can be overcome by considering a more powerful observation domain and a broader training corpus in future work. Despite limited generalisability of the experimental setup, this research opens new possibilities in the intersection of machine learning, fitness functions, and search based testing in general.
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用学习适应度函数指导对执行属性的搜索
基于搜索的软件测试在学术界和工业界都是一种流行且成功的方法。SBST方法通常旨在增加覆盖率,而搜索具有特定属性的执行在很大程度上还没有研究过。执行属性的适应度函数通常具有难以处理的搜索环境。我们演示了机器学习技术如何将不可搜索的属性(在这种情况下是崩溃)转换为可搜索的属性。通过对从Codeflaws存储库中提取的6000个C程序进行实验,我们证明了神经网络发现的崩溃执行与这些执行中的库函数调用模式之间存在强大的、独立于程序的相关性。然后,我们利用相关性产生一个可搜索的健身景观来修改美国模糊Lop,一个广泛使用的模糊测试工具。在一组从Codeflaws提取的以前未见过的程序的测试集上,基于崩溃目标适应度函数的搜索策略在80.1%的情况下优于基线。然后在三个真实世界的程序上重复实验:VLC媒体播放器,libjpeg和mpg321库。库调用跟踪和崩溃之间的相关性由ROC AUC分数0.91、0.88和0.61表示。然而,由于平台,产生的搜索景观并不方便。这可能是因为这些程序不像Codeflaws中的程序那样经常使用标准C库。这一限制可以通过在未来的工作中考虑更强大的观察域和更广泛的训练语料库来克服。尽管实验设置的通用性有限,但本研究为机器学习,适应度函数和基于搜索的测试的交叉点开辟了新的可能性。
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