Mutation-Based Graph Inference for Fault Localization

Vincenzo Musco, Monperrus Martin, P. Preux
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引用次数: 9

Abstract

We present a new fault localization algorithm, called Vautrin, built on an approximation of causality based on call graphs. The approximation of causality is done using software mutants. The key idea is that if a mutant is killed by a test, certain call graph edges within a path between the mutation point and the failing test are likely causal. We evaluate our approach on the fault localization benchmark by Steimann et al. totaling 5,836 faults. The causal graphs are extracted from 88,732 nodes connected by 119,531 edges. Vautrin improves the fault localization effectiveness for all subjects of the benchmark. Considering the wasted effort at the method level, a classical fault localization evaluation metric, the improvement ranges from 3% to 55%, with an average improvement of 14%.
基于突变的故障定位图推理
我们提出了一种新的故障定位算法,称为Vautrin,它建立在基于呼叫图的因果关系近似的基础上。因果关系的近似是使用软件突变体完成的。关键思想是,如果突变被测试杀死,那么在突变点和失败测试之间的路径中的某些调用图边可能是因果关系。我们在Steimann等人总共5836个故障的故障定位基准上对我们的方法进行了评估。因果图是从由119,531条边连接的88,732个节点中提取的。Vautrin提高了基准测试中所有对象的故障定位效率。考虑到方法层面上的浪费,一个经典的故障定位评价指标的改进范围在3%到55%之间,平均改进14%。
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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