Behavioral Fault Localization by Sampling Suspicious Dynamic Control Flow Subgraphs

2018 IEEE 11th International Conference on Software Testing, Verification and Validation (ICST)(2018)

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摘要
We present a new algorithm, Score Weighted Random Walks (SWRW), for behavioral fault localization. Behavioral fault localization localizes faults (bugs) in programs to a group of interacting program elements such as basic blocks or functions. SWRW samples suspicious (or discriminative) subgraphs from basic-block level dynamic control flow graphs collected during the execution of passing and failing tests. The suspiciousness of a subgraph may be measured by any one of a family of new metrics adapted from probabilistic formulations of existing coverage-based statistical fault localization metrics. We conducted an empirical evaluation of SWRW with nine subgraph-suspiciousness measures on five real-world subject programs. The results indicate that SWRW outperforms previous fault localization techniques based on discriminative subgraph mining.
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关键词
Automatic Fault Localization,Statistical Fault Localization,Discriminative Subgraph Mining,Dynamic Analysis,Profiling
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