A Comprehensive Empirical Investigation on Failure Clustering in Parallel Debugging

July 16, 2022 Β· Declared Dead Β· πŸ› Journal of Systems and Software

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Authors Yi Song, Xiaoyuan Xie, Quanming Liu, Xihao Zhang, Xi Wu arXiv ID 2207.07992 Category cs.SE: Software Engineering Citations 8 Venue Journal of Systems and Software Last Checked 4 months ago
Abstract
The clustering technique has attracted a lot of attention as a promising strategy for parallel debugging in multi-fault scenarios, this heuristic approach (i.e., failure indexing or fault isolation) enables developers to perform multiple debugging tasks simultaneously through dividing failed test cases into several disjoint groups. When using statement ranking representation to model failures for better clustering, several factors influence clustering effectiveness, including the risk evaluation formula (REF), the number of faults (NOF), the fault type (FT), and the number of successful test cases paired with one individual failed test case (NSP1F). In this paper, we present the first comprehensive empirical study of how these four factors influence clustering effectiveness. We conduct extensive controlled experiments on 1060 faulty versions of 228 simulated faults and 141 real faults, and the results reveal that: 1) GP19 is highly competitive across all REFs, 2) clustering effectiveness decreases as NOF increases, 3) higher clustering effectiveness is easier to achieve when a program contains only predicate faults, and 4) clustering effectiveness remains when the scale of NSP1F is reduced to 20%.
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