软件故障定位的相似系数评价

Rui Abreu, P. Zoeteweij, A. V. Gemund
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引用次数: 467

摘要

软件故障的自动诊断可以提高调试过程的效率,是开发可靠软件的重要技术。本文研究了应用程序谱方法进行软件故障定位(单个编程错误)的不同相似系数。所研究的系数取自系统诊断/自动调试工具Pinpoint、Tarantula和AMPLE,以及分子生物学领域(Ochiai系数)。我们在西门子基准故障集上评估这些系数,并根据实际故障在诊断技术产生的故障候选概率排序中的位置来评估它们的有效性。我们的实验表明,Ochiai系数始终优于上述工具目前使用的系数。就需要检查的代码量而言,该系数比下一个最佳技术平均提高了5%,在特定情况下提高了30%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Evaluation of Similarity Coefficients for Software Fault Localization
Automated diagnosis of software faults can improve the efficiency of the debugging process, and is therefore an important technique for the development of dependable software. In this paper we study different similarity coefficients that are applied in the context of a program spectral approach to software fault localization (single programming mistakes). The coefficients studied are taken from the systems diagnosis/automated debugging tools Pinpoint, Tarantula, and AMPLE, and from the molecular biology domain (the Ochiai coefficient). We evaluate these coefficients on the Siemens Suite of benchmark faults, and assess their effectiveness in terms of the position of the actual fault in the probability ranking of fault candidates produced by the diagnosis technique. Our experiments indicate that the Ochiai coefficient consistently outperforms the coefficients currently used by the tools mentioned. In terms of the amount of code that needs to be inspected, this coefficient improves 5% on average over the next best technique, and up to 30% in specific cases
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