Multiple Bug Spectral Fault Localization Using Genetic Programming

L. Naish, Neelofar, K. Ramamohanarao
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引用次数: 16

Abstract

Debugging is crucial for producing reliable software. One of the effective bug localization techniques is Spectral-Based Fault Localization (SBFL). It locates a buggy statement by applying an evaluation metric to program spectra and ranking program components on the basis of the score it computes. Recently, genetic programming has been proposed as a way to find good metrics. We have found that the huge search space for metrics can cause this approach to be slow and unreliable, even for relatively simple data sets. Here we propose a restricted class of "hyperbolic" metrics, with a small number of numeric parameters. This class of functions is based on past theoretical and empirical results. We show that genetic programming can reliably discover effective metrics over a wide range of data sets of program spectra. We evaluate the performance for both real programs and model programs with single bugs, multiple bugs, "deterministic" bugs and nondeterministic bugs.
基于遗传规划的多Bug谱故障定位
调试对于生成可靠的软件至关重要。基于频谱的故障定位(SBFL)是一种有效的故障定位技术。它通过将评估指标应用于程序谱并根据其计算的分数对程序组件进行排名来定位错误语句。最近,遗传规划被提出作为一种寻找好的度量的方法。我们发现,对于参数的巨大搜索空间可能导致这种方法缓慢且不可靠,即使对于相对简单的数据集也是如此。在这里,我们提出了一类具有少量数值参数的受限“双曲”度量。这类函数是基于过去的理论和实证结果。我们证明了遗传规划可以在广泛的程序谱数据集上可靠地发现有效的度量。我们评估了真实程序和模型程序的性能,包括单个错误、多个错误、“确定性”错误和非确定性错误。
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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