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Prediction of faults-slip-through in large software projects : an empirical evaluation

机译:大型软件项目中的故障漏失预测:一项实证评估

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摘要

A large percentage of the cost of rework can be avoided by finding more faults earlier in a software test process. Therefore, determination of which software test phases to focus improvement work on has considerable industrial interest. We evaluate a number of prediction techniques for predicting the number of faults slipping through to unit, function, integration, and system test phases of a large industrial project. The objective is to quantify improvement potential in different test phases by striving toward finding the faults in the right phase. The results show that a range of techniques are found to be useful in predicting the number of faults slipping through to the four test phases; however, the group of search-based techniques (genetic programming, gene expression programming, artificial immune recognition system, and particle swarm optimization-based artificial neural network) consistently give better predictions, having a representation at all of the test phases. Human predictions are consistently better at two of the four test phases. We conclude that the human predictions regarding the number of faults slipping through to various test phases can be well supported by the use of search-based techniques. A combination of human and an automated search mechanism (such as any of the search-based techniques) has the potential to provide improved prediction results.
机译:通过在软件测试过程中尽早发现更多故障,可以避免大部分返工成本。因此,确定将哪些软件测试阶段重点放在改进工作上具有很大的工业兴趣。我们评估了许多预测技术,用于预测大型工业项目中贯穿单元,功能,集成和系统测试阶段的故障数量。目的是通过努力在正确的阶段找到故障来量化不同测试阶段的改进潜力。结果表明,发现了一系列技术可用于预测滑入四个测试阶段的故障数量。但是,基于搜索的技术组(遗传编程,基因表达编程,人工免疫识别系统和基于粒子群优化的人工神经网络)始终能够提供更好的预测,并在所有测试阶段都具有代表性。在四个测试阶段中的两个阶段,人类的预测始终更好。我们得出的结论是,通过使用基于搜索的技术,可以很好地支持有关滑移到各个测试阶段的故障数量的人工预测。人工和自动搜索机制(例如任何基于搜索的技术)的组合具有提供改进的预测结果的潜力。

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