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Moving Beyond the Mean: Analyzing Variance in Software Engineering Experiments

机译:超越平均值:分析软件工程实验中的方差

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Software Engineering (SE) experiments are traditionally analyzed with statistical tests (e.g., t-tests, ANOVAs, etc.) that assume equally spread data across groups (i.e., the homogeneity of variances assumption). Differences across groups' variances in SE are not seen as an opportunity to gain insights on technology performance, but instead, as a hindrance to analyze the data. We have studied the role of variance in mature experimental disciplines such as medicine. We illustrate the extent to which variance may inform on technology performance by means of simulation. We analyze a real-life industrial experiment on Test-Driven Development (TDD) where variance may impact technology desirability. Evaluating the performance of technologies just based on means-as traditionally done in SE-may be misleading. Technologies that make developers obtain similar performance (i.e., technologies with smaller variances) may be more suitable if the aim is minimizing the risk of adopting them in real practice.
机译:传统上分析了软件工程(SE)实验,其统计测试(例如,T-Tests,ANOVA等),其横跨跨组(即差异假设的均匀性)。 SE中的群体差异的差异并不被视为能够获得技术性能见解的机会,而是作为分析数据的障碍。我们研究了差异在成熟的实验学科等中的作用。我们说明了方差可以通过模拟通知技术性能的程度。我们分析了对测试驱动的现实工业实验(TDD),其中方差可能影响技术期望。根据在SE-SE-MO-MOSE的手段中评估技术的性能范围 - 可能是误导性的。使开发人员获得类似的性能的技术(即,具有较小差异的技术)可能更适合,如果目标最小化采用实际实践的风险。

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