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Bayesian Hierarchical Modelling for Tailoring Metric Thresholds

机译:定制度量阈值的贝叶斯层次建模

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Software is highly contextual. While there are cross-cutting 'global' lessons, individual software projects exhibit many 'local' properties. This data heterogeneity makes drawing local conclusions from global data dangerous. A key research challenge is to construct locally accurate prediction models that are informed by global characteristics and data volumes. Previous work has tackled this problem using clustering and transfer learning approaches, which identify locally similar characteristics. This paper applies a simpler approach known as Bayesian hierarchical modeling. We show that hierarchical modeling supports cross-project comparisons, while preserving local context. To demonstrate the approach, we conduct a conceptual replication of an existing study on setting software metrics thresholds. Our emerging results show our hierarchical model reduces model prediction error compared to a global approach by up to 50%.
机译:软件是高度相关的。尽管有跨领域的“全球”课程,但各个软件项目都具有许多“本地”属性。这种数据异质性使得从全局数据中得出局部结论变得很危险。一项关键的研究挑战是构建以全球特征和数据量为基础的本地准确的预测模型。以前的工作已经使用聚类和转移学习方法解决了这个问题,这些方法可以识别本地相似的特征。本文采用了一种称为贝叶斯层次建模的简单方法。我们展示了层次化建模支持跨项目比较,同时保留本地上下文。为了演示该方法,我们对设置软件指标阈值的现有研究进行了概念复制。我们的新兴结果表明,与全局方法相比,我们的分层模型可将模型预测误差降低多达50%。

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