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Mining Software Metrics from Jazz

机译:Jazz的挖掘软件指标

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摘要

In this paper, we describe the extraction of source code metrics from the Jazz repository and the application of data mining techniques to identify the most useful of those metrics for predicting the success or failure of an attempt to construct a working instance of the software product. We present results from a systematic study using the J48 classification method. The results indicate that only a relatively small number of the available software metrics that we considered have any significance for predicting the outcome of a build. These significant metrics are discussed and implication of the results discussed, particularly the relative difficulty of being able to predict failed build attempts.
机译:在本文中,我们描述了从Jazz存储库中提取源代码指标以及数据挖掘技术的应用,以识别这些指标中最有用的指标,以预测构建软件产品的工作实例的成功或失败。我们提出了使用J48分类方法进行系统研究的结果。结果表明,我们认为只有相对少量的可用软件指标对预测构建结果没有任何意义。讨论了这些重要指标并讨论了结果的含义,尤其是能够预测失败的构建尝试的相对难度。

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