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A Scenario-Based Approach to Predicting Software Defects Using Compressed C4.5 Model

机译:基于场景的压缩C4.5模型预测软件缺陷的方法

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摘要

Defect prediction approaches use software metrics and fault data to learn which software properties are associated with what kinds of software faults in programs. One trend of existing techniques is to predict the software defects in a program construct (file, class, method, and so on) rather than in a specific function scenario, while the latter is important for assessing software quality and tracking the defects in software functionalities. However, it still remains a challenge in that how a functional scenario is derived and how a defect prediction technique should be applied to a scenario. In this paper, we propose a scenario-based approach to defect prediction using compressed C4.5 model. The essential idea of this approach is to use a k-medoids algorithm to cluster functions followed by deriving functional scenarios, and then to use the C4.5 model to predict the fault in the scenarios. We have also conducted an experiment to evaluate the scenario-based approach and compared it with a file-based prediction approach. The experimental results show that the scenario-based approach provides with high performance by reducing the size of the decision tree by 52.65% on average and also slightly increasing the accuracy.
机译:缺陷预测方法使用软件指标和故障数据来了解哪些软件属性与程序中的哪些类型的软件故障相关联。现有技术的一种趋势是预测程序结构(文件,类,方法等)中的软件缺陷,而不是特定功能场景中的软件缺陷,而后者对于评估软件质量和跟踪软件功能中的缺陷很重要。 。但是,仍然存在挑战,在于如何得出功能方案以及应如何将缺陷预测技术应用于方案。在本文中,我们提出了一种使用压缩C4.5模型的基于场景的缺陷预测方法。这种方法的基本思想是,使用k-medoids算法对功能进行聚类,然后派生功能方案,然后使用C4.5模型预测方案中的故障。我们还进行了一项实验,以评估基于方案的方法,并将其与基于文件的预测方法进行比较。实验结果表明,基于场景的方法通过将决策树的大小平均减少52.65%并略微提高了准确性,从而提供了高性能。

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