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A Network Clustering Based Software Attribute Selection for Identifying Fault-Prone Modules

机译:基于网络聚类的基于软件属性选择,用于识别故障易于模块

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The software defect can damage the reliability and the quality of the software. The static code software metrics have been widely used and played an important role in software defect prediction. Instead of using whole features, it is quite necessary to remove the redundant features and select some meaningful features to improve the prediction performance. This study focuses on the effective attribute selection technique for the software fault classification. We proposed the software attributes network that indicates the mutual information between features and the clustering based attribute selection techniques. The results demonstrate that the proposed network clustering based feature selection performs the best on fault-prone modules prediction. The comparative feature selection techniques are examined to evaluate the result. Furthermore, the best-performed software attributes and the relations between them are shown and carefully analyzed.
机译:软件缺陷会损坏软件的可靠性和质量。静态代码软件指标已被广泛使用并在软件缺陷预测中发挥着重要作用。而不是使用整个功能,非常有必要删除冗余功能,并选择一些有意义的功能以提高预测性能。本研究侧重于软件故障分类的有效属性选择技术。我们提出了该软件属性网络,其指示特征与基于群集的属性选择技术之间的互信息。结果表明,所提出的基于网络聚类的特征选择在故障易于的模块预测上执行最佳。检查比较特征选择技术以评估结果。此外,显示并仔细分析了最佳执行的软件属性和它们之间的关系。

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