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Software defect detection by using data mining based fuzzy logic

机译:基于数据挖掘的模糊逻辑软件缺陷检测

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Software updates and maintenance costs can be reduced by a successful quality control process. Defect prediction is particularly important during software quality control, and a number of methods have been applied to identify defects in a software system. Quality control studies are based on quality metrics and static code metrics, and each research uses different set of metrics during the process. However, it is uncertain which metric is more significant in a particular study. In this study, NASA software quality dataset is used, and the most significant metric in the dataset is determined using MANOVA. A data mining based fuzzy logic model is developed using the reduced dataset. Gini decision tree is used as the data mining algorithm. Results of ROC analysis showed that the hybrid data mining-fuzzy model produces successful results during defect detection in software quality.
机译:成功的质量控制流程可以减少软件更新和维护成本。在软件质量控制期间,缺陷预测特别重要,并且已经采用了许多方法来识别软件系统中的缺陷。质量控制研究基于质量指标和静态代码指标,并且每个研究在过程中都使用不同的指标集。但是,尚不确定哪个指标在特定研究中更重要。在这项研究中,使用了NASA软件质量数据集,并且使用MANOVA确定了数据集中最重要的指标。使用简化后的数据集开发了基于数据挖掘的模糊逻辑模型。基尼决策树用作数据挖掘算法。 ROC分析的结果表明,在软件质量缺陷检测期间,混合数据挖掘-模糊模型产生了成功的结果。

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