基于关联规则和聚类规则的缺陷关联和复杂度预测

R. Karthik, N. Manikandan
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引用次数: 9

摘要

系统中保留的缺陷数量提供了对系统质量的洞察。软件缺陷预测的重点是将系统的模块划分为易故障模块和非易故障模块。本文主要对易故障模块进行预测,并对易故障模块中出现的缺陷类型进行识别。软件缺陷预测与关联规则挖掘相结合,以确定在检测到的缺陷之间发生的关联,以及隔离和纠正这些缺陷所需的工作。利用聚类规则将缺陷按照其复杂程度进行分组:SIMPLE、MODERATE和COMPLEX。此外,这些缺陷还被用来预测对项目进度的影响以及与项目完成有关的风险性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defect association and complexity prediction by mining association and clustering rules
Number of defects remaining in a system provides an insight into the quality of the system. Software defect prediction focuses on classifying the modules of a system into fault prone and non-fault prone modules. This paper focuses on predicting the fault prone modules as well as identifying the types of defects that occur in the fault prone modules. Software defect prediction is combined with association rule mining to determine the associations that occur among the detected defects and the effort required for isolating and correcting these defects. Clustering rules are used to classify the defects into groups indicating their complexity: SIMPLE, MODERATE and COMPLEX. Moreover the defects are used to predict the effect on the project schedules and the nature of risk concerning the completion of such projects.
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