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Reduction of Redundant Rules in Association Rule Mining-Based Bug Assignment

机译:减少基于关联规则挖掘的错误分配中的冗余规则

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Bug triaging is a process to decide what to do with newly coming bug reports. In this paper, we have mined association rules for the prediction of bug assignee of a newly reported bug using different bug attributes, namely, severity, priority, component and operating system. To deal with the problem of large data sets, we have taken subsets of data set by dividing the large data set using K-means clustering algorithm. We have used an Apriori algorithm in MATLAB to generate association rules. We have extracted the association rules for top 5 assignees in each cluster. The proposed method has been empirically validated on 14,696 bug reports of Mozilla open source software project, namely, Seamonkey, Firefox and Bugzilla. In our approach, we observe that taking on these attributes (severity, priority, component and operating system) as antecedents, essential rules are more than redundant rules, whereas in [M. Sharma and V. B. Singh, Clustering-based association rule mining for bug assignee prediction, Int. J. Business Intell. Data Mining 11(2) (2017) 130-150.] essential rules are less than redundant rules in every cluster. The proposed method provides an improvement over the existing techniques for bug assignment problem.
机译:错误分类是一个决定如何处理新近出现的错误报告的过程。在本文中,我们使用不同的错误属性(即严重性,优先级,组件和操作系统)挖掘了关联规则,用于预测新报告的错误的错误受让人。为了解决大数据集的问题,我们通过使用K-means聚类算法对大数据集进行划分来获取数据集的子集。我们已经在MATLAB中使用了Apriori算法来生成关联规则。我们提取了每个群集中前5名受让人的关联规则。该方法已经在Mozilla开源软件项目Seamonkey,Firefox和Bugzilla的14696个错误报告中得到了经验验证。在我们的方法中,我们观察到以这些属性(严重性,优先级,组件和操作系统)作为前提,基本规则比冗余规则更多,而在[M. Sharma和V. B. Singh,基于集群的关联规则挖掘,用于错误受让人预测,诠释。 J.商业智能。 Data Mining 11(2)(2017)130-150。]基本规则在每个集群中都少于冗余规则。所提出的方法提供了对现有技术的错误分配问题的改进。

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