基于遗传方法的Bug分类实例和特征排序

Renu Jaiswal, Mahendra Sahare, Umesh Lilhore
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引用次数: 4

摘要

在软件行业中,由各种测试人员和开发人员分析bug是一种代价高昂的方法。所以收集这些bug报告和分类都是手工完成的,这不仅耗费时间,而且错误率也很高。这里提出的工作重点是通过减少数据集大小来对bug报告进行分类。为了减少错误分类的成本,对实例和特征选择进行了适当的排序。这里使用单词列表、关键字和bug id作为适应度函数参数对实例和特征选择进行聚类。采用基于教师学习优化的两阶段学习遗传算法进行聚类。由于遗传算法是一种无监督学习方法,因此本文采用了新的集错误报告分类方法。在bug报告的真实数据集上进行了实验。结果表明,该方法与现有方法相比,精度值提高了38.5%,执行时间减少了29.2%。
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Genetic Approach based Bug Triage for Sequencing the Instance and Features
In software industry analyzing bug by various tester and developer is a costly approach. So collecting these bug reports and triage is done manually which consume time with high rate of error. Here proposed work has focus on this triage of the bug reports by reducing the dataset size. In order to reduce cost of bug triage proper sequencing of the instance and feature selection is done. Here instance and feature selection are clustered by using list of words, keywords and bug id as fitness function parameters. Two stage learning genetic algorithm named as teacher learning based optimization was used for clustering. As genetic algorithms are unsupervised learning approach, so new set bug report triage is adopt by the proposed work. Experiment is done on real dataset of bug reports. Result shows that proposed work is better on precision value by 38.5% while execution time was reduce by 29.2% as compared with existing procedures.
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