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首页> 外文期刊>Journal of Computational Methods in Sciences and Engineering >Automated labeling of issue reports using semi supervised approach
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Automated labeling of issue reports using semi supervised approach

机译:使用半监督方法自动标记问题报告

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Incorrectly labeled issue reports stored in issue tracking systems deteriorate the quality of such repositories. Lots of experimental studies make use of issue reports labeled as 'bugs' for training machine learning models. Such mislabeled issue reports present in issue tracking systems pose serious threat on validity of these studies and their subsequent results. Hence an accurate and efficient approach is required for labeling issue reports as 'bugs' and 'non-bugs'. Supervised learning approaches proposed for automated labeling of issue reports need large number of pre-labeled issue reports. This constraint is overcome by use of unsupervised learning approaches that do not require pre-labeled issue reports but they fail to give performance as good as supervised approaches. This paper proposes a semi supervised approach as an improvised solution for automated labeling of issue reports. The objective of the proposed approach is to overrule the dependency on having large pre-labeled reports for training, at the same time, give better performance than unsupervised approaches. To test the validity of proposed semi supervised approach, experiments are conducted on issue reports of three widely used open source systems. Results obtained using semi supervised approach illustrates considerable improvement in terms of F-measure score as compared to unsupervised approaches.
机译:存储在问题跟踪系统中的错误标记的问题报告恶化了此类存储库的质量。许多实验研究利用标记为培训机器学习模型的“错误”的问题报告。问题跟踪系统中存在的此类误标记的问题报告对这些研究的有效性和其后续结果构成了严重威胁。因此,将问题报告作为“错误”和“非漏洞”标记问题需要准确和有效的方法。提议为问题报告的自动标签提出的监督学习方法需要大量预先标记的问题报告。通过使用不需要预先标记的问题报告的无监督学习方法来克服这一限制,但他们未能将性能视为受监督方法。本文提出了一个半监督方法,作为发行报告的自动标签的简易解决方案。拟议方法的目的是否决对拥有大型预先标记报告进行培训的依赖,同时提供比无监督方法更好的性能。为了测试所提出的半监督方法的有效性,就发布了三种广泛使用的开源系统的报告进行了实验。使用半监控方法获得的结果显示与无监督方法相比的F测量评分的显着改进。

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