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An Improved Discriminative Model for Duplication Detection on Bug Reports with Cluster Weighting

机译:具有集群权重的错误报告重复检测的改进判别模型

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Processing bug reports plays an important role for software maintenance. Recently, the issue of detecting duplicate bug reports has been noticed due to their considerable appearances. In the past, many NLP-based detection schemes have been proposed. However, the cluster-level correlation relationships are not extensively considered in the past studies. In this paper, we present an improved detection scheme using cluster weighting to enhance the detection performance of a previous SVM-based method. We have conducted empirical studies with three open source software projects, Apache, ArgoUML, and SVN. Compared with the original SVM-based method, the proposed SVM-TC scheme can achieve 2.83-16.32% improvements of the top-5 recall rates in three projects.
机译:处理错误报告对于软件维护起着重要作用。近来,由于重复出现的错误报告的出现,已经发现了检测重复错误报告的问题。过去,已经提出了许多基于NLP的检测方案。但是,在过去的研究中并未广泛考虑群集级别的相关关系。在本文中,我们提出了一种使用聚类加权的改进的检测方案,以增强以前基于SVM的方法的检测性能。我们已经对三个开源软件项目Apache,ArgoUML和SVN进行了实证研究。与原始的基于SVM的方法相比,所提出的SVM-TC方案可以在三个项目中将前五名的召回率提高2.83-16.32%。

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