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Improving missing issue-commit link recovery using positive and unlabeled data

机译:使用肯定的和未标记的数据改善丢失的问题提交链接的恢复

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Links between issue reports and corresponding fix commits are widely used in software maintenance. The quality of links directly affects maintenance costs. Currently, such links are mainly maintained by error-prone manual efforts, which may result in missing links. To tackle this problem, automatic link recovery approaches have been proposed by building traditional classifiers with positive and negative links. However, these traditional classifiers may not perform well due to the inherent characteristics of missing links. Positive links, which can be used to build link recovery model, are quite limited as the result of missing links. Since the construction of negative links depends on the number of positive links in many existing approaches, the available negative links also become restricted. In this paper, we point out that it is better to consider the missing link problem as a model learning problem by using positive and unlabeled data, rather than the construction of traditional classifier. We propose PULink, an approach that constructs the link recovery model with positive and unlabeled links. Our experiment results show that compared to existing state-of-the-art technologies built on traditional classifier, PULink can achieve competitive performance by utilizing only 70% positive links that are used in those approaches.
机译:问题报告和相应的修订提交之间的链接已广泛用于软件维护中。链接的质量直接影响维护成本。当前,此类链接主要是由容易出错的手动工作维护的,这可能会导致链接丢失。为了解决这个问题,已经提出了通过建立具有正向和负向链接的传统分类器来自动链接恢复的方法。但是,由于缺少链接的固有特性,这些传统分类器的效果可能不佳。由于缺少链接,可用于建立链接恢复模型的正向链接非常有限。由于否定链接的构造取决于许多现有方法中肯定链接的数量,因此可用的否定链接也会受到限制。在本文中,我们指出,最好通过使用正数和未标记的数据将丢失的链接问题视为模型学习问题,而不是构造传统的分类器。我们建议使用PULink,这是一种使用正向和未标记链接构建链接恢复模型的方法。我们的实验结果表明,与基于传统分类器的现有最新技术相比,PULink可以通过仅使用这些方法中使用的70%的正向链接来获得具有竞争力的性能。

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