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Active Learning Empirical Research on Cross-Version Software Defect Prediction Datasets

机译:积极学习跨版软件缺陷预测数据集的实证研究

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摘要

Software quality plays an important part in software engineering. Active learning is introduced to conduct supervised learning classifier because labeling cost is very high. However, in the real software quality assurance process, there are fewer labeled instances in the initial stage of software development, and there may be a historical data set developed by the same team. Therefore, learning from the historical data set can be used for an active learning query strategy. In our empirical study, we design and conduct experiments on promise datasets, which are gathered from real open-source projects. We find that the meta active learning query strategy can perform better than the commonly used query strategy when a little data is labeled.
机译:软件质量在软件工程中起重要作用。 引入主动学习以进行监督的学习分类器,因为标签成本非常高。 但是,在真实的软件质量保证过程中,软件开发的初始阶段有更少的标记实例,并且可能存在由同一团队开发的历史数据集。 因此,从历史数据集学习可以用于主动学习查询策略。 在我们的实证研究中,我们设计并开展了与真正开源项目收集的承诺数据集的实验。 我们发现元主动学习查询策略可以在标记小数据时比常用的查询策略更好。

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