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Predi??o da Participa??o de Desenvolvedores em Tarefas em Projetos de Software Livre

机译:在自由软件项目中预测开发人员参与任务的参与

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Developers of distributed open source projects use management and issues tracking tool to communicate. These tools provide a large volume of unstructured information that makes the triage of issues difficult, increasing developers' overhead. This problem is common to online communities based on volunteer participation. This paper shows the importance of the content of comments in an open source project to build a classifier to predict the participation for a developer in an issue. To design this prediction model, we used two machine learning algorithms called Naive Bayes and J48. We used the data of three Apache Hadoop subprojects to evaluate the use of the algorithms. By applying our approach to the most active developers of these subprojects we have achieved an accuracy ranging from 79% to 96%. The results indicate that the content of comments in issues of open source projects is a relevant factor to build a classifier of issues for developers.
机译:分布式开源项目的开发人员使用管理和问题跟踪工具进行通信。这些工具提供了大量的非结构化信息,使得问题的分类困难,增加开发人员的开销。基于志愿者参与的在线社区是普通的这个问题。本文显示了开源项目中注释内容的重要性,以构建分类器,以预测在一个问题中的开发人员参与。为了设计这种预测模型,我们使用了两个机器学习算法,称为天真贝叶斯和J48。我们使用了三个Apache Hadoop子项目的数据来评估算法的使用。通过将我们的方法应用于这些子项目最活跃的开发人员,我们已经实现了79%至96%的准确性。结果表明,开源项目问题中的评论内容是构建开发人员问题的分类器的相关因素。

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