Aggregation of Development History from Distributed Support Systems

Hiroki Kawai, H. Uwano, Soichiro Tani
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Abstract

This paper proposes a method to recommend the relevant information of the document which recorded in the development support systems such as BTS and VCS. We improve a system which we implemented in previous work with the method proposed in this paper. Our method get a document from the support systems, extract the word, then calculate the feature vector based on the TF-IDF value of each word. In the experiment, we apply the proposal method to the dataset from an open source software projects, and evaluate the recommendation accuracy between the six clustering algorithm. The result of the experiment shows that the proposed method improves the recommendation accuracy compared with the previous work.
分布式支持系统开发历史的聚合
本文提出了一种将BTS、VCS等开发支持系统中记录的文档相关信息进行推荐的方法。我们用本文提出的方法对以往工作中实现的系统进行了改进。我们的方法是从支持系统中获取一个文档,提取单词,然后根据每个单词的TF-IDF值计算特征向量。在实验中,我们将提议方法应用于一个开源软件项目的数据集,并评估了六种聚类算法之间的推荐精度。实验结果表明,与以往的推荐方法相比,该方法提高了推荐精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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