将变更任务转换为源代码的字典

Katja Kevic, Thomas Fritz
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引用次数: 17

摘要

在变更任务的开始,软件开发人员花费大量的时间搜索和导航以定位源代码中的相关部分。当前支持开发人员进行初始代码搜索的方法主要使用信息检索技术,这种技术利用任务描述和代码元素标识符之间的相似性来推荐相关元素。然而,源代码中使用的词汇表或语言通常与用于描述变更任务的词汇表或语言不同,特别是因为开发代码的人与报告bug或定义要实现的新特性的人不同。在我们的工作中,我们研究了一个字典的创建,该字典使用来自更改集的信息和存储在先前完成的任务中的交互历史记录来映射不同的词汇表。在对四个开源项目的实证分析中,我们的方法在推荐相关代码元素的传统信息检索技术的结果上有了实质性的改进。
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A dictionary to translate change tasks to source code
At the beginning of a change task, software developers spend a substantial amount of their time searching and navigating to locate relevant parts in the source code. Current approaches to support developers in this initial code search predominantly use information retrieval techniques that leverage the similarity between task descriptions and the identifiers of code elements to recommend relevant elements. However, the vocabulary or language used in source code often differs from the one used for describing change tasks, especially since the people developing the code are not the same as the ones reporting bugs or defining new features to be implemented. In our work, we investigate the creation of a dictionary that maps the different vocabularies using information from change sets and interaction histories stored with previously completed tasks. In an empirical analysis on four open source projects, our approach substantially improved upon the results of traditional information retrieval techniques for recommending relevant code elements.
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