从词嵌入到文档相似度改进软件工程信息检索

Xin Ye, Hui Shen, Xiao Ma, Razvan C. Bunescu, Chang Liu
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引用次数: 273

摘要

在软件工程中,信息检索技术在搜索任务中的应用由于搜索查询(通常用自然语言(如英语)表示)和检索文档(通常用代码(如编程语言)表示)之间的词汇差异而变得困难。这通常发生在bug和特性定位、社区问题回答,或者更一般地说,在软件项目中技术人员和非技术涉众之间的沟通中。在本文中,我们建议通过将自然语言语句和代码片段投影为共享表示空间中的意义向量来弥合词汇差距。在提出的体系结构中,首先在API文档、教程和参考文档上训练词嵌入,然后进行聚合,以估计文档之间的语义相似度。经验评估表明,学习到的向量空间嵌入导致先前探索的错误定位任务和新设计的将API文档链接到计算机编程问题的任务的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Word Embeddings to Document Similarities for Improved Information Retrieval in Software Engineering
The application of information retrieval techniques to search tasks in software engineering is made difficult by the lexical gap between search queries, usually expressed in natural language (e.g. English), and retrieved documents, usually expressed in code (e.g. programming languages). This is often the case in bug and feature location, community question answering, or more generally the communication between technical personnel and non-technical stake holders in a software project. In this paper, we propose bridging the lexical gap by projecting natural language statements and code snippets as meaning vectors in a shared representation space. In the proposed architecture, word embeddings are rst trained on API documents, tutorials, and reference documents, and then aggregated in order to estimate semantic similarities between documents. Empirical evaluations show that the learned vector space embeddings lead to improvements in a previously explored bug localization task and a newly de ned task of linking API documents to computer programming questions.
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