源代码搜索综述:三维视角

Sun, Weisong, Fang, Chunrong, Ge, Yifei, Hu, Yuling, Chen, Yuchen, Zhang, Quanjun, Ge, Xiuting, Liu, Yang, Chen, Zhenyu
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引用次数: 0

摘要

(源代码)搜索由于能够提高软件开发的效率和质量而受到软件工程研究者的广泛关注。给定一个通常用自然语言句子描述的功能需求,代码搜索系统可以从大规模的代码语料库(例如GitHub)中检索满足需求的代码片段。为了实现高效的代码搜索,人们先后提出了许多技术。这些技术主要通过优化查询理解组件、代码理解组件和查询-代码匹配组件三个核心组件来提高代码搜索性能。在本文中,我们为代码搜索提供了一个三维视角。具体来说,我们将现有的代码搜索研究分为查询端优化技术、代码端优化技术和匹配端优化技术,根据它们优化的特定组件。考虑到每一端都可以独立优化并有助于代码搜索性能,我们将每一端视为一个维度。因此,本调查本质上是三维的,并对每个维度进行了详细的综合总结。为了了解这三个维度在现有代码检索研究中的研究趋势,我们系统地回顾了68篇相关文献。与现有的代码搜索调查不同,这些调查只关注查询端或代码端,或者对各个方面(包括代码库、评估指标、建模技术等)的介绍比较肤浅,我们的调查对这三个端使用的底层技术的演变和发展进行了更细致的分析和回顾。在对现有工作进行系统回顾和总结的基础上,我们概述了未来工作中仍需解决的三端挑战和机遇。
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A Survey of Source Code Search: A 3-Dimensional Perspective
(Source) code search is widely concerned by software engineering researchers because it can improve the productivity and quality of software development. Given a functionality requirement usually described in a natural language sentence, a code search system can retrieve code snippets that satisfy the requirement from a large-scale code corpus, e.g., GitHub. To realize effective and efficient code search, many techniques have been proposed successively. These techniques improve code search performance mainly by optimizing three core components, including query understanding component, code understanding component, and query-code matching component. In this paper, we provide a 3-dimensional perspective survey for code search. Specifically, we categorize existing code search studies into query-end optimization techniques, code-end optimization techniques, and match-end optimization techniques according to the specific components they optimize. Considering that each end can be optimized independently and contributes to the code search performance, we treat each end as a dimension. Therefore, this survey is 3-dimensional in nature, and it provides a comprehensive summary of each dimension in detail. To understand the research trends of the three dimensions in existing code search studies, we systematically review 68 relevant literatures. Different from existing code search surveys that only focus on the query end or code end or introduce various aspects shallowly (including codebase, evaluation metrics, modeling technique, etc.), our survey provides a more nuanced analysis and review of the evolution and development of the underlying techniques used in the three ends. Based on a systematic review and summary of existing work, we outline several open challenges and opportunities at the three ends that remain to be addressed in future work.
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