Augmenting and structuring user queries to support efficient free-form code search

Raphael Sirres, Tegawendé F. Bissyandé, Dongsun Kim, David Lo, Jacques Klein, Kisub Kim, Yves Le Traon

Research output: Contribution to journalArticlepeer-review

39 Scopus citations

Abstract

Source code terms such as method names and variable types are often different from conceptual words mentioned in a search query. This vocabulary mismatch problem can make code search inefficient. In this paper, we present COde voCABUlary (CoCaBu), an approach to resolving the vocabulary mismatch problem when dealing with free-form code search queries. Our approach leverages common developer questions and the associated expert answers to augment user queries with the relevant, but missing, structural code entities in order to improve the performance of matching relevant code examples within large code repositories. To instantiate this approach, we build GitSearch, a code search engine, on top of GitHub and Stack Overflow Q&A data. We evaluate GitSearch in several dimensions to demonstrate that (1) its code search results are correct with respect to user-accepted answers; (2) the results are qualitatively better than those of existing Internet-scale code search engines; (3) our engine is competitive against web search engines, such as Google, in helping users solve programming tasks; and (4) GitSearch provides code examples that are acceptable or interesting to the community as answers for Stack Overflow questions.

Original languageEnglish
Pages (from-to)2622-2654
Number of pages33
JournalEmpirical Software Engineering
Volume23
Issue number5
DOIs
StatePublished - 1 Oct 2018

Keywords

  • Code search
  • Free-form search
  • GitHub
  • Query augmentation
  • StackOverflow
  • Vocabulary mismatch

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