Code Edit Recommendation Using a Recurrent Neural Network
  • Lee, Seonah
  • Lee, Jaejun
  • Kang, Sungwon
  • Ahn, Jongsun
  • Cho, Heetae
Citations

WEB OF SCIENCE

3
Citations

SCOPUS

3

초록

When performing software evolution tasks, developers spend a significant amount of time looking for files to modify. By recommending files to modify, a code edit recommendation system reduces the developer's navigation time when conducting software evolution tasks. In this paper, we propose a code edit recommendation method using a recurrent neural network (CERNN). CERNN forms contexts that maintain the sequence of developers' interactions to recommend files to edit and stops recommendations when the first recommendation becomes incorrect for the given evolution task. We evaluated our method by comparing it with the state-of-the-art method MI-EA that was developed based on the association rule mining technique. The result shows that our proposed method improves the average recommendation accuracy by approximately 5% over MI-EA (0.64 vs. 0.59 F-score).

키워드

data-based software engineeringcode edit recommendationrecurrent neural networkmachine learninginteraction histories
제목
Code Edit Recommendation Using a Recurrent Neural Network
저자
Lee, SeonahLee, JaejunKang, SungwonAhn, JongsunCho, Heetae
DOI
10.3390/app11199286
발행일
2021-10
유형
Article
저널명
Applied Sciences-basel
11
19