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Poster: Predicting components for issue reports using deep learning with information retrieval

Version 2 2024-06-04, 11:45
Version 1 2019-04-01, 15:09
conference contribution
posted on 2024-06-04, 11:45 authored by M Choetkiertikul, HK Dam, Truyen TranTruyen Tran, T Pham, A Ghose
© 2018 Authors. Assigning an issue to the correct component(s) is challenging, especially for large-scale projects which have are up to hundreds of components. We propose a prediction model which learns from historical issues reports and recommends the most relevant components for new issues. Our model uses the deep learning Long Short-Term Memory to automatically learns semantic features representing an issue report, and combines them with the traditional textual similarity features. An extensive evaluation on 142,025 issues from 11 large projects shows our approach outperforms alternative techniques with an average 60% improvement in predictive performance.

History

Pagination

244-245

Location

Gothenburg, Sweden

Start date

2018-05-27

End date

2018-06-03

ISSN

0270-5257

ISBN-13

9781450356633

Language

English

Publication classification

E3 Extract of paper

Title of proceedings

Proceedings of the 40th International Conference on Software Engineering: Companion Proceeedings

Event

40th International Conference on Software Engineering (ICSE)

Publisher

ACM

Series

Proceedings of the IEEE-ACM International Conference on Software Engineering Companion

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