Looking for related posts on GitHub discussions

Author:

Lima Marcia12,Steinmacher Igor3,Ford Denae4,Liu Evangeline5,Vorreuter Grace5,Conte Tayana2ORCID,Gadelha Bruno2

Affiliation:

1. Department of Computer Science, Amazonas State University (UEA), Manaus, Amazonas, Brazil

2. Institute of Computing (IComp), Federal University of Amazonas (UFAM), Manaus, Amazonas, Brazil

3. School of Informatics, Computing, and Cyber Systems, Northern Arizona University (NAU), Flagstaff, Arizona, USA

4. Department of Microsoft Research Lab—Redmond, Microsoft Research, Redmond, WA, USA

5. GitHub Discussions Department, GitHub, Upstate NY, NY, USA

Abstract

Software teams increasingly adopt different tools and communication channels to aid the software collaborative development model and coordinate tasks. Among such resources, software development forums have become widely used by developers. Such environments enable developers to get and share technical information quickly. In line with this trend, GitHub announced GitHub Discussions—a native forum to facilitate collaborative discussions between users and members of communities hosted on the platform. Since GitHub Discussions is a software development forum, it faces challenges similar to those faced by systems used for asynchronous communication, including the problems caused by related posts (duplicated and near-duplicated posts). These related posts can add noise to the platform and compromise project knowledge sharing. Hence, this article addresses the problem of detecting related posts on GitHub Discussions. To achieve this, we propose an approach based on a Sentence-BERT pre-trained general-purpose model: the RD-Detector. We evaluated RD-Detector using data from three communities hosted in GitHub. Our dataset comprises 16,048 discussion posts. Three maintainers and three Software Engineering (SE) researchers manually evaluated the RD-Detector results, achieving 77–100% of precision and 66% of recall. In addition, maintainers pointed out practical applications of the approach, such as providing knowledge to support merging the discussion posts and converting the posts to comments on other related posts. Maintainers can benefit from RD-Detector to address the labor-intensive task of manually detecting related posts.

Publisher

PeerJ

Subject

General Computer Science

Reference70 articles.

1. SemEval-2015 Task 2: semantic textual similarity, English, Spanish and pilot on interpretability;Agirre,2015

2. Mining duplicate questions of stack overflow;Ahasanuzzaman,2016

3. A contextual approach towards more accurate duplicate bug report detection;Alipour,2013

4. Nltk: the natural language toolkit;Bird,2006

5. We are family: analyzing communication in GitHub software repositories and their forks;Brisson,2020

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