Issue report classification using pre-trained language models
Giuseppe Colavito, Filippo Lanubile, Nicole Novielli
Abstract
This paper describes our participation in the tool competition organized in the scope of the 1st International Workshop on Natural Language-based Software Engineering. We propose a supervised approach relying on fine-tuned BERT-based language models for the automatic classification of GitHub issues. We experimented with different pre-trained models, achieving the best performance with fine-tuned RoBERTa (F1 = .8591).
Topics & Concepts
Computer scienceScope (computer science)Artificial intelligenceNatural languageLanguage modelNatural language processingSoftwareCompetition (biology)Machine learningSoftware engineeringProgramming languageBiologyEcologySoftware Engineering ResearchTopic ModelingNatural Language Processing Techniques