Multifaceted Hierarchical Report Identification for Non-Functional Bugs in Deep Learning Frameworks

October 04, 2022 ยท Entered Twilight ยท ๐Ÿ› Asia-Pacific Software Engineering Conference

๐Ÿ’ค TWILIGHT: Eternal Rest
Repo abandoned since publication

Repo contents: LICENSE, README.md, data, model, result, statistical_analysis

Authors Guoming Long, Tao Chen, Georgina Cosma arXiv ID 2210.01855 Category cs.SE: Software Engineering Cross-listed cs.LG Citations 0 Venue Asia-Pacific Software Engineering Conference Repository https://github.com/ideas-labo/APSEC2022-MHNurf โญ 3 Last Checked 3 months ago
Abstract
Non-functional bugs (e.g., performance- or accuracy-related bugs) in Deep Learning (DL) frameworks can lead to some of the most devastating consequences. Reporting those bugs on a repository such as GitHub is a standard route to fix them. Yet, given the growing number of new GitHub reports for DL frameworks, it is intrinsically difficult for developers to distinguish those that reveal non-functional bugs among the others, and assign them to the right contributor for investigation in a timely manner. In this paper, we propose MHNurf - an end-to-end tool for automatically identifying non-functional bug related reports in DL frameworks. The core of MHNurf is a Multifaceted Hierarchical Attention Network (MHAN) that tackles three unaddressed challenges: (1) learning the semantic knowledge, but doing so by (2) considering the hierarchy (e.g., words/tokens in sentences/statements) and focusing on the important parts (i.e., words, tokens, sentences, and statements) of a GitHub report, while (3) independently extracting information from different types of features, i.e., content, comment, code, command, and label. To evaluate MHNurf, we leverage 3,721 GitHub reports from five DL frameworks for conducting experiments. The results show that MHNurf works the best with a combination of content, comment, and code, which considerably outperforms the classic HAN where only the content is used. MHNurf also produces significantly more accurate results than nine other state-of-the-art classifiers with strong statistical significance, i.e., up to 71% AUC improvement and has the best Scott-Knott rank on four frameworks while 2nd on the remaining one. To facilitate reproduction and promote future research, we have made our dataset, code, and detailed supplementary results publicly available at: https://github.com/ideas-labo/APSEC2022-MHNurf.
Community shame:
Not yet rated
Community Contributions

Found the code? Know the venue? Think something is wrong? Let us know!

๐Ÿ“œ Similar Papers

In the same crypt โ€” Software Engineering