Better Data Labelling with EMBLEM (and how that Impacts Defect Prediction)Journal-First
Sat 29 May 2021 08:10 - 08:30 at Blended Sessions Room 4 - 4.5.4. Obtaining Information from Issues and Commits
Standard automatic methods for recognizing problematic development commits can be greatly improved via the incremental application of human+artificial expertise. In this approach, called EMBLEM, an AI tool first explore the software development process to label commits that are most problematic. Humans then apply their expertise to check those labels (perhaps resulting in the AI updating the support vectors within their SVM learner). We recommend this human+AI partnership, for several reasons. When a new domain is encountered, EMBLEM can learn better ways to label which comments refer to real problems. Also, in studies with 9 open source software projects, labelling via EMBLEM’s incremental application of human+AI is at least an order of magnitude cheaper than existing methods (approximately, eight times). Further, EMBLEM is very effective. For the data sets explored here, EMBLEM better labelling methods significantly improved Popt(20) and G-scores performance in nearly all the projects studied here.
Fri 28 MayDisplayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change
19:30 - 20:30 | 4.5.4. Obtaining Information from Issues and CommitsJournal-First Papers at Blended Sessions Room 4 +12h Chair(s): Antonia Bertolino CNR-ISTI | ||
19:30 20mPaper | Automated Issue Assignment: Results and Insights from an Industrial CaseJournal-First Journal-First Papers Link to publication DOI Pre-print Media Attached | ||
19:50 20mPaper | On the feasibility of automated prediction of bug and non-bug issuesJournal-First Journal-First Papers Steffen Herbold University of Göttingen, Alexander Trautsch University of Göttingen, Fabian Trautsch University of Göttingen Link to publication DOI Pre-print Media Attached | ||
20:10 20mPaper | Better Data Labelling with EMBLEM (and how that Impacts Defect Prediction)Journal-First Journal-First Papers Huy Tu North Carolina State University, USA, Zhe Yu Rochester Institute of Technology, Tim Menzies North Carolina State University, USA Link to publication DOI Pre-print Media Attached |
Sat 29 MayDisplayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change
07:30 - 08:30 | |||
07:30 20mPaper | Automated Issue Assignment: Results and Insights from an Industrial CaseJournal-First Journal-First Papers Link to publication DOI Pre-print Media Attached | ||
07:50 20mPaper | On the feasibility of automated prediction of bug and non-bug issuesJournal-First Journal-First Papers Steffen Herbold University of Göttingen, Alexander Trautsch University of Göttingen, Fabian Trautsch University of Göttingen Link to publication DOI Pre-print Media Attached | ||
08:10 20mPaper | Better Data Labelling with EMBLEM (and how that Impacts Defect Prediction)Journal-First Journal-First Papers Huy Tu North Carolina State University, USA, Zhe Yu Rochester Institute of Technology, Tim Menzies North Carolina State University, USA Link to publication DOI Pre-print Media Attached |