Publication | Open Access
DRONE: Predicting Priority of Reported Bugs by Multi-factor Analysis
150
Citations
28
References
2013
Year
Software MaintenanceEngineeringMachine LearningLearning To RankSoftware EngineeringPriority LevelSoftware AnalysisText MiningNatural Language ProcessingInformation RetrievalData ScienceData MiningBug TriagersUnmanned SystemSoftware AspectReported BugsSoftware MiningSoftware QualityFeature EngineeringPredictive AnalyticsKnowledge DiscoveryIntelligent ClassificationComputer ScienceSoftware TestingAir Vehicle System
Bugs are prevalent. To improve software quality, developers often allow users to report bugs that they found using a bug tracking system such as Bugzilla. Users would specify among other things, a description of the bug, the component that is affected by the bug, and the severity of the bug. Based on this information, bug triagers would then assign a priority level to the reported bug. As resources are limited, bug reports would be investigated based on their priority levels. This priority assignment process however is a manual one. Could we do better? In this paper, we propose an automated approach based on machine learning that would recommend a priority level based on information available in bug reports. Our approach considers multiple factors, temporal, textual, author, related-report, severity, and product, that potentially affect the priority level of a bug report. These factors are extracted as features which are then used to train a discriminative model via a new classification algorithm that handles ordinal class labels and imbalanced data. Experiments on more than a hundred thousands bug reports from Eclipse show that we can outperform baseline approaches in terms of average F-measure by a relative improvement of 58.61%.
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