Publication | Open Access
DeepFL: integrating multiple fault diagnosis dimensions for deep fault localization
289
Citations
72
References
2019
Year
Unknown Venue
Fault DiagnosisLearning-based Fault LocalizationAnomaly DetectionMachine LearningEngineeringDiagnosisFault ForecastingData ScienceData MiningPattern RecognitionDeep Model ConfigurationsFault AnalysisDeep Fault LocalizationFeature LearningKnowledge DiscoveryDeep Learning ApproachComputer ScienceDeep LearningAutomatic Fault Detection
Learning-based fault localization has been intensively studied recently. Prior studies have shown that traditional Learning-to-Rank techniques can help precisely diagnose fault locations using various dimensions of fault-diagnosis features, such as suspiciousness values computed by various off-the-shelf fault localization techniques. However, with the increasing dimensions of features considered by advanced fault localization techniques, it can be quite challenging for the traditional Learning-to-Rank algorithms to automatically identify effective existing/latent features. In this work, we propose DeepFL, a deep learning approach to automatically learn the most effective existing/latent features for precise fault localization. Although the approach is general, in this work, we collect various suspiciousness-value-based, fault-proneness-based and textual-similarity-based features from the fault localization, defect prediction and information retrieval areas, respectively. DeepFL has been studied on 395 real bugs from the widely used Defects4J benchmark. The experimental results show DeepFL can significantly outperform state-of-the-art TraPT/FLUCCS (e.g., localizing 50+ more faults within Top-1). We also investigate the impacts of deep model configurations (e.g., loss functions and epoch settings) and features. Furthermore, DeepFL is also surprisingly effective for cross-project prediction.
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