Publication | Closed Access
Distinguishing Look-Alike Innocent and Vulnerable Code by Subtle Semantic Representation Learning and Explanation
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Citations
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References
2023
Year
Unknown Venue
EngineeringMachine LearningSource Code AnalysisLook-alike InnocentSemanticsSoftware AnalysisNatural Language ProcessingHardware SecurityVulnerability Assessment (Computing)Data SciencePattern RecognitionComputational LinguisticsAdversarial Machine LearningMany Deep LearningLanguage StudiesCode GenerationThreat DetectionSemantic InterpretationComputer ScienceDeep LearningCode RepresentationVulnerability Detection ApproachesVulnerable CodeSoftware SecurityPrediction TasksProgram AnalysisAttack ModelSoftware TestingLinguisticsSemantic Representation
Though many deep learning (DL)-based vulnerability detection approaches have been proposed and indeed achieved remarkable performance, they still have limitations in the generalization as well as the practical usage. More precisely, existing DL-based approaches (1) perform negatively on prediction tasks among functions that are lexically similar but have contrary semantics; (2) provide no intuitive developer-oriented explanations to the detected results.
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