Unveiling Hidden DNN Defects with Decision-Based Metamorphic Testing
Yuanyuan Yuan, Qi Pang, Shuai Wang
Abstract
Contemporary DNN testing works are frequently conducted using metamorphic testing (MT). In general, de facto MT frameworks mutate DNN input images using semantics-preserving mutations and determine if DNNs can yield consistent predictions. Nevertheless, we find that DNNs may rely on erroneous decisions (certain components on the DNN inputs) to make predictions, which may still retain the outputs by chance. Such DNN defects would be neglected by existing MT frameworks. Erroneous decisions, however, would likely result in successive mis-predictions over diverse images that may exist in real-life scenarios.
Topics & Concepts
Computer scienceDe factoSemantics (computer science)Artificial intelligenceDeep neural networksMachine learningArtificial neural networkProgramming languageLawPolitical scienceCRISPR and Genetic EngineeringAdversarial Robustness in Machine LearningMolecular Biology Techniques and Applications