Publication | Closed Access
Multiple-boundary clustering and prioritization to promote neural network retraining
50
Citations
42
References
2020
Year
Unknown Venue
Artificial IntelligenceLarge Ai ModelData AugmentationDl ModelsEngineeringMachine LearningData ScienceMachine Learning ModelMachine Learning ToolNeuronal NetworkData GapMultiple-boundary ClusteringNeuroscienceTransfer LearningComputer ScienceData-centric AiDeep Learning
With the increasing application of deep learning (DL) models in many safety-critical scenarios, effective and efficient DL testing techniques are much in demand to improve the quality of DL models. One of the major challenges is the data gap between the training data to construct the models and the testing data to evaluate them. To bridge the gap, testers aim to collect an effective subset of inputs from the testing contexts, with limited labeling effort, for retraining DL models.
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