Publication | Closed Access
Rethinking deep active learning: Using unlabeled data at model training
47
Citations
34
References
2021
Year
Unknown Venue
Artificial IntelligenceFew-shot LearningMultiple Instance LearningEngineeringMachine LearningImage AnalysisData SciencePattern RecognitionActive Learning PipelineUnsupervised LearningSemi-supervised LearningSupervised LearningActive Learning CycleMachine VisionFeature LearningKnowledge DiscoveryComputer ScienceData-centric AiMedical Image ComputingDeep LearningComputer VisionActive LearningDomain AdaptationTransfer LearningDeep Active Learning
Active learning typically focuses on training a model on few labeled examples alone, while unlabeled ones are only used for acquisition. In this work we depart from this setting by using both labeled and unlabeled data during model training across active learning cycles. We do so by using unsupervised feature learning at the beginning of the active learning pipeline and semi-supervised learning at every active learning cycle, on all available data. The former has not been investigated before in active learning, while the study of latter in the context of deep learning is scarce and recent findings are not conclusive with respect to its benefit. Our idea is orthogonal to acquisition strategies by using more data, much like ensemble methods use more models. By systematically evaluating on a number of popular acquisition strategies and datasets, we find that the use of unlabeled data during model training brings a spectacular accuracy improvement in image classification, compared to the differences between acquisition strategies. We thus explore smaller label budgets, even one label per class.
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