Publication | Closed Access
Continually Learning Self-Supervised Representations with Projected Functional Regularization
31
Citations
42
References
2022
Year
Incremental LearningEngineeringMachine LearningNaive Functional RegularizationEducationFeature DistillationRepresentation LearningData SciencePattern RecognitionSelf-supervised LearningRobot LearningContinual Learning (Lifelong Deep Learning)Semi-supervised LearningFeature LearningComputer ScienceLifelong Deep LearningLimited Data LearningDeep LearningProjected Functional RegularizationFunctional RegularizationMeta-learning (Computer Science)Continual Learning (Educational Psychology)
Recent self-supervised learning methods are able to learn high-quality image representations and are closing the gap with supervised approaches. However, these methods are unable to acquire new knowledge incrementally – they are, in fact, mostly used only as a pre-training phase over IID data. In this work we investigate self-supervised methods in continual learning regimes without any replay mechanism. We show that naive functional regularization, also known as feature distillation, leads to lower plasticity and limits continual learning performance. Instead, we propose Projected Functional Regularization in which a separate temporal projection network ensures that the newly learned feature space preserves information of the previous one, while at the same time allowing for the learning of new features. This prevents forgetting while maintaining the plasticity of the learner. Comparison with other incremental learning approaches applied to self-supervision demonstrates that our method obtains competitive performance in different scenarios and on multiple datasets.
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