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SupportNet: solving catastrophic forgetting in class incremental learning with support data

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arxiv 1806.02942 v3 pith:D7TYN52E submitted 2018-06-08 cs.NE cs.AIcs.LGstat.ML

SupportNet: solving catastrophic forgetting in class incremental learning with support data

classification cs.NE cs.AIcs.LGstat.ML
keywords learningdatamodelsupportnetdeepforgettingcatastrophicincremental
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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A plain well-trained deep learning model often does not have the ability to learn new knowledge without forgetting the previously learned knowledge, which is known as catastrophic forgetting. Here we propose a novel method, SupportNet, to efficiently and effectively solve the catastrophic forgetting problem in the class incremental learning scenario. SupportNet combines the strength of deep learning and support vector machine (SVM), where SVM is used to identify the support data from the old data, which are fed to the deep learning model together with the new data for further training so that the model can review the essential information of the old data when learning the new information. Two powerful consolidation regularizers are applied to stabilize the learned representation and ensure the robustness of the learned model. We validate our method with comprehensive experiments on various tasks, which show that SupportNet drastically outperforms the state-of-the-art incremental learning methods and even reaches similar performance as the deep learning model trained from scratch on both old and new data. Our program is accessible at: https://github.com/lykaust15/SupportNet

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