Knowledge Distillation by On-the-Fly Native Ensemble
lan, xu, Zhu, Xiatian, Gong, Shaogang
–Neural Information Processing Systems
Knowledge distillation is effective to train the small and generalisable network models for meeting the low-memory and fast running requirements. Existing offline distillation methods rely on a strong pre-trained teacher, which enables favourable knowledge discovery and transfer but requires a complex two-phase training procedure. Online counterparts address this limitation at the price of lacking a high-capacity teacher. In this work, we present an On-the-fly Native Ensemble (ONE) learning strategy for one-stage online distillation. Specifically, ONE only trains a single multi-branch network while simultaneously establishing a strong teacher on-the-fly to enhance the learning of target network.
Neural Information Processing Systems
Feb-14-2020, 19:55:56 GMT
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