Semi-Online Knowledge Distillation
- URL: http://arxiv.org/abs/2111.11747v1
- Date: Tue, 23 Nov 2021 09:44:58 GMT
- Title: Semi-Online Knowledge Distillation
- Authors: Zhiqiang Liu, Yanxia Liu, Chengkai Huang
- Abstract summary: Conventional knowledge distillation (KD) is to transfer knowledge from a large and well pre-trained teacher network to a small student network.
Deep mutual learning (DML) has been proposed to help student networks learn collaboratively and simultaneously.
We propose a Semi-Online Knowledge Distillation (SOKD) method that effectively improves the performance of the student and the teacher.
- Score: 2.373824287636486
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Knowledge distillation is an effective and stable method for model
compression via knowledge transfer. Conventional knowledge distillation (KD) is
to transfer knowledge from a large and well pre-trained teacher network to a
small student network, which is a one-way process. Recently, deep mutual
learning (DML) has been proposed to help student networks learn collaboratively
and simultaneously. However, to the best of our knowledge, KD and DML have
never been jointly explored in a unified framework to solve the knowledge
distillation problem. In this paper, we investigate that the teacher model
supports more trustworthy supervision signals in KD, while the student captures
more similar behaviors from the teacher in DML. Based on these observations, we
first propose to combine KD with DML in a unified framework. Furthermore, we
propose a Semi-Online Knowledge Distillation (SOKD) method that effectively
improves the performance of the student and the teacher. In this method, we
introduce the peer-teaching training fashion in DML in order to alleviate the
student's imitation difficulty, and also leverage the supervision signals
provided by the well-trained teacher in KD. Besides, we also show our framework
can be easily extended to feature-based distillation methods. Extensive
experiments on CIFAR-100 and ImageNet datasets demonstrate the proposed method
achieves state-of-the-art performance.
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