LGAICVJul 1, 2021

Revisiting Knowledge Distillation: An Inheritance and Exploration Framework

arXiv:2107.00181v137 citationsHas Code
Originality Incremental advance
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This work addresses a bottleneck in knowledge distillation for deep learning practitioners, offering an incremental improvement over existing methods.

The paper tackles the limitation of knowledge distillation where students mimic teachers too closely, proposing an inheritance and exploration framework (IE-KD) that splits the student into parts for transferring knowledge and learning new features, resulting in state-of-the-art performance with improved representation diversity.

Knowledge Distillation (KD) is a popular technique to transfer knowledge from a teacher model or ensemble to a student model. Its success is generally attributed to the privileged information on similarities/consistency between the class distributions or intermediate feature representations of the teacher model and the student model. However, directly pushing the student model to mimic the probabilities/features of the teacher model to a large extent limits the student model in learning undiscovered knowledge/features. In this paper, we propose a novel inheritance and exploration knowledge distillation framework (IE-KD), in which a student model is split into two parts - inheritance and exploration. The inheritance part is learned with a similarity loss to transfer the existing learned knowledge from the teacher model to the student model, while the exploration part is encouraged to learn representations different from the inherited ones with a dis-similarity loss. Our IE-KD framework is generic and can be easily combined with existing distillation or mutual learning methods for training deep neural networks. Extensive experiments demonstrate that these two parts can jointly push the student model to learn more diversified and effective representations, and our IE-KD can be a general technique to improve the student network to achieve SOTA performance. Furthermore, by applying our IE-KD to the training of two networks, the performance of both can be improved w.r.t. deep mutual learning. The code and models of IE-KD will be make publicly available at https://github.com/yellowtownhz/IE-KD.

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