Explicit and Implicit Knowledge Distillation via Unlabeled Data
Abstract
Data-free knowledge distillation is a challenging model lightweight task for scenarios in which the original dataset is not available. Previous methods require a lot of extra computational costs to update one or more generators and their naive imitate-learning lead to lower distillation efficiency. Based on these observations, we first propose an efficient unlabeled sample selection method to replace high computational generators and focus on improving the training efficiency of the selected samples. Then, a class-dropping mechanism is designed to suppress the label noise caused by the data domain shifts. Finally, we propose a distillation method that incorporates explicit features and implicit structured relations to improve the effect of distillation. Experimental results show that our method can quickly converge and obtain higher accuracy than other state-of-the-art methods.
Cite
@article{arxiv.2302.08771,
title = {Explicit and Implicit Knowledge Distillation via Unlabeled Data},
author = {Yuzheng Wang and Zuhao Ge and Zhaoyu Chen and Xian Liu and Chuangjia Ma and Yunquan Sun and Lizhe Qi},
journal= {arXiv preprint arXiv:2302.08771},
year = {2023}
}
Comments
accepted for ICASSP 2023