Sorry, you need to enable JavaScript to visit this website.

A Contrastive Knowledge Transfer Framework for Model Compression and Transfer Learning

Citation Author(s):
Kaiqi Zhao, Yitao Chen, Ming Zhao
Submitted by:
Kaiqi Zhao
Last updated:
19 May 2023 - 7:21pm
Document Type:
Presentation Slides
Document Year:
2023
Event:
Presenters:
Kaiqi Zhao
Paper Code:
https://github.com/kaiqi123/CKTF.git
 

Knowledge Transfer (KT) achieves competitive performance and is widely used for image classification tasks in model compression and transfer learning. Existing KT works transfer the information from a large model ("teacher") to train a small model ("student") by minimizing the difference of their conditionally independent output distributions. However, these works overlook the high-dimension structural knowledge from the intermediate representations of the teacher, which leads to limited effectiveness, and they are motivated by various heuristic intuitions, which makes it difficult to generalize. This paper proposes a novel Contrastive Knowledge Transfer Framework (CKTF), which enables the transfer of sufficient structural knowledge from the teacher to the student by optimizing multiple contrastive objectives across the intermediate representations between them. Also, CKTF provides a generalized agreement to existing KT techniques and increases their performance significantly by deriving them as specific cases of CKTF. The extensive evaluation shows that CKTF consistently outperforms the existing KT works by 0.04% to 11.59% in model compression and by 0.4% to 4.75% in transfer learning on various models and datasets.

up
0 users have voted:

Comments

Submit the code, slides, and video of our paper