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A Unified DNN Weight Compression Framework Using Reweighted Optimization Methods

Authors :
Zhang, Tianyun
Ma, Xiaolong
Zhan, Zheng
Zhou, Shanglin
Qin, Minghai
Sun, Fei
Chen, Yen-Kuang
Ding, Caiwen
Fardad, Makan
Wang, Yanzhi
Publication Year :
2020

Abstract

To address the large model size and intensive computation requirement of deep neural networks (DNNs), weight pruning techniques have been proposed and generally fall into two categories, i.e., static regularization-based pruning and dynamic regularization-based pruning. However, the former method currently suffers either complex workloads or accuracy degradation, while the latter one takes a long time to tune the parameters to achieve the desired pruning rate without accuracy loss. In this paper, we propose a unified DNN weight pruning framework with dynamically updated regularization terms bounded by the designated constraint, which can generate both non-structured sparsity and different kinds of structured sparsity. We also extend our method to an integrated framework for the combination of different DNN compression tasks.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2004.05531
Document Type :
Working Paper