Timezone: »
Poster
Rethinking the Pruning Criteria for Convolutional Neural Network
Zhongzhan Huang · Wenqi Shao · Xinjiang Wang · Liang Lin · Ping Luo
Channel pruning is a popular technique for compressing convolutional neural networks (CNNs), where various pruning criteria have been proposed to remove the redundant filters. From our comprehensive experiments, we found two blind spots of pruning criteria: (1) Similarity: There are some strong similarities among several primary pruning criteria that are widely cited and compared. According to these criteria, the ranks of filters’ Importance Score are almost identical, resulting in similar pruned structures. (2) Applicability: The filters' Importance Score measured by some pruning criteria are too close to distinguish the network redundancy well. In this paper, we analyze the above blind spots on different types of pruning criteria with layer-wise pruning or global pruning. We also break some stereotypes, such as that the results of $\ell_1$ and $\ell_2$ pruning are not always similar. These analyses are based on the empirical experiments and our assumption (Convolutional Weight Distribution Assumption) that the well-trained convolutional filters in each layer approximately follow a Gaussian-alike distribution. This assumption has been verified through systematic and extensive statistical tests.
Author Information
Zhongzhan Huang (Sun Yat-Sen University)
Wenqi Shao (The Chinese University of HongKong)
Xinjiang Wang ( SenseTime Group Ltd.)
Liang Lin (Sun Yat-Sen University)
Ping Luo (The University of Hong Kong)
More from the Same Authors
-
2021 : An Empirical Investigation of Representation Learning for Imitation »
Cynthia Chen · Sam Toyer · Cody Wild · Scott Emmons · Ian Fischer · Kuang-Huei Lee · Neel Alex · Steven Wang · Ping Luo · Stuart Russell · Pieter Abbeel · Rohin Shah -
2021 : Geometric Question Answering Towards Multimodal Numerical Reasoning »
Jiaqi Chen · Jianheng Tang · Jinghui Qin · Xiaodan Liang · Lingbo Liu · Eric Xing · Liang Lin -
2022 Spotlight: Divide and Contrast: Source-free Domain Adaptation via Adaptive Contrastive Learning »
Ziyi Zhang · Weikai Chen · Hui Cheng · Zhen Li · Siyuan Li · Liang Lin · Guanbin Li -
2022 Poster: Divide and Contrast: Source-free Domain Adaptation via Adaptive Contrastive Learning »
Ziyi Zhang · Weikai Chen · Hui Cheng · Zhen Li · Siyuan Li · Liang Lin · Guanbin Li -
2022 Poster: Structure-Preserving 3D Garment Modeling with Neural Sewing Machines »
Xipeng Chen · Guangrun Wang · Dizhong Zhu · Xiaodan Liang · Philip Torr · Liang Lin -
2021 Poster: Dynamic Visual Reasoning by Learning Differentiable Physics Models from Video and Language »
Mingyu Ding · Zhenfang Chen · Tao Du · Ping Luo · Josh Tenenbaum · Chuang Gan -
2021 Poster: Model-Based Reinforcement Learning via Imagination with Derived Memory »
Yao Mu · Yuzheng Zhuang · Bin Wang · Guangxiang Zhu · Wulong Liu · Jianyu Chen · Ping Luo · Shengbo Li · Chongjie Zhang · Jianye Hao -
2021 Poster: Revitalizing CNN Attention via Transformers in Self-Supervised Visual Representation Learning »
Chongjian GE · Youwei Liang · YIBING SONG · Jianbo Jiao · Jue Wang · Ping Luo -
2021 Poster: Compressed Video Contrastive Learning »
Yuqi Huo · Mingyu Ding · Haoyu Lu · Nanyi Fei · Zhiwu Lu · Ji-Rong Wen · Ping Luo -
2021 Poster: SegFormer: Simple and Efficient Design for Semantic Segmentation with Transformers »
Enze Xie · Wenhai Wang · Zhiding Yu · Anima Anandkumar · Jose M. Alvarez · Ping Luo -
2020 Poster: Auto-Panoptic: Cooperative Multi-Component Architecture Search for Panoptic Segmentation »
Yangxin Wu · Gengwei Zhang · Hang Xu · Xiaodan Liang · Liang Lin -
2018 Poster: Symbolic Graph Reasoning Meets Convolutions »
Xiaodan Liang · Zhiting Hu · Hao Zhang · Liang Lin · Eric Xing -
2018 Poster: Hybrid Knowledge Routed Modules for Large-scale Object Detection »
ChenHan Jiang · Hang Xu · Xiaodan Liang · Liang Lin -
2018 Poster: Kalman Normalization: Normalizing Internal Representations Across Network Layers »
Guangrun Wang · jiefeng peng · Ping Luo · Xinjiang Wang · Liang Lin -
2014 Poster: Deep Joint Task Learning for Generic Object Extraction »
Xiaolong Wang · Liliang Zhang · Liang Lin · Zhujin Liang · Wangmeng Zuo