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The Power of Sparsity in Convolutional Neural Networks

The Power of Sparsity in Convolutional Neural Networks

21 February 2017
Soravit Changpinyo
Mark Sandler
A. Zhmoginov
ArXivPDFHTML

Papers citing "The Power of Sparsity in Convolutional Neural Networks"

17 / 17 papers shown
Title
Poly-MgNet: Polynomial Building Blocks in Multigrid-Inspired ResNets
Antonia van Betteray
Matthias Rottmann
Karsten Kahl
48
0
0
13 Mar 2025
MGiaD: Multigrid in all dimensions. Efficiency and robustness by
  coarsening in resolution and channel dimensions
MGiaD: Multigrid in all dimensions. Efficiency and robustness by coarsening in resolution and channel dimensions
Antonia van Betteray
Matthias Rottmann
Karsten Kahl
23
2
0
10 Nov 2022
SBPF: Sensitiveness Based Pruning Framework For Convolutional Neural
  Network On Image Classification
SBPF: Sensitiveness Based Pruning Framework For Convolutional Neural Network On Image Classification
Yihe Lu
Maoguo Gong
Wei Zhao
Kaiyuan Feng
Hao Li
VLM
21
0
0
09 Aug 2022
Context-sensitive neocortical neurons transform the effectiveness and
  efficiency of neural information processing
Context-sensitive neocortical neurons transform the effectiveness and efficiency of neural information processing
Ahsan Adeel
Mario Franco
Mohsin Raza
K. Ahmed
18
9
0
15 Jul 2022
Two Sparsities Are Better Than One: Unlocking the Performance Benefits
  of Sparse-Sparse Networks
Two Sparsities Are Better Than One: Unlocking the Performance Benefits of Sparse-Sparse Networks
Kevin Lee Hunter
Lawrence Spracklen
Subutai Ahmad
21
20
0
27 Dec 2021
Training of deep residual networks with stochastic MG/OPT
Training of deep residual networks with stochastic MG/OPT
Cyrill Planta
Alena Kopanicáková
Rolf Krause
27
3
0
09 Aug 2021
AdaDeep: A Usage-Driven, Automated Deep Model Compression Framework for
  Enabling Ubiquitous Intelligent Mobiles
AdaDeep: A Usage-Driven, Automated Deep Model Compression Framework for Enabling Ubiquitous Intelligent Mobiles
Sicong Liu
Junzhao Du
Kaiming Nan
Zimu Zhou
Zhangyang Wang
Yingyan Lin
19
30
0
08 Jun 2020
Deep-Aligned Convolutional Neural Network for Skeleton-based Action
  Recognition and Segmentation
Deep-Aligned Convolutional Neural Network for Skeleton-based Action Recognition and Segmentation
Babak Hosseini
Romain Montagne
Barbara Hammer
24
22
0
12 Nov 2019
Patient Knowledge Distillation for BERT Model Compression
Patient Knowledge Distillation for BERT Model Compression
S. Sun
Yu Cheng
Zhe Gan
Jingjing Liu
19
826
0
25 Aug 2019
Implicit Deep Learning
Implicit Deep Learning
L. Ghaoui
Fangda Gu
Bertrand Travacca
Armin Askari
Alicia Y. Tsai
AI4CE
34
176
0
17 Aug 2019
Model Slicing for Supporting Complex Analytics with Elastic Inference
  Cost and Resource Constraints
Model Slicing for Supporting Complex Analytics with Elastic Inference Cost and Resource Constraints
Shaofeng Cai
Gang Chen
Beng Chin Ooi
Jinyang Gao
19
19
0
03 Apr 2019
Optimally Scheduling CNN Convolutions for Efficient Memory Access
Optimally Scheduling CNN Convolutions for Efficient Memory Access
Arthur Stoutchinin
Francesco Conti
Luca Benini
17
43
0
04 Feb 2019
Implementing Push-Pull Efficiently in GraphBLAS
Implementing Push-Pull Efficiently in GraphBLAS
Carl Yang
A. Buluç
John Douglas Owens
23
38
0
10 Apr 2018
Recurrent Residual Module for Fast Inference in Videos
Recurrent Residual Module for Fast Inference in Videos
Bowen Pan
Wuwei Lin
Xiaolin Fang
Chaoqin Huang
Bolei Zhou
Cewu Lu
ObjD
18
33
0
27 Feb 2018
Interleaved Group Convolutions for Deep Neural Networks
Interleaved Group Convolutions for Deep Neural Networks
Ting Zhang
Guo-Jun Qi
Bin Xiao
Jingdong Wang
20
81
0
10 Jul 2017
Speeding up Convolutional Neural Networks By Exploiting the Sparsity of
  Rectifier Units
Speeding up Convolutional Neural Networks By Exploiting the Sparsity of Rectifier Units
S. Shi
Xiaowen Chu
15
43
0
25 Apr 2017
Improving neural networks by preventing co-adaptation of feature
  detectors
Improving neural networks by preventing co-adaptation of feature detectors
Geoffrey E. Hinton
Nitish Srivastava
A. Krizhevsky
Ilya Sutskever
Ruslan Salakhutdinov
VLM
245
7,633
0
03 Jul 2012
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