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To prune, or not to prune: exploring the efficacy of pruning for model
  compression

To prune, or not to prune: exploring the efficacy of pruning for model compression

5 October 2017
Michael Zhu
Suyog Gupta
ArXivPDFHTML

Papers citing "To prune, or not to prune: exploring the efficacy of pruning for model compression"

16 / 266 papers shown
Title
Structured Compression by Weight Encryption for Unstructured Pruning and
  Quantization
Structured Compression by Weight Encryption for Unstructured Pruning and Quantization
S. Kwon
Dongsoo Lee
Byeongwook Kim
Parichay Kapoor
Baeseong Park
Gu-Yeon Wei
MQ
35
48
0
24 May 2019
A Brain-inspired Algorithm for Training Highly Sparse Neural Networks
A Brain-inspired Algorithm for Training Highly Sparse Neural Networks
Zahra Atashgahi
Joost Pieterse
Shiwei Liu
Decebal Constantin Mocanu
Raymond N. J. Veldhuis
Mykola Pechenizkiy
35
15
0
17 Mar 2019
FixyNN: Efficient Hardware for Mobile Computer Vision via Transfer
  Learning
FixyNN: Efficient Hardware for Mobile Computer Vision via Transfer Learning
P. Whatmough
Chuteng Zhou
Patrick Hansen
S. Venkataramanaiah
Jae-sun Seo
Matthew Mattina
15
57
0
27 Feb 2019
The State of Sparsity in Deep Neural Networks
The State of Sparsity in Deep Neural Networks
Trevor Gale
Erich Elsen
Sara Hooker
33
747
0
25 Feb 2019
Parameter Efficient Training of Deep Convolutional Neural Networks by
  Dynamic Sparse Reparameterization
Parameter Efficient Training of Deep Convolutional Neural Networks by Dynamic Sparse Reparameterization
Hesham Mostafa
Xin Wang
37
307
0
15 Feb 2019
Hardware-Guided Symbiotic Training for Compact, Accurate, yet
  Execution-Efficient LSTM
Hardware-Guided Symbiotic Training for Compact, Accurate, yet Execution-Efficient LSTM
Hongxu Yin
Guoyang Chen
Yingmin Li
Shuai Che
Weifeng Zhang
N. Jha
36
10
0
30 Jan 2019
How Compact?: Assessing Compactness of Representations through
  Layer-Wise Pruning
How Compact?: Assessing Compactness of Representations through Layer-Wise Pruning
Hyun-Joo Jung
Jaedeok Kim
Yoonsuck Choe
21
1
0
09 Jan 2019
RePr: Improved Training of Convolutional Filters
RePr: Improved Training of Convolutional Filters
Aaditya (Adi) Prakash
J. Storer
D. Florêncio
Cha Zhang
VLM
CVBM
37
57
0
18 Nov 2018
Rethinking the Value of Network Pruning
Rethinking the Value of Network Pruning
Zhuang Liu
Mingjie Sun
Tinghui Zhou
Gao Huang
Trevor Darrell
10
1,452
0
11 Oct 2018
SlimNets: An Exploration of Deep Model Compression and Acceleration
SlimNets: An Exploration of Deep Model Compression and Acceleration
Ini Oguntola
Subby Olubeko
Chris Sweeney
27
11
0
01 Aug 2018
Sparse Persistent RNNs: Squeezing Large Recurrent Networks On-Chip
Sparse Persistent RNNs: Squeezing Large Recurrent Networks On-Chip
Feiwen Zhu
Jeff Pool
M. Andersch
J. Appleyard
Fung Xie
22
29
0
26 Apr 2018
Efficient Contextualized Representation: Language Model Pruning for
  Sequence Labeling
Efficient Contextualized Representation: Language Model Pruning for Sequence Labeling
Liyuan Liu
Xiang Ren
Jingbo Shang
Jian-wei Peng
Jiawei Han
25
44
0
20 Apr 2018
Non-Vacuous Generalization Bounds at the ImageNet Scale: A PAC-Bayesian
  Compression Approach
Non-Vacuous Generalization Bounds at the ImageNet Scale: A PAC-Bayesian Compression Approach
Wenda Zhou
Victor Veitch
Morgane Austern
Ryan P. Adams
Peter Orbanz
46
211
0
16 Apr 2018
Efficient Neural Audio Synthesis
Efficient Neural Audio Synthesis
Nal Kalchbrenner
Erich Elsen
Karen Simonyan
Seb Noury
Norman Casagrande
Edward Lockhart
Florian Stimberg
Aaron van den Oord
Sander Dieleman
Koray Kavukcuoglu
50
864
0
23 Feb 2018
Attention-Based Guided Structured Sparsity of Deep Neural Networks
Attention-Based Guided Structured Sparsity of Deep Neural Networks
A. Torfi
Rouzbeh A. Shirvani
Sobhan Soleymani
Nasser M. Nasrabadi
29
23
0
13 Feb 2018
Google's Neural Machine Translation System: Bridging the Gap between
  Human and Machine Translation
Google's Neural Machine Translation System: Bridging the Gap between Human and Machine Translation
Yonghui Wu
M. Schuster
Zhehuai Chen
Quoc V. Le
Mohammad Norouzi
...
Alex Rudnick
Oriol Vinyals
G. Corrado
Macduff Hughes
J. Dean
AIMat
718
6,750
0
26 Sep 2016
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