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Lossless Compression of Deep Neural Networks

Lossless Compression of Deep Neural Networks

1 January 2020
Thiago Serra
Abhinav Kumar
Srikumar Ramalingam
ArXivPDFHTML

Papers citing "Lossless Compression of Deep Neural Networks"

40 / 40 papers shown
Title
Tightening convex relaxations of trained neural networks: a unified
  approach for convex and S-shaped activations
Tightening convex relaxations of trained neural networks: a unified approach for convex and S-shaped activations
Pablo Carrasco
Gonzalo Muñoz
59
2
0
30 Oct 2024
Free Lunch in the Forest: Functionally-Identical Pruning of Boosted Tree Ensembles
Free Lunch in the Forest: Functionally-Identical Pruning of Boosted Tree Ensembles
Youssouf Emine
Alexandre Forel
Idriss Malek
Thibaut Vidal
30
0
0
28 Aug 2024
Optimization Over Trained Neural Networks: Taking a Relaxing Walk
Optimization Over Trained Neural Networks: Taking a Relaxing Walk
Jiatai Tong
Junyang Cai
Thiago Serra
60
6
0
07 Jan 2024
Computational Tradeoffs of Optimization-Based Bound Tightening in ReLU
  Networks
Computational Tradeoffs of Optimization-Based Bound Tightening in ReLU Networks
Fabian Badilla
Marcos Goycoolea
Gonzalo Muñoz
Thiago Serra
57
7
0
27 Dec 2023
FedSZ: Leveraging Error-Bounded Lossy Compression for Federated Learning
  Communications
FedSZ: Leveraging Error-Bounded Lossy Compression for Federated Learning Communications
Grant Wilkins
Sheng Di
Jon C. Calhoun
Zilinghan Li
Kibaek Kim
Robert Underwood
Richard Mortier
Franck Cappello
FedML
29
2
0
20 Dec 2023
Mixed-Integer Optimisation of Graph Neural Networks for Computer-Aided
  Molecular Design
Mixed-Integer Optimisation of Graph Neural Networks for Computer-Aided Molecular Design
Tom McDonald
Calvin Tsay
Artur M. Schweidtmann
Neil Yorke-Smith
58
14
0
02 Dec 2023
Proximity to Losslessly Compressible Parameters
Proximity to Losslessly Compressible Parameters
Matthew Farrugia-Roberts
17
0
0
05 Jun 2023
Learning Prescriptive ReLU Networks
Learning Prescriptive ReLU Networks
Wei-Ju Sun
Asterios Tsiourvas
14
2
0
01 Jun 2023
When Deep Learning Meets Polyhedral Theory: A Survey
When Deep Learning Meets Polyhedral Theory: A Survey
Joey Huchette
Gonzalo Muñoz
Thiago Serra
Calvin Tsay
AI4CE
91
32
0
29 Apr 2023
Model-based feature selection for neural networks: A mixed-integer
  programming approach
Model-based feature selection for neural networks: A mixed-integer programming approach
Shudian Zhao
Calvin Tsay
Jan Kronqvist
19
5
0
20 Feb 2023
Getting Away with More Network Pruning: From Sparsity to Geometry and
  Linear Regions
Getting Away with More Network Pruning: From Sparsity to Geometry and Linear Regions
Junyang Cai
Khai-Nguyen Nguyen
Nishant Shrestha
Aidan Good
Ruisen Tu
Xin Yu
Shandian Zhe
Thiago Serra
MLT
14
7
0
19 Jan 2023
The Effect of Data Dimensionality on Neural Network Prunability
The Effect of Data Dimensionality on Neural Network Prunability
Zachary Ankner
Alex Renda
Gintare Karolina Dziugaite
Jonathan Frankle
Tian Jin
11
5
0
01 Dec 2022
Pruning's Effect on Generalization Through the Lens of Training and
  Regularization
Pruning's Effect on Generalization Through the Lens of Training and Regularization
Tian Jin
Michael Carbin
Daniel M. Roy
Jonathan Frankle
Gintare Karolina Dziugaite
13
27
0
25 Oct 2022
Towards Global Neural Network Abstractions with Locally-Exact
  Reconstruction
Towards Global Neural Network Abstractions with Locally-Exact Reconstruction
Edoardo Manino
I. Bessa
Lucas C. Cordeiro
17
1
0
21 Oct 2022
Quiver neural networks
Quiver neural networks
I. Ganev
Robin G. Walters
12
4
0
26 Jul 2022
Support Vector Machines with the Hard-Margin Loss: Optimal Training via
  Combinatorial Benders' Cuts
Support Vector Machines with the Hard-Margin Loss: Optimal Training via Combinatorial Benders' Cuts
Ítalo Santana
Breno Serrano
Maximilian Schiffer
Thibaut Vidal
19
3
0
15 Jul 2022
Deep Neural Networks pruning via the Structured Perspective
  Regularization
Deep Neural Networks pruning via the Structured Perspective Regularization
M. Cacciola
A. Frangioni
Xinlin Li
Andrea Lodi
3DPC
18
5
0
28 Jun 2022
Recall Distortion in Neural Network Pruning and the Undecayed Pruning
  Algorithm
Recall Distortion in Neural Network Pruning and the Undecayed Pruning Algorithm
Aidan Good
Jia-Huei Lin
Hannah Sieg
Mikey Ferguson
Xin Yu
Shandian Zhe
J. Wieczorek
Thiago Serra
14
11
0
07 Jun 2022
Optimizing Objective Functions from Trained ReLU Neural Networks via
  Sampling
Optimizing Objective Functions from Trained ReLU Neural Networks via Sampling
G. Perakis
Asterios Tsiourvas
12
11
0
27 May 2022
The Combinatorial Brain Surgeon: Pruning Weights That Cancel One Another
  in Neural Networks
The Combinatorial Brain Surgeon: Pruning Weights That Cancel One Another in Neural Networks
Xin Yu
Thiago Serra
Srikumar Ramalingam
Shandian Zhe
11
48
0
09 Mar 2022
P-split formulations: A class of intermediate formulations between big-M
  and convex hull for disjunctive constraints
P-split formulations: A class of intermediate formulations between big-M and convex hull for disjunctive constraints
Jan Kronqvist
Ruth Misener
Calvin Tsay
46
7
0
10 Feb 2022
OMLT: Optimization & Machine Learning Toolkit
OMLT: Optimization & Machine Learning Toolkit
Francesco Ceccon
Jordan Jalving
Joshua Haddad
Alexander Thebelt
Calvin Tsay
C. Laird
Ruth Misener
25
67
0
04 Feb 2022
Training Thinner and Deeper Neural Networks: Jumpstart Regularization
Training Thinner and Deeper Neural Networks: Jumpstart Regularization
Carles Roger Riera Molina
Camilo Rey
Thiago Serra
Eloi Puertas
O. Pujol
22
4
0
30 Jan 2022
Parameter identifiability of a deep feedforward ReLU neural network
Parameter identifiability of a deep feedforward ReLU neural network
Joachim Bona-Pellissier
François Bachoc
François Malgouyres
20
14
0
24 Dec 2021
Optimizing over an ensemble of neural networks
Optimizing over an ensemble of neural networks
Keliang Wang
Leonardo Lozano
C. Cardonha
David Bergman
UQCV
15
1
0
13 Dec 2021
On the Impact of Stable Ranks in Deep Nets
On the Impact of Stable Ranks in Deep Nets
B. Georgiev
L. Franken
Mayukh Mukherjee
Georgios Arvanitidis
13
3
0
05 Oct 2021
Universal approximation and model compression for radial neural networks
Universal approximation and model compression for radial neural networks
I. Ganev
Twan van Laarhoven
Robin G. Walters
9
8
0
06 Jul 2021
On the Expected Complexity of Maxout Networks
On the Expected Complexity of Maxout Networks
Hanna Tseran
Guido Montúfar
17
11
0
01 Jul 2021
Towards Lower Bounds on the Depth of ReLU Neural Networks
Towards Lower Bounds on the Depth of ReLU Neural Networks
Christoph Hertrich
A. Basu
M. D. Summa
M. Skutella
29
41
0
31 May 2021
Scaling Up Exact Neural Network Compression by ReLU Stability
Scaling Up Exact Neural Network Compression by ReLU Stability
Thiago Serra
Xin Yu
Abhinav Kumar
Srikumar Ramalingam
8
23
0
15 Feb 2021
Partition-based formulations for mixed-integer optimization of trained
  ReLU neural networks
Partition-based formulations for mixed-integer optimization of trained ReLU neural networks
Calvin Tsay
Jan Kronqvist
Alexander Thebelt
Ruth Misener
17
68
0
08 Feb 2021
Between steps: Intermediate relaxations between big-M and convex hull
  formulations
Between steps: Intermediate relaxations between big-M and convex hull formulations
Jan Kronqvist
Ruth Misener
Calvin Tsay
13
12
0
29 Jan 2021
Unwrapping The Black Box of Deep ReLU Networks: Interpretability,
  Diagnostics, and Simplification
Unwrapping The Black Box of Deep ReLU Networks: Interpretability, Diagnostics, and Simplification
Agus Sudjianto
William Knauth
Rahul Singh
Zebin Yang
Aijun Zhang
FAtt
30
42
0
08 Nov 2020
Optimal training of integer-valued neural networks with mixed integer
  programming
Optimal training of integer-valued neural networks with mixed integer programming
Tómas Thorbjarnarson
Neil Yorke-Smith
11
9
0
08 Sep 2020
Lossless Compression of Structured Convolutional Models via Lifting
Lossless Compression of Structured Convolutional Models via Lifting
Gustav Sourek
F. Železný
Ondrej Kuzelka
13
12
0
13 Jul 2020
Combining Reinforcement Learning and Constraint Programming for
  Combinatorial Optimization
Combining Reinforcement Learning and Constraint Programming for Combinatorial Optimization
Quentin Cappart
Thierry Moisan
Louis-Martin Rousseau
Isabeau Prémont-Schwarz
A. Ciré
11
138
0
02 Jun 2020
Identifying Critical Neurons in ANN Architectures using Mixed Integer
  Programming
Identifying Critical Neurons in ANN Architectures using Mixed Integer Programming
M. Elaraby
Guy Wolf
Margarida Carvalho
11
5
0
17 Feb 2020
CAQL: Continuous Action Q-Learning
CAQL: Continuous Action Q-Learning
Moonkyung Ryu
Yinlam Chow
Ross Anderson
Christian Tjandraatmadja
Craig Boutilier
191
42
0
26 Sep 2019
Principled Deep Neural Network Training through Linear Programming
Principled Deep Neural Network Training through Linear Programming
D. Bienstock
Gonzalo Muñoz
S. Pokutta
11
24
0
07 Oct 2018
Benefits of depth in neural networks
Benefits of depth in neural networks
Matus Telgarsky
123
600
0
14 Feb 2016
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