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A case for new neural network smoothness constraints

A case for new neural network smoothness constraints

14 December 2020
Mihaela Rosca
T. Weber
A. Gretton
S. Mohamed
    AAML
ArXivPDFHTML

Papers citing "A case for new neural network smoothness constraints"

38 / 38 papers shown
Title
Do We Always Need the Simplicity Bias? Looking for Optimal Inductive Biases in the Wild
Damien Teney
Liangze Jiang
Florin Gogianu
Ehsan Abbasnejad
157
0
0
13 Mar 2025
Smoothness Really Matters: A Simple Yet Effective Approach for Unsupervised Graph Domain Adaptation
Smoothness Really Matters: A Simple Yet Effective Approach for Unsupervised Graph Domain Adaptation
Wei Chen
Guo Ye
Yakun Wang
Zhao Zhang
Libang Zhang
Daxin Wang
Zhiqiang Zhang
Fuzhen Zhuang
91
1
0
17 Jan 2025
An Unsupervised Approach to Achieve Supervised-Level Explainability in
  Healthcare Records
An Unsupervised Approach to Achieve Supervised-Level Explainability in Healthcare Records
Joakim Edin
Maria Maistro
Lars Maaløe
Lasse Borgholt
Jakob Drachmann Havtorn
Tuukka Ruotsalo
FAtt
32
2
0
13 Jun 2024
The Impact of Geometric Complexity on Neural Collapse in Transfer
  Learning
The Impact of Geometric Complexity on Neural Collapse in Transfer Learning
Michael Munn
Benoit Dherin
Javier Gonzalvo
AAML
38
1
0
24 May 2024
Leveraging the Human Ventral Visual Stream to Improve Neural Network
  Robustness
Leveraging the Human Ventral Visual Stream to Improve Neural Network Robustness
Zhenan Shao
Linjian Ma
Bo Li
Diane M. Beck
AAML
38
3
0
04 May 2024
From Robustness to Improved Generalization and Calibration in
  Pre-trained Language Models
From Robustness to Improved Generalization and Calibration in Pre-trained Language Models
Josip Jukić
Jan Snajder
29
0
0
31 Mar 2024
WARM: On the Benefits of Weight Averaged Reward Models
WARM: On the Benefits of Weight Averaged Reward Models
Alexandre Ramé
Nino Vieillard
Léonard Hussenot
Robert Dadashi
Geoffrey Cideron
Olivier Bachem
Johan Ferret
104
93
0
22 Jan 2024
How Smooth Is Attention?
How Smooth Is Attention?
Valérie Castin
Pierre Ablin
Gabriel Peyré
AAML
40
9
0
22 Dec 2023
Towards Architecture-Agnostic Untrained Network Priors for Image
  Reconstruction with Frequency Regularization
Towards Architecture-Agnostic Untrained Network Priors for Image Reconstruction with Frequency Regularization
Yilin Liu
Yunkui Pang
Jiang-Ping Li
Yong Chen
P. Yap
29
0
0
15 Dec 2023
Out-of-Distribution Detection by Leveraging Between-Layer Transformation
  Smoothness
Out-of-Distribution Detection by Leveraging Between-Layer Transformation Smoothness
Fran Jelenić
Josip Jukić
Martin Tutek
Mate Puljiz
Jan vSnajder
OODD
22
5
0
04 Oct 2023
Certified Robust Models with Slack Control and Large Lipschitz Constants
Certified Robust Models with Slack Control and Large Lipschitz Constants
M. Losch
David Stutz
Bernt Schiele
Mario Fritz
9
4
0
12 Sep 2023
Towards Stability of Autoregressive Neural Operators
Towards Stability of Autoregressive Neural Operators
Michael McCabe
P. Harrington
Shashank Subramanian
Jed Brown
AI4CE
36
17
0
18 Jun 2023
Data Interpolants -- That's What Discriminators in Higher-order
  Gradient-regularized GANs Are
Data Interpolants -- That's What Discriminators in Higher-order Gradient-regularized GANs Are
Siddarth Asokan
C. Seelamantula
24
4
0
01 Jun 2023
PDE+: Enhancing Generalization via PDE with Adaptive Distributional
  Diffusion
PDE+: Enhancing Generalization via PDE with Adaptive Distributional Diffusion
Yige Yuan
Bingbing Xu
Bo Lin
Liang Hou
Fei Sun
Huawei Shen
Xueqi Cheng
DiffM
24
4
0
25 May 2023
Direct Parameterization of Lipschitz-Bounded Deep Networks
Direct Parameterization of Lipschitz-Bounded Deep Networks
Ruigang Wang
I. Manchester
22
41
0
27 Jan 2023
Boundary-Aware Uncertainty for Feature Attribution Explainers
Boundary-Aware Uncertainty for Feature Attribution Explainers
Davin Hill
A. Masoomi
Max Torop
S. Ghimire
Jennifer Dy
FAtt
55
3
0
05 Oct 2022
Learning Globally Smooth Functions on Manifolds
Learning Globally Smooth Functions on Manifolds
J. Cerviño
Luiz F. O. Chamon
B. Haeffele
René Vidal
Alejandro Ribeiro
27
5
0
01 Oct 2022
Why neural networks find simple solutions: the many regularizers of
  geometric complexity
Why neural networks find simple solutions: the many regularizers of geometric complexity
Benoit Dherin
Michael Munn
M. Rosca
David Barrett
53
30
0
27 Sep 2022
Deep Double Descent via Smooth Interpolation
Deep Double Descent via Smooth Interpolation
Matteo Gamba
Erik Englesson
Marten Bjorkman
Hossein Azizpour
51
10
0
21 Sep 2022
SmOOD: Smoothness-based Out-of-Distribution Detection Approach for
  Surrogate Neural Networks in Aircraft Design
SmOOD: Smoothness-based Out-of-Distribution Detection Approach for Surrogate Neural Networks in Aircraft Design
Houssem Ben Braiek
Ali Tfaily
Foutse Khomh
Thomas Reid
Ciro Guida
6
0
0
07 Sep 2022
Monitoring Vegetation From Space at Extremely Fine Resolutions via
  Coarsely-Supervised Smooth U-Net
Monitoring Vegetation From Space at Extremely Fine Resolutions via Coarsely-Supervised Smooth U-Net
Joshua Fan
Di Chen
J. Wen
Ying Sun
Carla P. Gomes
16
1
0
16 Jul 2022
Lipschitz Continuity Retained Binary Neural Network
Lipschitz Continuity Retained Binary Neural Network
Yuzhang Shang
Dan Xu
Bin Duan
Ziliang Zong
Liqiang Nie
Yan Yan
11
19
0
13 Jul 2022
Stabilizing Off-Policy Deep Reinforcement Learning from Pixels
Stabilizing Off-Policy Deep Reinforcement Learning from Pixels
Edoardo Cetin
Philip J. Ball
Steve Roberts
Oya Celiktutan
30
36
0
03 Jul 2022
Distributional Gaussian Processes Layers for Out-of-Distribution
  Detection
Distributional Gaussian Processes Layers for Out-of-Distribution Detection
S. Popescu
D. Sharp
James H. Cole
Konstantinos Kamnitsas
Ben Glocker
OOD
21
0
0
27 Jun 2022
Analyzing Explainer Robustness via Probabilistic Lipschitzness of
  Prediction Functions
Analyzing Explainer Robustness via Probabilistic Lipschitzness of Prediction Functions
Zulqarnain Khan
Davin Hill
A. Masoomi
Joshua Bone
Jennifer Dy
AAML
33
3
0
24 Jun 2022
Learning Smooth Neural Functions via Lipschitz Regularization
Learning Smooth Neural Functions via Lipschitz Regularization
Hsueh-Ti Derek Liu
Francis Williams
Alec Jacobson
Sanja Fidler
Or Litany
6
96
0
16 Feb 2022
The Geometric Occam's Razor Implicit in Deep Learning
The Geometric Occam's Razor Implicit in Deep Learning
Benoit Dherin
Micheal Munn
David Barrett
20
6
0
30 Nov 2021
Learning to Assimilate in Chaotic Dynamical Systems
Learning to Assimilate in Chaotic Dynamical Systems
Michael McCabe
Jed Brown
AI4TS
22
10
0
01 Nov 2021
RoMA: Robust Model Adaptation for Offline Model-based Optimization
RoMA: Robust Model Adaptation for Offline Model-based Optimization
Sihyun Yu
Sungsoo Ahn
Le Song
Jinwoo Shin
OffRL
16
31
0
27 Oct 2021
On the Practicality of Deterministic Epistemic Uncertainty
On the Practicality of Deterministic Epistemic Uncertainty
Janis Postels
Mattia Segu
Tao Sun
Luca Sieber
Luc Van Gool
F. I. F. Richard Yu
Federico Tombari
UQCV
25
59
0
01 Jul 2021
Can convolutional ResNets approximately preserve input distances? A
  frequency analysis perspective
Can convolutional ResNets approximately preserve input distances? A frequency analysis perspective
Lewis Smith
Joost R. van Amersfoort
Haiwen Huang
Stephen J. Roberts
Y. Gal
12
7
0
04 Jun 2021
Spectral Normalisation for Deep Reinforcement Learning: an Optimisation
  Perspective
Spectral Normalisation for Deep Reinforcement Learning: an Optimisation Perspective
Florin Gogianu
Tudor Berariu
Mihaela Rosca
Claudia Clopath
L. Buşoniu
Razvan Pascanu
16
52
0
11 May 2021
On Feature Collapse and Deep Kernel Learning for Single Forward Pass
  Uncertainty
On Feature Collapse and Deep Kernel Learning for Single Forward Pass Uncertainty
Joost R. van Amersfoort
Lewis Smith
Andrew Jesson
Oscar Key
Y. Gal
UQCV
11
102
0
22 Feb 2021
Hierarchical Gaussian Processes with Wasserstein-2 Kernels
Hierarchical Gaussian Processes with Wasserstein-2 Kernels
S. Popescu
D. Sharp
James H. Cole
Ben Glocker
15
5
0
28 Oct 2020
Lipschitzness Is All You Need To Tame Off-policy Generative Adversarial
  Imitation Learning
Lipschitzness Is All You Need To Tame Off-policy Generative Adversarial Imitation Learning
Lionel Blondé
Pablo Strasser
Alexandros Kalousis
25
22
0
28 Jun 2020
Representing smooth functions as compositions of near-identity functions
  with implications for deep network optimization
Representing smooth functions as compositions of near-identity functions with implications for deep network optimization
Peter L. Bartlett
S. Evans
Philip M. Long
66
31
0
13 Apr 2018
Simple and Scalable Predictive Uncertainty Estimation using Deep
  Ensembles
Simple and Scalable Predictive Uncertainty Estimation using Deep Ensembles
Balaji Lakshminarayanan
Alexander Pritzel
Charles Blundell
UQCV
BDL
270
5,660
0
05 Dec 2016
Adversarial Machine Learning at Scale
Adversarial Machine Learning at Scale
Alexey Kurakin
Ian Goodfellow
Samy Bengio
AAML
258
3,109
0
04 Nov 2016
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