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Provable approximation properties for deep neural networks

Provable approximation properties for deep neural networks

24 September 2015
Uri Shaham
A. Cloninger
Ronald R. Coifman
ArXivPDFHTML

Papers citing "Provable approximation properties for deep neural networks"

50 / 51 papers shown
Title
Transformers for Learning on Noisy and Task-Level Manifolds: Approximation and Generalization Insights
Transformers for Learning on Noisy and Task-Level Manifolds: Approximation and Generalization Insights
Zhaiming Shen
Alex Havrilla
Rongjie Lai
A. Cloninger
Wenjing Liao
39
0
0
06 May 2025
Just How Flexible are Neural Networks in Practice?
Just How Flexible are Neural Networks in Practice?
Ravid Shwartz-Ziv
Micah Goldblum
Arpit Bansal
C. Bayan Bruss
Yann LeCun
Andrew Gordon Wilson
45
4
0
17 Jun 2024
Cross Entropy versus Label Smoothing: A Neural Collapse Perspective
Cross Entropy versus Label Smoothing: A Neural Collapse Perspective
Li Guo
Keith Ross
Zifan Zhao
George Andriopoulos
Shuyang Ling
Yufeng Xu
Zixuan Dong
UQCV
NoLa
30
9
0
06 Feb 2024
Statistical learning by sparse deep neural networks
Statistical learning by sparse deep neural networks
Felix Abramovich
BDL
24
1
0
15 Nov 2023
Rates of Approximation by ReLU Shallow Neural Networks
Rates of Approximation by ReLU Shallow Neural Networks
Tong Mao
Ding-Xuan Zhou
29
19
0
24 Jul 2023
Approximation of Nonlinear Functionals Using Deep ReLU Networks
Approximation of Nonlinear Functionals Using Deep ReLU Networks
Linhao Song
Jun Fan
Dirong Chen
Ding-Xuan Zhou
17
14
0
10 Apr 2023
Mathematical Challenges in Deep Learning
Mathematical Challenges in Deep Learning
V. Nia
Guojun Zhang
I. Kobyzev
Michael R. Metel
Xinlin Li
...
S. Hemati
M. Asgharian
Linglong Kong
Wulong Liu
Boxing Chen
AI4CE
VLM
37
1
0
24 Mar 2023
Deep Nonparametric Estimation of Intrinsic Data Structures by Chart
  Autoencoders: Generalization Error and Robustness
Deep Nonparametric Estimation of Intrinsic Data Structures by Chart Autoencoders: Generalization Error and Robustness
Hao Liu
Alex Havrilla
Rongjie Lai
Wenjing Liao
39
6
0
17 Mar 2023
Local transfer learning from one data space to another
Local transfer learning from one data space to another
H. Mhaskar
Ryan O'Dowd
16
0
0
01 Feb 2023
On the Geometry of Reinforcement Learning in Continuous State and Action
  Spaces
On the Geometry of Reinforcement Learning in Continuous State and Action Spaces
Saket Tiwari
Omer Gottesman
George Konidaris
26
0
0
29 Dec 2022
Effects of Data Geometry in Early Deep Learning
Effects of Data Geometry in Early Deep Learning
Saket Tiwari
George Konidaris
82
7
0
29 Dec 2022
Deep Learning Methods for Partial Differential Equations and Related
  Parameter Identification Problems
Deep Learning Methods for Partial Differential Equations and Related Parameter Identification Problems
Derick Nganyu Tanyu
Jianfeng Ning
Tom Freudenberg
Nick Heilenkötter
A. Rademacher
U. Iben
Peter Maass
AI4CE
23
34
0
06 Dec 2022
Deep neural network expressivity for optimal stopping problems
Deep neural network expressivity for optimal stopping problems
Lukas Gonon
27
6
0
19 Oct 2022
Are All Losses Created Equal: A Neural Collapse Perspective
Are All Losses Created Equal: A Neural Collapse Perspective
Jinxin Zhou
Chong You
Xiao Li
Kangning Liu
Sheng Liu
Qing Qu
Zhihui Zhu
41
59
0
04 Oct 2022
Limitations of neural network training due to numerical instability of
  backpropagation
Limitations of neural network training due to numerical instability of backpropagation
Clemens Karner
V. Kazeev
P. Petersen
40
3
0
03 Oct 2022
Neural Collapse with Normalized Features: A Geometric Analysis over the
  Riemannian Manifold
Neural Collapse with Normalized Features: A Geometric Analysis over the Riemannian Manifold
Can Yaras
Peng Wang
Zhihui Zhu
Laura Balzano
Qing Qu
25
42
0
19 Sep 2022
Approximation results for Gradient Descent trained Shallow Neural
  Networks in $1d$
Approximation results for Gradient Descent trained Shallow Neural Networks in 1d1d1d
R. Gentile
G. Welper
ODL
56
6
0
17 Sep 2022
Universal Solutions of Feedforward ReLU Networks for Interpolations
Universal Solutions of Feedforward ReLU Networks for Interpolations
Changcun Huang
18
2
0
16 Aug 2022
Why Robust Generalization in Deep Learning is Difficult: Perspective of
  Expressive Power
Why Robust Generalization in Deep Learning is Difficult: Perspective of Expressive Power
Binghui Li
Jikai Jin
Han Zhong
J. Hopcroft
Liwei Wang
OOD
82
27
0
27 May 2022
Low Dimensional Invariant Embeddings for Universal Geometric Learning
Low Dimensional Invariant Embeddings for Universal Geometric Learning
Nadav Dym
S. Gortler
29
39
0
05 May 2022
On the Optimization Landscape of Neural Collapse under MSE Loss: Global
  Optimality with Unconstrained Features
On the Optimization Landscape of Neural Collapse under MSE Loss: Global Optimality with Unconstrained Features
Jinxin Zhou
Xiao Li
Tian Ding
Chong You
Qing Qu
Zhihui Zhu
35
101
0
02 Mar 2022
Side Effects of Learning from Low-dimensional Data Embedded in a
  Euclidean Space
Side Effects of Learning from Low-dimensional Data Embedded in a Euclidean Space
Juncai He
R. Tsai
Rachel A. Ward
36
8
0
01 Mar 2022
Designing Universal Causal Deep Learning Models: The Geometric
  (Hyper)Transformer
Designing Universal Causal Deep Learning Models: The Geometric (Hyper)Transformer
Beatrice Acciaio
Anastasis Kratsios
G. Pammer
OOD
52
20
0
31 Jan 2022
Improved Overparametrization Bounds for Global Convergence of Stochastic
  Gradient Descent for Shallow Neural Networks
Improved Overparametrization Bounds for Global Convergence of Stochastic Gradient Descent for Shallow Neural Networks
Bartlomiej Polaczyk
J. Cyranka
ODL
33
3
0
28 Jan 2022
Deep Nonparametric Estimation of Operators between Infinite Dimensional
  Spaces
Deep Nonparametric Estimation of Operators between Infinite Dimensional Spaces
Hao Liu
Haizhao Yang
Minshuo Chen
T. Zhao
Wenjing Liao
32
36
0
01 Jan 2022
Approximation of functions with one-bit neural networks
Approximation of functions with one-bit neural networks
C. S. Güntürk
Weilin Li
19
8
0
16 Dec 2021
Theory of Deep Convolutional Neural Networks III: Approximating Radial
  Functions
Theory of Deep Convolutional Neural Networks III: Approximating Radial Functions
Tong Mao
Zhongjie Shi
Ding-Xuan Zhou
16
33
0
02 Jul 2021
A Geometric Analysis of Neural Collapse with Unconstrained Features
A Geometric Analysis of Neural Collapse with Unconstrained Features
Zhihui Zhu
Tianyu Ding
Jinxin Zhou
Xiao Li
Chong You
Jeremias Sulam
Qing Qu
40
196
0
06 May 2021
Expressivity of Deep Neural Networks
Expressivity of Deep Neural Networks
Ingo Gühring
Mones Raslan
Gitta Kutyniok
16
51
0
09 Jul 2020
Approximation in shift-invariant spaces with deep ReLU neural networks
Approximation in shift-invariant spaces with deep ReLU neural networks
Yunfei Yang
Zhen Li
Yang Wang
34
14
0
25 May 2020
Overall error analysis for the training of deep neural networks via
  stochastic gradient descent with random initialisation
Overall error analysis for the training of deep neural networks via stochastic gradient descent with random initialisation
Arnulf Jentzen
Timo Welti
22
15
0
03 Mar 2020
Robust and Resource Efficient Identification of Two Hidden Layer Neural
  Networks
Robust and Resource Efficient Identification of Two Hidden Layer Neural Networks
M. Fornasier
T. Klock
Michael Rauchensteiner
24
18
0
30 Jun 2019
The phase diagram of approximation rates for deep neural networks
The phase diagram of approximation rates for deep neural networks
Dmitry Yarotsky
Anton Zhevnerchuk
27
121
0
22 Jun 2019
Fast Calculation of Probabilistic Power Flow: A Model-based Deep
  Learning Approach
Fast Calculation of Probabilistic Power Flow: A Model-based Deep Learning Approach
Yan Yang
Zhifang Yang
Juan Yu
Baosen Zhang
15
95
0
14 Jun 2019
Deep Network Approximation Characterized by Number of Neurons
Deep Network Approximation Characterized by Number of Neurons
Zuowei Shen
Haizhao Yang
Shijun Zhang
23
182
0
13 Jun 2019
Nonlinear Approximation and (Deep) ReLU Networks
Nonlinear Approximation and (Deep) ReLU Networks
Ingrid Daubechies
Ronald A. DeVore
S. Foucart
Boris Hanin
G. Petrova
22
138
0
05 May 2019
Deep Neural Networks for Rotation-Invariance Approximation and Learning
Deep Neural Networks for Rotation-Invariance Approximation and Learning
C. Chui
Shao-Bo Lin
Ding-Xuan Zhou
32
34
0
03 Apr 2019
A Theoretical Analysis of Deep Neural Networks and Parametric PDEs
A Theoretical Analysis of Deep Neural Networks and Parametric PDEs
Gitta Kutyniok
P. Petersen
Mones Raslan
R. Schneider
23
197
0
31 Mar 2019
Error bounds for approximations with deep ReLU neural networks in
  $W^{s,p}$ norms
Error bounds for approximations with deep ReLU neural networks in Ws,pW^{s,p}Ws,p norms
Ingo Gühring
Gitta Kutyniok
P. Petersen
28
199
0
21 Feb 2019
The Oracle of DLphi
The Oracle of DLphi
Dominik Alfke
W. Baines
J. Blechschmidt
Mauricio J. del Razo Sarmina
Amnon Drory
...
L. Thesing
Philipp Trunschke
Johannes von Lindheim
David Weber
Melanie Weber
39
0
0
17 Jan 2019
Deep Neural Network Approximation Theory
Deep Neural Network Approximation Theory
Dennis Elbrächter
Dmytro Perekrestenko
Philipp Grohs
Helmut Bölcskei
16
207
0
08 Jan 2019
PDE-Net 2.0: Learning PDEs from Data with A Numeric-Symbolic Hybrid Deep
  Network
PDE-Net 2.0: Learning PDEs from Data with A Numeric-Symbolic Hybrid Deep Network
Zichao Long
Yiping Lu
Bin Dong
AI4CE
31
543
0
30 Nov 2018
Enhanced Expressive Power and Fast Training of Neural Networks by Random
  Projections
Enhanced Expressive Power and Fast Training of Neural Networks by Random Projections
Jian-Feng Cai
Dong Li
Jiaze Sun
Ke Wang
27
5
0
22 Nov 2018
A proof that deep artificial neural networks overcome the curse of
  dimensionality in the numerical approximation of Kolmogorov partial
  differential equations with constant diffusion and nonlinear drift
  coefficients
A proof that deep artificial neural networks overcome the curse of dimensionality in the numerical approximation of Kolmogorov partial differential equations with constant diffusion and nonlinear drift coefficients
Arnulf Jentzen
Diyora Salimova
Timo Welti
AI4CE
21
116
0
19 Sep 2018
A proof that artificial neural networks overcome the curse of
  dimensionality in the numerical approximation of Black-Scholes partial
  differential equations
A proof that artificial neural networks overcome the curse of dimensionality in the numerical approximation of Black-Scholes partial differential equations
Philipp Grohs
F. Hornung
Arnulf Jentzen
Philippe von Wurstemberger
16
167
0
07 Sep 2018
Geometry of Deep Learning for Magnetic Resonance Fingerprinting
Geometry of Deep Learning for Magnetic Resonance Fingerprinting
Mohammad Golbabaee
Dongdong Chen
Pedro A. Gómez
Marion I. Menzel
Mike E. Davies
27
42
0
05 Sep 2018
Automatic Processing and Solar Cell Detection in Photovoltaic
  Electroluminescence Images
Automatic Processing and Solar Cell Detection in Photovoltaic Electroluminescence Images
E. Sovetkin
A. Steland
10
25
0
26 Jul 2018
On the Universal Approximability and Complexity Bounds of Quantized ReLU
  Neural Networks
On the Universal Approximability and Complexity Bounds of Quantized ReLU Neural Networks
Yukun Ding
Jinglan Liu
Jinjun Xiong
Yiyu Shi
MQ
37
21
0
10 Feb 2018
Optimal Approximation with Sparsely Connected Deep Neural Networks
Optimal Approximation with Sparsely Connected Deep Neural Networks
Helmut Bölcskei
Philipp Grohs
Gitta Kutyniok
P. Petersen
35
255
0
04 May 2017
Deep Radial Kernel Networks: Approximating Radially Symmetric Functions
  with Deep Networks
Deep Radial Kernel Networks: Approximating Radially Symmetric Functions with Deep Networks
B. McCane
Lech Szymanski
41
6
0
09 Mar 2017
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