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Deep Network Approximation for Smooth Functions

Deep Network Approximation for Smooth Functions

9 January 2020
Jianfeng Lu
Zuowei Shen
Haizhao Yang
Shijun Zhang
ArXivPDFHTML

Papers citing "Deep Network Approximation for Smooth Functions"

50 / 152 papers shown
Title
Super-fast rates of convergence for Neural Networks Classifiers under the Hard Margin Condition
Super-fast rates of convergence for Neural Networks Classifiers under the Hard Margin Condition
Nathanael Tepakbong
Ding-Xuan Zhou
Xiang Zhou
36
0
0
13 May 2025
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
Deep learning with missing data
Deep learning with missing data
Tianyi Ma
Tengyao Wang
R. Samworth
59
0
0
21 Apr 2025
Transformers Can Overcome the Curse of Dimensionality: A Theoretical Study from an Approximation Perspective
Transformers Can Overcome the Curse of Dimensionality: A Theoretical Study from an Approximation Perspective
Yuling Jiao
Yanming Lai
Yang Wang
Bokai Yan
34
0
0
18 Apr 2025
Approximation Bounds for Transformer Networks with Application to Regression
Approximation Bounds for Transformer Networks with Application to Regression
Yuling Jiao
Yanming Lai
Defeng Sun
Yang Wang
Bokai Yan
29
0
0
16 Apr 2025
Inferring Outcome Means of Exponential Family Distributions Estimated by Deep Neural Networks
Inferring Outcome Means of Exponential Family Distributions Estimated by Deep Neural Networks
Xuran Meng
Yi Li
BDL
25
0
0
12 Apr 2025
Statistically guided deep learning
Statistically guided deep learning
Michael Kohler
A. Krzyżak
ODL
BDL
68
0
0
11 Apr 2025
Nonlocal techniques for the analysis of deep ReLU neural network approximations
Nonlocal techniques for the analysis of deep ReLU neural network approximations
Cornelia Schneider
Mario Ullrich
Jan Vybiral
18
0
0
07 Apr 2025
Approximation properties of neural ODEs
Approximation properties of neural ODEs
Arturo De Marinis
Davide Murari
E. Celledoni
Nicola Guglielmi
B. Owren
Francesco Tudisco
39
0
0
19 Mar 2025
Finite Samples for Shallow Neural Networks
Finite Samples for Shallow Neural Networks
Yu Xia
Zhiqiang Xu
43
0
0
17 Mar 2025
Fourier Multi-Component and Multi-Layer Neural Networks: Unlocking High-Frequency Potential
Fourier Multi-Component and Multi-Layer Neural Networks: Unlocking High-Frequency Potential
Shijun Zhang
Hongkai Zhao
Yimin Zhong
Haomin Zhou
57
0
0
26 Feb 2025
Curse of Dimensionality in Neural Network Optimization
Sanghoon Na
Haizhao Yang
51
0
0
07 Feb 2025
Learning with Noisy Labels: the Exploration of Error Bounds in Classification
Haixia Liu
Boxiao Li
Can Yang
Yang Wang
33
0
0
28 Jan 2025
Higher Order Approximation Rates for ReLU CNNs in Korobov Spaces
Higher Order Approximation Rates for ReLU CNNs in Korobov Spaces
Yuwen Li
Guozhi Zhang
43
1
0
20 Jan 2025
Causality Pursuit from Heterogeneous Environments via Neural Adversarial Invariance Learning
Causality Pursuit from Heterogeneous Environments via Neural Adversarial Invariance Learning
Yihong Gu
Cong Fang
Peter Bühlmann
Jianqing Fan
CML
OOD
70
2
0
31 Dec 2024
Deep Kalman Filters Can Filter
Deep Kalman Filters Can Filter
Blanka Hovart
Anastasis Kratsios
Yannick Limmer
Xuwei Yang
45
1
0
31 Dec 2024
A Statistical Analysis of Deep Federated Learning for Intrinsically
  Low-dimensional Data
A Statistical Analysis of Deep Federated Learning for Intrinsically Low-dimensional Data
Saptarshi Chakraborty
Peter L. Bartlett
FedML
18
1
0
28 Oct 2024
Simultaneously Solving FBSDEs with Neural Operators of Logarithmic
  Depth, Constant Width, and Sub-Linear Rank
Simultaneously Solving FBSDEs with Neural Operators of Logarithmic Depth, Constant Width, and Sub-Linear Rank
Takashi Furuya
Anastasis Kratsios
30
1
0
18 Oct 2024
On the expressiveness and spectral bias of KANs
On the expressiveness and spectral bias of KANs
Yixuan Wang
Jonathan W. Siegel
Ziming Liu
Thomas Y. Hou
37
9
0
02 Oct 2024
Neural Scaling Laws of Deep ReLU and Deep Operator Network: A
  Theoretical Study
Neural Scaling Laws of Deep ReLU and Deep Operator Network: A Theoretical Study
Hao Liu
Zecheng Zhang
Wenjing Liao
Hayden Schaeffer
23
1
0
01 Oct 2024
Frequency-adaptive Multi-scale Deep Neural Networks
Frequency-adaptive Multi-scale Deep Neural Networks
Jizu Huang
Rukang You
Tao Zhou
AI4CE
25
1
0
28 Sep 2024
Approximation Bounds for Recurrent Neural Networks with Application to
  Regression
Approximation Bounds for Recurrent Neural Networks with Application to Regression
Yuling Jiao
Yang Wang
Bokai Yan
23
1
0
09 Sep 2024
On the optimal approximation of Sobolev and Besov functions using deep
  ReLU neural networks
On the optimal approximation of Sobolev and Besov functions using deep ReLU neural networks
Yunfei Yang
62
2
0
02 Sep 2024
Time Series Generative Learning with Application to Brain Imaging
  Analysis
Time Series Generative Learning with Application to Brain Imaging Analysis
Zhenghao Li
Sanyou Wu
Long Feng
MedIm
33
0
0
19 Jul 2024
Theoretical Insights into CycleGAN: Analyzing Approximation and Estimation Errors in Unpaired Data Generation
Theoretical Insights into CycleGAN: Analyzing Approximation and Estimation Errors in Unpaired Data Generation
Luwei Sun
Dongrui Shen
Han Feng
29
2
0
16 Jul 2024
Structured and Balanced Multi-component and Multi-layer Neural Networks
Structured and Balanced Multi-component and Multi-layer Neural Networks
Shijun Zhang
Hongkai Zhao
Yimin Zhong
Haomin Zhou
32
1
0
30 Jun 2024
On the growth of the parameters of approximating ReLU neural networks
On the growth of the parameters of approximating ReLU neural networks
Erion Morina
Martin Holler
27
0
0
21 Jun 2024
On the estimation rate of Bayesian PINN for inverse problems
On the estimation rate of Bayesian PINN for inverse problems
Yi Sun
Debarghya Mukherjee
Yves Atchadé
PINN
72
1
0
21 Jun 2024
Posterior and variational inference for deep neural networks with heavy-tailed weights
Posterior and variational inference for deep neural networks with heavy-tailed weights
Ismael Castillo
Paul Egels
BDL
57
3
0
05 Jun 2024
On Non-asymptotic Theory of Recurrent Neural Networks in Temporal Point
  Processes
On Non-asymptotic Theory of Recurrent Neural Networks in Temporal Point Processes
Zhiheng Chen
Guanhua Fang
Wen Yu
30
0
0
02 Jun 2024
Sifting through the Noise: A Survey of Diffusion Probabilistic Models
  and Their Applications to Biomolecules
Sifting through the Noise: A Survey of Diffusion Probabilistic Models and Their Applications to Biomolecules
Trevor Norton
Debswapna Bhattacharya
MedIm
DiffM
47
2
0
31 May 2024
Enhancing Accuracy in Generative Models via Knowledge Transfer
Enhancing Accuracy in Generative Models via Knowledge Transfer
Xinyu Tian
Xiaotong Shen
39
2
0
27 May 2024
Automatic Differentiation is Essential in Training Neural Networks for Solving Differential Equations
Automatic Differentiation is Essential in Training Neural Networks for Solving Differential Equations
Chuqi Chen
Yahong Yang
Yang Xiang
Wenrui Hao
26
2
0
23 May 2024
Model Free Prediction with Uncertainty Assessment
Model Free Prediction with Uncertainty Assessment
Yuling Jiao
Lican Kang
Jin Liu
Heng Peng
Heng Zuo
DiffM
34
0
0
21 May 2024
Approximation and Gradient Descent Training with Neural Networks
Approximation and Gradient Descent Training with Neural Networks
G. Welper
36
1
0
19 May 2024
Mixture of Experts Soften the Curse of Dimensionality in Operator
  Learning
Mixture of Experts Soften the Curse of Dimensionality in Operator Learning
Anastasis Kratsios
Takashi Furuya
Jose Antonio Lara Benitez
Matti Lassas
Maarten V. de Hoop
42
13
0
13 Apr 2024
An Overview of Diffusion Models: Applications, Guided Generation,
  Statistical Rates and Optimization
An Overview of Diffusion Models: Applications, Guided Generation, Statistical Rates and Optimization
Minshuo Chen
Song Mei
Jianqing Fan
Mengdi Wang
VLM
MedIm
DiffM
37
48
0
11 Apr 2024
Learning smooth functions in high dimensions: from sparse polynomials to
  deep neural networks
Learning smooth functions in high dimensions: from sparse polynomials to deep neural networks
Ben Adcock
Simone Brugiapaglia
N. Dexter
S. Moraga
39
4
0
04 Apr 2024
On the rates of convergence for learning with convolutional neural
  networks
On the rates of convergence for learning with convolutional neural networks
Yunfei Yang
Han Feng
Ding-Xuan Zhou
40
3
0
25 Mar 2024
Probabilistic Neural Networks (PNNs) for Modeling Aleatoric Uncertainty
  in Scientific Machine Learning
Probabilistic Neural Networks (PNNs) for Modeling Aleatoric Uncertainty in Scientific Machine Learning
Farhad Pourkamali-Anaraki
Jamal F. Husseini
Scott E. Stapleton
UD
48
2
0
21 Feb 2024
Approximation Rates and VC-Dimension Bounds for (P)ReLU MLP Mixture of
  Experts
Approximation Rates and VC-Dimension Bounds for (P)ReLU MLP Mixture of Experts
Anastasis Kratsios
Haitz Sáez de Ocáriz Borde
Takashi Furuya
Marc T. Law
MoE
41
1
0
05 Feb 2024
Deeper or Wider: A Perspective from Optimal Generalization Error with
  Sobolev Loss
Deeper or Wider: A Perspective from Optimal Generalization Error with Sobolev Loss
Yahong Yang
Juncai He
AI4CE
26
7
0
31 Jan 2024
Generalization Error Guaranteed Auto-Encoder-Based Nonlinear Model
  Reduction for Operator Learning
Generalization Error Guaranteed Auto-Encoder-Based Nonlinear Model Reduction for Operator Learning
Hao Liu
Biraj Dahal
Rongjie Lai
Wenjing Liao
AI4CE
26
5
0
19 Jan 2024
A Survey on Statistical Theory of Deep Learning: Approximation, Training
  Dynamics, and Generative Models
A Survey on Statistical Theory of Deep Learning: Approximation, Training Dynamics, and Generative Models
Namjoon Suh
Guang Cheng
MedIm
24
12
0
14 Jan 2024
Semi-Supervised Deep Sobolev Regression: Estimation and Variable Selection by ReQU Neural Network
Semi-Supervised Deep Sobolev Regression: Estimation and Variable Selection by ReQU Neural Network
Zhao Ding
Chenguang Duan
Yuling Jiao
Jerry Zhijian Yang
25
1
0
09 Jan 2024
Deep Neural Networks and Finite Elements of Any Order on Arbitrary
  Dimensions
Deep Neural Networks and Finite Elements of Any Order on Arbitrary Dimensions
Juncai He
Jinchao Xu
25
7
0
21 Dec 2023
Neural Network Approximation for Pessimistic Offline Reinforcement
  Learning
Neural Network Approximation for Pessimistic Offline Reinforcement Learning
Di Wu
Yuling Jiao
Li Shen
Haizhao Yang
Xiliang Lu
OffRL
27
1
0
19 Dec 2023
Optimal Deep Neural Network Approximation for Korobov Functions with
  respect to Sobolev Norms
Optimal Deep Neural Network Approximation for Korobov Functions with respect to Sobolev Norms
Yahong Yang
Yulong Lu
34
3
0
08 Nov 2023
Neural Snowflakes: Universal Latent Graph Inference via Trainable Latent Geometries
Neural Snowflakes: Universal Latent Graph Inference via Trainable Latent Geometries
Haitz Sáez de Ocáriz Borde
Anastasis Kratsios
37
4
0
23 Oct 2023
On Representation Complexity of Model-based and Model-free Reinforcement
  Learning
On Representation Complexity of Model-based and Model-free Reinforcement Learning
Hanlin Zhu
Baihe Huang
Stuart Russell
OffRL
25
3
0
03 Oct 2023
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