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The Barron Space and the Flow-induced Function Spaces for Neural Network
  Models

The Barron Space and the Flow-induced Function Spaces for Neural Network Models

18 June 2019
E. Weinan
Chao Ma
Lei Wu
ArXivPDFHTML

Papers citing "The Barron Space and the Flow-induced Function Spaces for Neural Network Models"

27 / 27 papers shown
Title
How DNNs break the Curse of Dimensionality: Compositionality and Symmetry Learning
How DNNs break the Curse of Dimensionality: Compositionality and Symmetry Learning
Arthur Jacot
Seok Hoan Choi
Yuxiao Wen
AI4CE
91
2
0
08 Jul 2024
Learning solution operators of PDEs defined on varying domains via
  MIONet
Learning solution operators of PDEs defined on varying domains via MIONet
Shanshan Xiao
Pengzhan Jin
Yifa Tang
42
3
0
23 Feb 2024
GIT-Net: Generalized Integral Transform for Operator Learning
GIT-Net: Generalized Integral Transform for Operator Learning
Chao Wang
Alexandre H. Thiery
AI4CE
31
0
0
05 Dec 2023
Reinforcement Learning with Function Approximation: From Linear to
  Nonlinear
Reinforcement Learning with Function Approximation: From Linear to Nonlinear
Jihao Long
Jiequn Han
24
5
0
20 Feb 2023
A Mathematical Framework for Learning Probability Distributions
A Mathematical Framework for Learning Probability Distributions
Hongkang Yang
21
7
0
22 Dec 2022
Duality for Neural Networks through Reproducing Kernel Banach Spaces
Duality for Neural Networks through Reproducing Kernel Banach Spaces
L. Spek
T. J. Heeringa
Felix L. Schwenninger
C. Brune
13
13
0
09 Nov 2022
Importance Tempering: Group Robustness for Overparameterized Models
Importance Tempering: Group Robustness for Overparameterized Models
Yiping Lu
Wenlong Ji
Zachary Izzo
Lexing Ying
39
7
0
19 Sep 2022
The Deep Ritz Method for Parametric $p$-Dirichlet Problems
The Deep Ritz Method for Parametric ppp-Dirichlet Problems
A. Kaltenbach
Marius Zeinhofer
14
2
0
05 Jul 2022
Approximation of Functionals by Neural Network without Curse of
  Dimensionality
Approximation of Functionals by Neural Network without Curse of Dimensionality
Yahong Yang
Yang Xiang
21
6
0
28 May 2022
Bayesian Deep Learning with Multilevel Trace-class Neural Networks
Bayesian Deep Learning with Multilevel Trace-class Neural Networks
Neil K. Chada
Ajay Jasra
K. Law
Sumeetpal S. Singh
BDL
UQCV
83
3
0
24 Mar 2022
Perturbational Complexity by Distribution Mismatch: A Systematic
  Analysis of Reinforcement Learning in Reproducing Kernel Hilbert Space
Perturbational Complexity by Distribution Mismatch: A Systematic Analysis of Reinforcement Learning in Reproducing Kernel Hilbert Space
Jihao Long
Jiequn Han
25
6
0
05 Nov 2021
Sobolev-type embeddings for neural network approximation spaces
Sobolev-type embeddings for neural network approximation spaces
Philipp Grohs
F. Voigtlaender
14
1
0
28 Oct 2021
On the Representation of Solutions to Elliptic PDEs in Barron Spaces
On the Representation of Solutions to Elliptic PDEs in Barron Spaces
Ziang Chen
Jianfeng Lu
Yulong Lu
27
26
0
14 Jun 2021
Two-layer neural networks with values in a Banach space
Two-layer neural networks with values in a Banach space
Yury Korolev
21
23
0
05 May 2021
A Priori Generalization Error Analysis of Two-Layer Neural Networks for
  Solving High Dimensional Schrödinger Eigenvalue Problems
A Priori Generalization Error Analysis of Two-Layer Neural Networks for Solving High Dimensional Schrödinger Eigenvalue Problems
Jianfeng Lu
Yulong Lu
34
29
0
04 May 2021
A Priori Generalization Analysis of the Deep Ritz Method for Solving
  High Dimensional Elliptic Equations
A Priori Generalization Analysis of the Deep Ritz Method for Solving High Dimensional Elliptic Equations
Jianfeng Lu
Yulong Lu
Min Wang
23
37
0
05 Jan 2021
Friedrichs Learning: Weak Solutions of Partial Differential Equations
  via Deep Learning
Friedrichs Learning: Weak Solutions of Partial Differential Equations via Deep Learning
Fan Chen
J. Huang
Chunmei Wang
Haizhao Yang
15
30
0
15 Dec 2020
Deep Neural Networks Are Effective At Learning High-Dimensional
  Hilbert-Valued Functions From Limited Data
Deep Neural Networks Are Effective At Learning High-Dimensional Hilbert-Valued Functions From Limited Data
Ben Adcock
Simone Brugiapaglia
N. Dexter
S. Moraga
34
29
0
11 Dec 2020
Global optimality of softmax policy gradient with single hidden layer
  neural networks in the mean-field regime
Global optimality of softmax policy gradient with single hidden layer neural networks in the mean-field regime
Andrea Agazzi
Jianfeng Lu
13
15
0
22 Oct 2020
Machine Learning and Computational Mathematics
Machine Learning and Computational Mathematics
Weinan E
PINN
AI4CE
24
61
0
23 Sep 2020
Complexity Measures for Neural Networks with General Activation
  Functions Using Path-based Norms
Complexity Measures for Neural Networks with General Activation Functions Using Path-based Norms
Zhong Li
Chao Ma
Lei Wu
18
24
0
14 Sep 2020
Representation formulas and pointwise properties for Barron functions
Representation formulas and pointwise properties for Barron functions
E. Weinan
Stephan Wojtowytsch
23
79
0
10 Jun 2020
Can Shallow Neural Networks Beat the Curse of Dimensionality? A mean
  field training perspective
Can Shallow Neural Networks Beat the Curse of Dimensionality? A mean field training perspective
Stephan Wojtowytsch
E. Weinan
MLT
26
48
0
21 May 2020
Machine Learning from a Continuous Viewpoint
Machine Learning from a Continuous Viewpoint
E. Weinan
Chao Ma
Lei Wu
23
102
0
30 Dec 2019
Deep Learning via Dynamical Systems: An Approximation Perspective
Deep Learning via Dynamical Systems: An Approximation Perspective
Qianxiao Li
Ting Lin
Zuowei Shen
AI4TS
AI4CE
14
107
0
22 Dec 2019
Variational Physics-Informed Neural Networks For Solving Partial
  Differential Equations
Variational Physics-Informed Neural Networks For Solving Partial Differential Equations
E. Kharazmi
Z. Zhang
George Karniadakis
16
236
0
27 Nov 2019
A Priori Estimates of the Population Risk for Two-layer Neural Networks
A Priori Estimates of the Population Risk for Two-layer Neural Networks
Weinan E
Chao Ma
Lei Wu
27
130
0
15 Oct 2018
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