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Residual Multi-Fidelity Neural Network Computing
v1v2 (latest)

Residual Multi-Fidelity Neural Network Computing

5 October 2023
Owen Davis
Mohammad Motamed
Raúl Tempone
ArXiv (abs)PDFHTML

Papers citing "Residual Multi-Fidelity Neural Network Computing"

14 / 14 papers shown
Title
Approximation Error and Complexity Bounds for ReLU Networks on
  Low-Regular Function Spaces
Approximation Error and Complexity Bounds for ReLU Networks on Low-Regular Function Spaces
Owen Davis
Gianluca Geraci
Mohammad Motamed
61
2
0
10 May 2024
Multi-fidelity surrogate modeling using long short-term memory networks
Multi-fidelity surrogate modeling using long short-term memory networks
Paolo Conti
Mengwu Guo
Andrea Manzoni
J. Hesthaven
AI4CE
63
48
0
05 Aug 2022
Approximation Power of Deep Neural Networks: an explanatory mathematical
  survey
Approximation Power of Deep Neural Networks: an explanatory mathematical survey
Mohammad Motamed
32
3
0
19 Jul 2022
Multifidelity data fusion in convolutional encoder/decoder networks
Multifidelity data fusion in convolutional encoder/decoder networks
Lauren Partin
Gianluca Geraci
A. Rushdi
M. Eldred
Daniele E. Schiavazzi
UQCVAI4CE
50
14
0
10 May 2022
Multifidelity Deep Operator Networks For Data-Driven and
  Physics-Informed Problems
Multifidelity Deep Operator Networks For Data-Driven and Physics-Informed Problems
Amanda A. Howard
M. Perego
G. Karniadakis
P. Stinis
AI4CE
74
56
0
19 Apr 2022
Multi-fidelity regression using artificial neural networks: efficient
  approximation of parameter-dependent output quantities
Multi-fidelity regression using artificial neural networks: efficient approximation of parameter-dependent output quantities
Mengwu Guo
Andrea Manzoni
Maurice Amendt
Paolo Conti
J. Hesthaven
143
97
0
26 Feb 2021
Multi-fidelity Bayesian Neural Networks: Algorithms and Applications
Multi-fidelity Bayesian Neural Networks: Algorithms and Applications
Xuhui Meng
H. Babaee
George Karniadakis
54
131
0
19 Dec 2020
The gap between theory and practice in function approximation with deep
  neural networks
The gap between theory and practice in function approximation with deep neural networks
Ben Adcock
N. Dexter
57
94
0
16 Jan 2020
Nonlinear Approximation and (Deep) ReLU Networks
Nonlinear Approximation and (Deep) ReLU Networks
Ingrid Daubechies
Ronald A. DeVore
S. Foucart
Boris Hanin
G. Petrova
100
142
0
05 May 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
87
198
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
86
200
0
21 Feb 2019
The Deep Ritz method: A deep learning-based numerical algorithm for
  solving variational problems
The Deep Ritz method: A deep learning-based numerical algorithm for solving variational problems
E. Weinan
Ting Yu
123
1,389
0
30 Sep 2017
Deep Learning in Neural Networks: An Overview
Deep Learning in Neural Networks: An Overview
Jürgen Schmidhuber
HAI
246
16,377
0
30 Apr 2014
Practical recommendations for gradient-based training of deep
  architectures
Practical recommendations for gradient-based training of deep architectures
Yoshua Bengio
3DHODL
193
2,201
0
24 Jun 2012
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