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Verification and Validation for Trustworthy Scientific Machine Learning

Verification and Validation for Trustworthy Scientific Machine Learning

21 February 2025
John D. Jakeman
Lorena A. Barba
J. Martins
Thomas O'Leary-Roseberry
    AI4CE
ArXivPDFHTML

Papers citing "Verification and Validation for Trustworthy Scientific Machine Learning"

34 / 34 papers shown
Title
Weak baselines and reporting biases lead to overoptimism in machine
  learning for fluid-related partial differential equations
Weak baselines and reporting biases lead to overoptimism in machine learning for fluid-related partial differential equations
N. McGreivy
Ammar Hakim
AI4CE
62
48
0
09 Jul 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
60
13
0
13 Apr 2024
Evolving Scientific Discovery by Unifying Data and Background Knowledge
  with AI Hilbert
Evolving Scientific Discovery by Unifying Data and Background Knowledge with AI Hilbert
Ryan Cory-Wright
Cristina Cornelio
S. Dash
Bachir El Khadir
L. Horesh
33
10
0
18 Aug 2023
Efficient PDE-Constrained optimization under high-dimensional
  uncertainty using derivative-informed neural operators
Efficient PDE-Constrained optimization under high-dimensional uncertainty using derivative-informed neural operators
Dingcheng Luo
Thomas O'Leary-Roseberry
Peng Chen
Omar Ghattas
AI4CE
41
16
0
31 May 2023
A Hybrid Deep Neural Operator/Finite Element Method for Ice-Sheet
  Modeling
A Hybrid Deep Neural Operator/Finite Element Method for Ice-Sheet Modeling
Qizhi He
M. Perego
Amanda A. Howard
George Karniadakis
P. Stinis
37
18
0
26 Jan 2023
PDEBENCH: An Extensive Benchmark for Scientific Machine Learning
PDEBENCH: An Extensive Benchmark for Scientific Machine Learning
M. Takamoto
T. Praditia
Raphael Leiteritz
Dan MacKinlay
Francesco Alesiani
Dirk Pflüger
Mathias Niepert
AI4CE
53
219
0
13 Oct 2022
Neural and spectral operator surrogates: unified construction and
  expression rate bounds
Neural and spectral operator surrogates: unified construction and expression rate bounds
L. Herrmann
Christoph Schwab
Jakob Zech
71
11
0
11 Jul 2022
Physics-Informed Deep Neural Operator Networks
Physics-Informed Deep Neural Operator Networks
S. Goswami
Aniruddha Bora
Yue Yu
George Karniadakis
PINN
AI4CE
57
102
0
08 Jul 2022
Derivative-Informed Neural Operator: An Efficient Framework for
  High-Dimensional Parametric Derivative Learning
Derivative-Informed Neural Operator: An Efficient Framework for High-Dimensional Parametric Derivative Learning
Thomas O'Leary-Roseberry
Peng Chen
Umberto Villa
Omar Ghattas
AI4CE
46
40
0
21 Jun 2022
Toward a Taxonomy of Trust for Probabilistic Machine Learning
Toward a Taxonomy of Trust for Probabilistic Machine Learning
Tamara Broderick
Andrew Gelman
Rachael Meager
Anna L. Smith
Tian Zheng
52
9
0
05 Dec 2021
Fast PDE-constrained optimization via self-supervised operator learning
Fast PDE-constrained optimization via self-supervised operator learning
Sizhuang He
Mohamed Aziz Bhouri
P. Perdikaris
69
28
0
25 Oct 2021
Machine learning moment closure models for the radiative transfer
  equation II: enforcing global hyperbolicity in gradient based closures
Machine learning moment closure models for the radiative transfer equation II: enforcing global hyperbolicity in gradient based closures
Juntao Huang
Yingda Cheng
Andrew J. Christlieb
L. Roberts
W. Yong
AI4CE
36
18
0
30 May 2021
Learning to Optimize: A Primer and A Benchmark
Learning to Optimize: A Primer and A Benchmark
Tianlong Chen
Xiaohan Chen
Wuyang Chen
Howard Heaton
Jialin Liu
Zhangyang Wang
W. Yin
135
231
0
23 Mar 2021
POD-DL-ROM: enhancing deep learning-based reduced order models for
  nonlinear parametrized PDEs by proper orthogonal decomposition
POD-DL-ROM: enhancing deep learning-based reduced order models for nonlinear parametrized PDEs by proper orthogonal decomposition
S. Fresca
Andrea Manzoni
AI4CE
48
213
0
28 Jan 2021
Interpretable Machine Learning -- A Brief History, State-of-the-Art and
  Challenges
Interpretable Machine Learning -- A Brief History, State-of-the-Art and Challenges
Christoph Molnar
Giuseppe Casalicchio
B. Bischl
AI4TS
AI4CE
64
400
0
19 Oct 2020
Fourier Neural Operator for Parametric Partial Differential Equations
Fourier Neural Operator for Parametric Partial Differential Equations
Zong-Yi Li
Nikola B. Kovachki
Kamyar Azizzadenesheli
Burigede Liu
K. Bhattacharya
Andrew M. Stuart
Anima Anandkumar
AI4CE
429
2,355
0
18 Oct 2020
Formalizing Trust in Artificial Intelligence: Prerequisites, Causes and
  Goals of Human Trust in AI
Formalizing Trust in Artificial Intelligence: Prerequisites, Causes and Goals of Human Trust in AI
Alon Jacovi
Ana Marasović
Tim Miller
Yoav Goldberg
281
436
0
15 Oct 2020
On the representation and learning of monotone triangular transport maps
On the representation and learning of monotone triangular transport maps
Ricardo Baptista
Youssef Marzouk
O. Zahm
48
48
0
22 Sep 2020
MFNets: Data efficient all-at-once learning of multifidelity surrogates
  as directed networks of information sources
MFNets: Data efficient all-at-once learning of multifidelity surrogates as directed networks of information sources
Alex Gorodetsky
J. Jakeman
Gianluca Geraci
AI4CE
50
24
0
03 Aug 2020
Conditional Sampling with Monotone GANs: from Generative Models to
  Likelihood-Free Inference
Conditional Sampling with Monotone GANs: from Generative Models to Likelihood-Free Inference
Ricardo Baptista
Bamdad Hosseini
Nikola B. Kovachki
Youssef Marzouk
OT
GAN
54
24
0
11 Jun 2020
Model Reduction and Neural Networks for Parametric PDEs
Model Reduction and Neural Networks for Parametric PDEs
K. Bhattacharya
Bamdad Hosseini
Nikola B. Kovachki
Andrew M. Stuart
163
325
0
07 May 2020
The relationship between trust in AI and trustworthy machine learning
  technologies
The relationship between trust in AI and trustworthy machine learning technologies
Ehsan Toreini
Mhairi Aitken
Kovila P. L. Coopamootoo
Karen Elliott
Carlos Vladimiro Gonzalez Zelaya
Aad van Moorsel
FaML
51
256
0
27 Nov 2019
DeepONet: Learning nonlinear operators for identifying differential
  equations based on the universal approximation theorem of operators
DeepONet: Learning nonlinear operators for identifying differential equations based on the universal approximation theorem of operators
Lu Lu
Pengzhan Jin
George Karniadakis
175
2,082
0
08 Oct 2019
Machine Learning Testing: Survey, Landscapes and Horizons
Machine Learning Testing: Survey, Landscapes and Horizons
Jie M. Zhang
Mark Harman
Lei Ma
Yang Liu
VLM
AILaw
64
744
0
19 Jun 2019
Deep Learning of Preconditioners for Conjugate Gradient Solvers in Urban
  Water Related Problems
Deep Learning of Preconditioners for Conjugate Gradient Solvers in Urban Water Related Problems
Johannes Sappl
L. Seiler
M. Harders
W. Rauch
AI4CE
30
25
0
17 Jun 2019
Deep Gaussian Processes for Multi-fidelity Modeling
Deep Gaussian Processes for Multi-fidelity Modeling
Kurt Cutajar
Mark Pullin
Andreas C. Damianou
Neil D. Lawrence
Javier I. González
AI4CE
41
110
0
18 Mar 2019
Rates of Convergence for Sparse Variational Gaussian Process Regression
Rates of Convergence for Sparse Variational Gaussian Process Regression
David R. Burt
C. Rasmussen
Mark van der Wilk
47
152
0
08 Mar 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
103
1,373
0
30 Sep 2017
DGM: A deep learning algorithm for solving partial differential
  equations
DGM: A deep learning algorithm for solving partial differential equations
Justin A. Sirignano
K. Spiliopoulos
AI4CE
69
2,048
0
24 Aug 2017
Towards A Rigorous Science of Interpretable Machine Learning
Towards A Rigorous Science of Interpretable Machine Learning
Finale Doshi-Velez
Been Kim
XAI
FaML
354
3,742
0
28 Feb 2017
Optimal weighted least-squares methods
Optimal weighted least-squares methods
A. Cohen
G. Migliorati
34
197
0
01 Aug 2016
Optimization Methods for Large-Scale Machine Learning
Optimization Methods for Large-Scale Machine Learning
Léon Bottou
Frank E. Curtis
J. Nocedal
182
3,198
0
15 Jun 2016
The Mythos of Model Interpretability
The Mythos of Model Interpretability
Zachary Chase Lipton
FaML
134
3,672
0
10 Jun 2016
Identifying and attacking the saddle point problem in high-dimensional
  non-convex optimization
Identifying and attacking the saddle point problem in high-dimensional non-convex optimization
Yann N. Dauphin
Razvan Pascanu
Çağlar Gülçehre
Kyunghyun Cho
Surya Ganguli
Yoshua Bengio
ODL
111
1,380
0
10 Jun 2014
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