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Graph Laplacian-based Bayesian Multi-fidelity Modeling

Graph Laplacian-based Bayesian Multi-fidelity Modeling

12 September 2024
Orazio Pinti
Jeremy M. Budd
Franca Hoffmann
Assad A. Oberai
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Papers citing "Graph Laplacian-based Bayesian Multi-fidelity Modeling"

8 / 8 papers shown
Title
Bi-fidelity Variational Auto-encoder for Uncertainty Quantification
Bi-fidelity Variational Auto-encoder for Uncertainty Quantification
Nuojin Cheng
Osman Asif Malik
Subhayan De
Stephen Becker
Alireza Doostan
54
9
0
25 May 2023
Poisson Reweighted Laplacian Uncertainty Sampling for Graph-based Active
  Learning
Poisson Reweighted Laplacian Uncertainty Sampling for Graph-based Active Learning
Kevin Miller
Jeff Calder
57
6
0
27 Oct 2022
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
Multi-Fidelity Bayesian Optimization via Deep Neural Networks
Multi-Fidelity Bayesian Optimization via Deep Neural Networks
Shibo Li
Wei W. Xing
Mike Kirby
Shandian Zhe
37
54
0
06 Jul 2020
Transfer learning based multi-fidelity physics informed deep neural
  network
Transfer learning based multi-fidelity physics informed deep neural network
S. Chakraborty
PINN
OOD
AI4CE
69
165
0
19 May 2020
NFFT meets Krylov methods: Fast matrix-vector products for the graph
  Laplacian of fully connected networks
NFFT meets Krylov methods: Fast matrix-vector products for the graph Laplacian of fully connected networks
Dominik Alfke
D. Potts
Martin Stoll
Toni Volkmer
29
14
0
14 Aug 2018
Large Data and Zero Noise Limits of Graph-Based Semi-Supervised Learning
  Algorithms
Large Data and Zero Noise Limits of Graph-Based Semi-Supervised Learning Algorithms
Matthew M. Dunlop
D. Slepčev
Andrew M. Stuart
Matthew Thorpe
42
61
0
23 May 2018
Bayesian treed Gaussian process models with an application to computer
  modeling
Bayesian treed Gaussian process models with an application to computer modeling
R. Gramacy
Herbert K. H. Lee
177
679
0
24 Oct 2007
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