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Bayesian Optimization with High-Dimensional Outputs

Bayesian Optimization with High-Dimensional Outputs

24 June 2021
Wesley J. Maddox
Maximilian Balandat
A. Wilson
E. Bakshy
    UQCV
ArXivPDFHTML

Papers citing "Bayesian Optimization with High-Dimensional Outputs"

26 / 26 papers shown
Title
Multi-Fidelity Bayesian Optimization for Nash Equilibria with Black-Box Utilities
Multi-Fidelity Bayesian Optimization for Nash Equilibria with Black-Box Utilities
Yunchuan Zhang
Osvaldo Simeone
H. Vincent Poor
17
0
0
16 May 2025
Knowledge-aware Evolutionary Graph Neural Architecture Search
Knowledge-aware Evolutionary Graph Neural Architecture Search
Chao Wang
Jiaxuan Zhao
Lingling Li
Licheng Jiao
Fang Liu
Xu Liu
S. M. I. Simon X. Yang
80
2
0
26 Nov 2024
Respecting the limit:Bayesian optimization with a bound on the optimal value
Respecting the limit:Bayesian optimization with a bound on the optimal value
Hanyang Wang
Juergen Branke
Matthias Poloczek
35
0
0
07 Nov 2024
Scaling Gaussian Processes for Learning Curve Prediction via Latent
  Kronecker Structure
Scaling Gaussian Processes for Learning Curve Prediction via Latent Kronecker Structure
Jihao Andreas Lin
Sebastian Ament
Maximilian Balandat
E. Bakshy
BDL
29
2
0
11 Oct 2024
Gaussian Processes Sampling with Sparse Grids under Additive Schwarz
  Preconditioner
Gaussian Processes Sampling with Sparse Grids under Additive Schwarz Preconditioner
Haoyuan Chen
Rui Tuo
27
0
0
01 Aug 2024
Hyperparameter Optimization for Randomized Algorithms: A Case Study on Random Features
Hyperparameter Optimization for Randomized Algorithms: A Case Study on Random Features
Oliver R. A. Dunbar
Nicholas H. Nelsen
Maya Mutic
25
5
0
30 Jun 2024
Composite Bayesian Optimization In Function Spaces Using NEON -- Neural
  Epistemic Operator Networks
Composite Bayesian Optimization In Function Spaces Using NEON -- Neural Epistemic Operator Networks
Leonardo Ferreira Guilhoto
P. Perdikaris
BDL
33
1
0
03 Apr 2024
Multi-Fidelity Bayesian Optimization With Across-Task Transferable Max-Value Entropy Search
Multi-Fidelity Bayesian Optimization With Across-Task Transferable Max-Value Entropy Search
Yunchuan Zhang
Sangwoo Park
Osvaldo Simeone
42
5
0
14 Mar 2024
High-Dimensional Bayesian Optimisation with Large-Scale Constraints --
  An Application to Aeroelastic Tailoring
High-Dimensional Bayesian Optimisation with Large-Scale Constraints -- An Application to Aeroelastic Tailoring
Hauke Maathuis
R. Breuker
Saullo G. P. Castro
AI4CE
27
1
0
14 Dec 2023
Joint Composite Latent Space Bayesian Optimization
Joint Composite Latent Space Bayesian Optimization
Natalie Maus
Zhiyuan Jerry Lin
Maximilian Balandat
E. Bakshy
BDL
33
2
0
03 Nov 2023
Exact and general decoupled solutions of the LMC Multitask Gaussian
  Process model
Exact and general decoupled solutions of the LMC Multitask Gaussian Process model
Olivier Truffinet
Karim Ammar
J. Argaud
B. Bouriquet
22
0
0
18 Oct 2023
ArchGym: An Open-Source Gymnasium for Machine Learning Assisted
  Architecture Design
ArchGym: An Open-Source Gymnasium for Machine Learning Assisted Architecture Design
Srivatsan Krishnan
Amir Yazdanbaksh
Shvetank Prakash
Jason J. Jabbour
Ikechukwu Uchendu
...
Behzad Boroujerdian
Daniel Richins
Devashree Tripathy
Aleksandra Faust
Vijay Janapa Reddi
43
11
0
15 Jun 2023
A Study of Bayesian Neural Network Surrogates for Bayesian Optimization
A Study of Bayesian Neural Network Surrogates for Bayesian Optimization
Y. Li
Tim G. J. Rudner
A. Wilson
BDL
24
28
0
31 May 2023
No-Regret Constrained Bayesian Optimization of Noisy and Expensive
  Hybrid Models using Differentiable Quantile Function Approximations
No-Regret Constrained Bayesian Optimization of Noisy and Expensive Hybrid Models using Differentiable Quantile Function Approximations
Congwen Lu
J. Paulson
15
7
0
05 May 2023
Bayesian Optimization for Function Compositions with Applications to
  Dynamic Pricing
Bayesian Optimization for Function Compositions with Applications to Dynamic Pricing
Kunal Jain
J. PrabuchandranK.
Tejas Bodas
14
2
0
21 Mar 2023
Scalable Bayesian optimization with high-dimensional outputs using
  randomized prior networks
Scalable Bayesian optimization with high-dimensional outputs using randomized prior networks
Mohamed Aziz Bhouri
M. Joly
Robert Yu
S. Sarkar
P. Perdikaris
BDL
UQCV
AI4CE
16
1
0
14 Feb 2023
Multi-Objective GFlowNets
Multi-Objective GFlowNets
Moksh Jain
Sharath Chandra Raparthy
Alex Hernandez-Garcia
Jarrid Rector-Brooks
Yoshua Bengio
Santiago Miret
Emmanuel Bengio
22
87
0
23 Oct 2022
Bayesian Optimization over Discrete and Mixed Spaces via Probabilistic
  Reparameterization
Bayesian Optimization over Discrete and Mixed Spaces via Probabilistic Reparameterization
Sam Daulton
Xingchen Wan
David Eriksson
Maximilian Balandat
Michael A. Osborne
E. Bakshy
24
36
0
18 Oct 2022
Volatility Based Kernels and Moving Average Means for Accurate
  Forecasting with Gaussian Processes
Volatility Based Kernels and Moving Average Means for Accurate Forecasting with Gaussian Processes
Gregory W. Benton
Wesley J. Maddox
A. Wilson
AI4TS
6
3
0
13 Jul 2022
A General Recipe for Likelihood-free Bayesian Optimization
A General Recipe for Likelihood-free Bayesian Optimization
Jiaming Song
Lantao Yu
W. Neiswanger
Stefano Ermon
20
22
0
27 Jun 2022
Recent Advances in Bayesian Optimization
Recent Advances in Bayesian Optimization
Xilu Wang
Yaochu Jin
Sebastian Schmitt
Markus Olhofer
38
198
0
07 Jun 2022
Multi-armed bandits for resource efficient, online optimization of
  language model pre-training: the use case of dynamic masking
Multi-armed bandits for resource efficient, online optimization of language model pre-training: the use case of dynamic masking
Iñigo Urteaga
Moulay Draidia
Tomer Lancewicki
Shahram Khadivi
AI4CE
16
1
0
24 Mar 2022
Accelerating Bayesian Optimization for Biological Sequence Design with
  Denoising Autoencoders
Accelerating Bayesian Optimization for Biological Sequence Design with Denoising Autoencoders
Samuel Stanton
Wesley J. Maddox
Nate Gruver
Phillip M. Maffettone
E. Delaney
Peyton Greenside
A. Wilson
BDL
31
89
0
23 Mar 2022
Thinking inside the box: A tutorial on grey-box Bayesian optimization
Thinking inside the box: A tutorial on grey-box Bayesian optimization
Raul Astudillo
P. Frazier
15
35
0
02 Jan 2022
Optimizing High-Dimensional Physics Simulations via Composite Bayesian
  Optimization
Optimizing High-Dimensional Physics Simulations via Composite Bayesian Optimization
Wesley J. Maddox
Qing Feng
Maximilian Balandat
22
7
0
29 Nov 2021
Deep Learning for Bayesian Optimization of Scientific Problems with
  High-Dimensional Structure
Deep Learning for Bayesian Optimization of Scientific Problems with High-Dimensional Structure
Samuel Kim
Peter Y. Lu
Charlotte Loh
Jamie Smith
Jasper Snoek
M. Soljavcić
BDL
AI4CE
66
17
0
23 Apr 2021
1