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Additive Gaussian Processes Revisited

Additive Gaussian Processes Revisited

20 June 2022
Xiaoyu Lu
A. Boukouvalas
J. Hensman
ArXiv (abs)PDFHTML

Papers citing "Additive Gaussian Processes Revisited"

13 / 13 papers shown
Title
Challenges in interpretability of additive models
Challenges in interpretability of additive models
Xinyu Zhang
Julien Martinelli
S. T. John
AAMLAI4CE
115
1
0
14 Apr 2025
High Dimensional Bayesian Optimization using Lasso Variable Selection
High Dimensional Bayesian Optimization using Lasso Variable Selection
Vu Viet Hoang
Hung The Tran
Sunil R. Gupta
Vu Nguyen
179
0
0
02 Apr 2025
Tensor Network-Constrained Kernel Machines as Gaussian Processes
Tensor Network-Constrained Kernel Machines as Gaussian Processes
Frederiek Wesel
Kim Batselier
118
0
0
28 Mar 2024
Kernel Multigrid: Accelerate Back-fitting via Sparse Gaussian Process
  Regression
Kernel Multigrid: Accelerate Back-fitting via Sparse Gaussian Process Regression
Lu Zou
Liang Ding
78
0
0
20 Mar 2024
Combining additivity and active subspaces for high-dimensional Gaussian
  process modeling
Combining additivity and active subspaces for high-dimensional Gaussian process modeling
M. Binois
Victor Picheny
85
0
0
06 Feb 2024
Trigonometric Quadrature Fourier Features for Scalable Gaussian Process
  Regression
Trigonometric Quadrature Fourier Features for Scalable Gaussian Process Regression
Kevin Li
Max Balakirsky
Simon Mak
70
3
0
23 Oct 2023
Graph-Structured Kernel Design for Power Flow Learning using Gaussian
  Processes
Graph-Structured Kernel Design for Power Flow Learning using Gaussian Processes
Parikshit Pareek
Deepjyoti Deka
Sidhant Misra
47
1
0
15 Aug 2023
Beyond Intuition, a Framework for Applying GPs to Real-World Data
Beyond Intuition, a Framework for Applying GPs to Real-World Data
K. Tazi
J. Lin
Ross Viljoen
A. Gardner
S. T. John
Hong Ge
Richard Turner
GP
55
4
0
06 Jul 2023
Relaxing the Additivity Constraints in Decentralized No-Regret
  High-Dimensional Bayesian Optimization
Relaxing the Additivity Constraints in Decentralized No-Regret High-Dimensional Bayesian Optimization
Anthony Bardou
Patrick Thiran
Thomas Begin
58
6
0
31 May 2023
Improving Neural Additive Models with Bayesian Principles
Improving Neural Additive Models with Bayesian Principles
Kouroche Bouchiat
Alexander Immer
Hugo Yèche
Gunnar Rätsch
Vincent Fortuin
BDLMedIm
105
6
0
26 May 2023
Hierarchical shrinkage Gaussian processes: applications to computer code
  emulation and dynamical system recovery
Hierarchical shrinkage Gaussian processes: applications to computer code emulation and dynamical system recovery
T. Tang
Simon Mak
David B. Dunson
55
4
0
01 Feb 2023
Are Random Decompositions all we need in High Dimensional Bayesian
  Optimisation?
Are Random Decompositions all we need in High Dimensional Bayesian Optimisation?
Juliusz Ziomek
Haitham Bou-Ammar
106
24
0
30 Jan 2023
Forward variable selection enables fast and accurate dynamic system
  identification with Karhunen-Loève decomposed Gaussian processes
Forward variable selection enables fast and accurate dynamic system identification with Karhunen-Loève decomposed Gaussian processes
Kyle Hayes
Michael W. Fouts
Ali Baheri
D. Mebane
77
0
0
26 May 2022
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