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Kernel Packet: An Exact and Scalable Algorithm for Gaussian Process
  Regression with Matérn Correlations

Kernel Packet: An Exact and Scalable Algorithm for Gaussian Process Regression with Matérn Correlations

7 March 2022
Hao Chen
Liang Ding
Rui Tuo
ArXivPDFHTML

Papers citing "Kernel Packet: An Exact and Scalable Algorithm for Gaussian Process Regression with Matérn Correlations"

10 / 10 papers shown
Title
Linear cost and exponentially convergent approximation of Gaussian Matérn processes on intervals
Linear cost and exponentially convergent approximation of Gaussian Matérn processes on intervals
David Bolin
Vaibhav Mehandiratta
Alexandre B. Simas
24
1
0
16 Oct 2024
Aggregation Models with Optimal Weights for Distributed Gaussian
  Processes
Aggregation Models with Optimal Weights for Distributed Gaussian Processes
Liam Hebert
Sukhdeep S. Sodhi
29
0
0
01 Aug 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
45
0
0
01 Aug 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
41
0
0
20 Mar 2024
A General Theory for Kernel Packets: from state space model to compactly
  supported basis
A General Theory for Kernel Packets: from state space model to compactly supported basis
Liang Ding
Rui Tuo
19
1
0
06 Feb 2024
Privacy-aware Gaussian Process Regression
Privacy-aware Gaussian Process Regression
Rui Tuo
R. Bhattacharya
14
1
0
25 May 2023
Random Smoothing Regularization in Kernel Gradient Descent Learning
Random Smoothing Regularization in Kernel Gradient Descent Learning
Liang Ding
Tianyang Hu
Jiahan Jiang
Donghao Li
Wei Cao
Yuan Yao
35
6
0
05 May 2023
Representing Additive Gaussian Processes by Sparse Matrices
Representing Additive Gaussian Processes by Sparse Matrices
Lu Zou
Haoyuan Chen
Liang Ding
28
0
0
29 Apr 2023
Projection Pursuit Gaussian Process Regression
Projection Pursuit Gaussian Process Regression
Gecheng Chen
Rui Tuo
GP
12
13
0
01 Apr 2020
Local Gaussian process approximation for large computer experiments
Local Gaussian process approximation for large computer experiments
R. Gramacy
D. Apley
129
392
0
02 Mar 2013
1