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Rank Bounds for Approximating Gaussian Densities in the Tensor-Train
  Format
v1v2 (latest)

Rank Bounds for Approximating Gaussian Densities in the Tensor-Train Format

22 January 2020
Paul B. Rohrbach
S. Dolgov
Lars Grasedyck
Robert Scheichl
ArXiv (abs)PDFHTML

Papers citing "Rank Bounds for Approximating Gaussian Densities in the Tensor-Train Format"

6 / 6 papers shown
Tensor product algorithms for inference of contact network from
  epidemiological data
Tensor product algorithms for inference of contact network from epidemiological dataBMC Bioinformatics (BMC Bioinformatics), 2024
Sergey V. Dolgov
D. Savostyanov
221
1
0
26 Jan 2024
Tractable Optimal Experimental Design using Transport Maps
Tractable Optimal Experimental Design using Transport MapsInverse Problems (IP), 2024
Karina Koval
Roland Herzog
Robert Scheichl
OT
368
12
0
15 Jan 2024
Tensor-train methods for sequential state and parameter learning in
  state-space models
Tensor-train methods for sequential state and parameter learning in state-space modelsJournal of machine learning research (JMLR), 2023
Yiran Zhao
Tiangang Cui
267
5
0
24 Jan 2023
Deep importance sampling using tensor trains with application to a
  priori and a posteriori rare event estimation
Deep importance sampling using tensor trains with application to a priori and a posteriori rare event estimationSIAM Journal on Scientific Computing (SISC), 2022
Tiangang Cui
S. Dolgov
Robert Scheichl
280
6
0
05 Sep 2022
Computing f-Divergences and Distances of High-Dimensional Probability
  Density Functions -- Low-Rank Tensor Approximations
Computing f-Divergences and Distances of High-Dimensional Probability Density Functions -- Low-Rank Tensor Approximations
A. Litvinenko
Youssef Marzouk
H. Matthies
M. Scavino
Alessio Spantini
187
4
0
13 Nov 2021
Deep composition of tensor-trains using squared inverse Rosenblatt
  transports
Deep composition of tensor-trains using squared inverse Rosenblatt transportsFoundations of Computational Mathematics (FoCM), 2020
Tiangang Cui
S. Dolgov
OT
300
41
0
14 Jul 2020
1
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