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Nuclear norm penalization and optimal rates for noisy low rank matrix
  completion

Nuclear norm penalization and optimal rates for noisy low rank matrix completion

29 November 2010
V. Koltchinskii
Alexandre B. Tsybakov
Karim Lounici
ArXivPDFHTML

Papers citing "Nuclear norm penalization and optimal rates for noisy low rank matrix completion"

18 / 18 papers shown
Title
Network Tomography with Path-Centric Graph Neural Network
Yuntong Hu
Junxiang Wang
Liang Zhao
72
0
0
23 Feb 2025
ISLET: Fast and Optimal Low-rank Tensor Regression via Importance
  Sketching
ISLET: Fast and Optimal Low-rank Tensor Regression via Importance Sketching
Anru R. Zhang
Yuetian Luo
Garvesh Raskutti
M. Yuan
129
44
0
09 Nov 2019
Weighted matrix completion from non-random, non-uniform sampling
  patterns
Weighted matrix completion from non-random, non-uniform sampling patterns
S. Foucart
Deanna Needell
Reese Pathak
Y. Plan
Mary Wootters
92
28
0
30 Oct 2019
Estimation bounds and sharp oracle inequalities of regularized
  procedures with Lipschitz loss functions
Estimation bounds and sharp oracle inequalities of regularized procedures with Lipschitz loss functions
Pierre Alquier
V. Cottet
Guillaume Lecué
153
59
0
05 Feb 2017
Towards the study of least squares estimators with convex penalty
Towards the study of least squares estimators with convex penalty
Pierre C. Bellec
Guillaume Lecué
Alexandre B. Tsybakov
123
11
0
31 Jan 2017
Estimation of low rank density matrices by Pauli measurements
Estimation of low rank density matrices by Pauli measurements
Dong Xia
55
3
0
16 Oct 2016
A Unified Framework for High-Dimensional Analysis of M-Estimators with
  Decomposable Regularizers
A Unified Framework for High-Dimensional Analysis of M-Estimators with Decomposable Regularizers
S. Negahban
Pradeep Ravikumar
Martin J. Wainwright
Bin Yu
280
1,377
0
13 Oct 2010
Low rank Multivariate regression
Low rank Multivariate regression
Christophe Giraud
126
42
0
27 Sep 2010
Von Neumann Entropy Penalization and Low Rank Matrix Estimation
Von Neumann Entropy Penalization and Low Rank Matrix Estimation
V. Koltchinskii
117
101
0
13 Sep 2010
Restricted strong convexity and weighted matrix completion: Optimal
  bounds with noise
Restricted strong convexity and weighted matrix completion: Optimal bounds with noise
S. Negahban
Martin J. Wainwright
156
521
0
10 Sep 2010
Optimal selection of reduced rank estimators of high-dimensional
  matrices
Optimal selection of reduced rank estimators of high-dimensional matrices
F. Bunea
Yiyuan She
M. Wegkamp
169
240
0
18 Apr 2010
Estimation of high-dimensional low-rank matrices
Estimation of high-dimensional low-rank matrices
Angelika Rohde
Alexandre B. Tsybakov
208
382
0
29 Dec 2009
Estimation of (near) low-rank matrices with noise and high-dimensional
  scaling
Estimation of (near) low-rank matrices with noise and high-dimensional scaling
S. Negahban
Martin J. Wainwright
175
569
0
27 Dec 2009
The Dantzig selector and sparsity oracle inequalities
The Dantzig selector and sparsity oracle inequalities
V. Koltchinskii
181
133
0
04 Sep 2009
Matrix Completion from Noisy Entries
Matrix Completion from Noisy Entries
Raghunandan H. Keshavan
Andrea Montanari
Sewoong Oh
156
718
0
11 Jun 2009
Simultaneous analysis of Lasso and Dantzig selector
Simultaneous analysis of Lasso and Dantzig selector
Peter J. Bickel
Yaácov Ritov
Alexandre B. Tsybakov
325
2,527
0
07 Jan 2008
Consistency of trace norm minimization
Consistency of trace norm minimization
Francis R. Bach
202
220
0
15 Oct 2007
Guaranteed Minimum-Rank Solutions of Linear Matrix Equations via Nuclear
  Norm Minimization
Guaranteed Minimum-Rank Solutions of Linear Matrix Equations via Nuclear Norm Minimization
Benjamin Recht
Maryam Fazel
P. Parrilo
256
3,762
0
28 Jun 2007
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