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Simple Bounds for Noisy Linear Inverse Problems with Exact Side
  Information

Simple Bounds for Noisy Linear Inverse Problems with Exact Side Information

2 December 2013
Samet Oymak
Christos Thrampoulidis
B. Hassibi
ArXivPDFHTML

Papers citing "Simple Bounds for Noisy Linear Inverse Problems with Exact Side Information"

9 / 9 papers shown
Title
High-Dimensional Estimation of Structured Signals from Non-Linear
  Observations with General Convex Loss Functions
High-Dimensional Estimation of Structured Signals from Non-Linear Observations with General Convex Loss Functions
Martin Genzel
256
45
0
10 Feb 2016
The Squared-Error of Generalized LASSO: A Precise Analysis
The Squared-Error of Generalized LASSO: A Precise Analysis
Samet Oymak
Christos Thrampoulidis
B. Hassibi
86
131
0
04 Nov 2013
Corrupted Sensing: Novel Guarantees for Separating Structured Signals
Corrupted Sensing: Novel Guarantees for Separating Structured Signals
Rina Foygel
Lester W. Mackey
82
117
0
11 May 2013
A framework to characterize performance of LASSO algorithms
A framework to characterize performance of LASSO algorithms
M. Stojnic
212
128
0
29 Mar 2013
Guarantees of Total Variation Minimization for Signal Recovery
Guarantees of Total Variation Minimization for Signal Recovery
Jian-Feng Cai
Weiyu Xu
142
45
0
28 Jan 2013
The Convex Geometry of Linear Inverse Problems
The Convex Geometry of Linear Inverse Problems
V. Chandrasekaran
Benjamin Recht
P. Parrilo
A. Willsky
161
1,338
0
03 Dec 2010
Nuclear norm penalization and optimal rates for noisy low rank matrix
  completion
Nuclear norm penalization and optimal rates for noisy low rank matrix completion
V. Koltchinskii
Alexandre B. Tsybakov
Karim Lounici
170
663
0
29 Nov 2010
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
312
1,377
0
13 Oct 2010
The LASSO risk for gaussian matrices
The LASSO risk for gaussian matrices
Mohsen Bayati
Andrea Montanari
150
317
0
16 Aug 2010
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