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Near-Oracle Performance of Greedy Block-Sparse Estimation Techniques
  from Noisy Measurements

Near-Oracle Performance of Greedy Block-Sparse Estimation Techniques from Noisy Measurements

5 September 2010
Z. Ben-Haim
Yonina C. Eldar
ArXivPDFHTML

Papers citing "Near-Oracle Performance of Greedy Block-Sparse Estimation Techniques from Noisy Measurements"

7 / 7 papers shown
Title
A Splicing Approach to Best Subset of Groups Selection
A Splicing Approach to Best Subset of Groups Selection
Yanhang Zhang
Junxian Zhu
Jin Zhu
Xueqin Wang
18
18
0
23 Apr 2021
Improved Support Recovery Guarantees for the Group Lasso With
  Applications to Structural Health Monitoring
Improved Support Recovery Guarantees for the Group Lasso With Applications to Structural Health Monitoring
M. K. Elyaderani
Swayambhoo Jain
Jeff Druce
S. Gonella
Jarvis Haupt
17
5
0
29 Aug 2017
An Interactive Greedy Approach to Group Sparsity in High Dimensions
An Interactive Greedy Approach to Group Sparsity in High Dimensions
Wei Qian
Wending Li
Yasuhiro Sogawa
R. Fujimaki
Xitong Yang
Ji Liu
11
7
0
10 Jul 2017
A Multiple Hypothesis Testing Approach to Low-Complexity Subspace
  Unmixing
A Multiple Hypothesis Testing Approach to Low-Complexity Subspace Unmixing
W. Bajwa
D. Mixon
43
2
0
07 Aug 2014
Conditioning of Random Block Subdictionaries with Applications to
  Block-Sparse Recovery and Regression
Conditioning of Random Block Subdictionaries with Applications to Block-Sparse Recovery and Regression
W. Bajwa
Marco F. Duarte
A. Calderbank
35
21
0
20 Sep 2013
Group Model Selection Using Marginal Correlations: The Good, the Bad and
  the Ugly
Group Model Selection Using Marginal Correlations: The Good, the Bad and the Ugly
W. Bajwa
D. Mixon
55
8
0
08 Oct 2012
Accuracy guaranties for $\ell_1$ recovery of block-sparse signals
Accuracy guaranties for ℓ1\ell_1ℓ1​ recovery of block-sparse signals
A. Juditsky
Fatma Kılınç Karzan
A. Nemirovski
Boris Polyak
103
27
0
10 Nov 2011
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