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A Geometric View on Constrained M-Estimators

A Geometric View on Constrained M-Estimators

26 June 2015
Yen-Huan Li
Ya-Ping Hsieh
N. Zerbib
Volkan Cevher
ArXiv (abs)PDFHTML

Papers citing "A Geometric View on Constrained M-Estimators"

24 / 24 papers shown
Title
Precise Error Analysis of Regularized M-estimators in High-dimensions
Precise Error Analysis of Regularized M-estimators in High-dimensions
Christos Thrampoulidis
Ehsan Abbasi
B. Hassibi
194
223
0
23 Jan 2016
Exponential Family Matrix Completion under Structural Constraints
Exponential Family Matrix Completion under Structural Constraints
Suriya Gunasekar
Pradeep Ravikumar
Joydeep Ghosh
43
40
0
15 Sep 2015
Estimation with Norm Regularization
Estimation with Norm Regularization
A. Banerjee
Sheng Chen
F. Fazayeli
V. Sivakumar
73
63
0
09 May 2015
The generalized Lasso with non-linear observations
The generalized Lasso with non-linear observations
Y. Plan
Roman Vershynin
211
200
0
13 Feb 2015
A totally unimodular view of structured sparsity
A totally unimodular view of structured sparsity
Marwa El Halabi
Volkan Cevher
76
30
0
07 Nov 2014
Estimation in high dimensions: a geometric perspective
Estimation in high dimensions: a geometric perspective
Roman Vershynin
154
134
0
20 May 2014
Convex recovery of a structured signal from independent random linear
  measurements
Convex recovery of a structured signal from independent random linear measurements
J. Tropp
117
177
0
05 May 2014
High-dimensional estimation with geometric constraints
High-dimensional estimation with geometric constraints
Y. Plan
Roman Vershynin
E. Yudovina
174
144
0
14 Apr 2014
A new perspective on least squares under convex constraint
A new perspective on least squares under convex constraint
S. Chatterjee
131
117
0
04 Feb 2014
Learning without Concentration
Learning without Concentration
S. Mendelson
249
334
0
01 Jan 2014
Simple Bounds for Noisy Linear Inverse Problems with Exact Side
  Information
Simple Bounds for Noisy Linear Inverse Problems with Exact Side Information
Samet Oymak
Christos Thrampoulidis
B. Hassibi
118
24
0
02 Dec 2013
The Squared-Error of Generalized LASSO: A Precise Analysis
The Squared-Error of Generalized LASSO: A Precise Analysis
Samet Oymak
Christos Thrampoulidis
B. Hassibi
155
132
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
103
117
0
11 May 2013
Guarantees of Total Variation Minimization for Signal Recovery
Guarantees of Total Variation Minimization for Signal Recovery
Jian-Feng Cai
Weiyu Xu
163
45
0
28 Jan 2013
Computational and Statistical Tradeoffs via Convex Relaxation
Computational and Statistical Tradeoffs via Convex Relaxation
V. Chandrasekaran
Michael I. Jordan
138
220
0
05 Nov 2012
1-Bit Matrix Completion
1-Bit Matrix Completion
Mark A. Davenport
Y. Plan
E. Berg
Mary Wootters
221
353
0
17 Sep 2012
Weakly decomposable regularization penalties and structured sparsity
Weakly decomposable regularization penalties and structured sparsity
Sara van de Geer
161
63
0
21 Apr 2012
Robust 1-bit compressed sensing and sparse logistic regression: A convex
  programming approach
Robust 1-bit compressed sensing and sparse logistic regression: A convex programming approach
Y. Plan
Roman Vershynin
256
457
0
06 Feb 2012
Learning with Submodular Functions: A Convex Optimization Perspective
Learning with Submodular Functions: A Convex Optimization Perspective
Francis R. Bach
147
478
0
28 Nov 2011
The Convex Geometry of Linear Inverse Problems
The Convex Geometry of Linear Inverse Problems
V. Chandrasekaran
Benjamin Recht
P. Parrilo
A. Willsky
218
1,342
0
03 Dec 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
486
1,379
0
13 Oct 2010
Learning Exponential Families in High-Dimensions: Strong Convexity and
  Sparsity
Learning Exponential Families in High-Dimensions: Strong Convexity and Sparsity
Sham Kakade
Ohad Shamir
Karthik Sindharan
Ambuj Tewari
241
77
0
31 Oct 2009
Minimax rates of estimation for high-dimensional linear regression over
  $\ell_q$-balls
Minimax rates of estimation for high-dimensional linear regression over ℓq\ell_qℓq​-balls
Garvesh Raskutti
Martin J. Wainwright
Bin Yu
228
575
0
11 Oct 2009
Simultaneous analysis of Lasso and Dantzig selector
Simultaneous analysis of Lasso and Dantzig selector
Peter J. Bickel
Yaácov Ritov
Alexandre B. Tsybakov
562
2,531
0
07 Jan 2008
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